Benchmarking mouse contamination removing protocols in patient-derived xenografts genomic profiling

被引:0
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作者
Mukund Bhandari [1 ]
Funan He [1 ]
Anna Rogojina [2 ]
Fuyang Li [1 ]
Yi Zou [1 ]
Jing Jiang [3 ]
Zhao Lai [1 ]
Peter Houghton [1 ]
Raushan T. Kurmasheva [2 ]
Yidong Chen [1 ]
Xiaojing Wang [3 ]
Siyuan Zheng [4 ]
机构
[1] Greehey Children’s Cancer Research Institute,Mays Cancer Center
[2] Department of Population Health Sciences,undefined
[3] Department of Molecular Medicine,undefined
[4] University of Texas Health at San Antonio,undefined
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D O I
10.1038/s41698-025-00902-z
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摘要
Patient-derived xenograft (PDX) models are widely used in cancer research. Genomic and transcriptomic profiling of PDXs are inevitably contaminated by sequencing reads originated from mouse cells. Here, we examine the impact of mouse read contamination on RNA sequencing (RNAseq), Whole Exome Sequencing (WES), and Whole Genome Sequencing (WGS) data of 21 PDXs. We also systematically benchmark the performance of 12 computational protocols for removing mouse reads from PDXs. We find that mouse read contamination increases expression of immune and stromal related genes, and inflates the number of somatic mutations. However, detection of gene fusions and copy number alterations is minimally affected by mouse read contamination. Using gold standard datasets, we find that pseudo-alignment protocols often demonstrate better prediction performance and computing efficiency. The best performing tool is a relatively new tool Xengsort. Our results emphasize the importance of removing mouse reads from PDXs and the need to adopt new tools in PDX genomic studies.
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