Predicting in vivo response to antineoplastics remains an elusive challenge. We performed a first-of-kind evaluation of two transcriptome-based precision cancer medicine methodologies to predict tumor sensitivity to a comprehensive repertoire of clinically relevant oncology drugs, whose mechanism of action we experimentally assessed in cognate cell lines. We enrolled patients with histologically distinct, poor-prognosis malignancies who had progressed on multiple therapies, and developed low-passage, patient-derived xenograft models that were used to validate 35 patient-specific drug predictions. Both OncoTarget, which identifies high-affinity inhibitors of individual master regulator (MR) proteins, and OncoTreat, which identifies drugs that invert the transcriptional activity of hyperconnected MR modules, produced highly significant 30-day disease control rates (68% and 91%, respectively). Moreover, of 18 OncoTreat-predicted drugs, 15 induced the predicted MR-module activity inversion in vivo. Predicted drugs significantly outperformed antineoplastic drugs selected as unpredicted controls, suggesting these methods may substantively complement existing precision cancer medicine approaches, as also illustrated by a case study. SIGNIFICANCE: Complementary precision cancer medicine paradigms are needed to broaden the clinical benefit realized through genetic profiling and immunotherapy. In this first-in-class application, we introduce two transcriptome-based tumor-agnostic systems biology tools to predict drug response in vivo. OncoTarget and OncoTreat are scalable for the design of basket and umbrella clinical trials. This article is highlighted in the In This Issue feature, p. 1275.
A Transcriptome-Based Precision Oncology Platform for Patient-Therapy Alignment in a Diverse Set of Treatment-Resistant Malignancies.
基于转录组的精准肿瘤学平台,用于针对多种难治性恶性肿瘤的患者-治疗方案匹配
阅读:13
作者:Mundi Prabhjot S, Dela Cruz Filemon S, Grunn Adina, Diolaiti Daniel, Mauguen Audrey, Rainey Allison R, Guillan Kristina, Siddiquee Armaan, You Daoqi, Realubit Ronald, Karan Charles, Ortiz Michael V, Douglass Eugene F, Accordino Melissa, Mistretta Suzanne, Brogan Frances, Bruce Jeffrey N, Caescu Cristina I, Carvajal Richard D, Crew Katherine D, Decastro Guarionex, Heaney Mark, Henick Brian S, Hershman Dawn L, Hou June Y, Iwamoto Fabio M, Jurcic Joseph G, Kiran Ravi P, Kluger Michael D, Kreisl Teri, Lamanna Nicole, Lassman Andrew B, Lim Emerson A, Manji Gulam A, McKhann Guy M, McKiernan James M, Neugut Alfred I, Olive Kenneth P, Rosenblat Todd, Schwartz Gary K, Shu Catherine A, Sisti Michael B, Tergas Ana, Vattakalam Reena M, Welch Mary, Wenske Sven, Wright Jason D, Canoll Peter, Hibshoosh Hanina, Kalinsky Kevin, Aburi Mahalaxmi, Sims Peter A, Alvarez Mariano J, Kung Andrew L, Califano Andrea
| 期刊: | Cancer Discovery | 影响因子: | 33.300 |
| 时间: | 2023 | 起止号: | 2023 Jun 2; 13(6):1386-1407 |
| doi: | 10.1158/2159-8290.CD-22-1020 | 研究方向: | 肿瘤 |
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