de Bock Elodie, Dolgin Kevin, Arnould Benoit, Hubert Guillaume, Lee Aaron, Piette John D
Patient Centred Outcomes, ICON plc, Lyon, France.
Observia, Paris, France.
Curr Med Res Opin. 2022 Feb;38(2):171-179. doi: 10.1080/03007995.2021.2010437. Epub 2021 Dec 11.
The SPUR (Social, Psychological, Usage, and Rational) Adherence Profiling Tool is a recently developed adaptive instrument for measuring key patient-level risk factors for adherence problems. This study describes the SPUR questionnaire's psychometric refinement and evaluation.
Data were collected through an online survey among individuals with type 2 diabetes in the United States. 501 participants completed multiple questionnaires, including SPUR and several validated adherence measures. A Partial Credit Model (PCM) analysis was performed to evaluate the structure of the SPUR tool and verify the assumption of a single underlying latent variable reflecting adherence. Partial least-squares discriminant analyses (PLS-DA) were conducted to identify which hierarchically-defined items within each dimension needed to be answered by a given patient. Lastly, correlations were calculated between the latent trait of SPUR adherence and other patient-reported adherence measures.
Of the 45 candidate SPUR items, 39 proved to fit well to the PCM confirming that SPUR responses reflected one underlying latent trait hypothesized as non-adherence. Correlations between the latent trait of the SPUR tool and other adherence measures were positive, statistically significant, and ranged from 0.32 to 0.48 (-values < .0001). The person-item map showed that the items reflected well the range of adherence behaviors from perfect adherence to high levels of non-adherence. The PLS-DA results confirmed the relevance of using four meta-items as filters to open or close subsequent items from their corresponding SPUR dimensions.
The SPUR tool represents a promising new adaptive instrument for measuring adherence accurately and efficiently using the digital behavioral diagnostic tool.
SPUR(社会、心理、使用和理性)依从性剖析工具是一种最近开发的适应性工具,用于测量导致依从性问题的关键患者层面风险因素。本研究描述了SPUR问卷的心理测量学优化和评估。
通过对美国2型糖尿病患者的在线调查收集数据。501名参与者完成了多项问卷,包括SPUR和几项经过验证的依从性测量指标。进行了部分计分模型(PCM)分析,以评估SPUR工具的结构,并验证反映依从性的单一潜在潜变量的假设。进行了偏最小二乘判别分析(PLS-DA),以确定每个维度内哪些分层定义的项目需要特定患者回答。最后,计算了SPUR依从性潜在特质与其他患者报告的依从性测量指标之间的相关性。
在45个SPUR候选项目中,39个被证明与PCM拟合良好,证实SPUR回答反映了一个假设为不依从的潜在潜特质。SPUR工具的潜在特质与其他依从性测量指标之间的相关性为正,具有统计学意义,范围为0.32至0.48(P值<0.0001)。人-项目图显示,这些项目很好地反映了从完全依从到高度不依从的依从性行为范围。PLS-DA结果证实了使用四个元项目作为过滤器来打开或关闭其相应SPUR维度中的后续项目的相关性。
SPUR工具是一种很有前景的新型适应性工具,可利用数字行为诊断工具准确、高效地测量依从性。