感知
转录组
医学
精密医学
临床试验
肿瘤科
基因表达谱
内科学
生物信息学
心理学
癌症研究
生物
病理
神经科学
基因
基因表达
生物化学
作者
Sanju Sinha,Rahulsimham Vegesna,Sumit Mukherjee,Ashwin V. Kammula,Saugato Rahman Dhruba,Wei Wu,D. Lucas Kerr,Nishanth Ulhas Nair,Matthew G. Jones,Nir Yosef,Oleg V. Stroganov,Ivan Grishagin,Kenneth Aldape,Collin M. Blakely,Peng Jiang,Craig J. Thomas,Cyril H. Benes,Trever G. Bivona,Alejandro A. Schäffer,Eytan Ruppin
出处
期刊:Nature cancer
[Springer Nature]
日期:2024-04-18
卷期号:5 (6): 938-952
被引量:7
标识
DOI:10.1038/s43018-024-00756-7
摘要
Tailoring optimal treatment for individual cancer patients remains a significant challenge. To address this issue, we developed PERCEPTION (PERsonalized Single-Cell Expression-Based Planning for Treatments In ONcology), a precision oncology computational pipeline. Our approach uses publicly available matched bulk and single-cell (sc) expression profiles from large-scale cell-line drug screens. These profiles help build treatment response models based on patients' sc-tumor transcriptomics. PERCEPTION demonstrates success in predicting responses to targeted therapies in cultured and patient-tumor-derived primary cells, as well as in two clinical trials for multiple myeloma and breast cancer. It also captures the resistance development in patients with lung cancer treated with tyrosine kinase inhibitors. PERCEPTION outperforms published state-of-the-art sc-based and bulk-based predictors in all clinical cohorts. PERCEPTION is accessible at https://github.com/ruppinlab/PERCEPTION . Our work, showcasing patient stratification using sc-expression profiles of their tumors, will encourage the adoption of sc-omics profiling in clinical settings, enhancing precision oncology tools based on sc-omics. Sinha and colleagues present PERCEPTION, a precision oncology computational pipeline that can predict the response and resistance of patients by analyzing single-cell transcriptomic data from their tumor samples.
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