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Sparse Representation-Based Patient-Specific Diagnosis and Treatment for Esophageal Squamous Cell Carcinoma
Authors:Bin Huang  Ning Zhong  Lili Xia  Guiping Yu  Hongbao Cao
Institution:1.Department of Cardiothoracic Surgery,The Affiliated Jiangyin Hospital of Southeast University Medical College,Jiangyin,China;2.Department of Cardiothoracic Surgery,The First People’s Hospital of Kunshan,Kunshan,China;3.Department of Ultrasound,The People’s Hospital of Tongling,Tongling,China;4.Department of Genomics Research, R&D Solutions,Elsevier Inc.,Rockville,USA;5.Unit on Statistical Genomics,National Institute of Health (NIH),Bethesda,USA
Abstract:Precision medicine and personalized treatment have attracted attention in recent years. However, most genetic medicines mainly target one genetic site, while complex diseases like esophageal squamous cell carcinoma (ESCC) usually present heterogeneity that involves variations of many genetic markers. Here, we seek an approach to leverage genetic data and ESCC knowledge data to forward personalized diagnosis and treatment for ESCC. First, 851 ESCC-related gene markers and their druggability were studied through a comprehensive literature analysis. Then, a sparse representation-based variable selection (SRVS) was employed for patient-specific genetic marker selection using gene expression datasets. Results showed that the SRVS method could identify a unique gene vector for each patient group, leading to significantly higher classification accuracies compared to randomly selected genes (100, 97.17, 100, 100%; permutation p values: 0.0032, 0.0008, 0.0004, and 0.0008). The SRVS also outperformed an ANOVA-based gene selection method in terms of the classification ratio. The patient-specific gene markers are targets of ESCC effective drugs, providing specific guidance for medicine selection. Our results suggest the effectiveness of integrating previous database utilizing SRVS in assisting personalized medicine selection and treatment for ESCC.
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