ClinPrior: an algorithm for diagnosis and novel gene discovery by network-based prioritization
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Published:2023-09-07
Issue:1
Volume:15
Page:
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ISSN:1756-994X
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Container-title:Genome Medicine
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language:en
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Short-container-title:Genome Med
Author:
Schlüter Agatha, Vélez-Santamaría Valentina, Verdura Edgard, Rodríguez-Palmero Agustí, Ruiz Montserrat, Fourcade Stéphane, Planas-Serra Laura, Launay Nathalie, Guilera Cristina, Martínez Juan José, Homedes-Pedret Christian, Albertí-Aguiló M. Antonia, Zulaika Miren, Martí Itxaso, Troncoso Mónica, Tomás-Vila Miguel, Bullich Gemma, García-Pérez M. Asunción, Sobrido-Gómez María-Jesús, López-Laso Eduardo, Fons Carme, Del Toro Mireia, Macaya Alfons, García-Cazorla Àngels, Ortiz-Martínez Antonio José, Ignacio-Ortez Carlos, Cáceres-Marzal Cristina, Martínez-Salcedo Eduardo, Mondragón Elisabet, Barredo Estíbaliz, Airaldi Ileana Antón, Martínez Javier Ruiz, Ramos Joaquin A. Fernández, Vázquez Juan Francisco, Díez-Porras Laura, Vázquez-Cancela María, O’Callaghan Mar, Sánchez Tamara Pablo, Nedkova Velina, Pérez Ana Isabel Maraña, Beltran Sergi, Gutiérrez-Solana Luis G., Pérez-Jurado Luis A., Aguilera-Albesa Sergio, de Munain Adolfo López, Casasnovas Carlos, Pujol AuroraORCID,
Abstract
Abstract
Background
Whole-exome sequencing (WES) and whole-genome sequencing (WGS) have become indispensable tools to solve rare Mendelian genetic conditions. Nevertheless, there is still an urgent need for sensitive, fast algorithms to maximise WES/WGS diagnostic yield in rare disease patients. Most tools devoted to this aim take advantage of patient phenotype information for prioritization of genomic data, although are often limited by incomplete gene-phenotype knowledge stored in biomedical databases and a lack of proper benchmarking on real-world patient cohorts.
Methods
We developed ClinPrior, a novel method for the analysis of WES/WGS data that ranks candidate causal variants based on the patient’s standardized phenotypic features (in Human Phenotype Ontology (HPO) terms). The algorithm propagates the data through an interactome network-based prioritization approach. This algorithm was thoroughly benchmarked using a synthetic patient cohort and was subsequently tested on a heterogeneous prospective, real-world series of 135 families affected by hereditary spastic paraplegia (HSP) and/or cerebellar ataxia (CA).
Results
ClinPrior successfully identified causative variants achieving a final positive diagnostic yield of 70% in our real-world cohort. This includes 10 novel candidate genes not previously associated with disease, 7 of which were functionally validated within this project. We used the knowledge generated by ClinPrior to create a specific interactome for HSP/CA disorders thus enabling future diagnoses as well as the discovery of novel disease genes.
Conclusions
ClinPrior is an algorithm that uses standardized phenotype information and interactome data to improve clinical genomic diagnosis. It helps in identifying atypical cases and efficiently predicts novel disease-causing genes. This leads to increasing diagnostic yield, shortening of the diagnostic Odysseys and advancing our understanding of human illnesses.
Funder
Undiagnosed Rare Diseases Program of Catalonia Research Networking Center on Rare Diseases Fundación Hesperia Centre Nacional d’Anàlisi Genòmica Fundació la Marató de TV3 Association Strümpell-Lorrain / HSP-France AWS Cloud Credits for Research program Instituto de Salud Carlos III European Social Fund fondo europeo del desarrollo regional Center for Biomedical Research on Rare Diseases European Reference Network for Rare Neurological Diseases
Publisher
Springer Science and Business Media LLC
Subject
Genetics (clinical),Genetics,Molecular Biology,Molecular Medicine
Reference70 articles.
1. Bamshad MJ, Nickerson DA, Chong JX. Mendelian Gene Discovery: fast and furious with no end in sight. Am J Hum Genet. 2019;105:448–55. 2. Schüle R, Wiethoff S, Martus P, Karle KN, Otto S, Klebe S, et al. Hereditary spastic paraplegia: clinicogenetic lessons from 608 patients. Ann Neurol. 2016;79:646. 3. Jacobsen JOB, Kelly C, Cipriani V, Research Consortium GE, Mungall CJ, Reese J, et al. Phenotype-driven approaches to enhance variant prioritization and diagnosis of rare disease. Hum Mutat. 2022; Available from: https://pubmed.ncbi.nlm.nih.gov/35391505/ Cited 10 May 2022 4. Yuan X, Wang J, Dai B, Sun Y, Zhang K, Chen F, et al. Evaluation of phenotype-driven gene prioritization methods for Mendelian diseases. Brief Bioinform. 2022;23. Available from: https://pubmed.ncbi.nlm.nih.gov/35134823/ Cited 10 May 2022 5. Amberger JS, Bocchini CA, Scott AF, Hamosh A. OMIM.org: leveraging knowledge across phenotype–gene relationships. Nucleic Acids Res. 2019;47:1038.
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