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1.
IEEE Pulse ; 11(1): 13-16, 2020.
Artigo em Inglês | MEDLINE | ID: mdl-32175846

RESUMO

The Process of rare disease identification by clinical geneticists is closely associated with the ability to correlate the phenotype of a patient with the relevant genetic syndromes. In order to perform this correlation, the phenotype has to be described in a canonical form or language. One such language is the human phenotype ontology, which defines the human phenotypes in a hierarchical form and facilitates the association between specific phenotypes and diseases. With such a structure, clinicians are able to evaluate the specific phenotypic features during the clinical evaluation process and then correlate those phenotypes to relevant diseases.


Assuntos
Inteligência Artificial , Genômica/métodos , Interpretação de Imagem Assistida por Computador/métodos , Doenças Raras , Face/diagnóstico por imagem , Face/patologia , Humanos , Medicina de Precisão , Doenças Raras/diagnóstico por imagem , Doenças Raras/genética , Doenças Raras/patologia , Síndrome
2.
Genet Med ; 21(12): 2807-2814, 2019 12.
Artigo em Inglês | MEDLINE | ID: mdl-31164752

RESUMO

PURPOSE: Phenotype information is crucial for the interpretation of genomic variants. So far it has only been accessible for bioinformatics workflows after encoding into clinical terms by expert dysmorphologists. METHODS: Here, we introduce an approach driven by artificial intelligence that uses portrait photographs for the interpretation of clinical exome data. We measured the value added by computer-assisted image analysis to the diagnostic yield on a cohort consisting of 679 individuals with 105 different monogenic disorders. For each case in the cohort we compiled frontal photos, clinical features, and the disease-causing variants, and simulated multiple exomes of different ethnic backgrounds. RESULTS: The additional use of similarity scores from computer-assisted analysis of frontal photos improved the top 1 accuracy rate by more than 20-89% and the top 10 accuracy rate by more than 5-99% for the disease-causing gene. CONCLUSION: Image analysis by deep-learning algorithms can be used to quantify the phenotypic similarity (PP4 criterion of the American College of Medical Genetics and Genomics guidelines) and to advance the performance of bioinformatics pipelines for exome analysis.


Assuntos
Biologia Computacional/métodos , Processamento de Imagem Assistida por Computador/métodos , Análise de Sequência de DNA/métodos , Algoritmos , Bases de Dados Genéticas , Aprendizado Profundo , Exoma/genética , Feminino , Genômica , Humanos , Masculino , Fenótipo , Software
3.
Nat Med ; 25(1): 60-64, 2019 01.
Artigo em Inglês | MEDLINE | ID: mdl-30617323

RESUMO

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.


Assuntos
Aprendizado Profundo , Fácies , Doenças Genéticas Inatas/diagnóstico , Algoritmos , Genótipo , Humanos , Processamento de Imagem Assistida por Computador , Fenótipo , Síndrome
4.
J Inherit Metab Dis ; 41(3): 533-539, 2018 05.
Artigo em Inglês | MEDLINE | ID: mdl-29623569

RESUMO

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.


Assuntos
Processamento de Imagem Assistida por Computador/métodos , Processamento de Imagem Assistida por Computador/tendências , Erros Inatos do Metabolismo/diagnóstico , Adolescente , Algoritmos , Criança , Fácies , Feminino , Deformidades Congênitas do Pé/diagnóstico , Deformidades Congênitas do Pé/metabolismo , Humanos , Hipotricose/diagnóstico , Hipotricose/metabolismo , Deficiência Intelectual/diagnóstico , Deficiência Intelectual/metabolismo , Masculino , Erros Inatos do Metabolismo/metabolismo , Erros Inatos do Metabolismo/patologia , Técnicas de Diagnóstico Molecular/métodos , Técnicas de Diagnóstico Molecular/tendências , Fenótipo , Síndrome de Smith-Lemli-Opitz/diagnóstico , Síndrome de Smith-Lemli-Opitz/metabolismo , Síndrome
5.
Genome Med ; 10(1): 3, 2018 01 09.
Artigo em Inglês | MEDLINE | ID: mdl-29310717

RESUMO

BACKGROUND: Glycosylphosphatidylinositol biosynthesis defects (GPIBDs) cause a group of phenotypically overlapping recessive syndromes with intellectual disability, for which pathogenic mutations have been described in 16 genes of the corresponding molecular pathway. An elevated serum activity of alkaline phosphatase (AP), a GPI-linked enzyme, has been used to assign GPIBDs to the phenotypic series of hyperphosphatasia with mental retardation syndrome (HPMRS) and to distinguish them from another subset of GPIBDs, termed multiple congenital anomalies hypotonia seizures syndrome (MCAHS). However, the increasing number of individuals with a GPIBD shows that hyperphosphatasia is a variable feature that is not ideal for a clinical classification. METHODS: We studied the discriminatory power of multiple GPI-linked substrates that were assessed by flow cytometry in blood cells and fibroblasts of 39 and 14 individuals with a GPIBD, respectively. On the phenotypic level, we evaluated the frequency of occurrence of clinical symptoms and analyzed the performance of computer-assisted image analysis of the facial gestalt in 91 individuals. RESULTS: We found that certain malformations such as Morbus Hirschsprung and diaphragmatic defects are more likely to be associated with particular gene defects (PIGV, PGAP3, PIGN). However, especially at the severe end of the clinical spectrum of HPMRS, there is a high phenotypic overlap with MCAHS. Elevation of AP has also been documented in some of the individuals with MCAHS, namely those with PIGA mutations. Although the impairment of GPI-linked substrates is supposed to play the key role in the pathophysiology of GPIBDs, we could not observe gene-specific profiles for flow cytometric markers or a correlation between their cell surface levels and the severity of the phenotype. In contrast, it was facial recognition software that achieved the highest accuracy in predicting the disease-causing gene in a GPIBD. CONCLUSIONS: Due to the overlapping clinical spectrum of both HPMRS and MCAHS in the majority of affected individuals, the elevation of AP and the reduced surface levels of GPI-linked markers in both groups, a common classification as GPIBDs is recommended. The effectiveness of computer-assisted gestalt analysis for the correct gene inference in a GPIBD and probably beyond is remarkable and illustrates how the information contained in human faces is pivotal in the delineation of genetic entities.


Assuntos
Citometria de Fluxo/métodos , Glicosilfosfatidilinositóis/biossíntese , Processamento de Imagem Assistida por Computador , Anormalidades Múltiplas/metabolismo , Automação , Biomarcadores/metabolismo , Humanos , Deficiência Intelectual/metabolismo , Fenótipo , Distúrbios do Metabolismo do Fósforo/metabolismo , Síndrome
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