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Published in: Journal of Inherited Metabolic Disease 3/2018

Open Access 01-05-2018 | Phenomics

Advances in computer-assisted syndrome recognition by the example of inborn errors of metabolism

Authors: Jean T. Pantel, Max Zhao, Martin A. Mensah, Nurulhuda Hajjir, Tzung-Chien Hsieh, Yair Hanani, Nicole Fleischer, Tom Kamphans, Stefan Mundlos, Yaron Gurovich, Peter M. Krawitz

Published in: Journal of Inherited Metabolic Disease | Issue 3/2018

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Abstract

Significant improvements in automated image analysis have been achieved in recent years and tools are now increasingly being used in computer-assisted syndromology. However, the ability to recognize a syndromic facial gestalt might depend on the syndrome and may also be confounded by severity of phenotype, size of available training sets, ethnicity, age, and sex. Therefore, benchmarking and comparing the performance of deep-learned classification processes is inherently difficult. For a systematic analysis of these influencing factors we chose the lysosomal storage diseases mucolipidosis as well as mucopolysaccharidosis type I and II that are known for their wide and overlapping phenotypic spectra. For a dysmorphic comparison we used Smith-Lemli-Opitz syndrome as another inborn error of metabolism and Nicolaides-Baraitser syndrome as another disorder that is also characterized by coarse facies. A classifier that was trained on these five cohorts, comprising 289 patients in total, achieved a mean accuracy of 62%. We also developed a simulation framework to analyze the effect of potential confounders, such as cohort size, age, sex, or ethnic background on the distinguishability of phenotypes. We found that the true positive rate increases for all analyzed disorders for growing cohorts (n = [10...40]) while ethnicity and sex have no significant influence. The dynamics of the accuracies strongly suggest that the maximum distinguishability is a phenotype-specific value, which has not been reached yet for any of the studied disorders. This should also be a motivation to further intensify data sharing efforts, as computer-assisted syndrome classification can still be improved by enlarging the available training sets.
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Literature
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Metadata
Title
Advances in computer-assisted syndrome recognition by the example of inborn errors of metabolism
Authors
Jean T. Pantel
Max Zhao
Martin A. Mensah
Nurulhuda Hajjir
Tzung-Chien Hsieh
Yair Hanani
Nicole Fleischer
Tom Kamphans
Stefan Mundlos
Yaron Gurovich
Peter M. Krawitz
Publication date
01-05-2018
Publisher
Springer Netherlands
Published in
Journal of Inherited Metabolic Disease / Issue 3/2018
Print ISSN: 0141-8955
Electronic ISSN: 1573-2665
DOI
https://doi.org/10.1007/s10545-018-0174-3

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