College of Animal Science and Technology, Northwest A&F University, Yangling 712100, China.
Botnar Research Centre, Nuffield Department of Orthopedics, Rheumatology and Musculoskeletal Sciences, University of Oxford, Oxford OX3 7LD, UK.
Int J Mol Sci. 2023 Jan 18;24(3):1878. doi: 10.3390/ijms24031878.
Aberrant miRNA expression has been associated with a large number of human diseases. Therefore, targeting miRNAs to regulate their expression levels has become an important therapy against diseases that stem from the dysfunction of pathways regulated by miRNAs. In recent years, small molecules have demonstrated enormous potential as drugs to regulate miRNA expression (i.e., SM-miR). A clear understanding of the mechanism of action of small molecules on the upregulation and downregulation of miRNA expression allows precise diagnosis and treatment of oncogenic pathways. However, outside of a slow and costly process of experimental determination, computational strategies to assist this on an ad hoc basis have yet to be formulated. In this work, we developed, to the best of our knowledge, the first cross-platform prediction tool, DeepsmirUD, to infer small-molecule-mediated regulatory effects on miRNA expression (i.e., upregulation or downregulation). This method is powered by 12 cutting-edge deep-learning frameworks and achieved AUC values of 0.843/0.984 and AUCPR values of 0.866/0.992 on two independent test datasets. With a complementarily constructed network inference approach based on similarity, we report a significantly improved accuracy of 0.813 in determining the regulatory effects of nearly 650 associated SM-miR relations, each formed with either novel small molecule or novel miRNA. By further integrating miRNA-cancer relationships, we established a database of potential pharmaceutical drugs from 1343 small molecules for 107 cancer diseases to understand the drug mechanisms of action and offer novel insight into drug repositioning. Furthermore, we have employed DeepsmirUD to predict the regulatory effects of a large number of high-confidence associated SM-miR relations. Taken together, our method shows promise to accelerate the development of potential miRNA targets and small molecule drugs.
异常的 miRNA 表达与许多人类疾病有关。因此,靶向 miRNA 以调节其表达水平已成为治疗由 miRNA 调控通路功能障碍引起的疾病的重要方法。近年来,小分子已显示出作为调节 miRNA 表达的药物(即 SM-miR)的巨大潜力。清楚地了解小分子对 miRNA 表达上调和下调的作用机制,可以实现对致癌通路的精确诊断和治疗。然而,除了一个缓慢且昂贵的实验确定过程之外,还没有制定出用于专门基础上辅助这一过程的计算策略。在这项工作中,我们开发了(据我们所知)第一个跨平台预测工具 DeepsmirUD,用于推断小分子对 miRNA 表达(即上调或下调)的调节作用。该方法由 12 个最先进的深度学习框架提供支持,在两个独立的测试数据集上分别达到了 0.843/0.984 的 AUC 值和 0.866/0.992 的 AUCPR 值。通过基于相似性构建的网络推断方法,我们报告了一个显著提高的准确性,用于确定近 650 个相关 SM-miR 关系的调节作用,每个关系都是由新型小分子或新型 miRNA 形成的。通过进一步整合 miRNA-癌症关系,我们为 107 种癌症疾病建立了一个由 1343 种小分子组成的潜在药物数据库,以了解药物作用机制并为药物重新定位提供新的见解。此外,我们还使用 DeepsmirUD 预测了大量高可信度相关 SM-miR 关系的调节作用。综上所述,我们的方法有望加速潜在 miRNA 靶标和小分子药物的开发。