The following publications are possibly variants of this publication:
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- Copy number variation estimation from multiple next-generation sequencing samplesJunbo Duan, Ji-Gang Zhang, Hongbao Cao, Hong-Wen Deng, Yu-Ping Wang. bcb 2012: 555-557 [doi]
- BagGMM: Calling copy number variation by bagging multiple Gaussian mixture models from tumor and matched normal next-generation sequencing dataYaoyao Li, Junying Zhang, Xiguo Yuan. dsp, 88:90-100, 2019. [doi]
- Copy number variation detection using next generation sequencing read countsHeng Wang, Dan Nettleton, Kai Ying. bmcbi, 15:109, 2014. [doi]
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