利用日常收集的数据为长期护理中的老年人提供营养不良自动筛查工具:AutoMal 的开发和内部验证。

IF 4.2 2区 医学 Q2 GERIATRICS & GERONTOLOGY
Jonathan Foo, Melanie Roberts, Lauren T Williams, Christian Osadnik, Judy Bauer, Marie-Claire O'Shea
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引用次数: 0

摘要

目的根据长期护理环境中常规收集的数据,开发营养不良筛查工具并进行内部验证:设计:诊断预测模型开发和内部验证研究:环境和参与者:来自澳大利亚 10 家长期护理机构的居民(n = 539):方法:从方便抽样的长期护理机构的常规数据中收集专家咨询确定的候选变量。以 "主观总体评估 "为参考标准,对从原始样本中通过引导法得到的 500 个样本进行逻辑回归。如果有 95% 以上的样本包含候选变量,则采用逆向逐步排除法选出候选变量。最终模型是通过所选变量的逻辑回归建立的。使用引导法进行内部验证,以计算乐观调整后的性能。通过接收器操作者特征曲线和曲线下面积的计算来评估总体辨别力。尤登指数用于确定营养不良分类的最佳阈值。计算灵敏度和特异性:体重指数和 6 个月内体重变化百分比被纳入营养不良自动筛查模型(AutoMal),100% 的引导样本都能识别。AutoMal 对营养不良的判别能力极强,曲线下面积为 0.8378(95% CI,0.80-0.87)。尤登指数值为 0.37,灵敏度为 78%(95% CI,71%-83%),特异度为 77%(72%-81%)。乐观校正曲线下面积为 0.8354:AutoMal 在区分营养不良状况方面表现出卓越的能力。它利用电子健康记录中常见的两个变量实现了营养不良的自动识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Automated Malnutrition Screening Tool Using Routinely Collected Data for Older Adults in Long-Term Care: Development and Internal Validation of AutoMal.

Objective: To develop and internally validate a malnutrition screening tool based on routinely collected data in the long-term care setting.

Design: Diagnostic prediction model development and internal validation study.

Setting and participants: Residents (n = 539) from 10 long-term care facilities in Australia.

Methods: Candidate variables identified through expert consultation were collected from routinely collected data in a convenience sample of long-term care facilities. Logistic regression using the Subjective Global Assessment as the reference standard was conducted on 500 samples derived using bootstrapping from the original sample. Candidate variables were selected if included in more than 95% of samples using backwards stepwise elimination. The final model was developed using logistic regression of selected variables. Internal validation was conducted using bootstrapping to calculate the optimism-adjusted performance. Overall discrimination was evaluated via receiver operator characteristic curve and calculation of the area under the curve. Youden's Index was used to identify the optimal threshold value for classifying malnutrition. Sensitivity and specificity were calculated.

Results: Body mass index and weight change % over 6 months were included in the automated malnutrition screening model (AutoMal), identified in 100% of bootstrapped samples. AutoMal demonstrated excellent discrimination of malnutrition, with area under the curve of 0.8378 (95% CI, 0.80-0.87). Youden's Index value was 0.37, resulting in sensitivity of 78% (95% CI, 71%-83%) and specificity of 77% (72%-81%). Optimism-corrected area under the curve was 0.8354.

Conclusions and implications: The AutoMal demonstrates excellent ability to differentiate malnutrition status. It makes automated identification of malnutrition possible by using 2 variables commonly found in electronic health records.

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来源期刊
CiteScore
11.10
自引率
6.60%
发文量
472
审稿时长
44 days
期刊介绍: JAMDA, the official journal of AMDA - The Society for Post-Acute and Long-Term Care Medicine, is a leading peer-reviewed publication that offers practical information and research geared towards healthcare professionals in the post-acute and long-term care fields. It is also a valuable resource for policy-makers, organizational leaders, educators, and advocates. The journal provides essential information for various healthcare professionals such as medical directors, attending physicians, nurses, consultant pharmacists, geriatric psychiatrists, nurse practitioners, physician assistants, physical and occupational therapists, social workers, and others involved in providing, overseeing, and promoting quality
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