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ARTÍCULO

Phertilizer: Growing a clonal tree from ultra-low coverage single-cell DNA sequencing of tumors

Autores: Weber, L. L.; Zhang, C.; Ochoa Álvarez, Idoia (Autor de correspondencia); El-Kebir, M. (Autor de correspondencia)
Título de la revista: PLOS COMPUTATIONAL BIOLOGY
ISSN: 1553-734X
Volumen: 19
Número: 10
Páginas: e1011544
Fecha de publicación: 2023
Resumen:
Emerging ultra-low coverage single-cell DNA sequencing (scDNA-seq) technologies have enabled high resolution evolutionary studies of copy number aberrations (CNAs) within tumors. While these sequencing technologies are well suited for identifying CNAs due to the uniformity of sequencing coverage, the sparsity of coverage poses challenges for the study of single-nucleotide variants (SNVs). In order to maximize the utility of increasingly available ultra-low coverage scDNA-seq data and obtain a comprehensive understanding of tumor evolution, it is important to also analyze the evolution of SNVs from the same set of tumor cells. We present Phertilizer, a method to infer a clonal tree from ultra-low coverage scDNA-seq data of a tumor. Based on a probabilistic model, our method recursively partitions the data by identifying key evolutionary events in the history of the tumor. We demonstrate the performance of Phertilizer on simulated data as well as on two real datasets, finding that Phertilizer effectively utilizes the copy-number signal inherent in the data to more accurately uncover clonal structure and genotypes compared to previous methods.