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GestaltMatcher: Overcoming the limits of rare disease matching using facial phenotypic descriptors

Authors :
Tzung-Chien Hsieh
Aviram Bar-Haim
Shahida Moosa
Nadja Ehmke
Karen W. Gripp
Jean Tori Pantel
Magdalena Danyel
Martin Atta Mensah
Denise Horn
Stanislav Rosnev
Nicole Fleischer
Guilherme Bonini
Alexander Hustinx
Alexander Schmid
Alexej Knaus
Behnam Javanmardi
Hannah Klinkhammer
Hellen Lesmann
Sugirthan Sivalingam
Tom Kamphans
Wolfgang Meiswinkel
Frédéric Ebstein
Elke Krüger
Sébastien Küry
Stéphane Bézieau
Axel Schmidt
Sophia Peters
Hartmut Engels
Elisabeth Mangold
Martina Kreiß
Kirsten Cremer
Claudia Perne
Regina C. Betz
Tim Bender
Kathrin Grundmann-Hauser
Tobias B. Haack
Matias Wagner
Theresa Brunet
Heidi Beate Bentzen
Luisa Averdunk
Kimberly Christine Coetzer
Gholson J. Lyon
Malte Spielmann
Christian Schaaf
Stefan Mundlos
Markus M. Nöthen
Peter Krawitz
Source :
Nat Genet
Publication Year :
2021
Publisher :
Cold Spring Harbor Laboratory, 2021.

Abstract

A large fraction of monogenic disorders causes craniofacial abnormalities with characteristic facial morphology. These disorders can be diagnosed more efficiently with the support of computer-aided next-generation phenotyping tools, such as DeepGestalt. These tools have learned to associate facial phenotypes with the underlying syndrome through training on thousands of patient photographs. However, this “supervised” approach means that diagnoses are only possible if the disorder was part of the training set. To improve recognition of ultra-rare disorders, we created GestaltMatcher, which uses a deep convolutional neural network based on the DeepGestalt framework. We used photographs of 17,560 patients with 1,115 rare disorders to define a “Clinical Face Phenotype Space”. Distance between cases in the phenotype space defines syndromic similarity, allowing test patients to be matched to a molecular diagnosis even when the disorder was not included in the training set. Similarities among patients with previously unknown disease genes can also be detected. Therefore, in concert with mutation data, GestaltMatcher could accelerate the clinical diagnosis of patients with ultra-rare disorders and facial dysmorphism, as well as enable the delineation of novel phenotypes.

Details

Database :
OpenAIRE
Journal :
Nat Genet
Accession number :
edsair.doi.dedup.....ba8b172bb005662f7f54de852138d50c
Full Text :
https://doi.org/10.1101/2020.12.28.20248193