BACOM2: a Java tool for detecting normal cell contamination of copy number in heterogeneous tumor
Yi Fu, Jun Ruan, Guoqiang Yu, Douglas A. Levine, Niya Wang, Ie-Ming, Shih, Zhen Zhang, Robert Clarke, and Yue Wang

TL;DR
BACOM2 is a user-friendly, cross-platform Java tool that performs comprehensive copy number analysis in heterogeneous tumor tissues, including normalization, contamination correction, and segmentation.
Contribution
It introduces a complete pipeline for copy number analysis tailored for heterogeneous cancer tissues with a GUI and flexible parameter setting.
Findings
Provides accurate estimation of normal tissue contamination.
Enables high-speed processing of large copy number datasets.
Offers a user-friendly interface for complex genomic analysis.
Abstract
We develop a cross-platform open-source Java application (BACOM2) with graphic user interface (GUI), and users also can use a XML file to set the parameters of algorithm model, file paths and the dataset of paired samples. BACOM2 implements the new entire pipeline of copy number change analysis for heterogeneous cancer tissues, including extraction of raw copy number signals from CEL files of paired samples, attenuation correction, identification of balanced AB-genotype loci, copy number detection and segmentation, global baseline calculation and absolute normalization, differentiation of deletion types, estimation of the normal tissue fraction and correction of normal tissue contamination. BACOM2 focuses on the common tools for data preparation and absolute normalization for copy number analysis of heterogeneous cancer tissues. The software provides an additional choice for scientists…
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Taxonomy
TopicsCancer Genomics and Diagnostics · Genomic variations and chromosomal abnormalities · Gene expression and cancer classification
