危重患者抗菌药物治疗中的机器学习:优化早期经验方案,个体化剂量和降级策略。

IF 4.6 2区 医学 Q1 INFECTIOUS DISEASES
Xinyun Huan, Linlin Hu, Hao Li, Feng Yu, Hua Shao
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引用次数: 0

摘要

危重患者的复杂性导致高药代动力学(PK)变异性和耐药风险增加。对于这一特殊的患者群体,由于传统的治疗模式在临床实践中可能存在一定的局限性,抗菌治疗方案需要个性化的策略。机器学习(ML)已成为处理多维临床数据的新工具。它可以识别复杂的模式,以提高不同人群的诊断准确性、治疗优化和药物行为预测。基于机器学习的潜在力量,本文综述了其在三个关键领域的应用:(1)抗菌药物耐药性(AMR)模式的预测建模,以优化经验抗生素选择和减轻耐药性的发展;(2)数据驱动的药物暴露预测,指导个体化剂量调整;(3)识别可能需要抗生素降压治疗的患者,在确保治疗效果的同时优化抗菌药物的使用。此外,本文建议ML算法可以与群体药代动力学(PopPK)模型相结合,构建具有较好预测性能和可解释性的分析框架。该方法可以更准确地定量分析危重患者抗菌药物的剂量-暴露-反应关系。尽管取得了这些进步,但在数据质量、临床验证和伦理监管方面仍然存在挑战。未来的研究可能会优先考虑前瞻性临床试验,以弥合理论模型和临床应用之间的差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning in Antimicrobial Therapy for Critically Ill Patients: Optimizing Early Empirical Regimens, Individualized Dosing, and De-Escalation Strategies.

The complexity of critically ill patients leads to high pharmacokinetic (PK) variability and an increased risk of drug resistance. For this special patient group, antimicrobial treatment regimens require individualized strategies, as traditional treatment models may have certain limitations in clinical practice. Machine learning (ML) has emerged as a novel tool for processing multidimensional clinical data. It could identify complex patterns to enhance diagnostic accuracy, treatment optimization, and drug behavior predictions across diverse populations. Based on the underlying power of ML, this review highlights its application in three critical domains: (1) predictive modeling of antimicrobial resistance (AMR) patterns to optimize the empirical antibiotic selection and mitigate resistance development; (2) data-driven forecasting of drug exposure to guide personalized dose adjustments; and (3) identify patients who potentially require antibiotic de-escalation therapy and optimize antimicrobial drug use while ensuring therapeutic efficacy. Furthermore, this paper suggests that ML algorithms could be combined with population pharmacokinetic (PopPK) models to construct an analytical framework with superior predictive performance and maintain interpretability. This method could provide a more accurate quantitative analysis of the dose-exposure-response relationship of antimicrobial drugs in critically ill patients. Despite these advances, challenges persist in data quality, clinical validation, and ethical regulation. Future research might prioritize prospective clinical trials to bridge the gap between theoretical models and bedside applications.

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来源期刊
CiteScore
21.60
自引率
0.90%
发文量
176
审稿时长
36 days
期刊介绍: The International Journal of Antimicrobial Agents is a peer-reviewed publication offering comprehensive and current reference information on the physical, pharmacological, in vitro, and clinical properties of individual antimicrobial agents, covering antiviral, antiparasitic, antibacterial, and antifungal agents. The journal not only communicates new trends and developments through authoritative review articles but also addresses the critical issue of antimicrobial resistance, both in hospital and community settings. Published content includes solicited reviews by leading experts and high-quality original research papers in the specified fields.
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