Na Li, Juan Shi, Zhaoyang Chen, Zhonghua Dong, Shiyu Ma, Yan Li, Xin Huang, Xiao Li
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引用次数: 0
Abstract
Introduction: Due to its role in absorption and metabolism, the kidney is an important target for drug toxicity. Drug-induced nephrotoxicity (DIN) presents a significant challenge in clinical practice and drug development. Conventional methods for assessing nephrotoxicity have limitations, highlighting the need for innovative approaches. In recent years, in silico methods have emerged as promising tools for predicting DIN.
Areas covered: A literature search was performed using PubMed and Web of Science, from 2013 to February 2023 for this review. This review provides an overview of the current progress and pitfalls in the in silico prediction of DIN, which discusses the principles and methodologies of computational models.
Expert opinion: Despite significant advancements, this review identified issues accentuates the pivotal imperatives of data fidelity, model optimization, interdisciplinary collaboration, and mechanistic comprehension in sculpting the vista of DIN prediction. Integration of multiple data sources and collaboration between disciplines are essential for improving predictive models. Ultimately, a holistic approach combining computational, experimental, and clinical methods will enhance our understanding and management of DIN.
简介由于肾脏在吸收和代谢中的作用,它是药物毒性的一个重要靶点。药物诱导的肾毒性(DIN)给临床实践和药物开发带来了巨大挑战。评估肾毒性的传统方法存在局限性,因此需要创新方法。近年来,硅学方法已成为预测 DIN 的有前途的工具:本综述使用 PubMed 和 Web of Science 对 2013 年至 2023 年 2 月的文献进行了检索。本综述概述了 DIN 的硅学预测目前取得的进展和存在的缺陷,讨论了计算模型的原理和方法:专家意见:尽管取得了重大进展,但本综述中发现的问题强调了数据保真度、模型优化、跨学科合作和机理理解在构建 DIN 预测远景中的关键作用。整合多种数据源和学科间的合作对于改进预测模型至关重要。最终,结合计算、实验和临床方法的整体方法将增强我们对 DIN 的理解和管理。