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基于标准化多维评估时间表(MPI-SVaMA)对社区居住的老年受试者进行死亡率的多维预后指数的开发和验证。

Development and validation of a Multidimensional Prognostic Index for mortality based on a standardized Multidimensional Assessment Schedule (MPI-SVaMA) in community-dwelling older subjects.

机构信息

Geriatrics Unit, Azienda ULSS 16 Padova, S. Antonio Hospital, Padova, Italy.

出版信息

J Am Med Dir Assoc. 2013 Apr;14(4):287-92. doi: 10.1016/j.jamda.2013.01.005. Epub 2013 Feb 9.

Abstract

OBJECTIVES

To develop and validate a Multidimensional Prognostic Index (MPI) for mortality based on information collected by the Multidimensional Assessment Schedule (SVaMA), the recommended standard tool for multidimensional assessment of community-dwelling older subjects in seven Italian regions.

DESIGN

Prospective cohort study.

PARTICIPANTS

Community-dwelling subjects older than 65 years who underwent an SVaMA evaluation from 2004 to 2010 in Padova Health District, Veneto, Italy.

MEASUREMENTS

The MPI-SVaMA was calculated as a weighted (weights were derived from multivariate Cox regressions) linear combination of the following nine domains: age, sex, main diagnosis, and six scores, ie, the Short Portable Mental Status Questionnaire, the Barthel index (contains two domains: activities of daily living and mobility), the Exton-Smith scale, the Nursing Care Needs, and the Social Network Support by a structured interview. Subjects were followed for a median of 2 years; those who had not died were followed for at least 1 year. The MPI-SVaMA score ranged from 0 to 1 and 3 grades of severity of the MPI-SVaMA were calculated on the basis of estimated cutoffs. Discriminatory power and calibration were further assessed.

RESULTS

A total of 12,020 subjects (mean age 81.84 ± 7.97 years) were included. Two random cohorts were selected: (1) a development cohort, ie, 7876 subjects (mean age 81.79 ± 8.05, %females: 63.1) and (2) a validation cohort, ie, 4144 subjects (mean age: 81.95 ± 7.83, %females: 63.7). The discriminatory power for mortality of MPI-SVaMA was 0.828 (95% CI 0.817-0.838) and 0.832 (95% CI 0.818-0.845) at 1 month and 0.791 (95% CI 0.784-0.798) and 0.792 (95% CI 0.783-0.802) at 1 year in development and validation cohorts, respectively. MPI-SVaMA results were well calibrated showing lower than 10% differences between predicted and observed mortality, both in development and validation cohorts.

CONCLUSIONS

The MPI-SVaMA is an accurate and well-calibrated prognostic tool for mortality in community-dwelling older subjects, and can be used in clinical decision making.

摘要

目的

基于多维评估日程表(SVaMA)收集的信息,开发和验证一种用于死亡率的多维预后指数(MPI),SVaMA 是意大利七个地区评估社区居住老年人的多维评估的推荐标准工具。

设计

前瞻性队列研究。

参与者

2004 年至 2010 年在意大利威尼托大区帕多瓦卫生区接受 SVaMA 评估的年龄在 65 岁以上的社区居住的受试者。

测量

MPI-SVaMA 是根据以下九个领域的加权(权重来自多变量 Cox 回归)线性组合计算得出的:年龄、性别、主要诊断和六个评分,即简易精神状态问卷、巴氏量表(包含日常生活活动和移动两个领域)、埃克斯顿-史密斯量表、护理需求和社会网络支持的结构化访谈。受试者随访中位数为 2 年;未死亡的受试者随访至少 1 年。MPI-SVaMA 评分范围为 0 至 1,根据估计的截止值计算 MPI-SVaMA 的 3 个严重程度等级。进一步评估了判别能力和校准。

结果

共纳入 12020 名受试者(平均年龄 81.84 ± 7.97 岁)。选择了两个随机队列:(1)发展队列,即 7876 名受试者(平均年龄 81.79 ± 8.05,女性%:63.1)和(2)验证队列,即 4144 名受试者(平均年龄:81.95 ± 7.83,女性%:63.7)。MPI-SVaMA 对死亡率的判别能力在 1 个月时分别为 0.828(95%CI 0.817-0.838)和 0.832(95%CI 0.818-0.845),在 1 年时分别为 0.791(95%CI 0.784-0.798)和 0.792(95%CI 0.783-0.802)在发展和验证队列中。MPI-SVaMA 结果校准良好,预测死亡率与观察死亡率之间的差异均低于 10%,在发展和验证队列中均如此。

结论

MPI-SVaMA 是一种用于社区居住老年患者死亡率的准确且校准良好的预后工具,可用于临床决策。

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