医学
药品
三阴性乳腺癌
乳腺癌
紫杉醇
人口
转录组
药物发现
癌症
肿瘤科
体内
药物反应
内科学
生物信息学
计算生物学
药理学
生物
基因
基因表达
生物技术
环境卫生
生物化学
作者
Robert F. Gruener,Alexander Ling,Ya-Fang Chang,Gladys Morrison,Paul Geeleher,Geoffrey L. Greene,R. Stephanie Huang
出处
期刊:Cancers
[MDPI AG]
日期:2021-02-20
卷期号:13 (4): 885-885
被引量:9
标识
DOI:10.3390/cancers13040885
摘要
(1) Background: Drug imputation methods often aim to translate in vitro drug response to in vivo drug efficacy predictions. While commonly used in retrospective analyses, our aim is to investigate the use of drug prediction methods for the generation of novel drug discovery hypotheses. Triple-negative breast cancer (TNBC) is a severe clinical challenge in need of new therapies. (2) Methods: We used an established machine learning approach to build models of drug response based on cell line transcriptome data, which we then applied to patient tumor data to obtain predicted sensitivity scores for hundreds of drugs in over 1000 breast cancer patients. We then examined the relationships between predicted drug response and patient clinical features. (3) Results: Our analysis recapitulated several suspected vulnerabilities in TNBC and identified a number of compounds-of-interest. AZD-1775, a Wee1 inhibitor, was predicted to have preferential activity in TNBC (p < 2.2 × 10-16) and its efficacy was highly associated with TP53 mutations (p = 1.2 × 10-46). We validated these findings using independent cell line screening data and pathway analysis. Additionally, co-administration of AZD-1775 with standard-of-care paclitaxel was able to inhibit tumor growth (p < 0.05) and increase survival (p < 0.01) in a xenograft mouse model of TNBC. (4) Conclusions: Overall, this study provides a framework to turn any cancer transcriptomic dataset into a dataset for drug discovery. Using this framework, one can quickly generate meaningful drug discovery hypotheses for a cancer population of interest.
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