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Main Authors: Ummi, Maharani Ahsani, Barber, Stuart, Wood, Henry M., Gusnanto, Arief
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.22364
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author Ummi, Maharani Ahsani
Barber, Stuart
Wood, Henry M.
Gusnanto, Arief
author_facet Ummi, Maharani Ahsani
Barber, Stuart
Wood, Henry M.
Gusnanto, Arief
contents Detecting copy number alterations (CNAs) from next-generation sequencing data remains challenging, particularly for short segments under noisy conditions. Existing segmentation methods often suffer from high false positive rates or fail to reliably detect short aberrations, especially in low-coverage data. In this study, we propose a modified tail-greedy unbalanced Haar (TGUHm) method that introduces a dual-thresholding strategy to improve segmentation accuracy. The proposed approach effectively suppresses spurious spikes while preserving sensitivity to both short and long CNA segments. Extensive simulation studies under Gaussian and heavy-tailed noise demonstrate that TGUHm consistently achieves higher true positive rates and lower false positive rates compared to state-of-the-art methods, including CBS, HaarSeg, and FDRSeg. In particular, the proposed method improves detection accuracy for short segments while maintaining competitive overall performance. Application to real cancer genomic data further confirms the practical utility of the method, revealing biologically meaningful CNAs associated with known cancer-related genes. These results suggest that TGUHm provides a robust and effective framework for CNA detection in challenging sequencing settings.
format Preprint
id arxiv_https___arxiv_org_abs_2604_22364
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Tail-Greedy Unbalanced Haar Wavelet Segmentation for Copy Number Alteration Data
Ummi, Maharani Ahsani
Barber, Stuart
Wood, Henry M.
Gusnanto, Arief
Applications
Computation
65T60
G.3
Detecting copy number alterations (CNAs) from next-generation sequencing data remains challenging, particularly for short segments under noisy conditions. Existing segmentation methods often suffer from high false positive rates or fail to reliably detect short aberrations, especially in low-coverage data. In this study, we propose a modified tail-greedy unbalanced Haar (TGUHm) method that introduces a dual-thresholding strategy to improve segmentation accuracy. The proposed approach effectively suppresses spurious spikes while preserving sensitivity to both short and long CNA segments. Extensive simulation studies under Gaussian and heavy-tailed noise demonstrate that TGUHm consistently achieves higher true positive rates and lower false positive rates compared to state-of-the-art methods, including CBS, HaarSeg, and FDRSeg. In particular, the proposed method improves detection accuracy for short segments while maintaining competitive overall performance. Application to real cancer genomic data further confirms the practical utility of the method, revealing biologically meaningful CNAs associated with known cancer-related genes. These results suggest that TGUHm provides a robust and effective framework for CNA detection in challenging sequencing settings.
title Tail-Greedy Unbalanced Haar Wavelet Segmentation for Copy Number Alteration Data
topic Applications
Computation
65T60
G.3
url https://arxiv.org/abs/2604.22364