外显率                        
                
                                
                        
                            外显子组                        
                
                                
                        
                            计算生物学                        
                
                                
                        
                            遗传学                        
                
                                
                        
                            生物                        
                
                                
                        
                            维加维斯                        
                
                                
                        
                            外显子组测序                        
                
                                
                        
                            计算机科学                        
                
                                
                        
                            机器学习                        
                
                                
                        
                            基因型                        
                
                                
                        
                            突变                        
                
                                
                        
                            表型                        
                
                                
                        
                            基因                        
                
                                
                        
                            单核苷酸多态性                        
                
                        
                    
            作者
            
                Iain S. Forrest,Ha My T. Vy,Ghislain Rocheleau,Daniel M. Jordan,Ben Omega Petrazzini,Girish N. Nadkarni,Judy H. Cho,Mythily Ganapathi,Kuan‐lin Huang,Wendy K. Chung,Ron Do            
         
                    
            出处
            
                                    期刊:Science
                                                         [American Association for the Advancement of Science]
                                                        日期:2025-08-28
                                                        卷期号:389 (6763)
                                                 
         
        
    
            
            标识
            
                                    DOI:10.1126/science.adm7066
                                    
                                
                                 
         
        
                
            摘要
            
            Accurate variant penetrance estimation is crucial for precision medicine. We constructed machine learning (ML) models for 10 diseases using 1,347,298 participants with electronic health records, then applied them to an independent cohort with linked exome data. Resulting probabilities were used to evaluate ML penetrance of 1648 rare variants in 31 autosomal dominant disease-predisposition genes. ML penetrance was variable across variant classes, but highest for pathogenic and loss-of-function variants, and was associated with clinical outcomes and functional data. Compared with conventional case-versus-control approaches, ML penetrance provided refined quantitative estimates and aided the interpretation of variants of uncertain significance and loss-of-function variants by delineating clinical trajectories over time. By leveraging ML and deep phenotyping, we present a scalable approach to accurately quantify disease risk of variants.
         
            
 
                 
                
                    
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