Quality Enhancement Research Initiative (QUERI) and Health Services Research and Development (HSR&D), Roudebush VA Medical Center, Indianapolis, Indiana, USA
Center for Health Services Research, Regenstrief Institute Inc, Indianapolis, Indiana, USA.
BMJ Open. 2022 Jun 7;12(6):e061469. doi: 10.1136/bmjopen-2022-061469.
Configurational methods are increasingly being used in health services research.
To use configurational analysis and logistic regression within a single data set to compare results from the two methods.
Secondary analysis of an observational cohort; a split-sample design involved randomly dividing patients into training and validation samples.
Patients who had a transient ischaemic attack (TIA) in US Department of Veterans Affairs hospitals.
The patient outcome was the combined endpoint of all-cause mortality or recurrent ischaemic stroke within 1 year post-TIA. The quality-of-care outcome was the without-fail rate (proportion of patients who received all processes for which they were eligible, among seven processes).
For the recurrent stroke or death outcome, configurational analysis yielded a three-pathway model identifying a set of (validation sample) patients where the prevalence was 15.0% (83/552), substantially higher than the overall sample prevalence of 11.0% (relative difference, 36%). The configurational model had a sensitivity (coverage) of 84.7% and specificity of 40.6%. The logistic regression model identified six factors associated with the combined endpoint (c-statistic, 0.632; sensitivity, 63.3%; specificity, 63.1%). None of these factors were elements of the configurational model. For the quality outcome, configurational analysis yielded a single-pathway model identifying a set of (validation sample) patients where the without-fail rate was 64.3% (231/359), nearly twice the overall sample prevalence (33.7%). The configurational model had a sensitivity (coverage) of 77.3% and specificity of 78.2%. The logistic regression model identified seven factors associated with the without-fail rate (c-statistic, 0.822; sensitivity, 80.3%; specificity, 84.2%). Two of these factors were also identified in the configurational analysis.
Configurational analysis and logistic regression represent different methods that can enhance our understanding of a data set when paired together. Configurational models optimise sensitivity with relatively few conditions. Logistic regression models discriminate cases from controls and provided inferential relationships between outcomes and independent variables.
配置方法在卫生服务研究中越来越多地被使用。
在单个数据集中使用配置分析和逻辑回归来比较这两种方法的结果。
对观察性队列进行二次分析;拆分样本设计包括将患者随机分为训练和验证样本。
在美国退伍军人事务部医院发生短暂性脑缺血发作(TIA)的患者。
患者的结果是 TIA 后 1 年内全因死亡率或复发性缺血性卒中的联合终点。护理质量结果是无失败率(所有符合条件的患者接受所有治疗过程的比例,共 7 个过程)。
对于复发性卒中或死亡结局,配置分析产生了一个三路径模型,确定了一组(验证样本)患者,其患病率为 15.0%(83/552),明显高于总体样本的 11.0%(相对差异,36%)。配置模型的灵敏度(覆盖率)为 84.7%,特异性为 40.6%。逻辑回归模型确定了与联合终点相关的六个因素(c 统计量,0.632;灵敏度,63.3%;特异性,63.1%)。这些因素中没有一个是配置模型的要素。对于质量结果,配置分析产生了一个单路径模型,确定了一组(验证样本)患者的无失败率为 64.3%(231/359),几乎是总体样本患病率的两倍(33.7%)。配置模型的灵敏度(覆盖率)为 77.3%,特异性为 78.2%。逻辑回归模型确定了与无失败率相关的七个因素(c 统计量,0.822;灵敏度,80.3%;特异性,84.2%)。其中两个因素也在配置分析中被确定。
配置分析和逻辑回归代表了两种不同的方法,当配对使用时,可以增强我们对数据集的理解。配置模型以相对较少的条件优化了灵敏度。逻辑回归模型区分病例和对照,并提供了结果和独立变量之间的推断关系。