TY - JOUR
T1 - Identifying facial phenotypes of genetic disorders using deep learning
AU - Gurovich, Yaron
AU - Hanani, Yair
AU - Bar, Omri
AU - Nadav, Guy
AU - Fleischer, Nicole
AU - Gelbman, Dekel
AU - Basel-Salmon, Lina
AU - Krawitz, Peter M.
AU - Kamphausen, Susanne B.
AU - Zenker, Martin
AU - Bird, Lynne M.
AU - Gripp, Karen W.
N1 - Publisher Copyright:
© 2019, The Author(s), under exclusive licence to Springer Nature America, Inc.
PY - 2019/1/1
Y1 - 2019/1/1
N2 - Syndromic genetic conditions, in aggregate, affect 8% of the population1. Many syndromes have recognizable facial features2 that are highly informative to clinical geneticists3–5. Recent studies show that facial analysis technologies measured up to the capabilities of expert clinicians in syndrome identification6–9. However, these technologies identified only a few disease phenotypes, limiting their role in clinical settings, where hundreds of diagnoses must be considered. Here we present a facial image analysis framework, DeepGestalt, using computer vision and deep-learning algorithms, that quantifies similarities to hundreds of syndromes. DeepGestalt outperformed clinicians in three initial experiments, two with the goal of distinguishing subjects with a target syndrome from other syndromes, and one of separating different genetic subtypes in Noonan syndrome. On the final experiment reflecting a real clinical setting problem, DeepGestalt achieved 91% top-10 accuracy in identifying the correct syndrome on 502 different images. The model was trained on a dataset of over 17,000 images representing more than 200 syndromes, curated through a community-driven phenotyping platform. DeepGestalt potentially adds considerable value to phenotypic evaluations in clinical genetics, genetic testing, research and precision medicine.
AB - Syndromic genetic conditions, in aggregate, affect 8% of the population1. Many syndromes have recognizable facial features2 that are highly informative to clinical geneticists3–5. Recent studies show that facial analysis technologies measured up to the capabilities of expert clinicians in syndrome identification6–9. However, these technologies identified only a few disease phenotypes, limiting their role in clinical settings, where hundreds of diagnoses must be considered. Here we present a facial image analysis framework, DeepGestalt, using computer vision and deep-learning algorithms, that quantifies similarities to hundreds of syndromes. DeepGestalt outperformed clinicians in three initial experiments, two with the goal of distinguishing subjects with a target syndrome from other syndromes, and one of separating different genetic subtypes in Noonan syndrome. On the final experiment reflecting a real clinical setting problem, DeepGestalt achieved 91% top-10 accuracy in identifying the correct syndrome on 502 different images. The model was trained on a dataset of over 17,000 images representing more than 200 syndromes, curated through a community-driven phenotyping platform. DeepGestalt potentially adds considerable value to phenotypic evaluations in clinical genetics, genetic testing, research and precision medicine.
UR - http://www.scopus.com/inward/record.url?scp=85059823357&partnerID=8YFLogxK
U2 - 10.1038/s41591-018-0279-0
DO - 10.1038/s41591-018-0279-0
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C2 - 30617323
AN - SCOPUS:85059823357
SN - 1078-8956
VL - 25
SP - 60
EP - 64
JO - Nature Medicine
JF - Nature Medicine
IS - 1
ER -