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基于 FDA 批准药物标签注释和大量药物的用于预测药物性肝损伤的定量构效关系模型。

Quantitative structure-activity relationship models for predicting drug-induced liver injury based on FDA-approved drug labeling annotation and using a large collection of drugs.

机构信息

* Division of Bioinformatics and Biostatistics, National Center for Toxicological Research, U.S. Food and Drug Administration, Jefferson, Arkansas 72079;

出版信息

Toxicol Sci. 2013 Nov;136(1):242-9. doi: 10.1093/toxsci/kft189. Epub 2013 Aug 31.

Abstract

Drug-induced liver injury (DILI) is one of the leading causes of the termination of drug development programs. Consequently, identifying the risk of DILI in humans for drug candidates during the early stages of the development process would greatly reduce the drug attrition rate in the pharmaceutical industry but would require the implementation of new research and development strategies. In this regard, several in silico models have been proposed as alternative means in prioritizing drug candidates. Because the accuracy and utility of a predictive model rests largely on how to annotate the potential of a drug to cause DILI in a reliable and consistent way, the Food and Drug Administration-approved drug labeling was given prominence. Out of 387 drugs annotated, 197 drugs were used to develop a quantitative structure-activity relationship (QSAR) model and the model was subsequently challenged by the left of drugs serving as an external validation set with an overall prediction accuracy of 68.9%. The performance of the model was further assessed by the use of 2 additional independent validation sets, and the 3 validation data sets have a total of 483 unique drugs. We observed that the QSAR model's performance varied for drugs with different therapeutic uses; however, it achieved a better estimated accuracy (73.6%) as well as negative predictive value (77.0%) when focusing only on these therapeutic categories with high prediction confidence. Thus, the model's applicability domain was defined. Taken collectively, the developed QSAR model has the potential utility to prioritize compound's risk for DILI in humans, particularly for the high-confidence therapeutic subgroups like analgesics, antibacterial agents, and antihistamines.

摘要

药物性肝损伤(DILI)是导致药物开发项目终止的主要原因之一。因此,在药物开发过程的早期阶段,确定候选药物在人类中发生 DILI 的风险,将大大降低制药行业的药物淘汰率,但需要实施新的研发策略。在这方面,已经提出了几种计算模型作为优先考虑候选药物的替代方法。由于预测模型的准确性和实用性在很大程度上取决于如何以可靠和一致的方式注释药物引起 DILI 的潜力,因此强调了经食品和药物管理局批准的药物标签。在标注的 387 种药物中,有 197 种药物被用于开发定量构效关系(QSAR)模型,随后使用其余的药物作为外部验证集来挑战该模型,总体预测准确率为 68.9%。该模型的性能还通过使用另外 2 个独立的验证集进行了评估,这 3 个验证数据集共有 483 种独特的药物。我们观察到,该 QSAR 模型在用于不同治疗用途的药物时表现有所不同;然而,当仅关注具有高预测置信度的这些治疗类别时,它的估计准确性(73.6%)和阴性预测值(77.0%)都得到了提高。因此,定义了模型的适用域。总的来说,所开发的 QSAR 模型具有优先考虑化合物在人类中发生 DILI 风险的潜在效用,特别是对于高置信度的治疗亚组,如镇痛药、抗菌剂和抗组胺药。

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