Species determination using AI machine-learning algorithms: Hebeloma as a case study

被引:0
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作者
Peter Bartlett
Ursula Eberhardt
Nicole Schütz
Henry J. Beker
机构
[1] La Baraka,Royal Holloway College
[2] Staatliches Museum für Naturkunde Stuttgart,undefined
[3] University of London,undefined
[4] Plantentuin Meise,undefined
来源
IMA Fungus | / 13卷
关键词
Agaricales; Ectomycorrhizal fungi; Identification keys; Taxonomy; Neural networks;
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学科分类号
摘要
The genus Hebeloma is renowned as difficult when it comes to species determination. Historically, many dichotomous keys have been published and used with varying success rate. Over the last 20 years the authors have built a database of Hebeloma collections containing not only metadata but also parametrized morphological descriptions, where for about a third of the cases micromorphological characters have been analysed and are included, as well as DNA sequences for almost every collection. The database now has about 9000 collections including nearly every type collection worldwide and represents over 120 different taxa. Almost every collection has been analysed and identified to species using a combination of the available molecular and morphological data in addition to locality and habitat information. Based on these data an Artificial Intelligence (AI) machine-learning species identifier has been developed that takes as input locality data and a small number of the morphological parameters. Using a random test set of more than 600 collections from the database, not utilized within the set of collections used to train the identifier, the species identifier was able to identify 77% correctly with its highest probabilistic match, 96% within its three most likely determinations and over 99% of collections within its five most likely determinations.
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