Machine learning to predict food effects during drug development: a comprehensiv...
연구 요약
Machine learning to predict food effects during drug development: a comprehensive review.
Journal of cheminformatics 학술지에 발표된 이 연구는 Shah A, Bi F, Yang J 외 연구팀이 수행하였습니다.
이 연구는 'Machine learning to predict food effects during drug development: a comprehensive review.'에 대한 과학적 분석을 제공합니다.
핵심 내용
Drug absorption can be altered due to the consumption of food, impacting the efficacy and safety of the drug administered, and predicting food effects (FE) can be quite complex. Traditional methods, including in vitro and in vivo models, fail to predict the full range of food-drug interactions owing to the biological variability of the gastrointestinal system. This review evaluates the predictive ability and accuracy of machine learning (ML) in predicting FE in comparison to conventional methods. We consider how ML models use food dataset information and assist in enhancing the formulation and dosing of the drugs. We discussed recent trends in FE prediction, its mechanisms, and effects on drug bioavailability. Supervised and unsupervised learning, as well as reinforcement learning, are analyzed in the context of absorption, distribution, metabolism, and elimination (ADME) forecasting and drug development. ML is certainly useful in addressing the issues posed by traditional methods; however, challenges about data quality, model generalizability, and integration into the drug development process are obstacles that must be overcome. This review explains how other emerging technologies, for example, PBPK modeling, can be combined with ML to enhance its prospects in the field of drug development. We examined prospects of deep learning, explainable artificial intelligence (AI), and ethical and legal aspects of applying ML in pharmacokinetics, as well as the interdisciplinary approaches that are required to improve patient care outcomes.
일반인을 위한 해석
구체적인 실천 사항은 담당 의사 또는 약사와 상담하시기 바랍니다.
실천 사항
- 현재 복용 중인 약물이나 영양제에 대해 궁금한 점이 있다면 담당 의사 또는 약사와 상담하시기 바랍니다
- 약물이나 영양제의 용법·용량을 임의로 변경하지 마세요
- 이상 반응이 나타나면 즉시 전문가에게 문의하세요
의사/약사의 전문적 판단을 대체하지 않습니다 (PMID: 41372958)
📄 [전문 보기 (Markdown)](fulltext/41372958-machine-learning-to-predict-food-effects-during-drug-develop.md)
이 연구와 관련된 약물을 복용 중인가요?
상호작용 체크하러 가기이 정보는 의학 논문의 요약이며, 의사/약사의 전문적 판단을 대체하지 않습니다.