Quantitative high-throughput drug screening identifies novel classes of drugs with anticancer activity in thyroid cancer cells: opportunities for repurposing

定量高通量药物筛选鉴定出对甲状腺癌细胞具有抗癌活性的新型药物:药物再利用的机会

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Abstract

CONTEXT: Despite increased understanding of the pathogenesis and targets for thyroid cancer and other cancers, developing a new anticancer chemical agent remains an expensive and long process. An alternative approach is the exploitation of clinically used and/or bioactive compounds. OBJECTIVE: Our objective was to identify agents with an anticancer effect in thyroid cancer cell lines using quantitative high-throughput screening (qHTS). DESIGN: We used the newly assembled National Institutes of Health Chemical Genomic Center's pharmaceutical collection, which contains 2816 clinically approved drugs and bioactive compounds to perform qHTS. RESULTS: Multiple agents, across a variety of therapeutic categories and with different modes of action, were found to have an antiproliferative effect. We found the following therapeutic categories were the most enriched categories with antiproliferative activity: cardiotonic and antiobesity agents. Sixteen agents had an efficacy of greater than 60% and a 50% inhibitory concentration (IC50) in the nanomolar range. We validated the results of the qHTS using two agents (bortezomib and ouabain) in additional cell lines representing different histological subtypes of thyroid cancer and with different mutations (BRAF V600E, RET/PTC1, p53, PTEN). Both agents induced apoptosis, and ouabain also caused cell cycle arrest. CONCLUSIONS: To our knowledge, this is the first study to use qHTS of a large drug library to identify candidate drugs for anticancer therapy. Our results indicate such a screening approach can lead to the discovery of novel agents in different therapeutic categories and drugs with nonclassic chemotherapy mode of action. Our approach could lead to drug repurposing and accelerate clinical trials of compounds with well-established pharmacokinetics and toxicity profiles.

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