The Artificial Intelligence-Powered New Era in Pharmaceutical Research and Development: A Review.

IF 3.4 4区 医学 Q2 PHARMACOLOGY & PHARMACY AAPS PharmSciTech Pub Date : 2024-08-15 DOI:10.1208/s12249-024-02901-y
Phuvamin Suriyaamporn, Boonnada Pamornpathomkul, Prasopchai Patrojanasophon, Tanasait Ngawhirunpat, Theerasak Rojanarata, Praneet Opanasopit
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Abstract

Currently, artificial intelligence (AI), machine learning (ML), and deep learning (DL) are gaining increased interest in many fields, particularly in pharmaceutical research and development, where they assist in decision-making in complex situations. Numerous research studies and advancements have demonstrated how these computational technologies are used in various pharmaceutical research and development aspects, including drug discovery, personalized medicine, drug formulation, optimization, predictions, drug interactions, pharmacokinetics/ pharmacodynamics, quality control/quality assurance, and manufacturing processes. Using advanced modeling techniques, these computational technologies can enhance efficiency and accuracy, handle complex data, and facilitate novel discoveries within minutes. Furthermore, these technologies offer several advantages over conventional statistics. They allow for pattern recognition from complex datasets, and the models, typically developed from data-driven algorithms, can predict a given outcome (model output) from a set of features (model inputs). Additionally, this review discusses emerging trends and provides perspectives on the application of AI with quality by design (QbD) and the future role of AI in this field. Ethical and regulatory considerations associated with integrating AI into pharmaceutical technology were also examined. This review aims to offer insights to researchers, professionals, and others on the current state of AI applications in pharmaceutical research and development and their potential role in the future of research and the era of pharmaceutical Industry 4.0 and 5.0.

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人工智能驱动的医药研发新时代:综述。
目前,人工智能 (AI)、机器学习 (ML) 和深度学习 (DL) 在许多领域都受到越来越多的关注,尤其是在制药研发领域,它们有助于在复杂情况下做出决策。大量的研究和进展证明了这些计算技术如何应用于药物研发的各个方面,包括药物发现、个性化医疗、药物制剂、优化、预测、药物相互作用、药代动力学/药效学、质量控制/质量保证和生产流程。利用先进的建模技术,这些计算技术可以提高效率和准确性,处理复杂的数据,并在几分钟内促进新发现。此外,与传统统计相比,这些技术还具有多项优势。它们可以从复杂的数据集中进行模式识别,而通常由数据驱动算法开发的模型可以根据一组特征(模型输入)预测特定结果(模型输出)。此外,本综述还讨论了新出现的趋势,并就人工智能在质量源于设计(QbD)中的应用以及人工智能在这一领域的未来作用提出了看法。此外,还探讨了与将人工智能融入制药技术相关的伦理和监管问题。本综述旨在为研究人员、专业人士和其他人员提供有关人工智能在制药研发中的应用现状及其在未来研究和制药工业 4.0 和 5.0 时代的潜在作用的见解。
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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来源期刊
AAPS PharmSciTech
AAPS PharmSciTech 医学-药学
CiteScore
6.80
自引率
3.00%
发文量
264
审稿时长
2.4 months
期刊介绍: AAPS PharmSciTech is a peer-reviewed, online-only journal committed to serving those pharmaceutical scientists and engineers interested in the research, development, and evaluation of pharmaceutical dosage forms and delivery systems, including drugs derived from biotechnology and the manufacturing science pertaining to the commercialization of such dosage forms. Because of its electronic nature, AAPS PharmSciTech aspires to utilize evolving electronic technology to enable faster and diverse mechanisms of information delivery to its readership. Submission of uninvited expert reviews and research articles are welcomed.
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