Ding Kuan-Fu, Finlay Darren, Yin Hongwei, Hendricks William P D, Sereduk Chris, Kiefer Jeffrey, Sekulic Aleksandar, LoRusso Patricia M, Vuori Kristiina, Trent Jeffrey M, Schork Nicholas J
J. Craig Venter Institute, La Jolla, CA, USA.
University of California, San Diego, CA, USA.
Oncotarget. 2017 Apr 25;8(17):27786-27799. doi: 10.18632/oncotarget.15347.
High-throughput screening (HTS) strategies and protocols have undergone significant development in the last decade. It is now possible to screen hundreds of thousands of compounds, each exploring multiple biological phenotypes and parameters, against various cell lines or model systems in a single setting. However, given the vast amount of data such studies generate, the fact that they use multiple reagents, and are often technician-intensive, questions have been raised about the variability, reliability and reproducibility of HTS results. Assessments of the impact of the multiple factors in HTS studies could arguably lead to more compelling insights into the robustness of the results of a particular screen, as well as the overall quality of the study. We leveraged classical, yet highly flexible, analysis of variance (ANOVA)-based linear models to explore how different factors contribute to the variation observed in a screening study of four different melanoma cell lines and 120 drugs over nine dosages studied in two independent academic laboratories. We find that factors such as plate effects, appropriate dosing ranges, and to a lesser extent, the laboratory performing the screen, are significant predictors of variation in drug responses across the cell lines. Further, we show that when sources of variation are quantified and controlled for, they contextualize claims of inconsistencies and reveal the overall quality of the HTS studies performed at each participating laboratory. In the context of the broader screening study, we show that our analysis can also elucidate the robust effects of drugs, even those within specific cell lines.
高通量筛选(HTS)策略和方案在过去十年中经历了重大发展。现在有可能在单一实验中针对各种细胞系或模型系统筛选数十万种化合物,每种化合物都探索多种生物学表型和参数。然而,鉴于此类研究产生的大量数据,以及它们使用多种试剂且通常需要大量技术人员参与的事实,人们对HTS结果的可变性、可靠性和可重复性提出了质疑。评估HTS研究中多种因素的影响,可以说是能够更深入地洞察特定筛选结果的稳健性以及研究的整体质量。我们利用经典但高度灵活的基于方差分析(ANOVA)的线性模型,来探究在两个独立学术实验室对四种不同黑色素瘤细胞系和120种药物在九个剂量下进行的筛选研究中,不同因素是如何导致观察到的变异的。我们发现,诸如平板效应、合适的给药范围以及在较小程度上进行筛选的实验室等因素,是细胞系间药物反应变异的重要预测因素。此外,我们表明,当对变异来源进行量化和控制时,它们能为不一致性的说法提供背景信息,并揭示每个参与实验室所进行的HTS研究的整体质量。在更广泛的筛选研究背景下,我们表明我们的分析还能够阐明药物的稳健效应,即使是特定细胞系内的药物效应。