主动脉夹层
口译(哲学)
动脉瘤
解剖(医学)
主动脉瘤
动脉瘤
医学
计算机科学
心脏病学
主动脉
放射科
程序设计语言
作者
Wei‐Zhen Zhou,Yujing Zhang,Guoyan Zhu,Huayan Shen,Qingyi Zeng,Qianlong Chen,Wenke Li,Mingyao Luo,Chang Shu,Hang Yang,Zhou Zhou
标识
DOI:10.1016/j.gim.2022.08.024
摘要
Abstract
Purpose
Early detection and pathogenicity interpretation of disease-associated variants are crucial but challenging in molecular diagnosis, especially for insidious and life-threatening diseases, such as heritable thoracic aortic aneurysm and dissection (HTAAD). In this study, we developed HTAADVar, an unbiased and fully automated system for the molecular diagnosis of HTAAD. Methods
We developed HTAADVar (http://htaadvar.fwgenetics.org) under the American College of Medical Genetics and Genomics/Association for Molecular Pathology framework, with optimizations based on disease- and gene-specific knowledge, expert panel recommendations, and variant observations. HTAADVar provides variant interpretation with a self-built database through the web server and the stand-alone programs. Results
We constructed an expert-reviewed database by integrating 4373 variants in HTAAD genes, with comprehensive metadata curated from 697 publications and an in-house study of 790 patients. We further developed an interpretation system to assess variants automatically. Notably, HTAADVar showed a multifold increase in performance compared with public tools, reaching a sensitivity of 92.64% and specificity of 70.83%. The molecular diagnostic yield of HTAADVar among 790 patients (42.03%) also matched the clinical data, independently demonstrating its good performance in clinical application. Conclusion
HTAADVar represents the first fully automated system for accurate variant interpretation for HTAAD. The framework of HTAADVar could also be generalized for the molecular diagnosis of other genetic diseases.
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