AI Article Synopsis

  • - The study introduces the SPRINTER algorithm, which analyzes single-cell DNA sequencing to identify and classify the proliferation rates of different cancer cell clones within tumors, shedding light on the variability of cell growth among these clones.
  • - Applying SPRINTER to nearly 15,000 non-small cell lung cancer cells showed significant differences in clone proliferation, which was corroborated by various imaging techniques and indicated that more proliferative clones also had a higher likelihood of metastasis and altered genetic replication patterns.
  • - The algorithm's effectiveness was further demonstrated in breast and ovarian cancer datasets, where it uncovered higher proliferation rates and genetic variations in specific, more rapidly growing cell clones.

Article Abstract

Proliferation is a key hallmark of cancer, but whether it differs between evolutionarily distinct clones co-existing within a tumor is unknown. We introduce the Single-cell Proliferation Rate Inference in Non-homogeneous Tumors through Evolutionary Routes (SPRINTER) algorithm that uses single-cell whole-genome DNA sequencing data to enable accurate identification and clone assignment of S- and G2-phase cells, as assessed by generating accurate ground truth data. Applied to a newly generated longitudinal, primary-metastasis-matched dataset of 14,994 non-small cell lung cancer cells, SPRINTER revealed widespread clone proliferation heterogeneity, orthogonally supported by Ki-67 staining, nuclei imaging and clinical imaging. We further demonstrated that high-proliferation clones have increased metastatic seeding potential, increased circulating tumor DNA shedding and clone-specific altered replication timing in proliferation- or metastasis-related genes associated with expression changes. Applied to previously generated datasets of 61,914 breast and ovarian cancer cells, SPRINTER revealed increased single-cell rates of different genomic variants and enrichment of proliferation-related gene amplifications in high-proliferation clones.

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Source
http://dx.doi.org/10.1038/s41588-024-01989-zDOI Listing

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