Division of Systems Biology, National Center for Toxicological Research, United States Food and Drug Administration, Jefferson, Arizona, USA.
PLoS Comput Biol. 2011 Dec;7(12):e1002310. doi: 10.1371/journal.pcbi.1002310. Epub 2011 Dec 15.
Drug-induced liver injury (DILI) is a significant concern in drug development due to the poor concordance between preclinical and clinical findings of liver toxicity. We hypothesized that the DILI types (hepatotoxic side effects) seen in the clinic can be translated into the development of predictive in silico models for use in the drug discovery phase. We identified 13 hepatotoxic side effects with high accuracy for classifying marketed drugs for their DILI potential. We then developed in silico predictive models for each of these 13 side effects, which were further combined to construct a DILI prediction system (DILIps). The DILIps yielded 60-70% prediction accuracy for three independent validation sets. To enhance the confidence for identification of drugs that cause severe DILI in humans, the "Rule of Three" was developed in DILIps by using a consensus strategy based on 13 models. This gave high positive predictive value (91%) when applied to an external dataset containing 206 drugs from three independent literature datasets. Using the DILIps, we screened all the drugs in DrugBank and investigated their DILI potential in terms of protein targets and therapeutic categories through network modeling. We demonstrated that two therapeutic categories, anti-infectives for systemic use and musculoskeletal system drugs, were enriched for DILI, which is consistent with current knowledge. We also identified protein targets and pathways that are related to drugs that cause DILI by using pathway analysis and co-occurrence text mining. While marketed drugs were the focus of this study, the DILIps has a potential as an evaluation tool to screen and prioritize new drug candidates or chemicals, such as environmental chemicals, to avoid those that might cause liver toxicity. We expect that the methodology can be also applied to other drug safety endpoints, such as renal or cardiovascular toxicity.
药物性肝损伤(DILI)是药物开发中的一个重要关注点,因为临床前和临床肝毒性发现之间的一致性较差。我们假设,在临床上观察到的 DILI 类型(肝毒性副作用)可以转化为用于药物发现阶段的预测性计算模型。我们确定了 13 种具有高准确性的肝毒性副作用,用于对具有 DILI 潜力的上市药物进行分类。然后,我们为这 13 种副作用中的每一种开发了计算预测模型,进一步将其组合构建了一个 DILI 预测系统(DILIps)。该 DILIps 在三个独立的验证集中的预测准确率达到了 60-70%。为了提高识别在人类中引起严重 DILI 的药物的置信度,我们在 DILIps 中使用基于 13 个模型的共识策略开发了“三规则”。当应用于包含来自三个独立文献数据集的 206 种药物的外部数据集时,它具有 91%的高阳性预测值。使用 DILIps,我们筛选了 DrugBank 中的所有药物,并通过网络建模研究了它们在蛋白质靶标和治疗类别方面的 DILI 潜力。我们证明了两个治疗类别,全身抗感染药物和肌肉骨骼系统药物,富含 DILI,这与当前的知识是一致的。我们还通过通路分析和共现文本挖掘,确定了与导致 DILI 的药物相关的蛋白质靶标和途径。虽然上市药物是本研究的重点,但 DILIps 具有作为评估工具的潜力,可以筛选和优先考虑新药候选物或化学物质,如环境化学物质,以避免那些可能导致肝毒性的物质。我们预计该方法也可应用于其他药物安全性终点,如肾或心血管毒性。