Construction of community health care integration using artificial intelligence models

Chen Zhou, Ping Zhou, Xiaolan Xuan
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Abstract

The primary focus of this research is on the integration model of community health care for the elderly floating population. It combines service design theory and incorporates an integration strategy and construction approach for providing health services to the floating elderly population. A stacking optimization model is employed to summarize correlation degrees and calculate importance scores for their needs. Based on this scoring system, a community health care model is constructed that enables intelligent cooperation and human–computer interaction specifically tailored to meet the needs of the mobile elderly population. Additionally, a mobile terminal is designed based on this model. Experimental results demonstrate that our proposed model assigns high-importance scores (ranging from 4.48 to 5.00) to community health care indicators for the elderly floating population, accounting for 52.17–100% of their overall score distribution range. Secondary indicators also receive significant importance scores ranging from 4.43 to 5.00, representing between 47.83 and 100% of their full score range; while third-level indicators have importance scores ranging from 3.87 to 5.00, accounting for between 21.74 and 100% of their full score range, respectively. The Kaiser–Meyer–Olkin (KMO) value obtained in our study was found to be satisfactory at a level of 0.93 indicating good sampling adequacy.
利用人工智能模型构建社区医疗保健一体化
本研究的主要重点是流动老年人口社区卫生服务一体化模式。它结合了服务设计理论,融入了为流动老年人群提供健康服务的整合策略和建设方法。采用叠加优化模型总结相关度,计算其需求的重要性分值。在此评分系统的基础上,构建了一个社区医疗保健模型,实现智能合作和人机交互,专门满足流动老年人群的需求。此外,还根据该模型设计了一款移动终端。实验结果表明,我们提出的模型为流动老年人群的社区医疗保健指标赋予了较高的重要性分值(从 4.48 到 5.00 不等),占其总体分值分布范围的 52.17%-100%。二级指标的重要度得分也在 4.43-5.00 之间,占其满分分布范围的 47.83%-100%;三级指标的重要度得分在 3.87-5.00 之间,分别占其满分分布范围的 21.74%-100%。本研究得出的 KMO(凯泽尔-迈耶-奥尔金)值为 0.93,令人满意,表明抽样充分性良好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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