Keshavarzi Arshadi Arash, Salem Milad, Karner Heather, Garcia Kristle, Arab Abolfazl, Yuan Jiann Shiun, Goodarzi Hani
Department of Biochemistry and Biophysics, University of California, San Francisco, San Francisco, CA, USA.
Department of Urology, University of California, San Francisco, San Francisco, CA, USA.
Patterns (N Y). 2024 Jan 3;5(1):100909. doi: 10.1016/j.patter.2023.100909. eCollection 2024 Jan 12.
MicroRNAs are recognized as key drivers in many cancers but targeting them with small molecules remains a challenge. We present RiboStrike, a deep-learning framework that identifies small molecules against specific microRNAs. To demonstrate its capabilities, we applied it to microRNA-21 (miR-21), a known driver of breast cancer. To ensure selectivity toward miR-21, we performed counter-screens against miR-122 and DICER. Auxiliary models were used to evaluate toxicity and rank the candidates. Learning from various datasets, we screened a pool of nine million molecules and identified eight, three of which showed anti-miR-21 activity in both reporter assays and RNA sequencing experiments. Target selectivity of these compounds was assessed using microRNA profiling and RNA sequencing analysis. The top candidate was tested in a xenograft mouse model of breast cancer metastasis, demonstrating a significant reduction in lung metastases. These results demonstrate RiboStrike's ability to nominate compounds that target the activity of miRNAs in cancer.
微小RNA被认为是许多癌症的关键驱动因素,但用小分子靶向它们仍然是一项挑战。我们提出了RiboStrike,这是一个深度学习框架,可识别针对特定微小RNA的小分子。为了证明其能力,我们将其应用于微小RNA-21(miR-21),这是一种已知的乳腺癌驱动因素。为确保对miR-21的选择性,我们针对miR-122和Dicer进行了反筛选。使用辅助模型评估毒性并对候选物进行排名。通过从各种数据集中学习,我们筛选了900万个分子的库,并鉴定出8种,其中3种在报告基因检测和RNA测序实验中均显示出抗miR-21活性。使用微小RNA谱分析和RNA测序分析评估这些化合物的靶标选择性。在乳腺癌转移的异种移植小鼠模型中测试了最佳候选物,结果表明肺转移显著减少。这些结果证明了RiboStrike提名针对癌症中miRNA活性的化合物的能力。