人工智能在毒理学和药理学中的应用

S. Nasnodkar, Burak Cinar, Stephanie Ness
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引用次数: 0

摘要

利用机器学习和人工智能的方法已经改变了许多领域,包括毒理学领域。基于生理的药代动力学(PBPK)建模、用于毒性预测的定量构效关系建模、不良结果通路分析、高通量筛选、毒理学基因组学、大数据和毒理学数据库只是本文所涉及的一些领域。通过利用机器学习和人工智能方法,现在可以高效地开发数百种化学物质的PBPK模型,创建与体内动物实验相比具有相似精度的大量化学物质的预测毒性的计算机模型,并分析各种类型的大量数据(毒物基因组学,高含量图像数据等)以快速产生对毒性机制的新见解。这在以前是不可能的。在取得进一步进展之前,毒理学科学领域面临着许多必须克服的挑战。这些挑战包括:(1)并不是所有的机器学习模型对特定类型的毒理学数据都同样有用;因此,测试不同的方法以确定最优方法是很重要的;(2)目前的毒性预测主要基于生物活性分类(是/否);因此,需要进一步的研究来预测效应强度或剂量-反应关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence in Toxicology and Pharmacology
Methods that utilize machine learning and artificial intelligence have transformed a wide variety of fields, including the field of toxicology. Physiologically based pharmacokinetic (PBPK) modeling, quantitative structure-activity relationship modeling for toxicity prediction, adverse outcome pathway analysis, high-throughput screening, toxicogenomics, big data, and toxicological databases are just some of the areas that are covered in this review. By leveraging machine learning and artificial intelligence approaches, it is now possible to develop PBPK models for hundreds of chemicals in an efficient manner, to create in silico models to predict toxicity for a large number of chemicals with similar accuracies compared with In vivo animal experiments, and to analyze a large amount of data of various types (toxicogenomics, high-content image data, etc.) to generate new insights into toxicity mechanisms rapidly, which was previously impossible. This is an improvement over the previous situation The field of toxicological sciences faces a number of challenges that must be overcome before it can make further progress. These challenges include the following: (1) not all machine learning models are equally useful for a particular type of toxicology data; therefore, it is important to test different methods to determine the optimal approach; (2) the current toxicity prediction is primarily based on bioactivity classification (yes/no); therefore, additional studies are required to predict the intensity of effect or dose-response relationship.
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