澳大利亚养老院(RACF)痴呆症患者 6 个月和 12 个月死亡率多变量预测模型开发研究方案。

Diagnostic and prognostic research Pub Date : 2020-10-07 eCollection Date: 2020-01-01 DOI:10.1186/s41512-020-00085-0
Ross Bicknell, Wen Kwang Lim, Andrea B Maier, Dina LoGiuidice
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引用次数: 0

摘要

背景:对于患有痴呆症的老年护理机构(RACF)住院患者而言,缺乏预后指导是生命末期护理规划的一大挑战。为了解决这个问题,人们开发了一些模型来评估晚期痴呆症患者的死亡风险,主要使用的是美国的长期护理最低数据集(MDS)信息。这些模型的局限性在于,用于开发模型的 MDS 中包含的信息并不是为了确定预后因素而收集的。利用 MDS 数据开发的模型对死亡风险的判别能力相对较弱,很难应用于 MDS 环境之外。本研究旨在开发一个模型,以便根据澳大利亚 RACF 在提供常规临床护理时记录的预后指标来估算痴呆症患者 6 个月和 12 个月的死亡风险:将对参与姑息关怀教育干预分组随机试验(IMPETUS-D)的RACF痴呆症患者队列进行二次分析。根据对与居住在 RACFs 的痴呆症患者死亡率增加相关的临床特征的文献综述,确定了十个预后指标变量。这些变量将在基线数据收集后的 6 个月和 12 个月从 RACF 档案中提取,并测量死亡率。对于连续变量,将采用反向排除法和分数多项式法,为 6 个月和 12 个月的死亡率结果指标建立多变量逻辑回归模型。将采用引导法进行内部验证。该模型对 6 个月和 12 个月死亡率的判别将以带 c 统计量的接收者操作曲线的形式呈现。校准曲线将比较每个十分位风险的观察和预测事件发生率,以及使用基于塬函数的灵活校准曲线:本研究中开发的模型旨在改进对澳大利亚 RACF 中痴呆症患者死亡风险的临床评估。在将该模型开发成未来协助临床决策的工具之前,还需要在不同人群中进行进一步的外部验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A study protocol for the development of a multivariable model predicting 6- and 12-month mortality for people with dementia living in residential aged care facilities (RACFs) in Australia.

Background: For residential aged care facility (RACF) residents with dementia, lack of prognostic guidance presents a significant challenge for end of life care planning. In an attempt to address this issue, models have been developed to assess mortality risk for people with advanced dementia, predominantly using long-term care minimum data set (MDS) information from the USA. A limitation of these models is that the information contained within the MDS used for model development was not collected for the purpose of identifying prognostic factors. The models developed using MDS data have had relatively modest ability to discriminate mortality risk and are difficult to apply outside the MDS setting. This study will aim to develop a model to estimate 6- and 12-month mortality risk for people with dementia from prognostic indicators recorded during usual clinical care provided in RACFs in Australia.

Methods: A secondary analysis will be conducted for a cohort of people with dementia from RACFs participating in a cluster-randomized trial of a palliative care education intervention (IMPETUS-D). Ten prognostic indicator variables were identified based on a literature review of clinical features associated with increased mortality for people with dementia living in RACFs. Variables will be extracted from RACF files at baseline and mortality measured at 6 and 12 months after baseline data collection. A multivariable logistic regression model will be developed for 6- and 12-month mortality outcome measures using backwards elimination with a fractional polynomial approach for continuous variables. Internal validation will be undertaken using bootstrapping methods. Discrimination of the model for 6- and 12-month mortality will be presented as receiver operating curves with c statistics. Calibration curves will be presented comparing observed and predicted event rates for each decile of risk as well as flexible calibration curves derived using loess-based functions.

Discussion: The model developed in this study aims to improve clinical assessment of mortality risk for people with dementia living in RACFs in Australia. Further external validation in different populations will be required before the model could be developed into a tool to assist with clinical decision-making in the future.

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