Lix Lisa M, Yan Lin, Blackburn David, Hu Nianping, Schneider-Lindner Verena, Teare Gary F
University of Manitoba, Winnipeg, MB, Canada.
BMC Health Serv Res. 2014 Jan 15;14:17. doi: 10.1186/1472-6963-14-17.
This study assessed the validity of the Resident Assessment Instrument Minimum Data Set (RAI-MDS) Version 2.0 for diagnoses of diabetes and comorbid conditions in residents of long-term care facilities (LTCFs).
Hospital inpatient, outpatient physician billing, RAI-MDS, and population registry data for 1997 to 2011 from Saskatchewan, Canada were used to ascertain cases of diabetes and 12 comorbid conditions. Prevalence estimates were calculated for both RAI-MDS and administrative health data. Sensitivity, specificity, and positive and negative predictive values (PPV and NPV) were calculated using population-based administrative health data as the validation data source. Cohen's κ was used to estimate agreement between the two data sources.
23,217 LTCF residents were in the diabetes case ascertainment cohort. Diabetes prevalence was 25.3% in administrative health data and 21.9% in RAI-MDS data. Overall sensitivity of a RAI-MDS diabetes diagnoses was 0.79 (95% CI: 0.79, 0.80) and the PPV was 0.92 (95% CI: 0.91, 0.92), when compared to administrative health data. Sensitivity of the RAI-MDS for ascertaining comorbid conditions ranged from 0.21 for osteoporosis to 0.92 for multiple sclerosis; specificity was high for most conditions.
RAI-MDS clinical assessment data are sensitive to ascertain diabetes cases in LTCF populations when compared to administrative health data. For many comorbid conditions, RAI-MDS data have low validity when compared to administrative data. Risk-adjustment measures based on these comorbidities might not produce consistent results for RAI-MDS and administrative health data, which could affect the conclusions of studies about health outcomes and quality of care across facilities.
本研究评估了长期护理机构(LTCF)居民中使用的居民评估工具最小数据集(RAI-MDS)2.0版对糖尿病及合并症诊断的有效性。
利用加拿大萨斯喀彻温省1997年至2011年的医院住院患者、门诊医生计费、RAI-MDS和人口登记数据,确定糖尿病及12种合并症的病例。计算RAI-MDS和行政健康数据的患病率估计值。以基于人群的行政健康数据作为验证数据源,计算敏感性、特异性、阳性和阴性预测值(PPV和NPV)。使用科恩κ系数估计两个数据源之间的一致性。
23217名LTCF居民纳入糖尿病病例确定队列。行政健康数据中的糖尿病患病率为25.3%,RAI-MDS数据中的患病率为21.9%。与行政健康数据相比,RAI-MDS糖尿病诊断的总体敏感性为0.79(95%CI:0.79,0.80),PPV为0.92(95%CI:0.91,0.92)。RAI-MDS确定合并症的敏感性范围从骨质疏松症的0.21到多发性硬化症的0.92;大多数情况的特异性较高。
与行政健康数据相比,RAI-MDS临床评估数据对确定LTCF人群中的糖尿病病例较为敏感。对于许多合并症,与行政数据相比,RAI-MDS数据的有效性较低。基于这些合并症的风险调整措施可能不会为RAI-MDS和行政健康数据产生一致的结果,这可能会影响有关各机构健康结局和护理质量研究的结论。