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The ECAT dataset: expert-validated distribution data of endemic and sub-endemic trees of Central Africa (Dem. Rep. Congo, Rwanda, Burundi).

Wesley TackHenry EngledowNuno Veríssimo PereiraChristian AmaniSteven P BachmanPatricia BarberáHenk J BeentjeGaël U D BoukaMartin CheekAriane CosiauxGilles DaubyPetra De BlockCorneille E N EwangoEberhard FischerRoy E GereauSerene HargreavesYvette Harvey-BrownDavy U IkabangaEdouard Ilunga Wa IlungaJames KalemaPeris KamauOlivier LachenaudQuentin LukeIthe Mwanga MwangaSydney T Ndolo EbikaJacques NkengurutseAimable NsanzurwimoSalvator NtoreSophie L RichardsReddy Shutsha EhataMurielle Simo-DroissartTariq StévartMarc S M Sosef
Published in: PhytoKeys (2022)
In this data paper, we present a specimen-based occurrence dataset compiled in the framework of the Conservation of Endemic Central African Trees (ECAT) project with the aim of producing global conservation assessments for the IUCN Red List. The project targets all tree species endemic or sub-endemic to the Central African region comprising the Democratic Republic of the Congo (DR Congo), Rwanda, and Burundi. The dataset contains 6361 plant collection records with occurrences of 8910 specimens from 337 taxa belonging to 153 genera in 52 families. Many of these tree taxa have restricted geographic ranges and are only known from a small number of herbarium specimens. As assessments for such taxa can be compromised by inadequate data, we transcribed and geo-referenced specimen label information to obtain a more accurate and complete locality dataset. All specimen data were manually cleaned and verified by botanical experts, resulting in improved data quality and consistency.
Keyphrases
  • electronic health record
  • big data
  • quality improvement
  • risk assessment
  • high resolution
  • machine learning
  • artificial intelligence
  • ultrasound guided