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新型混合癌细胞模型旨在捕捉患者间肿瘤异质性,以准确评估联合用药。

Novel mixed cancer-cell models designed to capture inter-patient tumor heterogeneity for accurate evaluation of drug combinations.

作者信息

Jena Sampreeti, Kim Daniel, Lee Adam M, Zhang Weijie, Zhan Kevin, Li Yingming, Dehm Scott M, Huang R Stephanie

机构信息

University of Minnesota.

出版信息

Res Sq. 2025 May 16:rs.3.rs-6590535. doi: 10.21203/rs.3.rs-6590535/v1.

Abstract

BACKGROUND

Disease heterogeneity across a diverse patient cohort poses challenges to cancer drug development due to inter-patient variability in treatment responses. However, current preclinical models fail to depict inter-patient tumor heterogeneity, leading to a high failure rate when translating preclinical leads into clinical successes.

METHODS

We integrated the expression profiles of prostate cancer (PC) lines and castration-resistant PC (CRPC) patient tumors to identify cell-lines that transcriptomically match distinct tumor subtypes in a clinical cohort. Representative cell-lines were co-cultured to create "mixed-cell" models depicting inter-patient heterogeneity in CRPC, which were employed to assess drug combinations.

RESULTS

When drug combinations previously tested in CRPC clinical cohorts, were assessed to establish proof-of-concept, in-vitro responses measured in our models concurred with their known clinical efficacy. Additionally, novel drug combinations computationally predicted to be efficacious in heterogeneous tumors, were evaluated. They demonstrated preclinical efficacy in the mixed-cell models, suggesting they will likely benefit heterogeneous patient cohorts. Furthermore, we showed that the current practice of screening cell-lines/xenografts separately and aggregating their responses, failed to detect their efficacy.

CONCLUSIONS

We believe that the application of our models will enhance the accuracy of preclinical drug assessment, thereby improving the success rate of subsequent clinical trials.

摘要

背景

由于患者间治疗反应的变异性,不同患者群体中的疾病异质性给癌症药物开发带来了挑战。然而,当前的临床前模型无法描绘患者间的肿瘤异质性,导致在将临床前先导药物转化为临床成功药物时失败率很高。

方法

我们整合了前列腺癌(PC)细胞系和去势抵抗性前列腺癌(CRPC)患者肿瘤的表达谱,以鉴定在转录组学上与临床队列中不同肿瘤亚型相匹配的细胞系。将代表性细胞系进行共培养,以创建描绘CRPC患者间异质性的“混合细胞”模型,并用于评估药物组合。

结果

当评估先前在CRPC临床队列中测试过的药物组合以确立概念验证时,我们模型中测得的体外反应与它们已知的临床疗效一致。此外,还评估了通过计算预测在异质性肿瘤中有效的新型药物组合。它们在混合细胞模型中显示出临床前疗效,表明它们可能会使异质性患者群体受益。此外,我们表明,目前分别筛选细胞系/异种移植并汇总其反应的做法未能检测到它们的疗效。

结论

我们相信,我们模型的应用将提高临床前药物评估的准确性,从而提高后续临床试验的成功率。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dd32/12136230/f8f9ed03d8f2/nihpp-rs6590535v1-f0001.jpg

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