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对数据部分缺失的受访者进行SF-12健康评分插补。

Imputation of SF-12 health scores for respondents with partially missing data.

作者信息

Liu Honghu, Hays Ron D, Adams John L, Chen Wen-Pin, Tisnado Diana, Mangione Carol M, Damberg Cheryl L, Kahn Katherine L

机构信息

Department of Medicine, Division of General Internal Medicine and Health Services Research, University of California, Los Angeles, 911 Broxton Avenue, Los Angeles, CA 90024, USA.

出版信息

Health Serv Res. 2005 Jun;40(3):905-21. doi: 10.1111/j.1475-6773.2005.00391.x.

Abstract

OBJECTIVE

To create an efficient imputation algorithm for imputing the SF-12 physical component summary (PCS) and mental component summary (MCS) scores when patients have one to eleven SF-12 items missing.

STUDY SETTING

Primary data collection was performed between 1996 and 1998.

STUDY DESIGN

Multi-pattern regression was conducted to impute the scores using only available SF-12 items (simple model), and then supplemented by demographics, smoking status and comorbidity (enhanced model) to increase the accuracy. A cut point of missing SF-12 items was determined for using the simple or the enhanced model. The algorithm was validated through simulation.

DATA COLLECTION

Thirty-thousand-three-hundred and eight patients from 63 physician groups were surveyed for a quality of care study in 1996, which collected the SF-12 and other information. The patients were classified as "chronic" patients if they reported that they had diabetes, heart disease, asthma/chronic obstructive pulmonary disease, or low back pain. A follow-up survey was conducted in 1998.

PRINCIPAL FINDINGS

Thirty-one percent of the patients missed at least one SF-12 item. Means of variance of prediction and standard errors of the mean imputed scores increased with the number of missing SF-12 items. Correlations between the observed and the imputed scores derived from the enhanced models were consistently higher than those derived from the simple model and the increments were significant for patients with > or =6 missing SF-12 items (p<.03).

CONCLUSION

Missing SF-12 items are prevalent and lead to reduced analytical power. Regression-based multi-pattern imputation using the available SF-12 items is efficient and can produce good estimates of the scores. The enhancement from the additional patient information can significantly improve the accuracy of the imputed scores for patients with > or =6 items missing, leading to estimated scores that are as accurate as that of patients with <6 missing items.

摘要

目的

创建一种高效的插补算法,用于在患者有1至11项SF - 12条目缺失时插补SF - 12身体成分汇总(PCS)和心理成分汇总(MCS)得分。

研究背景

原始数据收集于1996年至1998年期间进行。

研究设计

采用多模式回归,仅使用可用的SF - 12条目来插补得分(简单模型),然后通过人口统计学、吸烟状况和合并症进行补充(增强模型)以提高准确性。确定了使用简单模型或增强模型时SF - 12条目缺失的切点。该算法通过模拟进行验证。

数据收集

1996年,对来自63个医生小组的30308名患者进行了护理质量研究调查,收集了SF - 12及其他信息。如果患者报告患有糖尿病、心脏病、哮喘/慢性阻塞性肺疾病或腰痛,则将其分类为“慢性病”患者。1998年进行了随访调查。

主要发现

31%的患者至少有一项SF - 12条目缺失。预测方差均值和插补得分均值的标准误差随着SF - 12条目缺失数量的增加而增加。增强模型得出的观察得分与插补得分之间的相关性始终高于简单模型,对于缺失6项及以上SF - 12条目的患者,增幅显著(p <.03)。

结论

SF - 12条目缺失情况普遍,会导致分析效能降低。使用可用的SF - 12条目进行基于回归的多模式插补是有效的,并且可以对得分进行良好估计。额外患者信息的增强可以显著提高缺失6项及以上条目的患者插补得分的准确性,使估计得分与缺失少于6项条目的患者一样准确。

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