个性化老年护理的人工智能驱动决策:基于模糊mcdm的强化治疗建议框架。

IF 3.3 3区 医学 Q2 MEDICAL INFORMATICS
Abeer Aljohani
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引用次数: 0

摘要

背景:由于人口老龄化,全球医疗保健系统面临着巨大的挑战,需要新的措施来确保长期疗效和可行性。不断扩大的老年人口需要专门和有效的医疗保健解决方案,这强调了提高医疗保健可持续性的重要性。认识到个性化医疗保健建议在改善患者预后和设施可持续性方面的重要性,本研究解决了有针对性治疗的关键需求,以帮助老年人应对复杂的医疗保健环境。目的:通过自动化与模糊VIKOR方法以及电子健康记录(EHR)数据的集成,本工作旨在创建一个自动化决策机制,以改善老年人的个性化医疗保健建议。通过使用自动数据驱动的观察,模糊VIKOR来处理决策不确定性以及EHR数据的临床深度,主要目标是提高治疗选择的有效性和准确性。为了保证治疗建议不仅在医学上有益,而且符合每个患者的需求和偏好,本研究旨在缩小自动化智能和以患者为中心的护理之间的差距。方法:将模糊VIKOR方法与电子健康记录(EHR)数据结合使用,为个性化医疗保健建议建立一个强有力的框架。人工智能技术用于增强数据处理,模糊VIKOR用于控制决策中的不确定性,而电子病历数据提供全面的临床见解。这些方面的结合能够创建一个系统,补偿医学知识和患者偏好的不确定性,最终形成一系列针对老年人医疗保健决策困难定制的治疗方案。结果:该研究显示了所提出的方法如何改善老年人的治疗选择。通过结合人工智能分析、模糊VIKOR和电子病历数据,该研究为医疗保健建议提供了一种完善和个性化的方法,并根据个人特征和偏好提供了排名治疗方案。研究结果表明,该策略在处理医疗保健复杂性方面具有潜力,并有助于发展精准医疗时代。结论:本研究为进一步探讨老年人医疗保健的可持续性做出了重要贡献。人工智能驱动的方法、模糊VIKOR技术和电子病历数据的结合,为改善精准医疗环境下的治疗选择提供了一种有希望的方法。通过接受个性化的医疗保健建议,本研究预计未来老年人的独特特征和偏好将成为决策过程的核心,不仅可以保持更好的患者结果,还可以保持老年人医疗保健服务的长期可行性和可持续性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI-Driven decision-making for personalized elderly care: a fuzzy MCDM-based framework for enhancing treatment recommendations.

Background: Global healthcare systems face enormous challenges due to the ageing population, demanding novel measures to assure long-term efficacy and viability. The expanding senior population, which requires specialised and efficient healthcare solutions, emphasises the importance of improving healthcare sustainability. Recognising the importance of personalised healthcare recommendations in improving patient outcomes as well as facility sustainability, this study tackles the crucial need for targeted treatments to help the elderly navigate the complicated healthcare landscape.

Objectives: Through the integration of automation with the Fuzzy VIKOR approach as well as Electronic Health Record (EHR) data, this work seeks to create an automated decision-making mechanism that improves personalised healthcare suggestions for the elderly. By using automated data-driven observations, Fuzzy VIKOR to handle decision-making uncertainty as well as the clinical depth of EHR data, the primary objective is to increase the efficacy and accuracy of treatment choices. In order to guarantee that treatment recommendations are not only medically beneficial but also in line with each patient's needs and preferences, this research aims to close the gap between automated intelligence as well as patient-centered care.

Method: The Fuzzy VIKOR approach is used with Electronic Health Record (EHR) data to establish a strong framework for personalised healthcare recommendations. AI techniques are employed to enhance data processing, while Fuzzy VIKOR is used to control uncertainty in decision-making, whereas EHR data gives comprehensive clinical insights. The combination of these aspects enables the creation of a system that compensates for uncertainties in medical knowledge and patient preferences, culminating in a ranked array of treatment alternatives customised to the difficulties of healthcare decision-making for the aged.

Results: The study shows how the proposed methodology improves therapy selection for senior populations. By combining AI-powered analysis, Fuzzy VIKOR, and EHR data, the study provides a refined and personalised approach to healthcare recommendations, providing ranked treatment alternatives based on individual characteristics and preferences. The findings demonstrate the potential of this strategy to handle healthcare complexity and contribute to the developing era of precision medicine.

Conclusion: Finally this study makes an important contribution to the continuing discussion about the sustainability of healthcare for the elderly. The combination of AI-driven methodologies, the Fuzzy VIKOR technique and EHR data offers a promising approach to improving therapy selection in the setting of precision medicine. By accepting personalised healthcare recommendations, this study anticipates a future in which elderly people's unique characteristics and preferences are central to decision-making processes, maintaining not only better patient outcomes but also the long-term viability and sustainability of healthcare services for the elderly.

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来源期刊
CiteScore
7.20
自引率
5.70%
发文量
297
审稿时长
1 months
期刊介绍: BMC Medical Informatics and Decision Making is an open access journal publishing original peer-reviewed research articles in relation to the design, development, implementation, use, and evaluation of health information technologies and decision-making for human health.
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