Ware John E, Gandek Barbara, Guyer Rick, Deng Nina
John Ware Research Group, 10 Wheeler Court, Watertown, MA, 02472, USA.
Department of Quantitative Health Sciences, University of Massachusetts Medical School, Worcester, MA, USA.
Health Qual Life Outcomes. 2016 Jun 2;14:84. doi: 10.1186/s12955-016-0483-x.
To document the development and evaluation of the Quality of life Disease Impact Scale (QDIS®), a measure that standardizes item content and scoring across chronic conditions and provides a summary, norm-based QOL impact score for each disease.
A bank of 49 disease impact items was constructed from previously-used descriptions of health impact to represent ten frequently-measured quality of life (QOL) content areas and operational definitions successfully utilized in generic QOL surveys. In contrast to health in general, all items were administered with attribution to a specific disease (osteoarthritis, rheumatoid arthritis, angina, myocardial infarction, congestive heart failure, chronic kidney disease (CKD), diabetes, asthma, or COPD). Responses from 5418 adults were analyzed as five disease groups: arthritis, cardiovascular, CKD, diabetes, and respiratory. Unidimensionality, item parameter and scale-level invariance, reliability, validity and responsiveness to change during 9-month follow-up were evaluated by disease group and for all groups combined using multi-group confirmatory factor analysis (MGCFA), item response theory (IRT) and analysis of variance methods. QDIS was normed in an independent chronically ill US population sample (N = 4120).
MGCFA confirmed a 1-factor model, justifying a summary score estimated using equal parameters for each item across disease groups. In support of standardized IRT-based scoring, correlations were very high between disease-specific and standardized IRT item slopes (r = 0.88-0.96), thresholds (r = 0.93-0.99) and person-level scores (r ≥ 0.99). Internal consistency, test-retest and person-level IRT reliability were consistently satisfactory across groups. In support of interpreting QDIS as a disease-specific measure, in comparison with generic measures, QDIS consistently discriminated markedly better across disease severity levels, correlated higher with other disease-specific measures in cross-sectional tests, and was more responsive in comparisons of groups with better, same or worse evaluations of disease-specific outcomes at the 9-month follow-up.
Standardization of content and scoring across diseases was shown to be justified psychometrically and enabled the first summary measure of disease-specific QOL impact normed in the chronically ill population. This disease-specific approach substantially improves discriminant validity and responsiveness over generic measures and provides a basis for better understanding the relative QOL impact of multiple chronic conditions in research and clinical practice.
记录生活质量疾病影响量表(QDIS®)的开发与评估,该量表可使不同慢性病的条目内容和评分标准化,并为每种疾病提供基于常模的生活质量影响总分。
从先前使用的健康影响描述中构建了一个包含49个疾病影响条目的库,以代表十个在一般生活质量调查中经常测量的生活质量(QOL)内容领域和成功应用的操作定义。与一般健康状况不同,所有条目均归因于特定疾病(骨关节炎、类风湿关节炎、心绞痛、心肌梗死、充血性心力衰竭、慢性肾脏病(CKD)、糖尿病、哮喘或慢性阻塞性肺疾病(COPD))。将5418名成年人的回答作为五个疾病组进行分析:关节炎、心血管疾病、CKD、糖尿病和呼吸系统疾病。通过疾病组并使用多组验证性因子分析(MGCFA)、项目反应理论(IRT)和方差分析方法对所有组进行合并,评估单维性、项目参数和量表水平的不变性、可靠性、有效性以及9个月随访期间对变化的反应性。QDIS在美国独立的慢性病患者样本(N = 4120)中进行了常模制定。
MGCFA证实了一个单因素模型,证明可以使用跨疾病组的每个项目的相等参数估计总分。为支持基于IRT的标准化评分,特定疾病的IRT项目斜率(r = 0.88 - 0.96)、阈值(r = 0.93 - 0.99)与人水平分数(r≥0.99)之间的相关性非常高。各组的内部一致性、重测和人水平IRT可靠性始终令人满意。为支持将QDIS解释为特定疾病的测量工具相比一般测量工具,QDIS在疾病严重程度水平上始终具有明显更好的区分能力,在横断面测试中与其他特定疾病测量工具的相关性更高,并且在9个月随访时对疾病特定结局评估较好、相同或较差的组进行比较时反应更灵敏。
跨疾病的内容和评分标准化在心理测量学上被证明是合理的,并使得能够首次在慢性病患者群体中制定特定疾病的生活质量影响的汇总测量指标。这种特定疾病的方法大大提高了与一般测量工具相比的区分效度和反应性,并为在研究和临床实践中更好地理解多种慢性病对生活质量的相对影响提供了基础。