Clonal fitness inferred from time-series modelling of single-cell cancer genomes

被引:0
|
作者
Sohrab Salehi
Farhia Kabeer
Nicholas Ceglia
Mirela Andronescu
Marc J. Williams
Kieran R. Campbell
Tehmina Masud
Beixi Wang
Justina Biele
Jazmine Brimhall
David Gee
Hakwoo Lee
Jerome Ting
Allen W. Zhang
Hoa Tran
Ciara O’Flanagan
Fatemeh Dorri
Nicole Rusk
Teresa Ruiz de Algara
So Ra Lee
Brian Yu Chieh Cheng
Peter Eirew
Takako Kono
Jenifer Pham
Diljot Grewal
Daniel Lai
Richard Moore
Andrew J. Mungall
Marco A. Marra
Andrew McPherson
Alexandre Bouchard-Côté
Samuel Aparicio
Sohrab P. Shah
机构
[1] BC Cancer,Department of Molecular Oncology
[2] University of British Columbia,Department of Pathology and Laboratory Medicine
[3] Memorial Sloan Kettering Cancer Center,Computational Oncology, Department of Epidemiology and Biostatistics
[4] University of Toronto,Lunenfeld
[5] University of British Columbia,Tanenbaum Research Institute Mount Sinai Hospital Joseph & Wolf Lebovic Health Complex, Molecular Genetics
[6] Canada’s Michael Smith Genome Sciences Centre,Department of Computer Science
[7] BC Cancer,Department of Statistics
[8] University of British Columbia,Cancer Research UK Cambridge Institute
[9] Li Ka Shing Centre,Department of Chemistry
[10] University of Cambridge,School of Clinical Medicine
[11] University of Cambridge,Department of Quantitative Biomedicine
[12] University of Cambridge,McGovern Institute, Departments of Biological Engineering and Brain and Cognitive Sciences
[13] University of Zurich,Department of Oncology and Cancer Research UK Cambridge Institute
[14] Massachusetts Institute of Technology,Department of Oncology and Ludwig Institute for Cancer Research
[15] University of Cambridge,Herbert and Florence Irving Institute for Cancer Dynamics
[16] Súil Interactive Ltd,Institute of Astronomy
[17] University of Lausanne,Howard Hughes Medical Institute
[18] Columbia University,Department of Physics
[19] New York Genome Center,Department of Chemistry and Chemical Biology
[20] University of Cambridge,undefined
[21] Harvard University,undefined
[22] Harvard University,undefined
[23] Harvard University,undefined
来源
Nature | 2021年 / 595卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Progress in defining genomic fitness landscapes in cancer, especially those defined by copy number alterations (CNAs), has been impeded by lack of time-series single-cell sampling of polyclonal populations and temporal statistical models1–7. Here we generated 42,000 genomes from multi-year time-series single-cell whole-genome sequencing of breast epithelium and primary triple-negative breast cancer (TNBC) patient-derived xenografts (PDXs), revealing the nature of CNA-defined clonal fitness dynamics induced by TP53 mutation and cisplatin chemotherapy. Using a new Wright–Fisher population genetics model8,9 to infer clonal fitness, we found that TP53 mutation alters the fitness landscape, reproducibly distributing fitness over a larger number of clones associated with distinct CNAs. Furthermore, in TNBC PDX models with mutated TP53, inferred fitness coefficients from CNA-based genotypes accurately forecast experimentally enforced clonal competition dynamics. Drug treatment in three long-term serially passaged TNBC PDXs resulted in cisplatin-resistant clones emerging from low-fitness phylogenetic lineages in the untreated setting. Conversely, high-fitness clones from treatment-naive controls were eradicated, signalling an inversion of the fitness landscape. Finally, upon release of drug, selection pressure dynamics were reversed, indicating a fitness cost of treatment resistance. Together, our findings define clonal fitness linked to both CNA and therapeutic resistance in polyclonal tumours.
引用
收藏
页码:585 / 590
页数:5
相关论文
共 50 条
  • [21] Continuous-state HMMs for modeling time-series single-cell RNA-Seq data
    Lin, Chieh
    Bar-Joseph, Ziv
    BIOINFORMATICS, 2019, 35 (22) : 4707 - 4715
  • [22] Clonal evolution in liver cancer at single-cell and single-variant resolution
    Xianbin Su
    Linan Zhao
    Yi Shi
    Rui Zhang
    Qi Long
    Shihao Bai
    Qing Luo
    Yingxin Lin
    Xin Zou
    Shila Ghazanfar
    Kun Tao
    Guoliang Yang
    Lan Wang
    Kun-Yan He
    Xiaofang Cui
    Jian He
    Jiao-Xiang Wu
    Bo Han
    Bin Yan
    Biao Deng
    Na Wang
    Xiaolin Li
    Pengyi Yang
    Shangwei Hou
    Jielin Sun
    Jean Y. H. Yang
    Jinhong Chen
    Ze-Guang Han
    Journal of Hematology & Oncology, 14
  • [23] Clonal evolution in liver cancer at single-cell and single-variant resolution
    Su, Xianbin
    Zhao, Linan
    Shi, Yi
    Zhang, Rui
    Long, Qi
    Bai, Shihao
    Luo, Qing
    Lin, Yingxin
    Zou, Xin
    Ghazanfar, Shila
    Tao, Kun
    Yang, Guoliang
    Wang, Lan
    He, Kun-Yan
    Cui, Xiaofang
    He, Jian
    Wu, Jiao-Xiang
    Han, Bo
    Yan, Bin
    Deng, Biao
    Wang, Na
    Li, Xiaolin
    Yang, Pengyi
    Hou, Shangwei
    Sun, Jielin
    Yang, Jean Y. H.
    Chen, Jinhong
    Han, Ze-Guang
    JOURNAL OF HEMATOLOGY & ONCOLOGY, 2021, 14 (01)
  • [24] Procedures for reliable estimation of viral fitness from time-series data
    Bonhoeffer, S
    Barbour, AD
    De Boer, RJ
    PROCEEDINGS OF THE ROYAL SOCIETY B-BIOLOGICAL SCIENCES, 2002, 269 (1503) : 1887 - 1893
  • [25] Benchmarking of dynamic Bayesian networks inferred from stochastic time-series data
    David, Lawrence A.
    Wiggins, Chris H.
    REVERSE ENGINEERING BIOLOGICAL NETWORKS: OPPORTUNITIES AND CHALLENGES IN COMPUTATIONAL METHODS FOR PATHWAY INFERENCE, 2007, 1115 : 90 - 101
  • [26] Temporal ordering of omics and multiomic events inferred from time-series data
    Kaur, Sandeep
    Peters, Timothy J.
    Yang, Pengyi
    Luu, Laurence Don Wai
    Vuong, Jenny
    Krycer, James R.
    O'Donoghue, Sean, I
    NPJ SYSTEMS BIOLOGY AND APPLICATIONS, 2020, 6 (01)
  • [27] Temporal ordering of omics and multiomic events inferred from time-series data
    Sandeep Kaur
    Timothy J. Peters
    Pengyi Yang
    Laurence Don Wai Luu
    Jenny Vuong
    James R. Krycer
    Seán I. O’Donoghue
    npj Systems Biology and Applications, 6
  • [28] Dynamics of embryonic stem cell differentiation inferred from single-cell transcriptomics show a series of transitions through discrete cell states
    Jang, Sumin
    Choubey, Sandeep
    Furchtgott, Leon
    Zou, Ling-Nan
    Doyle, Adele
    Menon, Vilas
    Loew, Ethan B.
    Krostag, Anne-Rachel
    Martinez, Refugio A.
    Madisen, Linda
    Levi, Boaz P.
    Ramanathan, Sharad
    ELIFE, 2017, 6
  • [29] Reconstructing differentiation networks and their regulation from time series single-cell expression data
    Ding, Jun
    Aronow, Bruce J.
    Kaminski, Naftali
    Kitzmiller, Joseph
    Whitsett, Jeffrey A.
    Bar-Joseph, Ziv
    GENOME RESEARCH, 2018, 28 (03) : 383 - 395
  • [30] Inference of clonal selection in cancer populations using single-cell sequencing data
    Skums, Pavel
    Tsyvina, Viachaslau
    Zelikovsky, Alex
    BIOINFORMATICS, 2019, 35 (14) : I398 - I407