开发一个原型机器学习模型来预测艾滋病毒感染者的生活质量措施。

IF 2.1 Q3 PHARMACOLOGY & PHARMACY
Integrated Pharmacy Research and Practice Pub Date : 2025-01-22 eCollection Date: 2025-01-01 DOI:10.2147/IPRP.S492422
Gabriel Mercadal-Orfila, Joaquin Serrano López de Las Hazas, Melchor Riera-Jaume, Salvador Herrera-Perez
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引用次数: 0

摘要

背景:在20世纪90年代初由Gordon Guyatt提出的循证医学领域,机器学习技术的整合标志着朝着更客观、循证驱动的医疗保健迈出了重要的一步。循证医学原则侧重于将现有的最佳科学证据用于临床决策,通过将这些证据与临床医生的专业知识和患者的价值观相结合,提高医疗保健质量和一致性。患者报告的结果测量(PROMs)和患者报告的体验测量(PREMs)在评估治疗的更广泛影响方面已经变得至关重要,特别是对艾滋病毒等慢性疾病,全面反映患者的健康和福祉。目的:该研究旨在利用机器学习(ML)技术从PROMs/PREMs数据中预测健康结果,重点关注艾滋病毒感染者。患者和方法:我们的研究利用ML随机森林回归分析了通过NAVETA远程医疗系统从1200多名艾滋病毒感染者收集的prom /PREMs数据。结果:研究结果证明了ML算法在提供准确和一致的健康结果预测方面的潜力,表明在临床环境中具有高可靠性和有效性。值得注意的是,我们的ALGOPROMIA ML模型对MOS30 VIH (aj . R²= 0.984)、ESTAR (aj . R²= 0.963)和BERGER (aj . R²= 0.936)等问卷的预测精度最高。P3CEQ (adjj R²= 0.753)和TSQM (adjj R²= 0.698)的表现一般,反映了不同仪器的模型精度差异。此外,该模型在将大多数仪器的标准化预测误差保持在0.2以下方面表现出很强的可靠性,WHOQoL HIV Bref和ESTAR达到这一阈值的概率分别为96.43%和88.44%,而TSQM和WRFQ的概率较低(44%)和51%。结论:我们的机器学习算法的结果有望预测艾滋病环境中的prom和PREMs。这项工作强调了如何整合机器学习技术可以增强临床药物决策,并在多学科整合框架内支持个性化治疗策略。此外,利用NAVETA等平台部署这些模型提供了一种可扩展的实施方法,促进以患者为中心、以价值为基础的护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing a Prototype Machine Learning Model to Predict Quality of Life Measures in People Living With HIV.

Background: In the realm of Evidence-Based Medicine, introduced by Gordon Guyatt in the early 1990s, the integration of machine learning technologies marks a significant advancement towards more objective, evidence-driven healthcare. Evidence-Based Medicine principles focus on using the best available scientific evidence for clinical decision-making, enhancing healthcare quality and consistency by integrating this evidence with clinician expertise and patient values. Patient-Reported Outcome Measures (PROMs) and Patient-Reported Experience Measures (PREMs) have become essential in evaluating the broader impacts of treatments, especially for chronic conditions like HIV, reflecting patient health and well-being comprehensively.

Purpose: The study aims to leverage Machine Learning (ML) technologies to predict health outcomes from PROMs/PREMs data, focusing on people living with HIV.

Patients and methods: Our research utilizes a ML Random Forest Regression to analyze PROMs/PREMs data collected from over 1200 people living with HIV through the NAVETA telemedicine system.

Results: The findings demonstrate the potential of ML algorithms to provide precise and consistent predictions of health outcomes, indicating high reliability and effectiveness in clinical settings. Notably, our ALGOPROMIA ML model achieved the highest predictive accuracy for questionnaires such as MOS30 VIH (Adj. = 0.984), ESTAR (Adj. = 0.963), and BERGER (Adj. = 0.936). Moderate performance was observed for the P3CEQ (Adj. = 0.753) and TSQM (Adj. = 0.698), reflecting variability in model accuracy across instruments. Additionally, the model demonstrated strong reliability in maintaining standardized prediction errors below 0.2 for most instruments, with probabilities of achieving this threshold being 96.43% for WHOQoL HIV Bref and 88.44% for ESTAR, while lower probabilities were observed for TSQM (44%) and WRFQ (51%).

Conclusion: The results from our machine learning algorithms are promising for predicting PROMs and PREMs in AIDS settings. This work highlights how integrating ML technologies can enhance clinical pharmaceutical decision-making and support personalized treatment strategies within a multidisciplinary integration framework. Furthermore, leveraging platforms like NAVETA for deploying these models presents a scalable approach to implementation, fostering patient-centered, value-based care.

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