Artificial intelligence for optimizing benefits and minimizing risks of pharmacological therapies: challenges and opportunities

S. Crisafulli, Francesco Ciccimarra, Chiara Bellitto, Massimo Carollo, Elena Carrara, Lisa Stagi, Roberto Triola, Annalisa Capuano, Cristiano Chiamulera, Ugo Moretti, Eugenio Santoro, Alberto Eugenio Tozzi, Giuseppe Recchia, Gianluca Trifirò
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Abstract

In recent years, there has been an exponential increase in the generation and accessibility of electronic healthcare data, often referred to as “real-world data”. The landscape of data sources has significantly expanded to encompass traditional databases and newer sources such as the social media, wearables, and mobile devices. Advances in information technology, along with the growth in computational power and the evolution of analytical methods relying on bioinformatic tools and/or artificial intelligence techniques, have enhanced the potential for utilizing this data to generate real-world evidence and improve clinical practice. Indeed, these innovative analytical approaches enable the screening and analysis of large amounts of data to rapidly generate evidence. As such numerous practical uses of artificial intelligence in medicine have been successfully investigated for image processing, disease diagnosis and prediction, as well as the management of pharmacological treatments, thus highlighting the need to educate health professionals on these emerging approaches. This narrative review provides an overview of the foremost opportunities and challenges presented by artificial intelligence in pharmacology, and specifically concerning the drug post-marketing safety evaluation.
人工智能优化药物疗法的益处并降低其风险:挑战与机遇
近年来,电子医疗数据(通常被称为 "真实世界数据")的生成和可访问性呈指数级增长。数据源的范围已大大扩展,包括传统数据库以及社交媒体、可穿戴设备和移动设备等新数据源。信息技术的进步、计算能力的提高以及依靠生物信息学工具和/或人工智能技术的分析方法的发展,增强了利用这些数据生成真实世界证据和改进临床实践的潜力。事实上,这些创新的分析方法能够筛选和分析大量数据,快速生成证据。因此,在图像处理、疾病诊断和预测以及药物治疗管理方面,已经成功研究了人工智能在医学中的许多实际应用,从而突出了对医疗专业人员进行有关这些新兴方法的教育的必要性。本综述概述了人工智能在药理学领域,特别是在药品上市后安全性评估方面带来的首要机遇和挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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