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Automated syndrome diagnosis by three-dimensional facial imaging

Authors :
Nils D. Forkert
Naomi Meeks
Amanda B. Neves
Brenda McInnes
Nicole Tartaglia
Shanlee M Davis
Ophir D. Klein
Anne Slavotinek
J. David Aponte
Jared A. J. Spitzmacher
Nick Mahasuwan
Anh M. Pham
Emily A. McCourt
Danika M. Lipman
Jordan J. Bannister
Joseph T. Shieh
A. Robertson Harrop
Ellen R. Elias
Tracey M. Ferrara
David C. Katz
Robert W. Enzenauer
Tim A. Benke
Elias Aboujaoude
Laura Pickler
Richard A. Spritz
Gary Bellus
Jonathan A. Bernstein
Sheri L. Riccardi
Shawn E. McCandless
Jacinda R. Larson
Pedro A. Sanchez-Lara
J. Patrick H. Wyse
Kathryn C. Chatfield
Francois P. Bernier
Brooke French
Anne C.-H. Tsai
Benedikt Hallgrímsson
A. Micheil Innes
Source :
Genetics in medicine : official journal of the American College of Medical Genetics, vol 22, iss 10, Genetics in Medicine
Publication Year :
2020
Publisher :
Elsevier BV, 2020.

Abstract

Purpose Deep phenotyping is an emerging trend in precision medicine for genetic disease. The shape of the face is affected in 30–40% of known genetic syndromes. Here, we determine whether syndromes can be diagnosed from 3D images of human faces. Methods We analyzed variation in three-dimensional (3D) facial images of 7057 subjects: 3327 with 396 different syndromes, 727 of their relatives, and 3003 unrelated, unaffected subjects. We developed and tested machine learning and parametric approaches to automated syndrome diagnosis using 3D facial images. Results Unrelated, unaffected subjects were correctly classified with 96% accuracy. Considering both syndromic and unrelated, unaffected subjects together, balanced accuracy was 73% and mean sensitivity 49%. Excluding unrelated, unaffected subjects substantially improved both balanced accuracy (78.1%) and sensitivity (56.9%) of syndrome diagnosis. The best predictors of classification accuracy were phenotypic severity and facial distinctiveness of syndromes. Surprisingly, unaffected relatives of syndromic subjects were frequently classified as syndromic, often to the syndrome of their affected relative. Conclusion Deep phenotyping by quantitative 3D facial imaging has considerable potential to facilitate syndrome diagnosis. Furthermore, 3D facial imaging of “unaffected” relatives may identify unrecognized cases or may reveal novel examples of semidominant inheritance.

Details

ISSN :
10983600
Volume :
22
Database :
OpenAIRE
Journal :
Genetics in Medicine
Accession number :
edsair.doi.dedup.....f58acde39c4a32823262e3b701b879b1