4.6 Article

RDAClone: Deciphering Tumor Heterozygosity through Single-Cell Genomics Data Analysis with Robust Deep Autoencoder

期刊

GENES
卷 12, 期 12, 页码 -

出版社

MDPI
DOI: 10.3390/genes12121847

关键词

single-cell genomics sequencing; deep learning; Louvain-Jaccard method; cell clustering; phylogenetic relationship

资金

  1. National Basic Research Program of China [2017YFA0505500]
  2. Strategic Priority Research Program of the Chinese Academy of Sciences [XDB38040400]
  3. National Natural Science Foundation of China [31930022, 31771476, 12131020, 12026608]
  4. JST Agency Moonshot RD Project [JPMJMS2021]

向作者/读者索取更多资源

RDAClone is a deep learning framework designed to recover genotype matrices from noisy data, cluster cells into subclones, and infer evolutionary relationships between subclones. It demonstrates robustness and superiority in data denoising, cell clustering, and evolutionary tree reconstruction, especially for large datasets.
Rapid advances in single-cell genomics sequencing (SCGS) have allowed researchers to characterize tumor heterozygosity with unprecedented resolution and reveal the phylogenetic relationships between tumor cells or clones. However, high sequencing error rates of current SCGS data, i.e., false positives, false negatives, and missing bases, severely limit its application. Here, we present a deep learning framework, RDAClone, to recover genotype matrices from noisy data with an extended robust deep autoencoder, cluster cells into subclones by the Louvain-Jaccard method, and further infer evolutionary relationships between subclones by the minimum spanning tree. Studies on both simulated and real datasets demonstrate its robustness and superiority in data denoising, cell clustering, and evolutionary tree reconstruction, particularly for large datasets.

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