人工智能在抗微生物药物耐药性中的应用。

IF 2.3 4区 医学 Q3 INFECTIOUS DISEASES
Cyrielle Codde, Jean-François Faucher, Jean-Baptiste Woillard
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引用次数: 0

摘要

抗菌素耐药性(AMR)对全球健康构成重大威胁,据预测,如果不加以解决,到2050年其死亡率可能超过癌症。优化抗菌药物剂量对于减轻耐药性和改善临床结果至关重要。传统的方法,包括群体药代动力学(PK)模型和贝叶斯估计,受到机械假设要求和复杂性的限制。人工智能(AI)和机器学习(ML)通过利用大型数据集准确预测药物暴露,改进采样策略,并通过治疗药物监测实现实时剂量调整,从而提供变革性解决方案。这篇综述强调了ML模型在管理不同患者群体的PK和药效学变异性方面的作用。人工智能模型在实现治疗目标的同时将毒性降至最低,通常与传统方法持平或优于传统方法,如涉及更昔洛韦、万古霉素和达托霉素的一些案例研究所证明的那样。尽管存在数据质量、可解释性和与临床工作流程的整合等挑战,但人工智能的动态适应性和准确性突显了其潜力。未来的方向强调整合多组学数据,开发床边决策支持工具,并将人工智能应用扩展到更广泛的药物类别和人群。持续的研究和临床验证对于充分利用人工智能在推进精准医疗和有效对抗抗菌素耐药性方面的潜力至关重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Use of Artificial Intelligence in Current Fight Against Antimicrobial Resistance.

Antimicrobial resistance (AMR) poses a significant global health threat, with projections indicating it could surpass cancer in mortality rates by 2050 if left unaddressed. Optimizing antimicrobial dosing is critical to mitigate resistance and improve clinical outcomes. Traditional approaches, including population pharmacokinetics (PK) models and Bayesian estimation, are limited by mechanistic hypothesis requirements and complexity. Artificial intelligence (AI) and machine learning (ML) offer transformative solutions by leveraging large datasets to predict drug exposure accurately, refine sampling strategies, and enable real-time dose adjustments through therapeutic drug monitoring. This review highlights the role of ML models, in managing PK and pharmacodynamic variability across diverse patient populations. AI models often equal or outperform traditional methods in achieving therapeutic targets while minimizing toxicity, as demonstrated in some case studies involving ganciclovir, vancomycin, and daptomycin. Despite challenges such as data quality, interpretability, and integration with clinical workflows, AI's dynamic adaptability and precision underscore its potential. Future directions emphasize integrating multi-omics data, developing bedside decision-support tools, and expanding AI applications to broader drug categories and populations. Continued research and clinical validation are essential to harness AI's full potential in advancing precision medicine and combating AMR effectively.

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来源期刊
Microbial drug resistance
Microbial drug resistance 医学-传染病学
CiteScore
6.00
自引率
3.80%
发文量
118
审稿时长
6-12 weeks
期刊介绍: Microbial Drug Resistance (MDR) is an international, peer-reviewed journal that covers the global spread and threat of multi-drug resistant clones of major pathogens that are widely documented in hospitals and the scientific community. The Journal addresses the serious challenges of trying to decipher the molecular mechanisms of drug resistance. MDR provides a multidisciplinary forum for peer-reviewed original publications as well as topical reviews and special reports. MDR coverage includes: Molecular biology of resistance mechanisms Virulence genes and disease Molecular epidemiology Drug design Infection control.
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