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PScnv: personalized self-normalizing CNV detection with a hierarchical multi-phase framework

Xuwen WangSchool of Computer Science and Technology, Xi’an Jiaotong University , 28 Xianning West Road , Xi’an 710049,Zhili ChangNanjing Geneseeq Technology Inc ., Nanjing 211800,Wansheng LvNanjing Geneseeq Technology Inc ., Nanjing 211800,Akhatov AkmalFaculty of Artificial intelligence and digital technologies , Samarkand State University , Samarkand 140104, UzbekistanXamidov MunisFaculty of Artificial intelligence and digital technologies , Samarkand State University , Samarkand 140104, UzbekistanXunbiao LiuNanjing Geneseeq Technology Inc ., Nanjing 211800,Shenjie WangSchool of Computer Science and Technology, Xi’an Jiaotong University , 28 Xianning West Road , Xi’an 710049,Xiaoyan ZhuSchool of Computer Science and Technology, Xi’an Jiaotong University , 28 Xianning West Road , Xi’an 710049,Chong DuThe Comprehensive Breast Care Center, the Second Affiliated Hospital of Xi’an Jiaotong University , No. 157 Xiwu Road , Xi’an 710004,Shuqun ZhangThe Comprehensive Breast Care Center, the Second Affiliated Hospital of Xi’an Jiaotong University , No. 157 Xiwu Road , Xi’an 710004,Jiayin WangSchool of Computer Science and Technology, Xi’an Jiaotong University , 28 Xianning West Road , Xi’an 710049,
Bioinformaticsjournal2026en
ABI

Abstract

MOTIVATION: Accurate detection of copy number variations (CNVs) from targeted panel sequencing remains challenging due to limited genomic coverage and pronounced sample-specific biases. Existing normalization strategies, including baseline-cohort, matched-control, and single-sample approaches, often struggle to balance noise suppression with adaptability, leading to inconsistent performance across heterogeneous samples. RESULTS: We present PScnv, a personalized self-normalizing framework for robust CNV detection from panel sequencing data. PScnv integrates a pre-built panel-of-normals (PoN) with sample-intrinsic stable chromosomes through ridge-regression normalization to generate individualized log2 ratio profiles with reduced systematic variation. CNVs are then identified using a hierarchical multi-phase segmentation pipeline incorporating z-score pre-partitioning, kernel-based correction, and circular binary segmentation. In 139 clinical tumor samples with orthogonal FISH validation at MET, ERBB2, and MTAP, PScnv showed improved accuracy and robustness over existing methods that do not require patient-matched normal samples, provided that a pre-built PoN cohort is available. AVAILABILITY: Source code is available for academic use at https://github.com/lvws/PScnv.

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