一个贝叶斯框架的法学硕士增强历史采取复发性医疗条件,以提高治疗效果:经验评估

Timothy Suraj
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引用次数: 0

摘要

本文介绍了一种新的贝叶斯框架,将大语言模型(llm)集成到病史采集中,专门针对复发性疾病,旨在克服传统方法的局限性,提高治疗效果。与医疗保健领域现有的人工智能应用主要侧重于急性环境中的诊断分类或预测不同,我们的方法强调在贝叶斯概率框架内迭代诊断改进和可解释的人工智能,为复发性疾病的个性化管理提供了独特的策略。我们通过分析目前临床病史采集实践的局限性,并利用现代法学硕士的能力来生成更全面的患者叙述,改善纵向数据的模式识别,并增强对细微疾病前兆的识别,对该框架进行了实证评估。我们对初步实施的回顾表明,将LLM整合到临床工作流程中可以减少诊断错误,提高治疗依从性,并实现更个性化的治疗干预。然而,在临床验证、隐私问题和与现有医疗保健系统的集成方面,仍然存在重大挑战。我们得出的结论是,llm是治疗复发性疾病的一个很有前途的工具,当作为医生增强而不是替代技术部署时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Bayesian framework for LLM-enhanced history-taking in recurrent medical conditions to improve treatment outcomes: An empirical evaluation
This paper introduces a novel Bayesian framework integrating Large Language Models (LLMs) into medical history-taking specifically for recurrent medical conditions, aiming to overcome limitations of traditional methods and improve treatment outcomes. Unlike existing AI applications in healthcare that primarily focus on diagnostic classification or prediction in acute settings, our approach emphasizes iterative diagnostic refinement and explainable AI within a Bayesian probabilistic framework, offering a unique strategy for personalized management of recurrent conditions. We empirically evaluate this framework by analyzing the current limitations in clinical history-taking practices and leveraging the capabilities of modern LLMs to generate more comprehensive patient narratives, improve pattern recognition across longitudinal data, and enhance the identification of subtle disease precursors. Our review of preliminary implementations suggests that LLM integration into clinical workflows may reduce diagnostic errors, improve treatment adherence, and enable more personalized therapeutic interventions. However, significant challenges remain regarding clinical validation, privacy concerns, and integration with existing healthcare systems. We conclude that LLMs represent a promising tool for treating recurrent medical conditions when deployed as physician augmentation rather than replacement technologies.
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来源期刊
Intelligence-based medicine
Intelligence-based medicine Health Informatics
CiteScore
5.00
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0.00%
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审稿时长
187 days
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