基于干预映射框架的综合老年人护理模型(SMART系统)知识库开发:混合方法研究。

IF 4
JMIR nursing Pub Date : 2025-08-14 DOI:10.2196/59276
Rongrong Guo, Shuqin Xiao, Fangyu Yang, Huan Fan, Yanyan Xiao, Xue Yang, Ying Wu
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引用次数: 0

摘要

背景:尽管与物联网设备集成的移动健康应用程序越来越多地用于满足人口快速老龄化导致的居家老年人护理需求的增长,但其有效性受到3个关键挑战的限制:关注特定功能而不是整体和综合支持,缺乏坚实的发展理论框架,以及缺乏个性化的实时反馈以满足多样化的护理需求。为了克服这些限制,我们利用移动医疗技术开发了一种基于知识的临床决策支持系统——智能综合老年人护理模型(SMART系统)。目的:本研究旨在系统地概述一个知识库的开发过程和结果,并为SMART系统触发规则。方法:本研究采用以用户为中心的方法,以护理流程和干预映射(IM)框架为指导。我们首先通过半结构化的深度访谈确定老年人的护理需求。在护理过程的指导下,根据世界卫生组织老年人综合护理指南、世界卫生组织国际功能、残疾和健康分类以及北美护理诊断协会- i护理诊断指南,我们确定了护理问题及其潜在原因、风险因素和诊断标准。在这些发现的基础上,我们应用干预绘图框架的前3个步骤来制定相应的长期和短期护理目标,选择适当的循证干预措施,并匹配实际的实施方法,这些方法基于来自系统文献综述、临床指南和专家见解的严格证据。我们还开发了一套触发规则,将老年人的异常与SMART知识库中的相应护理问题和干预措施联系起来。结果:半结构化深度访谈确定了日常生活护理、健康护理、外部支持、社会参与和自我发展5类护理需求,构成了SMART知识库的基础。在此基础上,我们确定了138个护理问题,每个问题都有相关的原因、风险因素和诊断标准。目标矩阵包括138个长期护理目标和195个短期护理目标。在15个专家定义的选择标准的指导下,我们选择了450个基于证据的干预措施,每个干预措施至少搭配1个可行和实用的实施方法。此外,我们制定了诊断规则,将评估数据与相关护理问题及其原因和风险因素相匹配,并制定了干预触发规则,根据个体特征制定个性化干预措施,确保量身定制的护理符合特定的护理目标。结论:本研究概述了SMART知识库和触发规则的开发过程和结果。研究方法为建立居家养老临床决策支持系统的知识库和触发规则提供了理论支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of a Knowledge Base for an Integrated Older Adult Care Model (SMART System) Based on an Intervention Mapping Framework: Mixed Methods Study.

Background: Although mobile health apps integrated with Internet of Things-enabled devices are increasingly used to satisfy the growing needs for home-based older adult care resulting from rapid population aging, their effectiveness is constrained by 3 key challenges: a focus on specific functions rather than on holistic and integrated support, absence of a solid theoretical framework for development, and a lack of personalized, real-time feedback to address diverse care needs. To overcome these limitations, we developed a knowledge-based clinical decision support system using mobile health technology-an intelligent and integrated older adults care model (SMART system).

Objective: This study aims to systematically outline the development process and outcomes of a knowledge base and trigger rules for the SMART system.

Methods: Our study adopted a user-centered approach guided by the nursing process and intervention mapping (IM) framework. We first identified older adult care needs through semistructured, in-depth interviews. Guided by the nursing process and informed by guidance from the World Health Organization's Integrated Care for Older People and World Health Organization International Classification of Functioning, Disability, and Health, along with the North American Nursing Diagnosis Association-I nursing diagnosis, we then determined care problems along with their underlying causes and risk factors and diagnostic criteria. Building on these findings, we applied the first 3 steps of the intervention mapping framework to formulate corresponding long-term and short-term care objectives, select appropriate evidence-based interventions, and match practical implementation approaches, which were grounded in rigorous evidence derived from systematic literature reviews, clinical guidelines, and expert insights. We also developed a set of trigger rules to link abnormalities in older adults with corresponding care problems and interventions in the SMART knowledge base.

Results: The semistructured in-depth interviews identified 5 types of care needs-daily life care, health care, external support, social participation, and self-development-which formed the foundation of the SMART knowledge base. Based on this, we identified 138 care problems, each with associated causes and risk factors and diagnostic criteria. The objective matrix comprised 138 long-term and 195 short-term care objectives. Guided by 15 expert-defined selection criteria, we then selected 450 evidence-based interventions, each paired with at least 1 feasible and practical implementation approach. Additionally, we developed diagnostic rules to match the assessment data with relevant care problems and their causes and risk factors and intervention trigger rules to formulate personalized interventions based on individual characteristics, ensuring tailored care aligned with specific care objectives.

Conclusions: This study outlines the development process and outcomes of the SMART knowledge base and trigger rules. The study methodology offers theoretical support for developing knowledge bases and trigger rules of similar clinical decision support systems for home-based older adult care.

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