Department of Computer Science, Tufts University, Medford, MA, United States of America.
Department of Medicine, University of North Carolina School of Medicine, Chapel Hill, NC, United States of America.
PLoS One. 2023 Feb 16;18(2):e0278289. doi: 10.1371/journal.pone.0278289. eCollection 2023.
Drug repositioning allows expedited discovery of new applications for existing compounds, but re-screening vast compound libraries is often prohibitively expensive. "Connectivity mapping" is a process that links drugs to diseases by identifying compounds whose impact on expression in a collection of cells reverses the disease's impact on expression in disease-relevant tissues. The LINCS project has expanded the universe of compounds and cells for which data are available, but even with this effort, many clinically useful combinations are missing. To evaluate the possibility of repurposing drugs despite missing data, we compared collaborative filtering using either neighborhood-based or SVD imputation methods to two naive approaches via cross-validation. Methods were evaluated for their ability to predict drug connectivity despite missing data. Predictions improved when cell type was taken into account. Neighborhood collaborative filtering was the most successful method, with the best improvements in non-immortalized primary cells. We also explored which classes of compounds are most and least reliant on cell type for accurate imputation. We conclude that even for cells in which drug responses have not been fully characterized, it is possible to identify unassayed drugs that reverse in those cells the expression signatures observed in disease.
药物重定位允许加速发现现有化合物的新用途,但重新筛选大量化合物库通常过于昂贵。“连接性映射”是一种通过识别对细胞中表达有影响的化合物来将药物与疾病联系起来的过程,这些化合物的影响可以逆转疾病对相关组织中表达的影响。LINC 项目已经扩展了具有可用数据的化合物和细胞的范围,但即使有了这项工作,仍有许多具有临床应用价值的组合缺失。为了评估即使在缺少数据的情况下也能重新利用药物的可能性,我们通过交叉验证,将基于邻域的或 SVD 插补方法的协同过滤与两种简单方法进行了比较。评估了这些方法在缺少数据的情况下预测药物连通性的能力。当考虑细胞类型时,预测得到了改善。基于邻域的协同过滤是最成功的方法,在非永生化原代细胞中效果最好。我们还探讨了哪些化合物类别最依赖和最不依赖细胞类型来进行准确的插补。我们得出的结论是,即使对于药物反应尚未完全表征的细胞,也有可能识别出未检测到的药物,这些药物可以在这些细胞中逆转疾病中观察到的表达特征。