Praneeth Reddy Sudalagunta, Rafael R Canevarolo, Mark B Meads, Maria Silva, Xiaohong Zhao, Christopher L Cubitt, Samer S Sansil, Gabriel DeAvila, Raghunandan Reddy Alugubelli, Ryan T Bishop, Alexandre Tungesvik, Qi Zhang, Oliver Hampton, Jamie K Teer, Eric A Welsh, Sean J Yoder, Bijal D Shah, Lori Hazlehurst, Robert A Gatenby, Dane R Van Domelen, Yi Chai, Feng Wang, Andrew DeCastro, Amanda M Bloomer, Erin M Siegel, Conor C Lynch, Daniel M Sullivan, Melissa Alsina, Taiga Nishihori, Jason Brayer, John L Cleveland, William Dalton, Christopher J Walker, Yosef Landesman, Rachid Baz, Ariosto S Silva, Kenneth H Shain
{"title":"The Functional Transcriptomic Landscape Informs Therapeutic Strategies in Multiple Myeloma.","authors":"Praneeth Reddy Sudalagunta, Rafael R Canevarolo, Mark B Meads, Maria Silva, Xiaohong Zhao, Christopher L Cubitt, Samer S Sansil, Gabriel DeAvila, Raghunandan Reddy Alugubelli, Ryan T Bishop, Alexandre Tungesvik, Qi Zhang, Oliver Hampton, Jamie K Teer, Eric A Welsh, Sean J Yoder, Bijal D Shah, Lori Hazlehurst, Robert A Gatenby, Dane R Van Domelen, Yi Chai, Feng Wang, Andrew DeCastro, Amanda M Bloomer, Erin M Siegel, Conor C Lynch, Daniel M Sullivan, Melissa Alsina, Taiga Nishihori, Jason Brayer, John L Cleveland, William Dalton, Christopher J Walker, Yosef Landesman, Rachid Baz, Ariosto S Silva, Kenneth H Shain","doi":"10.1158/0008-5472.CAN-24-0886","DOIUrl":null,"url":null,"abstract":"<p><p>Several therapeutic agents have been approved for treating multiple myeloma (MM), a cancer of bone marrow resident plasma cells. Predictive biomarkers for drug response could help guide clinical strategies to optimize outcomes. Here, we present an integrated functional genomic analysis of tumor samples from MM patients that were assessed for their ex vivo drug sensitivity to 37 drugs, clinical variables, cytogenetics, mutational profiles, and transcriptomes. This analysis revealed a MM transcriptomic topology that generates \"footprints\" in association with ex vivo drug sensitivity that have both predictive and mechanistic applications. Validation of the transcriptomic footprints for the anti-CD38 monoclonal antibody daratumumab and the nuclear export inhibitor selinexor demonstrated that these footprints can accurately classify clinical responses. The analysis further revealed that daratumumab and selinexor have anti-correlated mechanisms of resistance, and treatment with a selinexor-based regimen immediately after a daratumumab-containing regimen was associated with improved survival in three independent clinical trials, supporting an evolutionary-based strategy involving sequential therapy. These findings suggest that this unique repository and computational framework can be leveraged to inform underlying biology and to identify therapeutic strategies to improve treatment of MM.</p>","PeriodicalId":9441,"journal":{"name":"Cancer research","volume":" ","pages":""},"PeriodicalIF":12.5000,"publicationDate":"2024-10-30","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Cancer research","FirstCategoryId":"3","ListUrlMain":"https://doi.org/10.1158/0008-5472.CAN-24-0886","RegionNum":1,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"ONCOLOGY","Score":null,"Total":0}
引用次数: 0
Abstract
Several therapeutic agents have been approved for treating multiple myeloma (MM), a cancer of bone marrow resident plasma cells. Predictive biomarkers for drug response could help guide clinical strategies to optimize outcomes. Here, we present an integrated functional genomic analysis of tumor samples from MM patients that were assessed for their ex vivo drug sensitivity to 37 drugs, clinical variables, cytogenetics, mutational profiles, and transcriptomes. This analysis revealed a MM transcriptomic topology that generates "footprints" in association with ex vivo drug sensitivity that have both predictive and mechanistic applications. Validation of the transcriptomic footprints for the anti-CD38 monoclonal antibody daratumumab and the nuclear export inhibitor selinexor demonstrated that these footprints can accurately classify clinical responses. The analysis further revealed that daratumumab and selinexor have anti-correlated mechanisms of resistance, and treatment with a selinexor-based regimen immediately after a daratumumab-containing regimen was associated with improved survival in three independent clinical trials, supporting an evolutionary-based strategy involving sequential therapy. These findings suggest that this unique repository and computational framework can be leveraged to inform underlying biology and to identify therapeutic strategies to improve treatment of MM.
多发性骨髓瘤(MM)是一种骨髓驻留浆细胞癌症,目前已有多种治疗药物获准用于治疗该病。药物反应的预测性生物标志物有助于指导临床策略,优化治疗效果。在这里,我们介绍了对MM患者肿瘤样本的综合功能基因组分析,这些样本对37种药物、临床变量、细胞遗传学、突变图谱和转录组进行了体内外药物敏感性评估。这项分析揭示了 MM 转录组拓扑结构,该拓扑结构与体内外药物敏感性相关联,产生了 "足迹",具有预测性和机理应用价值。对抗CD38单克隆抗体daratumumab和核输出抑制剂selinexor的转录组足迹进行的验证表明,这些足迹可以准确地对临床反应进行分类。分析进一步揭示了daratumumab和selinexor具有抗相关的耐药机制,在三项独立的临床试验中,在使用含有daratumumab的治疗方案后立即使用基于selinexor的治疗方案与生存率的提高相关,支持基于进化的序贯治疗策略。这些研究结果表明,可以利用这一独特的资源库和计算框架来了解潜在的生物学信息并确定治疗策略,从而改善 MM 的治疗。
期刊介绍:
Cancer Research, published by the American Association for Cancer Research (AACR), is a journal that focuses on impactful original studies, reviews, and opinion pieces relevant to the broad cancer research community. Manuscripts that present conceptual or technological advances leading to insights into cancer biology are particularly sought after. The journal also places emphasis on convergence science, which involves bridging multiple distinct areas of cancer research.
With primary subsections including Cancer Biology, Cancer Immunology, Cancer Metabolism and Molecular Mechanisms, Translational Cancer Biology, Cancer Landscapes, and Convergence Science, Cancer Research has a comprehensive scope. It is published twice a month and has one volume per year, with a print ISSN of 0008-5472 and an online ISSN of 1538-7445.
Cancer Research is abstracted and/or indexed in various databases and platforms, including BIOSIS Previews (R) Database, MEDLINE, Current Contents/Life Sciences, Current Contents/Clinical Medicine, Science Citation Index, Scopus, and Web of Science.