Large-scale Pan-cancer Cell Line Screening Identifies Actionable and Effective Drug Combinations.

IF 29.7 1区 医学 Q1 ONCOLOGY
Azadeh C Bashi, Elizabeth A Coker, Krishna C Bulusu, Patricia Jaaks, Claire Crafter, Howard Lightfoot, Marta Milo, Katrina McCarten, David F Jenkins, Dieudonne van der Meer, James T Lynch, Syd Barthorpe, Courtney L Andersen, Simon T Barry, Alexandra Beck, Justin Cidado, Jacob A Gordon, Caitlin Hall, James Hall, Iman Mali, Tatiana Mironenko, Kevin Mongeon, James Morris, Laura Richardson, Paul D Smith, Omid Tavana, Charlotte Tolley, Frances Thomas, Brandon S Willis, Wanjuan Yang, Mark J O'Connor, Ultan McDermott, Susan E Critchlow, Lisa Drew, Stephen E Fawell, Jerome T Mettetal, Mathew J Garnett
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引用次数: 0

Abstract

Oncology drug combinations can improve therapeutic responses and increase treatment options for patients. The number of possible combinations is vast and responses can be context-specific. Systematic screens can identify clinically relevant, actionable combinations in defined patient subtypes. We present data for 109 anticancer drug combinations from AstraZeneca's oncology small molecule portfolio screened in 755 pan-cancer cell lines. Combinations were screened in a 7 × 7 concentration matrix, with more than 4 million measurements of sensitivity, producing an exceptionally data-rich resource. We implement a new approach using combination Emax (viability effect) and highest single agent (HSA) to assess combination benefit. We designed a clinical translatability workflow to identify combinations with clearly defined patient populations, rationale for tolerability based on tumor type and combination-specific "emergent" biomarkers, and exposures relevant to clinical doses. We describe three actionable combinations in defined cancer types, confirmed in vitro and in vivo, with a focus on hematologic cancers and apoptotic targets.

Significance: We present the largest cancer drug combination screen published to date with 7 × 7 concentration response matrices for 109 combinations in more than 750 cell lines, complemented by multi-omics predictors of response and identification of "emergent" combination biomarkers. We prioritize hits to optimize clinical translatability, and experimentally validate novel combination hypotheses. This article is featured in Selected Articles from This Issue, p. 695.

大规模泛癌细胞系筛选确定可操作的有效药物组合。
肿瘤药物组合可以改善治疗反应,增加患者的治疗选择。可能的联合用药种类繁多,反应也可能因具体情况而异。系统性筛选可以在确定的患者亚型中找出与临床相关的、可操作的组合。我们展示了阿斯利康肿瘤学小分子药物组合在 755 个泛癌细胞系中筛选出的 109 种抗癌药物组合的数据。我们在 7 × 7 的浓度矩阵中筛选了组合药物,并对敏感性进行了 400 多万次测量,从而获得了极其丰富的数据资源。我们采用了一种新方法,利用组合Emax(活力效应)和最高单药(HSA)来评估组合效益。我们设计了一个临床可转化性工作流程,以确定具有明确定义的患者人群、基于肿瘤类型和组合特异性 "突发 "生物标志物的耐受性原理以及与临床剂量相关的暴露的组合。我们介绍了在确定的癌症类型中的三种可行组合,并在体外和体内进行了确认,重点是血液肿瘤和凋亡靶点:我们展示了迄今为止发表的最大规模的抗癌药物组合筛选,在 750 多种细胞系中筛选出 109 种组合的 7 × 7 浓度反应矩阵,并辅以多组学反应预测和 "新兴 "组合生物标志物的鉴定。我们对命中药物进行优先排序,以优化临床可转化性,并对新的组合假设进行实验验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Cancer discovery
Cancer discovery ONCOLOGY-
CiteScore
22.90
自引率
1.40%
发文量
838
审稿时长
6-12 weeks
期刊介绍: Cancer Discovery publishes high-impact, peer-reviewed articles detailing significant advances in both research and clinical trials. Serving as a premier cancer information resource, the journal also features Review Articles, Perspectives, Commentaries, News stories, and Research Watch summaries to keep readers abreast of the latest findings in the field. Covering a wide range of topics, from laboratory research to clinical trials and epidemiologic studies, Cancer Discovery spans the entire spectrum of cancer research and medicine.
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