Department of Medical Oncology, The Alfred Hospital, Melbourne, Australia.
School of Translational Medicine, Monash University, Melbourne, Australia.
Clin Transl Med. 2024 Apr;14(4):e1657. doi: 10.1002/ctm2.1657.
Systematic repurposing of approved medicines for another indication may accelerate drug development in oncology. We present a strategy combining biomarker testing with drug repurposing to identify new treatments for patients with advanced cancer.
Tumours were sequenced with the Illumina TruSight Oncology 500 (TSO-500) platform or the FoundationOne CDx panel. Mutations were screened by two medical oncologists and pathogenic mutations were categorised referencing literature. Variants of unknown significance were classified as potentially pathogenic using plausible mechanisms and computational prediction of pathogenicity. Gain of function (GOF) mutations were evaluated through repurposing databases Probe Miner (PM), Broad Institute Drug Repurposing Hub (Broad Institute DRH) and TOPOGRAPH. GOF mutations were repurposing events if identified in PM, not indexed in TOPOGRAPH and excluding mutations with a known Food and Drug Administration (FDA)-approved biomarker. The computational repurposing approach was validated by evaluating its ability to identify FDA-approved biomarkers. The total repurposable genome was identified by evaluating all possible gene-FDA drug-approved combinations in the PM dataset.
The computational repurposing approach was accurate at identifying FDA therapies with known biomarkers (94%). Using next-generation sequencing molecular reports (n = 94), a meaningful percentage of patients (14%) could have an off-label therapeutic identified. The frequency of theoretical drug repurposing events in The Cancer Genome Atlas pan-cancer dataset was 73% of the samples in the cohort.
A computational drug repurposing approach may assist in identifying novel repurposing events in cancer patients with no access to standard therapies. Further validation is needed to confirm a precision oncology approach using drug repurposing.
将已批准药物重新用于另一种适应症可能会加速肿瘤学的药物开发。我们提出了一种结合生物标志物检测和药物再利用的策略,以确定晚期癌症患者的新治疗方法。
使用 Illumina TruSight Oncology 500(TSO-500)平台或 FoundationOne CDx 面板对肿瘤进行测序。两名肿瘤内科医生筛选突变,并参考文献对致病性突变进行分类。使用合理的机制和致病性计算预测,将意义不明的变异归类为潜在致病性。通过再利用数据库 Probe Miner(PM)、Broad Institute Drug Repurposing Hub(Broad Institute DRH)和 TOPOGRAPH 评估获得性功能(GOF)突变。如果在 PM 中识别出 GOF 突变,且未在 TOPOGRAPH 中索引,并且排除具有已知美国食品和药物管理局(FDA)批准的生物标志物的突变,则将其视为再利用事件。通过评估其识别 FDA 批准的生物标志物的能力来验证计算再利用方法的准确性。通过评估 PM 数据集中所有可能的基因-FDA 药物批准组合来确定可再利用的基因组。
计算再利用方法在识别具有已知生物标志物的 FDA 疗法方面具有很高的准确性(94%)。使用下一代测序分子报告(n=94),有意义的患者比例(14%)可能会确定一种未经批准的治疗方法。在癌症基因组图谱泛癌数据集中,理论药物再利用事件的频率为该队列中 73%的样本。
计算药物再利用方法可能有助于确定无法获得标准疗法的癌症患者的新再利用事件。需要进一步验证使用药物再利用的精确肿瘤学方法的准确性。