Proyecto "Determinación de especies según distribución geográfica"¶

Integrantes:

  • Luis Arrieta Arrieta
  • Stefany Solano González

Descripción¶

Este proyecto nace para evidenciar la falta de sistematización de biodiversidad que existe y cómo a pesar de que Costa Rica posee aproximadamente un 8% de la riqueza natural, esta no se visibiliza en bases de datos internacionales. Adicionalmente, en este trabajo queremos explorar los registros existentes en la base de datos del Catálogo de la vida, haciendo un pequeño énfasis en el grupo taxonómico Fungi. Como justificación de este proyecto, el Sistema Global de Información sobre Biodiversidad (GBIF por sus siglas en inglés) funge como una red internacional e infraestructura de datos financiada por los gobiernos del mundo para dar a cualquiera, en cualquier lugar, acceso abierto a datos sobre todas las formas de vida en la Tierra; no obstante la cuota de participacion en el depósito de estos datos evidencia otros rasgos como la participación científica de paises en estas redes. Como justificación de este proyecto, queremos explorar la distribución de los datos y ver si la cuota de participación en el deposito de estos en el Sistema Global de Información sobre Biodiversidad (GBIF por sus siglas en inglés) tiene una lata representación de países diversos, como Costa Rica ó si se encuentra dominada por algún otro factor, potencialmente relacionado a variables como financiamiento, poder adquisitivo, PIB invertido en ciencia, desarrollo científico etc.

Antecedentes¶

El conocimiento de la biodiversidad en el planeta es esencial para su aprovechamiento y protección. Entender el nicho, biología y potencial de grupos taxonómicos ha permitido que la sociedad desarrolle a partir de estos elementos de gran impacto y utilidad; con aplicación antibiótica, antiinflamatoria, biosintética, antihistamínica entre muchas otras (Pacyga et al. 2024). No obstante, existen grupos taxonómicos como los hongos (Blis & Gloer 2016) o bien ambientes de estudio donde el desconocimiento es elevado como en el caso de especies marinas (Rogers et al. 2022). Adicionalmente, en un inicio los registros de la biodiversidad eran manuales y poco personal tenia acceso a los mismos (Folk & Siniscalchi 2021) ya que se encontraban unificados en museos de paises desarrollados; sin embargo, el avance de la ciencia en sus múltiples dimensiones ha brindado un acceso masivo a la información y generación de datos; no obstante la sistematización de esta sigue siendo compleja (Kirk 2023, Alexander et al. 2024) y dificil de integrar. Aunado a esta complejidad se suma la poca participación o inclusión de países latinoamericanos con altos índices de biodiversidad, lo que dificulta visilibilizar el valor que natural que reside en estos y consecuentemente complica la implementación de politicas de protección, mitigación etc.

Descripción del problema y objetivo¶

Existe un catálogo de la vida, que unifica a todas las especies conocidas a la fecha (última actualización 26 de marzo/2024) y dada la relevancia internacional de Costa Rica como albergue del 8% de biodiversidad mundial deseamos evidenciar la cuota de participación Costarricense en este catálogo. Adicionalmente, el grupo taxonómico de los hongos es uno de los menos conocidos, explorados y categorizados, por lo que también enfocaremos nuestro estudio a este grupo con el fin de corroborar si efectivamente existe un desconocimiento real. Por lo tanto, nuestro objetivo consiste en explorar la distribución de organismos según región geográfica/país y conocer la participación costarricense y latinoamericana en estos registros; así como evidenciar el actual conocimiento existente en grupos taxonómicos específicos como el fúngico.

Instalación e importación de Bibliotecas¶

In [ ]:
#instalación de librerias
!pip install numpy
!pip install pandas
!pip install seaborn
!pip install scikit-learn
!pip install matplotlib
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In [ ]:
#Librería para indices de diversidad
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In [ ]:
#importar librerias
import numpy as np
import pandas as pd
import seaborn as sns
from sklearn import datasets
from ydata_profiling import ProfileReport

import matplotlib.pyplot as plt
%matplotlib inline

Importar set de Datos¶

Obtenidos del link: https://www.gbif.org/es/dataset/7ddf754f-d193-4cc9-b351-99906754a03b

Este conjunto de datos contiene 4 dataframes que recopilan datos sobre el catálogo de organismos de todas las especies conocidas en la tierra a la fecha. Este catálogo incluye especies extintas como vigentes y se cree que cubre por lo menos el 80% de las especies conocidas.

Las tablas de datos corresponden a

  • Distribución
  • Especies reportadas
  • Taxones reportados
  • Nombres vernaculares (autóctonos de cada región) para las especies indicadas

Cabe destacar que toda la información es en idioma inglés

Cita de los datos: Bánki, O., Roskov, Y., Döring, M., Ower, G., Hernández Robles, D. R., Plata Corredor, C. A., Stjernegaard Jeppesen, T., Örn, A., Vandepitte, L., Hobern, D., Schalk, P., DeWalt, R. E., Ma, K., Miller, J., Orrell, T., Aalbu, R., Abbott, J., Adlard, R., Aedo, C., et al. (2024). Catalogue of Life Checklist (Version 2024-03-26). Catalogue of Life. https://doi.org/10.48580/dfz8d

In [ ]:
#Cargar cada uno de los dataframes utilizando pandas
distribution = pd.read_csv('Distribution.tsv', sep='\t')
species = pd.read_csv('SpeciesProfile.tsv', sep='\t')
taxon = pd.read_csv('Taxon.tsv', sep='\t')

#Modificar encabezado de df para que sea más entendible [se elimina caracteres 'dwc']
distribution = distribution.rename(columns=lambda x: x.replace('dwc:',''))
species = species.rename(columns=lambda x: x.replace('dwc:',''))
taxon = taxon.rename(columns=lambda x: x.replace('dwc:',''))
<ipython-input-4-f448e452311d>:4: DtypeWarning: Columns (16) have mixed types. Specify dtype option on import or set low_memory=False.
  taxon = pd.read_csv('Taxon.tsv', sep='\t')
In [ ]:
#Explorar tamaño de archivos con shape
print("distribution.shape:", distribution.shape)
print("species.shape:", species.shape)
print("taxon.shape:", taxon.shape)
distribution.shape: (104015, 6)
species.shape: (473602, 5)
taxon.shape: (31349, 22)

Análisis exploratorio¶

In [ ]:
distribution#Ver el dataframe
Out[ ]:
taxonID occurrenceStatus locationID locality countryCode dcterms:source
0 6L823 native NaN Ecuador; Peru NaN NaN
1 T5NN native NaN Panama NaN NaN
2 7FVWC native mrgid:1912 NaN NaN NaN
3 7FVWC native mrgid:8402 NaN NaN Ax, P., & Sopott-Ehlers, B. (1987). Otoplanida...
4 3WT95 native tdwg:SUM NaN NaN Group, S.F. (2023) SF specimen locality data f...
... ... ... ... ... ... ...
104010 6L7TZ native tdwg:PAN NaN NaN NaN
104011 6L7TZ native tdwg:PER NaN NaN NaN
104012 6L7TZ native tdwg:VEN NaN NaN NaN
104013 6BNZY native NaN Congo NaN NaN
104014 9M79Q native tdwg:ABT-OO NaN NaN Newton, A.F. (2021) StaphBase: Staphyliniformi...

104015 rows × 6 columns

In [ ]:
df['locality'].unique()#Ver datos de la variable
Out[ ]:
array(['Ecuador; Peru', 'Panama', nan, ...,
       'Europe (AU BE BH CZ DE FI FR GB GE GR HU IT NL NR PL RO SK SL SP SV SZ UK), Russia (n+s European)',
       'NE USA; USA: Indiana; USA: New York; USA: West Virginia',
       'China (Guizhou, Zhejiang)'], dtype=object)
In [ ]:
species#ver data frame
Out[ ]:
taxonID gbif:isExtinct gbif:isMarine gbif:isFreshwater gbif:isTerrestrial
0 8XRM False False False True
1 6D3DF NaN True False False
2 49V84 NaN True False False
3 BYZP2 True NaN NaN NaN
4 3JK6Z False False False True
... ... ... ... ... ...
473597 9QLSL false NaN NaN NaN
473598 BJBQ4 false NaN NaN NaN
473599 6YNKM false NaN NaN NaN
473600 6KDRH false False False True
473601 35CZM fals NaN NaN NaN

473602 rows × 5 columns

In [ ]:
taxon
Out[ ]:
taxonID parentNameUsageID acceptedNameUsageID originalNameUsageID scientificNameID datasetID taxonomicStatus taxonRank scientificName scientificNameAuthorship ... infragenericEpithet specificEpithet infraspecificEpithet cultivarEpithet nameAccordingTo namePublishedIn nomenclaturalCode nomenclaturalStatus taxonRemarks dcterms:references
0 9FSLC 92BPW NaN NaN ---3nn39ZQdkDGBvoaGdR2 55434.0 accepted species Homaloxestis australis Park, 2004 Park, 2004 ... NaN australis NaN NaN NaN Park, K.-T. (2004) Genus Homaloxestis Meyrick ... ICZN nomen legitimum NaN NaN
1 8XRM 8NLB3 NaN NaN ---6f-YWvlv8BS-R6m-8Y 1050.0 accepted species Acanthograeffea modesta Günther, 1932 Günther, 1932 ... NaN modesta NaN NaN NaN Günther, K. (1932) Beiträge zur Systematik und... ICZN nomen legitimum NaN NaN
2 6D3DF 7NWBC NaN NaN ---9Qo8j1JQR04niBsWYb0 1191.0 accepted species Diarthrodes gravellicola Soyer, 1975 Soyer, 1975 ... NaN gravellicola NaN NaN NaN Soyer, J. (1975). Contribution a l’étude des C... ICZN nomen validum NaN https://www.marinespecies.org/copepoda/aphia.p...
3 47BF5 63SP NaN NaN ---BEZLG8WfmCKzOoARWg1 1141.0 accepted species Neurotheca congolana De Wild. & T. Durand De Wild. & T. Durand ... NaN congolana NaN NaN NaN De Wild. & T. Durand. (1899). In: Compt. Rend.... ICN NaN NaN http://www.worldplants.de/?deeplink=Neurotheca...
4 5BVQY 87PB NaN NaN ---D7syAmBAb7tLYVFT3L2 1141.0 accepted species Weberbauerocereus cephalomacrostibas (Werderm.... (Werderm. & Backeb.) F. Ritter ... NaN cephalomacrostibas NaN NaN NaN Ritter, F. (1981). In: Kakteen Südamer. 4: 1353. ICN NaN NaN http://www.worldplants.de/?deeplink=Weberbauer...
... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ...
31344 BTY38 BTWH2 NaN NaN -W4y6bo2Lksp9tq-VpszI 2299.0 accepted suborder Orthotetidina Waagen, 1884 Waagen, 1884 ... NaN NaN NaN NaN NaN Waagen, W. H. (1884). Productus Limestone Foss... ICZN nomen validum NaN https://www.marinespecies.org/aphia.php?p=taxd...
31345 7CZ6W 83V5 NaN NaN -W519nFjr9suClYRetk6q2 1141.0 accepted species Turnera dasytricha Pilg. Pilg. ... NaN dasytricha NaN NaN NaN Pilg. (1902). In: Bot. Jahrb. Syst. 30: 176. ICN NaN NaN http://www.worldplants.de/?deeplink=Turnera-da...
31346 6W2JF 6SBV NaN NaN -W56CNeiw5dk2Su0z29DX2 1027.0 accepted species Plectris luctuosa Frey, 1967 Frey, 1967 ... NaN luctuosa NaN NaN NaN Frey, G. (1967). Die Gattung Plectris (Philoch... ICZN NaN NaN NaN
31347 9YKMW NaN 3R6S7 NaN -W5K30rzgvcP9lNsPt33i0 1011.0 synonym species Seliza bisecta Kirby, 1891 Kirby, 1891 ... NaN bisecta NaN NaN NaN NaN ICZN NaN NaN NaN
31348 4HQWW 9CLPF NaN 0Xhs7bfwG98S5S8G63Jxw -W5LTi_j2Ftx5OuOeipNL 2304.0 accepted specie NaN NaN ... NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN

31349 rows × 22 columns

In [ ]:
# Obtener los taxones con variables en común
common_taxonIDs = set(distribution['taxonID']).intersection(species['taxonID']).intersection(taxon['taxonID'])

print(common_taxonIDs)
{'6RBK4', 'D5ZP', '7CTDT', '7RZW5', '72P8R', 'BP7FL', '86986', '8GWQF', '8G3C5', 'GVSX', '676MZ', '6WHSF', '3DVL6', '3KVG8', '6P75C', '524CV', '9GFZD', '9BWKL', '4KQQW', '532JC', '86JNS', '5L38J', '86S4B', '9BCPC', '5FPVK', '552PQ', '7ZLYJ', '46LW8', '9F568', '8QJLB', 'LJ2C', '7BFPS', '6TSHS', '6HWHQ', '8P8WT', 'BN3LN', '4HYYF', '5KW94', '9YQM', 'PWD5', '4B8GS', '86FMH', '85YY4', '555YN', '7XMSR', '699HV', '4MLC6', '6RHNT', '47FD6', '7SX8S', '4QTDQ', '64SQ4', '7JZPT', 'JR22', '39YWT', '9J5CP', '559WJ', '8P9YT', '3H55S', '4BQMW', '4V63V', '4GD5Q', '3TQMR', '7DF9C', '7ZPML', '74KSW', '4PCM4', '64ZXD', '4WXCC', 'JWWP', '3QPR3', '6TWPK', 'D58M', '3GD7V', 'C4WM4', '8TDY9', '4MVL7', '3CGQK', '64VN3', '33HGB', '5X5GN', '3P6VT', '6KWGY', '5TX57', 'WK2C', '4KS6F', '4WWMQ', '7ZBLC', '4DJ6G', 'H66D', '79HGH', '3S468', '894CG', 'RVYX', 'B43VH', '3HDR7', '854PQ', '56V4T', 'CQ5G', 'B75BM', '7F8TJ', '46TDG', '93KL8', '6MMCC', '4VZMP', 'B7623', 'NC39', '3LGQD', '6BGKN', '67YTD', '6M566', '3L7YN', '69KXK', '7TDW6', '6SGW7', '76XPY', '7QQNJ'}
In [ ]:
#Unir los 3 dataframe por la columna taxonID, manteniendo las filas que no hacen match
df = distribution.merge(species, on='taxonID', how='outer').merge(taxon, on='taxonID', how='outer')
df
Out[ ]:
taxonID occurrenceStatus locationID locality countryCode dcterms:source gbif:isExtinct gbif:isMarine gbif:isFreshwater gbif:isTerrestrial ... infragenericEpithet specificEpithet infraspecificEpithet cultivarEpithet nameAccordingTo namePublishedIn nomenclaturalCode nomenclaturalStatus taxonRemarks dcterms:references
0 6L823 native NaN Ecuador; Peru NaN NaN NaN NaN NaN NaN ... NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN
1 T5NN native NaN Panama NaN NaN NaN NaN NaN NaN ... NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN
2 7FVWC native mrgid:1912 NaN NaN NaN NaN True False False ... NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN
3 7FVWC native mrgid:8402 NaN NaN Ax, P., & Sopott-Ehlers, B. (1987). Otoplanida... NaN True False False ... NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN
4 3WT95 native tdwg:SUM NaN NaN Group, S.F. (2023) SF specimen locality data f... False False False True ... NaN luctuosa NaN NaN NaN Brunner von Wattenwyl, C. (1888) Monographie d... ICZN nomen legitimum NaN NaN
... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ...
3115289 7KXQ3 NaN NaN NaN NaN NaN NaN NaN NaN NaN ... NaN longa parviflora NaN NaN Maire, & Weiller. (1961). In: Fl. Afrique N. 7... ICN NaN NaN NaN
3115290 76H4K NaN NaN NaN NaN NaN NaN NaN NaN NaN ... NaN sphaerica NaN NaN NaN H. Schaef., S. S. Renner. (2011). In: Taxon 60... ICN NaN NaN http://www.worldplants.de/?deeplink=Penelopeia...
3115291 76MKV NaN NaN NaN NaN NaN NaN NaN NaN NaN ... NaN nigella NaN NaN NaN Cuatrec. (1981). In: Phytologia 49(3): 248. ICN NaN NaN NaN
3115292 3NNXQ NaN NaN NaN NaN NaN NaN NaN NaN NaN ... NaN acuta NaN NaN NaN NaN ICZN nomen legitimum NaN NaN
3115293 VTHP NaN NaN NaN NaN NaN NaN NaN NaN NaN ... NaN NaN NaN NaN NaN NaN NaN NaN NaN NaN

3115294 rows × 31 columns

In [ ]:
#Explorar columnas de cada df individualmente
print("distribution.shape:", distribution.columns)
print("species.shape:", species.columns)
print("taxon.shape:", taxon.columns)
distribution.shape: Index(['taxonID', 'occurrenceStatus', 'locationID', 'locality', 'countryCode',
       'dcterms:source'],
      dtype='object')
species.shape: Index(['taxonID', 'gbif:isExtinct', 'gbif:isMarine', 'gbif:isFreshwater',
       'gbif:isTerrestrial'],
      dtype='object')
taxon.shape: Index(['taxonID', 'parentNameUsageID', 'acceptedNameUsageID',
       'originalNameUsageID', 'scientificNameID', 'datasetID',
       'taxonomicStatus', 'taxonRank', 'scientificName',
       'scientificNameAuthorship', 'col:notho', 'genericName',
       'infragenericEpithet', 'specificEpithet', 'infraspecificEpithet',
       'cultivarEpithet', 'nameAccordingTo', 'namePublishedIn',
       'nomenclaturalCode', 'nomenclaturalStatus', 'taxonRemarks',
       'dcterms:references'],
      dtype='object')
In [ ]:
# Generar el informe con pandas-profiling para df SpeciesProfile
df_profile = ProfileReport(df, title="Informe Pandas Profiling - SpeciesProfile Dataset", explorative=True)
df_profile.to_file("species_report.html")
/usr/local/lib/python3.10/dist-packages/ydata_profiling/profile_report.py:363: UserWarning: Try running command: 'pip install --upgrade Pillow' to avoid ValueError
  warnings.warn(
Summarize dataset:   0%|          | 0/5 [00:00<?, ?it/s]
Generate report structure:   0%|          | 0/1 [00:00<?, ?it/s]
Render HTML:   0%|          | 0/1 [00:00<?, ?it/s]
Export report to file:   0%|          | 0/1 [00:00<?, ?it/s]
In [ ]:
df_profile
Out[ ]:

Según el informe de Pandas para el data frame Species (el cuál lista el tipo de especie en cuestión - extinta, marina, terrestre, etc), esta presenta un 30.6% de datos faltantes. Se contabiliza un total de 1,665,788 de registros; de estos el 12.3% se encuentran extintos y de los remanentes la mayoría se clasifican como terrestres ( 47%).

Por otro lado, según el informe de Pandas para el data frame Distribution (el cuál detalla las categorías de las especies como nativas, domesticadas, alien y desconocidas; así como la localidad del registro) presenta un 46.2% de datos faltantes. La variable de especies nativas se encuentra altamente desbalanceada pues cerca del 99% están anotadas como nativas.

En cuanto al data frame Taxon, de manera exploratoria el informe de Pandas presenta un 43% de datos faltantes. La categoría de clasificación dominante corresponde a especies (75% de los datos), con 33 especies únicas.

In [ ]:
# Retornar el número de valores únicos en cada columna del dataframe
print('Valores únicos para df Distribution', df.nunique(),'\n')
Valores únicos para df Distribution taxonID                     528630
occurrenceStatus                 4
locationID                    2776
locality                      9715
countryCode                    196
dcterms:source                3816
gbif:isExtinct                   5
gbif:isMarine                    2
gbif:isFreshwater                2
gbif:isTerrestrial               2
parentNameUsageID            11880
acceptedNameUsageID          15256
originalNameUsageID           4385
scientificNameID             31349
datasetID                      107
taxonomicStatus                  5
taxonRank                       32
scientificName               31345
scientificNameAuthorship     22855
col:notho                        1
genericName                  17960
infragenericEpithet           1472
specificEpithet              19940
infraspecificEpithet          3314
cultivarEpithet                  0
nameAccordingTo                  1
namePublishedIn              19086
nomenclaturalCode                4
nomenclaturalStatus              8
taxonRemarks                   552
dcterms:references            9814
dtype: int64 

Las dataframes para los análisis más detallados corresponden a Distribution y Taxon, que serán las que se utilizaran subsecuentemente.

Gráfico de países con más accesos en Catálogo de la Vida¶

In [ ]:
locality_counts = df_loc['Country'].value_counts()
top40 = locality_counts.head(n=40)
tail4040 = locality_counts.tail(n= 40)

##GRAFICO TOP40
# Tamaño del gráfico
plt.figure(figsize=(6, 6)) #primera "capa de la figura"

# Contar total por país
for value, count in top40.items():
    print(f'{value}: {count}')

# Crear gráfico de barras
#grafico de barra vertical
top40.plot(kind='barh')

# Título del gráfico
plt.title('Top 40 de países con más especies')
# Etiqueta del eje X
plt.xlabel('Cantidad de especies')
# Etiqueta del eje Y
plt.ylabel('Región Geográfica')
# Inclinación de las etiquetas del eje X
#rota el texto
plt.xticks(rotation=40)
plt.grid()
plt.show()
China: 5064
Brazil: 4145
Indonesia: 3254
South Africa: 2877
United States: 2257
Mexico: 2254
Argentina: 2202
India: 2155
Australia: 2004
Bolivia, Plurinational State of: 1768
Bolivia: 1768
Malaysia: 1736
Congo, the Democratic Republic of the: 1695
Philippines: 1578
Peru: 1479
Papua New Guinea: 1462
Viet Nam: 1422
Vietnam: 1422
Japan: 1331
Madagascar: 1304
Turkey: 1303
Colombia: 1266
Russian Federation: 1257
Russia: 1257
Canada: 1199
Italy: 1152
Lao People's Democratic Republic: 1149
Tanzania, United Republic of: 1145
Chile: 1109
Ecuador: 1104
Costa Rica: 1071
Panama: 1021
Kazakhstan: 1000
Cameroon: 951
Greece: 914
French Guiana: 902
Taiwan: 891
Thailand: 888
Kenya: 849
Guatemala: 828
No description has been provided for this image

Gráfico de países con menos accesos en Catálogo de la Vida¶

In [ ]:
locality_counts = df_loc['Country'].value_counts()
top40 = locality_counts.head(n=40)
tail40 = locality_counts.tail(n= 40)

#GRAFICO TAIL40
# Tamaño del gráfico
plt.figure(figsize=(6, 6)) #primera "capa de la figura"
# Crear gráfico de barras
#grafico de barra vertical
tail40.plot(kind='barh')

# Título del gráfico
plt.title('Top 40 de países con menos especies')
# Etiqueta del eje X
plt.xlabel('Cantidad de especies')
# Etiqueta del eje Y
plt.ylabel('Región Geográfica')
# Inclinación de las etiquetas del eje X
#rota el texto
plt.xticks(rotation=40)
plt.grid()
plt.show()
No description has been provided for this image
In [ ]:
taxon.columns#Ver columnas del dataframe
Out[ ]:
Index(['taxonID', 'parentNameUsageID', 'acceptedNameUsageID',
       'originalNameUsageID', 'scientificNameID', 'datasetID',
       'taxonomicStatus', 'taxonRank', 'scientificName',
       'scientificNameAuthorship', 'col:notho', 'genericName',
       'infragenericEpithet', 'specificEpithet', 'infraspecificEpithet',
       'cultivarEpithet', 'nameAccordingTo', 'namePublishedIn',
       'nomenclaturalCode', 'nomenclaturalStatus', 'taxonRemarks',
       'dcterms:references'],
      dtype='object')
In [ ]:
taxon_counts = taxon['genericName'].value_counts()#Realizar conteo por genero de individuos
head_taxon40 = taxon_counts.head(n=40)
tail_taxon40 = taxon_counts.tail(n= 40)

head_taxon40
Out[ ]:
genericName
Hieracium       365
Rubus           218
Astragalus      112
Helix           111
Senecio         103
Rosa             95
Solanum          84
Ranunculus       77
Agaricus         77
Ficus            73
Simulium         70
Zygaena          70
Drosophila       64
Potentilla       63
Viola            63
Tabanus          63
Bryum            62
Piper            62
Unio             62
Eugenia          60
Cortinarius      60
Salix            57
Taraxacum        55
Acacia           55
Peperomia        53
Centaurea        53
Otiorhynchus     53
Polypodium       51
Puccinia         51
Asplenium        51
Andrena          51
Sphagnum         50
Megaselia        50
Conus            50
Lecidea          50
Hypnum           49
Aphis            48
Onthophagus      48
Rhododendron     48
Eupithecia       48
Name: count, dtype: int64

Gráfico de las especies más comunes globalmente en Dataframe Taxon¶

In [ ]:
taxon_counts = taxon['genericName'].value_counts()
head_taxon40 = taxon_counts.head(n=40)
tail_taxon40 = taxon_counts.tail(n= 40)

##GRAFICO TOP40
# Tamaño del gráfico
plt.figure(figsize=(6, 6)) #primera "capa de la figura"

# Crear gráfico de barras
# sepal_mean.plot(kind='bar') #grafico de barra vertical
head_taxon40.plot(kind='barh') #barh, es horizontal

# Título del gráfico
plt.title('Top 40 de especies más comunes globalmente')
# Etiqueta del eje X
plt.xlabel('Cantidad de especies')
# Etiqueta del eje Y
plt.ylabel('Nombre común')
# Inclinación de las etiquetas del eje X
#para que quepa las letras del titulo
#rota el texto
plt.xticks(rotation=40)
plt.grid()
plt.show()
No description has been provided for this image

Mapas¶

Agregar coordenadas por pais

In [ ]:
countries_code = pd.read_csv("countries.csv")
countries_code
Out[ ]:
Country Alpha-2 Alpha-3 Numeric code Latitude Longitude
0 Afghanistan AF AFG 4 33.000000 65.0
1 Åland Islands AX ALA 248 60.116667 19.9
2 Albania AL ALB 8 41.000000 20.0
3 Algeria DZ DZA 12 28.000000 3.0
4 American Samoa AS ASM 16 -14.333300 -170.0
... ... ... ... ... ... ...
257 Wallis and Futuna WF WLF 876 -13.300000 -176.2
258 Western Sahara EH ESH 732 24.500000 -13.0
259 Yemen YE YEM 887 15.000000 48.0
260 Zambia ZM ZMB 894 -15.000000 30.0
261 Zimbabwe ZW ZWE 716 -20.000000 30.0

262 rows × 6 columns

In [ ]:
df_loc = df.dropna(subset=['countryCode'])#Eliminar NAs
countries_code.rename(columns={'Alpha-2': 'countryCode'}, inplace=True)#Cambiar nombre de la columna para hacer el merge
# Fusionar los DataFrames en base a la columna 'countryCode'
df_loc = pd.merge(df_loc, countries_code, on='countryCode', how='left')
In [ ]:
df_loc
Out[ ]:
taxonID occurrenceStatus locationID locality countryCode dcterms:source gbif:isExtinct gbif:isMarine gbif:isFreshwater gbif:isTerrestrial ... namePublishedIn nomenclaturalCode nomenclaturalStatus taxonRemarks dcterms:references Country Alpha-3 Numeric code Latitude Longitude
0 QK5N native NaN NaN US NaN True NaN NaN NaN ... NaN NaN NaN NaN NaN United States USA 840 38.0 -97.0
1 9KSLK native NaN NaN BR Zanol, K.M.R. (2000a) Scaphytopius Ball (Homop... NaN NaN NaN NaN ... NaN NaN NaN NaN NaN Brazil BRA 76 -10.0 -55.0
2 34HD8 native NaN NaN AO Stiller, M. (2001a) The Afrotropical leafhoppe... NaN NaN NaN NaN ... NaN NaN NaN NaN NaN Angola AGO 24 -12.5 18.5
3 34HD8 native NaN NaN NG Stiller, M. (2001a) The Afrotropical leafhoppe... NaN NaN NaN NaN ... NaN NaN NaN NaN NaN Nigeria NGA 566 10.0 8.0
4 34HD8 native NaN NaN CG Stiller, M. (2001a) The Afrotropical leafhoppe... NaN NaN NaN NaN ... NaN NaN NaN NaN NaN Congo COG 178 -1.0 15.0
... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ...
109769 5XXLB native NaN NaN CN NaN False NaN NaN NaN ... NaN NaN NaN NaN NaN China CHN 156 35.0 105.0
109770 5XXLB native NaN NaN VN NaN False NaN NaN NaN ... NaN NaN NaN NaN NaN Viet Nam VNM 704 16.0 106.0
109771 5XXLB native NaN NaN VN NaN False NaN NaN NaN ... NaN NaN NaN NaN NaN Vietnam VNM 704 16.0 106.0
109772 6PKLW native NaN NaN CN NaN False NaN NaN NaN ... NaN NaN NaN NaN NaN China CHN 156 35.0 105.0
109773 BS95R native NaN NaN CN NaN False NaN NaN NaN ... VIKTORA Petr. (2023). New species of Demonax T... ICZN NaN NaN http://titan.gbif.fr/sel_genann1.php?numero=41709 China CHN 156 35.0 105.0

109774 rows × 36 columns

In [ ]:
df_loc['Country'].unique()#Ver informacion de la columna country
Out[ ]:
array(['United States', 'Brazil', 'Angola', 'Nigeria', 'Congo', 'Uganda',
       'Ghana', 'Madagascar', 'Australia', 'Philippines', 'Albania',
       'Gabon', 'Chile', 'Panama', 'India', 'Papua New Guinea', 'Tunisia',
       'Hungary', 'Morocco', 'Afghanistan', 'Iran, Islamic Republic of',
       'Uzbekistan', 'China', 'Belgium', 'Luxembourg', 'Netherlands',
       'Switzerland', 'Slovenia', 'Germany', 'Croatia', 'Israel',
       'Jordan', 'Kyrgyzstan', 'Greece', 'Ukraine', 'Turkmenistan',
       'Kazakhstan', 'Tajikistan', 'Iraq', 'Turkey', 'Armenia', 'Canada',
       'United Kingdom', 'Italy', 'Mexico', 'Serbia', 'Malaysia',
       'Austria', 'Japan', 'Pakistan', 'Ethiopia', 'Indonesia',
       'Thailand', 'Guatemala', 'Algeria',
       'Bolivia, Plurinational State of', 'Bolivia', 'Denmark', 'Poland',
       'Sweden', 'Czech Republic', 'Puerto Rico', 'New Zealand', 'France',
       'Guinea', 'Viet Nam', 'Vietnam', 'Nicaragua', 'Liberia', 'Ecuador',
       'Peru', 'Argentina', 'Russia', 'Russian Federation',
       'Venezuela, Bolivarian Republic of', 'Venezuela', 'Saudi Arabia',
       'Fiji', 'Burma', 'Myanmar', 'Hong Kong', 'Taiwan', 'Cambodia',
       "Lao People's Democratic Republic", 'Bulgaria', 'Romania',
       'South Africa', 'Paraguay', 'Azerbaijan', 'Estonia', 'Finland',
       'Latvia', 'Moldova, Republic of', 'Norway', 'Slovakia', 'Ireland',
       'Lithuania', 'Belarus', 'Mongolia',
       'Congo, the Democratic Republic of the', 'Korea, Republic of',
       'South Korea', 'Nepal', 'Cayman Islands', 'Spain', 'Georgia',
       'Colombia', 'Cameroon', 'Micronesia, Federated States of', 'Palau',
       'Mauritius', 'Kenya', 'Sudan', 'Lebanon', 'Libya',
       'Libyan Arab Jamahiriya', 'Tanzania, United Republic of',
       'Sri Lanka', 'Solomon Islands', 'Bhutan', 'Zambia',
       "Côte d'Ivoire", 'Ivory Coast', 'Malawi', 'Bosnia and Herzegovina',
       'Macedonia, the former Yugoslav Republic of', 'Sierra Leone',
       'Singapore', 'Central African Republic', 'New Caledonia',
       'Equatorial Guinea', 'Mozambique', 'Rwanda', 'Togo',
       'Sao Tome and Principe', 'Costa Rica', 'Guyana', 'French Guiana',
       'Suriname', 'Honduras', 'Belize', 'Trinidad and Tobago', 'Somalia',
       'Syrian Arab Republic', 'Mali', 'Oman', 'Uruguay', 'Greenland',
       'Brunei Darussalam', 'Brunei', 'Dominican Republic', 'Bangladesh',
       'Yemen', 'Montenegro', 'Christmas Island', 'Dominica', 'Jamaica',
       'Cuba', 'Egypt', 'Eritrea', 'Senegal', 'Chad', 'Malta',
       'Virgin Islands, U.S.', 'Marshall Islands',
       'Northern Mariana Islands', 'Guam', 'Samoa', 'Zimbabwe',
       'Portugal', 'Barbados', 'Bahamas', 'Bermuda', 'Grenada',
       'Guadeloupe', 'Martinique', 'Montserrat',
       'Saint Vincent & the Grenadines',
       'Saint Vincent and the Grenadines',
       'St. Vincent and the Grenadines', 'Saint Lucia', 'Botswana',
       'Gambia', 'Comoros', 'Guinea-Bissau', 'Burundi', 'Benin',
       'French Polynesia', 'Burkina Faso', 'Niger', 'Réunion', 'Cyprus',
       'El Salvador', 'Saint Helena, Ascension and Tristan da Cunha',
       'Haiti', 'Western Sahara', 'United Arab Emirates',
       'Antigua and Barbuda', 'Saint Kitts and Nevis', 'Seychelles',
       'Palestinian Territory, Occupied', 'Svalbard and Jan Mayen',
       'Timor-Leste', 'Swaziland', 'Aruba', 'Vanuatu', 'Djibouti'],
      dtype=object)

Mapa 1

In [ ]:
import plotly.express as px
import pandas as pd
# Create scatter map
fig = px.scatter_geo(df_loc, lat='Latitude ', lon='Longitude ', #color='genericName',
                     hover_name='Country', #size='mag',
                     title='Distribution Species Around the World')
fig.show()
In [ ]:
df_loc['Type'] = 'Unknown'#Crear columna llamada Type y que todas las filas digan desconocido
df_loc.loc[df['gbif:isTerrestrial'] == True, 'Type'] = 'Terrestrial'#Poner en la columna Type los que son terrestres
df_loc.loc[df['gbif:isMarine'] == True, 'Type'] = 'Marine'#Poner en la columna Type lo que son marine
df_loc.loc[df['gbif:isFreshwater'] == True, 'Type'] = 'Freshwater'#Poner en la columna los que son Freshwater
df_loc.loc[df['gbif:isExtinct'] == True, 'Type'] = 'Extinct'#Poner en la columna Type los que son Extinct
In [ ]:
df_loc['Type'].unique()#Revisar que se realizaran los cambios en la columna Type
Out[ ]:
array(['Unknown', 'Terrestrial', 'Freshwater', 'Marine', 'Extinct'],
      dtype=object)
In [ ]:
fig = px.scatter_geo(df_loc, lat='Latitude ', lon='Longitude ', color='Type',
                     hover_name='Country', #size='mag',
                     title='Distribution Species Around the World')
fig.show()
In [ ]:
df_loc.loc[df_loc['genericName'] == 'Na', 'genericName'] = 'Unknown'
In [ ]:
import plotly.express as px

fig = px.scatter_geo(df_loc, lat='Latitude ', lon='Longitude ', color='genericName',
                     hover_name='genericName', title='Distribution Species Around the World',
                     color_discrete_sequence=px.colors.qualitative.Light24) # Usando una paleta de colores más amplia

fig.show()

Community Diversity¶

Preparar la matriz de ausencia-presencia¶

In [ ]:
df_cleaned = df_loc.dropna(subset=['genericName', 'Country'])# Vamos a filtrar el df para quitar los Na de estas columnas de interes
df_cleaned = df_cleaned[['genericName', 'Country']]
df_cleaned
Out[ ]:
genericName Country
33 Euscelidius Afghanistan
34 Euscelidius Iran, Islamic Republic of
35 Euscelidius Israel
36 Euscelidius Jordan
37 Euscelidius Kyrgyzstan
... ... ...
108605 Atheta Chile
108606 Brasiliosoma Brazil
108611 Stenus Indonesia
108614 Emeopedus Papua New Guinea
108622 Ropica Solomon Islands

16298 rows × 2 columns

In [ ]:
df_cleaned['genericName'].nunique()# Contabilizar cantidad de variables diferentes en esta columna
Out[ ]:
4053
In [ ]:
df_cleaned['Country'].nunique()# Contabilizar cantidad de variables diferentes en esta columna
Out[ ]:
220
In [ ]:
taxon_countss = df_cleaned['genericName'].value_counts()#Crean un dataframe con las especies segun las veces qe aparece
head_taxon40 = taxon_countss.head(n=40)#Primeros 40
tail_taxon40 = taxon_countss.tail(n= 40)#Ultimos 40

head_taxon40
Out[ ]:
genericName
Pterolophia     301
Glenea          296
Phytoecia       237
Dorcadion       204
Prosopocera     183
Otiorhynchus    176
Demonax         166
Eunidia         165
Exocentrus      147
Agapanthia      146
Nupserha        138
Monochamus      119
Chlorophorus    113
Eupteryx        102
Oberea           98
Acalolepta       96
Sybra            95
Xylotrechus      92
Pogonocherus     87
Cortodera        87
Xystrocera       85
Rhaphuma         78
Hyllisia         76
Eburodacrys      75
Psammotettix     75
Sophronica       74
Crossotus        73
Purpuricenus     70
Pidonia          69
Oncideres        69
Tmesisternus     66
Apomecyna        65
Niphona          63
Ceresium         61
Tetropium        60
Megacyllene      56
Aegomorphus      55
Colobothea       53
Serixia          53
Lepturges        53
Name: count, dtype: int64
In [ ]:
pivoted_df = df_cleaned.pivot_table(index='Country', columns='genericName', aggfunc=len, fill_value=0)#Convertir el dataframe a una matriz de presencia ausencia
In [ ]:
pivoted_df
Out[ ]:
genericName Abana Abanycha Abaraeus Abauba Abichites Abimwa Abraeomorphus Abroma Abryna Acabanga ... Zorilispe Zorilispiella Zorion Zotalemimon Zyginidia Zygocera Zyras Zyrcosa Zyrcosoides Zyzzogeton
Country
Afghanistan 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
Albania 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
Algeria 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
Andorra 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
Angola 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ... ...
Virgin Islands, U.S. 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
Western Sahara 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
Yemen 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
Zambia 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
Zimbabwe 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0

220 rows × 4053 columns

In [ ]:
pivoted_df['Pterolophia'].sum()# Confirmar que el pivot longer fue exitoso, si es el caso porque anteriormente dio 301 en el top 40
Out[ ]:
301
In [ ]:
data = pivoted_df.values.tolist()# Convertir pivoted_df a una lista de listas
In [ ]:
print(data[:6])
[[0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 1, 0, 0, 1, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, 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0, 0, 0, 0, 0, 0, 0, 0, 0]]
In [ ]:
ids = list(pivoted_df.index)#Indice del dataframe contiene los nombres de paises se convierte en una lista
ids
Out[ ]:
['Afghanistan',
 'Albania',
 'Algeria',
 'Andorra',
 'Angola',
 'Anguilla',
 'Argentina',
 'Armenia',
 'Aruba',
 'Australia',
 'Austria',
 'Azerbaijan',
 'Bahamas',
 'Bahrain',
 'Bangladesh',
 'Barbados',
 'Belarus',
 'Belgium',
 'Belize',
 'Benin',
 'Bermuda',
 'Bhutan',
 'Bolivia',
 'Bolivia, Plurinational State of',
 'Bosnia and Herzegovina',
 'Botswana',
 'Brazil',
 'Brunei',
 'Brunei Darussalam',
 'Bulgaria',
 'Burkina Faso',
 'Burma',
 'Burundi',
 'Cambodia',
 'Cameroon',
 'Canada',
 'Cape Verde',
 'Cayman Islands',
 'Central African Republic',
 'Chad',
 'Chile',
 'China',
 'Christmas Island',
 'Colombia',
 'Comoros',
 'Congo',
 'Congo, the Democratic Republic of the',
 'Costa Rica',
 'Croatia',
 'Cuba',
 'Cyprus',
 'Czech Republic',
 "Côte d'Ivoire",
 'Denmark',
 'Djibouti',
 'Dominican Republic',
 'Ecuador',
 'Egypt',
 'El Salvador',
 'Equatorial Guinea',
 'Eritrea',
 'Estonia',
 'Ethiopia',
 'Faroe Islands',
 'Fiji',
 'Finland',
 'France',
 'French Guiana',
 'French Polynesia',
 'Gabon',
 'Gambia',
 'Georgia',
 'Germany',
 'Ghana',
 'Greece',
 'Greenland',
 'Grenada',
 'Guadeloupe',
 'Guam',
 'Guatemala',
 'Guinea',
 'Guinea-Bissau',
 'Guyana',
 'Haiti',
 'Honduras',
 'Hong Kong',
 'Hungary',
 'Iceland',
 'India',
 'Indonesia',
 'Iran, Islamic Republic of',
 'Iraq',
 'Ireland',
 'Israel',
 'Italy',
 'Ivory Coast',
 'Jamaica',
 'Japan',
 'Jordan',
 'Kazakhstan',
 'Kenya',
 "Korea, Democratic People's Republic of",
 'Korea, Republic of',
 'Kuwait',
 'Kyrgyzstan',
 "Lao People's Democratic Republic",
 'Latvia',
 'Lebanon',
 'Liberia',
 'Libya',
 'Libyan Arab Jamahiriya',
 'Liechtenstein',
 'Lithuania',
 'Luxembourg',
 'Macao',
 'Macedonia, the former Yugoslav Republic of',
 'Madagascar',
 'Malawi',
 'Malaysia',
 'Mali',
 'Malta',
 'Marshall Islands',
 'Martinique',
 'Mauritania',
 'Mauritius',
 'Mexico',
 'Micronesia, Federated States of',
 'Moldova, Republic of',
 'Mongolia',
 'Montenegro',
 'Montserrat',
 'Morocco',
 'Mozambique',
 'Myanmar',
 'Nepal',
 'Netherlands',
 'New Caledonia',
 'New Zealand',
 'Nicaragua',
 'Niger',
 'Nigeria',
 'Northern Mariana Islands',
 'Norway',
 'Oman',
 'Pakistan',
 'Palau',
 'Palestinian Territory, Occupied',
 'Panama',
 'Papua New Guinea',
 'Paraguay',
 'Peru',
 'Philippines',
 'Poland',
 'Portugal',
 'Puerto Rico',
 'Qatar',
 'Romania',
 'Russia',
 'Russian Federation',
 'Rwanda',
 'Réunion',
 'Saint Kitts and Nevis',
 'Saint Lucia',
 'Saint Vincent & the Grenadines',
 'Saint Vincent and the Grenadines',
 'Samoa',
 'Sao Tome and Principe',
 'Saudi Arabia',
 'Senegal',
 'Serbia',
 'Seychelles',
 'Sierra Leone',
 'Singapore',
 'Slovakia',
 'Slovenia',
 'Solomon Islands',
 'Somalia',
 'South Africa',
 'South Korea',
 'Spain',
 'Sri Lanka',
 'St. Vincent and the Grenadines',
 'Sudan',
 'Suriname',
 'Svalbard and Jan Mayen',
 'Swaziland',
 'Sweden',
 'Switzerland',
 'Syrian Arab Republic',
 'Taiwan',
 'Tajikistan',
 'Tanzania, United Republic of',
 'Thailand',
 'Togo',
 'Tonga',
 'Trinidad and Tobago',
 'Tunisia',
 'Turkey',
 'Turkmenistan',
 'Uganda',
 'Ukraine',
 'United Arab Emirates',
 'United Kingdom',
 'United States',
 'Uruguay',
 'Uzbekistan',
 'Vanuatu',
 'Venezuela',
 'Venezuela, Bolivarian Republic of',
 'Viet Nam',
 'Vietnam',
 'Virgin Islands, U.S.',
 'Western Sahara',
 'Yemen',
 'Zambia',
 'Zimbabwe']

¶

In [ ]:
from skbio.diversity import alpha_diversity
adiv_sobs = alpha_diversity('sobs', data, ids)# Cuenta el número de especies diferentes observadas en una muestra sin tener en cuenta sus abundancias relativas
adiv_sobs
Out[ ]:
Afghanistan             20
Albania                 27
Algeria                 43
Andorra                  2
Angola                  58
                        ..
Virgin Islands, U.S.     4
Western Sahara           3
Yemen                    7
Zambia                  36
Zimbabwe                43
Length: 216, dtype: int64
In [ ]:
adiv_sobs_sorted = adiv_sobs.sort_values() #organizar por nivel de indice
# Muestra las ultimas 40 filas de la Serie ordenada
print(adiv_sobs_sorted.tail(40))
Honduras                                  98
Canada                                    98
Nicaragua                                 99
Russia                                   103
Kenya                                    103
Russian Federation                       103
Papua New Guinea                         108
Taiwan                                   110
Cameroon                                 111
Venezuela                                113
Venezuela, Bolivarian Republic of        113
Paraguay                                 119
Guatemala                                121
Madagascar                               122
Tanzania, United Republic of             132
Chile                                    134
Philippines                              136
Panama                                   142
French Guiana                            143
Japan                                    144
Lao People's Democratic Republic         146
Ecuador                                  151
Costa Rica                               151
Colombia                                 160
Vietnam                                  160
Viet Nam                                 160
Australia                                162
Peru                                     169
Congo, the Democratic Republic of the    169
United States                            205
India                                    214
Malaysia                                 216
Bolivia                                  218
Bolivia, Plurinational State of          218
Mexico                                   236
Argentina                                281
South Africa                             285
Indonesia                                296
China                                    420
Brazil                                   426
dtype: int64
In [ ]:
plt.figure(figsize=(10, 6))
adiv_sobs_sorted.tail(60).plot(kind='bar', color='skyblue')
plt.xlabel('Países')
plt.ylabel('Índice de diversidad Sobs')
plt.title('alpha diversity metric- Número de especies observadas(Top 60)')
plt.xticks(rotation=45, ha='right')
plt.tight_layout()
plt.show()
No description has been provided for this image

beta diversity metric¶

In [ ]:
topSob = adiv_sobs_sorted.tail(20)#Filtrar solo los primeros 20 segun su indice de diversidad alpha
indices = topSob.index#Guardar los paises que es el indice
In [ ]:
resultado = pivoted_df[pivoted_df.index.isin(indices)]
resultado
Out[ ]:
genericName Abana Abanycha Abaraeus Abauba Abichites Abimwa Abroma Abryna Acabanga Acacimenus ... Zoodes Zorilispe Zorilispiella Zorion Zotalemimon Zyginidia Zygocera Zyras Zyrcosa Zyrcosoides
Country
Argentina 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 2 0 0
Australia 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 1 0 0 0
Bolivia 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
Bolivia, Plurinational State of 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
Brazil 0 0 0 0 0 0 0 0 1 0 ... 0 0 0 0 0 0 0 0 0 0
China 0 0 0 0 0 0 0 0 0 0 ... 1 0 0 0 1 0 0 0 0 0
Colombia 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
Congo, the Democratic Republic of the 0 0 0 0 0 1 0 0 0 0 ... 0 1 0 0 0 0 0 0 0 0
Costa Rica 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
Ecuador 0 1 0 1 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
India 0 0 0 0 0 0 0 0 0 0 ... 1 0 0 0 0 1 0 0 0 0
Indonesia 0 0 0 0 0 0 0 2 0 0 ... 0 2 0 0 1 0 0 0 0 0
Lao People's Democratic Republic 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 2 0 0 0 0 0
Malaysia 0 0 0 0 0 0 0 1 0 0 ... 0 0 0 0 0 0 0 0 0 0
Mexico 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
Peru 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
South Africa 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 11 0 0
United States 0 0 0 0 0 0 0 0 0 0 ... 0 0 0 0 0 0 0 0 0 0
Viet Nam 0 0 0 0 0 0 0 0 0 0 ... 0 0 1 0 0 0 0 0 0 0
Vietnam 0 0 0 0 0 0 0 0 0 0 ... 0 0 1 0 0 0 0 0 0 0

20 rows × 3488 columns

In [ ]:
data = resultado.values.tolist()# Convertir pivoted_df a una lista de listas
ids = list(resultado.index)#Guardar paises en lista
In [ ]:
from skbio.diversity import beta_diversity
bc_dm = beta_diversity("braycurtis", data, ids)#Calcular Disimilitud de Bray-Curtis

print(bc_dm)
20x20 distance matrix
IDs:
'Argentina', 'Australia', 'Bolivia', 'Bolivia, Plurinational State of', ...
Data:
[[0.         0.99074074 0.73692078 0.73692078 0.78422484 0.99644444
  0.87062937 0.99698341 0.90328152 0.89417989 0.98290598 0.99000999
  0.99347471 0.97755961 0.91020408 0.83445946 0.90189521 0.96142433
  1.         1.        ]
 [0.99074074 0.         0.99648506 0.99648506 0.99401795 0.95902439
  0.99152542 0.97513321 0.99164927 0.99571734 0.93355482 0.93118757
  0.95711501 0.94127243 0.98110236 0.99593496 0.97992472 0.97560976
  0.95530726 0.95530726]
 [0.73692078 0.99648506 0.         0.         0.54882812 0.99617591
  0.663286   0.99657534 0.728      0.65983607 0.98715891 0.9978308
  1.         1.         0.82012195 0.56335283 1.         0.9394958
  1.         1.        ]
 [0.73692078 0.99648506 0.         0.         0.54882812 0.99617591
  0.663286   0.99657534 0.728      0.65983607 0.98715891 0.9978308
  1.         1.         0.82012195 0.56335283 1.         0.9394958
  1.         1.        ]
 [0.78422484 0.99401795 0.54882812 0.54882812 0.         0.99324324
  0.76699029 0.99803536 0.8137045  0.75704989 0.99053926 0.99852507
  1.         1.         0.86788991 0.67898627 0.99680511 0.9552964
  1.         1.        ]
 [0.99644444 0.95902439 0.99617591 0.99617591 0.99324324 0.
  0.99578504 0.92115385 0.9958159  1.         0.67933272 0.73730044
  0.63838384 0.75045872 0.98021583 0.99380805 0.97645212 0.92388202
  0.61932939 0.61932939]
 [0.87062937 0.99152542 0.663286   0.663286   0.76699029 0.99578504
  0.         0.99589322 0.69727047 0.62148338 0.97718631 0.99757576
  1.         1.         0.82826476 0.65384615 0.99167822 0.92771084
  1.         1.        ]
 [0.99698341 0.97513321 0.99657534 0.99657534 0.99803536 0.92115385
  0.99589322 0.         0.99595142 0.99585062 0.87358185 0.930131
  0.90151515 0.91401274 0.99692308 0.99605523 0.8546798  0.97962649
  0.89855072 0.89855072]
 [0.90328152 0.99164927 0.728      0.728      0.8137045  0.9958159
  0.69727047 0.99595142 0.         0.74874372 0.98499062 1.
  0.9954955  0.99632353 0.63250883 0.78250591 0.99725275 0.84158416
  1.         1.        ]
 [0.89417989 0.99571734 0.65983607 0.65983607 0.75704989 1.
  0.62148338 0.99585062 0.74874372 0.         0.99232246 1.
  1.         1.         0.85198556 0.55717762 1.         0.95537525
  1.         1.        ]
 [0.98290598 0.93355482 0.98715891 0.98715891 0.99053926 0.67933272
  0.97718631 0.87358185 0.98499062 0.99232246 0.         0.72356021
  0.63315697 0.69115442 0.96806967 0.98901099 0.95769683 0.97452229
  0.59052453 0.59052453]
 [0.99000999 0.93118757 0.9978308  0.9978308  0.99852507 0.73730044
  0.99757576 0.930131   1.         1.         0.72356021 0.
  0.72286374 0.48033126 0.99797571 1.         0.97391304 0.98921251
  0.7258427  0.7258427 ]
 [0.99347471 0.95711501 1.         1.         1.         0.63838384
  1.         0.90151515 0.9954955  1.         0.63315697 0.72286374
  0.         0.67820069 0.99333333 1.         0.97375328 0.94434137
  0.45816733 0.45816733]
 [0.97755961 0.94127243 1.         1.         1.         0.75045872
  1.         0.91401274 0.99632353 1.         0.69115442 0.48033126
  0.67820069 0.         0.99428571 0.99640934 0.95591647 0.97809077
  0.6744186  0.6744186 ]
 [0.91020408 0.98110236 0.82012195 0.82012195 0.86788991 0.98021583
  0.82826476 0.99692308 0.63250883 0.85198556 0.96806967 0.99797571
  0.99333333 0.99428571 0.         0.85492228 0.98642534 0.75794251
  1.         1.        ]
 [0.83445946 0.99593496 0.56335283 0.56335283 0.67898627 0.99380805
  0.65384615 0.99605523 0.78250591 0.55717762 0.98901099 1.
  1.         0.99640934 0.85492228 0.         0.99730094 0.95366795
  1.         1.        ]
 [0.90189521 0.97992472 1.         1.         0.99680511 0.97645212
  0.99167822 0.8546798  0.99725275 1.         0.95769683 0.97391304
  0.97375328 0.95591647 0.98642534 0.99730094 0.         0.9854192
  0.97964377 0.97964377]
 [0.96142433 0.97560976 0.9394958  0.9394958  0.9552964  0.92388202
  0.92771084 0.97962649 0.84158416 0.95537525 0.97452229 0.98921251
  0.94434137 0.97809077 0.75794251 0.95366795 0.9854192  0.
  0.96092362 0.96092362]
 [1.         0.95530726 1.         1.         1.         0.61932939
  1.         0.89855072 1.         1.         0.59052453 0.7258427
  0.45816733 0.6744186  1.         1.         0.97964377 0.96092362
  0.         0.        ]
 [1.         0.95530726 1.         1.         1.         0.61932939
  1.         0.89855072 1.         1.         0.59052453 0.7258427
  0.45816733 0.6744186  1.         1.         0.97964377 0.96092362
  0.         0.        ]]
In [ ]:
bc_dm
Out[ ]:
No description has been provided for this image

Análisis de correlaciones¶

In [ ]:
diversity = adiv_sobs.reset_index()

# Renombrando las columnas
diversity.columns = ['Country', 'Alpha_diversity']
diversity
Out[ ]:
Country Alpha_diversity
0 Afghanistan 20
1 Albania 27
2 Algeria 43
3 Andorra 2
4 Angola 58
... ... ...
211 Virgin Islands, U.S. 4
212 Western Sahara 3
213 Yemen 7
214 Zambia 36
215 Zimbabwe 43

216 rows × 2 columns

In [ ]:
div = pd.merge(diversity, countries_code, on='Country', how='left')
div
Out[ ]:
Country Alpha_diversity countryCode Alpha-3 Numeric code Latitude Longitude
0 Afghanistan 20 AF AFG 4 33.0000 65.0000
1 Albania 27 AL ALB 8 41.0000 20.0000
2 Algeria 43 DZ DZA 12 28.0000 3.0000
3 Andorra 2 AD AND 20 42.5000 1.6000
4 Angola 58 AO AGO 24 -12.5000 18.5000
... ... ... ... ... ... ... ...
211 Virgin Islands, U.S. 4 VI VIR 850 18.3333 -64.8333
212 Western Sahara 3 EH ESH 732 24.5000 -13.0000
213 Yemen 7 YE YEM 887 15.0000 48.0000
214 Zambia 36 ZM ZMB 894 -15.0000 30.0000
215 Zimbabwe 43 ZW ZWE 716 -20.0000 30.0000

216 rows × 7 columns

In [ ]:
PIB = pd.read_csv("PIB.csv")#Agregar dataframe con datos del PIB 2021 de paises
PIB
Out[ ]:
Countryname Alpha-3 2021
0 Aruba ABW 29127.759384
1 Africa Eastern and Southern AFE 1545.613215
2 Afghanistan AFG 355.777826
3 Africa Western and Central AFW 1766.943618
4 Angola AGO 1927.474078
... ... ... ...
251 Kosovo XKX 5269.783901
252 Yemen, Rep. YEM 543.637538
253 South Africa ZAF 7073.612754
254 Zambia ZMB 1134.713454
255 Zimbabwe ZWE 1773.920411

256 rows × 3 columns

In [ ]:
div = pd.merge(div, PIB, on='Alpha-3', how='left')#Agregar columna del PIB al dataframe div
div
Out[ ]:
Country Alpha_diversity countryCode Alpha-3 Numeric code Latitude Longitude Countryname 2021
0 Afghanistan 20 AF AFG 4 33.0000 65.0000 Afghanistan 355.777826
1 Albania 27 AL ALB 8 41.0000 20.0000 Albania 6377.203096
2 Algeria 43 DZ DZA 12 28.0000 3.0000 Algeria 3700.314697
3 Andorra 2 AD AND 20 42.5000 1.6000 Andorra 42072.319423
4 Angola 58 AO AGO 24 -12.5000 18.5000 Angola 1927.474078
... ... ... ... ... ... ... ... ... ...
211 Virgin Islands, U.S. 4 VI VIR 850 18.3333 -64.8333 Virgin Islands (U.S.) 41976.008312
212 Western Sahara 3 EH ESH 732 24.5000 -13.0000 NaN NaN
213 Yemen 7 YE YEM 887 15.0000 48.0000 Yemen, Rep. 543.637538
214 Zambia 36 ZM ZMB 894 -15.0000 30.0000 Zambia 1134.713454
215 Zimbabwe 43 ZW ZWE 716 -20.0000 30.0000 Zimbabwe 1773.920411

216 rows × 9 columns

In [ ]:
div = div.set_index('Country')# Convertir Country en indice
In [ ]:
columnas_a_eliminar = ['countryCode', 'Alpha-3', 'Numeric code', 'Countryname']

# Eliminar las columnas
div = div.drop(columnas_a_eliminar, axis=1)
div = div.dropna()
div
Out[ ]:
Alpha_diversity Latitude Longitude 2021 count
Country
Afghanistan 20 33.0000 65.0000 355.777826 191
Albania 27 41.0000 20.0000 6377.203096 347
Algeria 43 28.0000 3.0000 3700.314697 439
Andorra 2 42.5000 1.6000 42072.319423 20
Angola 58 -12.5000 18.5000 1927.474078 460
... ... ... ... ... ...
Vietnam 160 16.0000 106.0000 3756.488901 1422
Virgin Islands, U.S. 4 18.3333 -64.8333 41976.008312 33
Yemen 7 15.0000 48.0000 543.637538 75
Zambia 36 -15.0000 30.0000 1134.713454 287
Zimbabwe 43 -20.0000 30.0000 1773.920411 376

200 rows × 5 columns

In [ ]:
div = div.dropna()#Quitar NAs
div
Out[ ]:
Alpha_diversity Latitude Longitude 2021
Country
Afghanistan 20 33.0000 65.0000 355.777826
Albania 27 41.0000 20.0000 6377.203096
Algeria 43 28.0000 3.0000 3700.314697
Andorra 2 42.5000 1.6000 42072.319423
Angola 58 -12.5000 18.5000 1927.474078
... ... ... ... ...
Vietnam 160 16.0000 106.0000 3756.488901
Virgin Islands, U.S. 4 18.3333 -64.8333 41976.008312
Yemen 7 15.0000 48.0000 543.637538
Zambia 36 -15.0000 30.0000 1134.713454
Zimbabwe 43 -20.0000 30.0000 1773.920411

200 rows × 4 columns

In [ ]:
import pandas as pd
import numpy as np
import matplotlib.pyplot as plt
import seaborn as sns
In [ ]:
matrix=div.corr()# Correlación de pearson entre variables de div
plt.figure(figsize=(14,9))
sns.heatmap(matrix,cmap='Reds',annot=True)
plt.show()
No description has been provided for this image
In [ ]:
# Grafico comparando Latitud vs Diversidad Alpha
plt.figure(figsize=(10, 6))
plt.scatter(div['Latitude'], div['Alpha_diversity'], color='blue', alpha=0.5)
plt.title('Alpha Diversity vs Latitude')
plt.xlabel('Latitude')
plt.ylabel('Alpha Diversity')
plt.grid(True)
plt.show()
No description has been provided for this image
In [ ]:
div = pd.merge(div, locality_counts, on='Country', how='left')# Agregar columna counts a div
div
Out[ ]:
Country Alpha_diversity countryCode Alpha-3 Numeric code Latitude Longitude Countryname 2021 count
0 Afghanistan 20 AF AFG 4 33.0000 65.0000 Afghanistan 355.777826 191
1 Albania 27 AL ALB 8 41.0000 20.0000 Albania 6377.203096 347
2 Algeria 43 DZ DZA 12 28.0000 3.0000 Algeria 3700.314697 439
3 Andorra 2 AD AND 20 42.5000 1.6000 Andorra 42072.319423 20
4 Angola 58 AO AGO 24 -12.5000 18.5000 Angola 1927.474078 460
... ... ... ... ... ... ... ... ... ... ...
211 Virgin Islands, U.S. 4 VI VIR 850 18.3333 -64.8333 Virgin Islands (U.S.) 41976.008312 33
212 Western Sahara 3 EH ESH 732 24.5000 -13.0000 NaN NaN 9
213 Yemen 7 YE YEM 887 15.0000 48.0000 Yemen, Rep. 543.637538 75
214 Zambia 36 ZM ZMB 894 -15.0000 30.0000 Zambia 1134.713454 287
215 Zimbabwe 43 ZW ZWE 716 -20.0000 30.0000 Zimbabwe 1773.920411 376

216 rows × 10 columns

Descripción de resultados¶

  • Se generaron análisis exploratorios para los dataframe importados, correspondientes a Taxon, Distribución y Especies. Esto permitió indentificar el set de datos en cada DF (eg. cantidad de datos nulos, faltantes, desbalances, repetidos, tendencias, máximos, mínimos).

  • Se obtuvieron métricas generales de los dataframe empleando comandos vistos en clase como shape, unique, etc

  • Se unificaron estos tres DF para trabajar con un archivo consolidado y se graficaron el top 40 y tail 40 de los países con más y menos especies reportadas.

  • Se generaron mapas de distribución geográfica para las especies reportadas, según categoría (marina, terrestre, desconocida, etc) y para las especies más representativas.

Conclusiones generales¶

  1. El catálogo de la vida tiene un alto componente de datos faltantes o desconocidos; lo que evidencia el vacío de información existente en varios grupos taxonómicos.
  2. Los países con mayor concentración de reportes el el catálogo de la vida, no necesariamente alinean con los de mayor diversidad biológica y Costa Rica si figura entre el top 40.
  3. La mayor representación de especies se concentra en las plantas, lo que evidencia de forma urgente la necesidad de cubrir otros grupos taxonómicos con el fúngico.
  4. La categoría de agual dulce posee pocos registros a nivel global y de forma interesante Cuba, Haití, Puerto Rico, Jamaica e islas aledañas reportan la mayor cantidad de especies bajo la categoría "desconocida".

Referencias¶

  1. Pacyga, K., Pacyga, P., Topola, E., Viscardi, S., & Duda-Madej, A. (2024). Bioactive Compounds from Plant Origin as Natural Antimicrobial Agents for the Treatment of Wound Infections. International journal of molecular sciences, 25(4), 2100. https://doi.org/10.3390/ijms25042100

  2. Rogers AD, Appeltans W, Assis J, Ballance LT, Cury P, Duarte C, Favoretto F, Hynes LA, Kumagai JA, Lovelock CE, Miloslavich P, Niamir A, Obura D, O'Leary BC, Ramirez-Llodra E, Reygondeau G, Roberts C, Sadovy Y, Steeds O, Sutton T, Tittensor DP, Velarde E, Woodall L, Aburto-Oropeza O. Discovering marine biodiversity in the 21st century. Adv Mar Biol. 2022;93:23-115. doi: 10.1016/bs.amb.2022.09.002. Epub 2022 Nov 7. PMID: 36435592.

  3. Folk, R. A., & Siniscalchi, C. M. (2021). Biodiversity at the global scale: the synthesis continues. American journal of botany, 108(6), 912–924. https://doi.org/10.1002/ajb2.1694

  4. Bills, G. F., & Gloer, J. B. (2016). Biologically Active Secondary Metabolites from the Fungi. Microbiology spectrum, 4(6), 10.1128/microbiolspec.FUNK-0009-2016. https://doi.org/10.1128/microbiolspec.FUNK-0009-2016

  5. Kirk, P. (2023). Species Fungorum Plus. In O. Bánki, Y. Roskov, M. Döring, G. Ower, D. R. Hernández Robles, C. A. Plata Corredor, T. Stjernegaard Jeppesen, A. Örn, L. Vandepitte, D. Hobern, P. Schalk, R. E. DeWalt, K. Ma, J. Miller, T. Orrell, R. Aalbu, J. Abbott, R. Adlard, C. Aedo, et al., Catalogue of Life Checklist (Jan 2023). Royal Botanic Gardens, Kew. https://doi.org/10.48580/dfrdl-4hj

  6. Alexander, S., Hodson, A., Mitchell, D., Nicolson, D., Orrell, T., & Perez-Gelabert, D. (2024). The Integrated Taxonomic Information System. In O. Bánki, Y. Roskov, M. Döring, G. Ower, D. R. Hernández Robles, C. A. Plata Corredor, T. Stjernegaard Jeppesen, A. Örn, L. Vandepitte, D. Hobern, P. Schalk, R. E. DeWalt, K. Ma, J. Miller, T. Orrell, R. Aalbu, J. Abbott, R. Adlard, C. Aedo, et al., Catalogue of Life Checklist (Version 2024-02-28). ITIS. https://doi.org/10.48580/dfz6w-4ky