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预测小分子脱靶相互作用的新型计算方法

Novel Computational Approach to Predict Off-Target Interactions for Small Molecules.

作者信息

Rao Mohan S, Gupta Rishi, Liguori Michael J, Hu Mufeng, Huang Xin, Mantena Srinivasa R, Mittelstadt Scott W, Blomme Eric A G, Van Vleet Terry R

机构信息

Global Preclinical Safety, Abbvie, North Chicago, IL, United States.

Information Research, Abbvie, North Chicago, IL, United States.

出版信息

Front Big Data. 2019 Jul 17;2:25. doi: 10.3389/fdata.2019.00025. eCollection 2019.

Abstract

Most small molecule drugs interact with unintended, often unknown, biological targets and these off-target interactions may lead to both preclinical and clinical toxic events. Undesired off-target interactions are often not detected using current drug discovery assays, such as experimental polypharmacological screens. Thus, improvement in the early identification of off-target interactions represents an opportunity to reduce safety-related attrition rates during preclinical and clinical development. In order to better identify potential off-target interactions that could be linked to predictable safety issues, a novel computational approach to predict safety-relevant interactions currently not covered was designed and evaluated. These analyses, termed Off-Target Safety Assessment (OTSA), cover more than 7,000 targets (~35% of the proteome) and > 2,46,704 preclinical and clinical alerts (as of January 20, 2019). The approach described herein exploits a highly curated training set of >1 million compounds (tracking >20 million compound-structure activity relationship/SAR data points) with known activities derived from patents, journals, and publicly available databases. This computational process was used to predict both the primary and secondary pharmacological activities for a selection of 857 diverse small molecule drugs for which extensive secondary pharmacology data are readily available (456 discontinued and 401 FDA approved). The OTSA process predicted a total of 7,990 interactions for these 857 molecules. Of these, 3,923 and 4,067 possible high-scoring interactions were predicted for the discontinued and approved drugs, respectively, translating to an average of 9.3 interactions per drug. The OTSA process correctly identified the known pharmacological targets for >70% of these drugs, but also predicted a significant number of off-targets that may provide additional insight into observed effects. About 51.5% (2,025) and 22% (900) of these predicted high-scoring interactions have not previously been reported for the discontinued and approved drugs, respectively, and these may have a potential for repurposing efforts. Moreover, for both drug categories, higher promiscuity was observed for compounds with a MW range of 300 to 500, TPSA of ~200, and clogP ≥7. This computation also revealed significantly lower promiscuity (i.e., number of confirmed off-targets) for compounds with MW > 700 and MW<200 for both categories. In addition, 15 internal small molecules with known off-target interactions were evaluated. For these compounds, the OTSA framework not only captured about 56.8% of confirmed off-target interactions, but also identified the right pharmacological targets for 14 compounds as one of the top scoring targets. In conclusion, the OTSA process demonstrates good predictive performance characteristics and represents an additional tool with utility during the lead optimization stage of the drug discovery process. Additionally, the computed physiochemical properties such as clogP (i.e., lipophilicity), molecular weight, pKa and logS (i.e., solubility) were found to be statistically different between the approved and discontinued drugs, but the internal compounds were close to the approved drugs space in most part.

摘要

大多数小分子药物会与非预期的、通常未知的生物靶点相互作用,而这些脱靶相互作用可能导致临床前和临床毒性事件。使用当前的药物发现检测方法,如实验性多药理学筛选,往往无法检测到不期望的脱靶相互作用。因此,改进脱靶相互作用的早期识别为降低临床前和临床开发过程中与安全性相关的淘汰率提供了契机。为了更好地识别可能与可预测的安全性问题相关的潜在脱靶相互作用,设计并评估了一种新颖的计算方法,用于预测目前未涵盖的与安全性相关的相互作用。这些分析被称为脱靶安全性评估(OTSA),涵盖了7000多个靶点(约占蛋白质组的35%)和超过246704个临床前和临床警示(截至2019年1月20日)。本文所述方法利用了一个经过高度整理的训练集,该训练集包含超过100万个化合物(跟踪超过2000万个化合物-结构活性关系/SAR数据点),其已知活性来自专利、期刊和公开可用的数据库。这个计算过程用于预测857种不同小分子药物的主要和次要药理活性,这些药物有丰富的次要药理学数据可供使用(456种已停用药物和401种FDA批准药物)。OTSA过程预测这857个分子总共存在7990种相互作用。其中,分别为已停用药物和批准药物预测了3923种和4067种可能的高分相互作用,平均每种药物有9.3种相互作用。OTSA过程正确识别了这些药物中70%以上的已知药理靶点,但也预测了大量可能为观察到的效应提供额外见解的脱靶。这些预测的高分相互作用中,分别有51.5%(2025种)和22%(900种)此前未在已停用药物和批准药物中报道过,它们可能具有重新利用的潜力。此外,对于这两类药物,分子量范围为300至500、拓扑极性表面积约为200且 clogP≥7的化合物表现出更高的混杂性。该计算还表明,对于这两类化合物,分子量>700和分子量<200的化合物的混杂性(即确认的脱靶数量)显著更低。此外,对15种具有已知脱靶相互作用的内部小分子进行了评估。对于这些化合物,OTSA框架不仅捕捉到了约56.8%的确认脱靶相互作用,还将14种化合物的正确药理靶点识别为得分最高的靶点之一。总之,OTSA过程展示了良好的预测性能特征,是药物发现过程中先导优化阶段的一个有用的额外工具。此外,发现已批准药物和已停用药物之间计算得到的物理化学性质,如clogP(即亲脂性)、分子量、pKa和logS(即溶解度)在统计学上存在差异,但内部化合物在大多数方面接近已批准药物的范围。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fa34/7931946/0970d41fe375/fdata-02-00025-g0001.jpg

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