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Artificial Intelligence for Drug Toxicity and Safety

机译:药物毒性和安全性的人工智能

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Interventional pharmacology is one of medicine's most potent weapons against disease. These drugs, however, can result in damaging side effects and must be closely monitored. Pharmacovigilance is the field of science that monitors, detects, and prevents adverse drug reactions (ADRs). Safety efforts begin during the development process, using in vivo and in vitro studies, continue through clinical trials, and extend to postmarketing surveillance of ADRs in real-world populations. Future toxicity and safety challenges, including increased polypharmacy and patient diversity, stress the limits of these traditional tools. Massive amounts of newly available data present an opportunity for using artificial intelligence (AI) and machine learning to improve drug safety science. Here, we explore recent advances as applied to preclinical drug safety and postmarketing surveillance with a specific focus on machine and deep learning (DL) approaches.
机译:介入药理学是药物最有效的疾病之一。 然而,这些药物可能导致副作用损坏,必须密切监测。 药物检测是监测,检测和防止不良药物反应(ADRS)的科学领域。 安全努力在开发过程中开始,使用体内和体外研究,继续通过临床试验,并延伸到现实世界中ADR的邮政市场。 未来的毒性和安全挑战,包括增加复数和患者多样性,压力这些传统工具的限制。 大量的新可获得的数据为使用人工智能(AI)和机器学习来提高药物安全科学的机会。 在这里,我们探讨了应用于临床前药物安全和邮政局监测的最新进展,并对机器和深度学习(DL)方法进行了特定的重点。

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