Alexander J. M. Dingemans, Max Hinne, Kim M. G. Truijen, Lia Goltstein, Jeroen van Reeuwijk, Nicole de Leeuw, Janneke Schuurs-Hoeijmakers, Rolph Pfundt, Illja J. Diets, Joery den Hoed, Elke de Boer, Jet Coenen-van der Spek, Sandra Jansen, Bregje W. van Bon, Noraly Jonis, Charlotte W. Ockeloen, Anneke T. Vulto-van Silfhout, Tjitske Kleefstra, David A. Koolen, Philippe M. Campeau, Elizabeth E. Palmer, Hilde Van Esch, Gholson J. Lyon, Fowzan S. Alkuraya, Anita Rauch, Ronit Marom, Diana Baralle, Pleuntje J. van der Sluijs, Gijs W. E. Santen, R. Frank Kooy, Marcel A. J. van Gerven, Lisenka E. L. M. Vissers, Bert B. A. de Vries
{"title":"PhenoScore通过使用机器学习框架将面部分析与其他临床特征相结合,量化罕见遗传疾病的表型变异。","authors":"Alexander J. M. Dingemans, Max Hinne, Kim M. G. Truijen, Lia Goltstein, Jeroen van Reeuwijk, Nicole de Leeuw, Janneke Schuurs-Hoeijmakers, Rolph Pfundt, Illja J. Diets, Joery den Hoed, Elke de Boer, Jet Coenen-van der Spek, Sandra Jansen, Bregje W. van Bon, Noraly Jonis, Charlotte W. Ockeloen, Anneke T. Vulto-van Silfhout, Tjitske Kleefstra, David A. Koolen, Philippe M. Campeau, Elizabeth E. Palmer, Hilde Van Esch, Gholson J. Lyon, Fowzan S. Alkuraya, Anita Rauch, Ronit Marom, Diana Baralle, Pleuntje J. van der Sluijs, Gijs W. E. Santen, R. Frank Kooy, Marcel A. J. van Gerven, Lisenka E. L. M. Vissers, Bert B. A. de Vries","doi":"10.1038/s41588-023-01469-w","DOIUrl":null,"url":null,"abstract":"Several molecular and phenotypic algorithms exist that establish genotype–phenotype correlations, including facial recognition tools. 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PhenoScore quantifies phenotypic variation for rare genetic diseases by combining facial analysis with other clinical features using a machine-learning framework
Several molecular and phenotypic algorithms exist that establish genotype–phenotype correlations, including facial recognition tools. However, no unified framework that investigates both facial data and other phenotypic data directly from individuals exists. We developed PhenoScore: an open-source, artificial intelligence-based phenomics framework, combining facial recognition technology with Human Phenotype Ontology data analysis to quantify phenotypic similarity. Here we show PhenoScore’s ability to recognize distinct phenotypic entities by establishing recognizable phenotypes for 37 of 40 investigated syndromes against clinical features observed in individuals with other neurodevelopmental disorders and show it is an improvement on existing approaches. PhenoScore provides predictions for individuals with variants of unknown significance and enables sophisticated genotype–phenotype studies by testing hypotheses on possible phenotypic (sub)groups. PhenoScore confirmed previously known phenotypic subgroups caused by variants in the same gene for SATB1, SETBP1 and DEAF1 and provides objective clinical evidence for two distinct ADNP-related phenotypes, already established functionally. PhenoScore is an open-source machine-learning tool that combines facial image recognition with Human Phenotype Ontology for genetic syndrome identification without genomic data, with applications to subgroup analysis and variants of unknown significance classification.
期刊介绍:
Nature Genetics publishes the very highest quality research in genetics. It encompasses genetic and functional genomic studies on human and plant traits and on other model organisms. Current emphasis is on the genetic basis for common and complex diseases and on the functional mechanism, architecture and evolution of gene networks, studied by experimental perturbation.
Integrative genetic topics comprise, but are not limited to:
-Genes in the pathology of human disease
-Molecular analysis of simple and complex genetic traits
-Cancer genetics
-Agricultural genomics
-Developmental genetics
-Regulatory variation in gene expression
-Strategies and technologies for extracting function from genomic data
-Pharmacological genomics
-Genome evolution