Truesdell Peter, Chang Jessica, Coto Villa Doris, Dai Meiou, Zhao Yulei, McIlwain Robin, Young Stephanie, Hiley Shawna, Craig Andrew W, Babak Tomas
Leapfrog Bio, San Mateo, USA.
Cancer Biology & Genetics, Queen's Cancer Research Institute; Queen's University, Kingston, Canada.
NPJ Precis Oncol. 2024 Aug 28;8(1):186. doi: 10.1038/s41698-024-00673-z.
Despite the clinical success of dozens of genetically targeted cancer therapies, the vast majority of patients with tumors caused by loss-of-function (LoF) mutations do not have access to these treatments. This is primarily due to the challenge of developing a drug that treats a disease caused by the absence of a protein target. The success of PARP inhibitors has solidified synthetic lethality (SL) as a means to overcome this obstacle. Recent mapping of SL networks using pooled CRISPR-Cas9 screens is a promising approach for expanding this concept to treating cancers driven by additional LoF drivers. In practice, however, translating signals from cell lines, where these screens are typically conducted, to patient outcomes remains a challenge. We developed a pharmacogenomic (PGx) approach called "Clinically Optimized Driver Associated-PGx" (CODA-PGX) that accurately predicts genetically targeted therapies with clinical-stage efficacy in specific LoF driver contexts. Using approved targeted therapies and cancer drugs with available real-world evidence and molecular data from hundreds of patients, we discovered and optimized the key screening principles predictive of efficacy and overall patient survival. In addition to establishing basic technical conventions, such as drug concentration and screening kinetics, we found that replicating the driver perturbation in the right context, as well as selecting patients where those drivers are genuine founder mutations, were key to accurate translation. We used CODA-PGX to screen a diverse collection of clinical stage drugs and report dozens of novel LoF genetically targeted opportunities; many validated in xenografts and by real-world evidence. Notable examples include treating STAG2-mutant tumors with Carboplatin, SMARCB1-mutant tumors with Oxaliplatin, and TP53BP1-mutant tumors with Etoposide or Bleomycin.
尽管数十种基因靶向癌症疗法在临床上取得了成功,但绝大多数由功能丧失(LoF)突变引起肿瘤的患者无法获得这些治疗。这主要是由于开发一种治疗由缺乏蛋白质靶点引起疾病的药物面临挑战。PARP抑制剂的成功巩固了合成致死性(SL)作为克服这一障碍的手段。最近使用汇集的CRISPR-Cas9筛选对SL网络进行的映射是将这一概念扩展到治疗由其他LoF驱动因素驱动的癌症的一种有前景的方法。然而,在实践中,将这些筛选通常进行的细胞系中的信号转化为患者预后仍然是一个挑战。我们开发了一种药物基因组学(PGx)方法,称为“临床优化驱动相关-PGx”(CODA-PGX),该方法能够在特定的LoF驱动背景下准确预测具有临床阶段疗效的基因靶向疗法。利用已批准的靶向疗法和具有可用真实世界证据的癌症药物以及来自数百名患者的分子数据,我们发现并优化了预测疗效和患者总体生存的关键筛选原则。除了建立基本的技术规范,如药物浓度和筛选动力学外,我们还发现,在正确的背景下复制驱动扰动,以及选择那些驱动是真正的奠基者突变的患者,是准确转化的关键。我们使用CODA-PGX筛选了一系列临床阶段药物,并报告了数十种新的LoF基因靶向机会;其中许多在异种移植和真实世界证据中得到了验证。显著的例子包括用卡铂治疗STAG2突变肿瘤;用奥沙利铂治疗SMARCB1突变肿瘤;用依托泊苷或博来霉素治疗TP53BP1突变肿瘤。