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A Novel Method for Analysing Frequent Observations from Questionnaires in Order to Model Patient-Reported Outcomes: Application to EXACT® Daily Diary Data from COPD Patients

机译:一种用于分析问卷调查者的常见观察结果以建模患者报告结果的新方法:应用于来自COPD患者的EXACT®每日日记数据

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摘要

Chronic obstructive pulmonary disease (COPD) is a progressive lung disease with approximately 174 million cases worldwide. Electronic questionnaires are increasingly used for collecting patient-reported-outcome (PRO) data about disease symptoms. Our aim was to leverage PRO data, collected to record COPD disease symptoms, in a general modelling framework to enable interpretation of PRO observations in relation to disease progression and potential to predict exacerbations. The data were collected daily over a year, in a prospective, observational study. The e-questionnaire, the EXAcerbations of COPD Tool (EXACT®) included 14 items (i.e. questions) with 4 or 5 ordered categorical response options. An item response theory (IRT) model was used to relate the responses from each item to the underlying latent variable (which we refer to as disease severity), and on each item level, Markov models (MM) with 4 or 5 categories were applied to describe the dependence between consecutive observations. Minimal continuous time MMs were used and parameterised using ordinary differential equations. One hundred twenty-seven COPD patients were included (median age 67 years, 54% male, 39% current smokers), providing approximately 40,000 observations per EXACT® item. The final model suggested that, with time, patients more often reported the same scores as the previous day, i.e. the scores were more stable. The modelled COPD disease severity change over time varied markedly between subjects, but was small in the typical individual. This is the first IRT model with Markovian properties; our analysis proved them necessary for predicting symptom-defined exacerbations.Electronic supplementary materialThe online version of this article (10.1208/s12248-019-0319-9) contains supplementary material, which is available to authorized users.
机译:慢性阻塞性肺疾病(COPD)是一种进行性肺部疾病,全球范围内约有1.74亿病例。电子问卷越来越多地用于收集有关疾病症状的患者报告结果(PRO)数据。我们的目标是在一个通用的建模框架中利用收集来记录COPD疾病症状的PRO数据,以解释PRO观察到的与疾病进展和潜在加重的相关性。在一项前瞻性观察性研究中,每天收集一年以上的数据。电子问卷调查表COPD工具考试(EXACT®)包含14个项目(即问题),有4或5个有序的分类回答选项。项目响应理论(IRT)模型用于将每个项目的响应与潜在潜变量(我们称为疾病严重性)相关联,并且在每个项目级别上,使用具有4个或5个类别的Markov模型(MM)描述连续观察之间的依赖关系。使用最小连续时间MM,并使用常微分方程进行参数设置。其中包括127名COPD患者(中位年龄67岁,男性54%,当前吸烟者39%),每个EXACT®项目约提供40,000次观察结果。最终模型表明,随着时间的流逝,患者报告的分数与前一天相同,即分数更稳定。建模的COPD疾病严重性随时间的变化在受试者之间有显着差异,但在典型个体中很小。这是第一个具有马尔可夫特性的IRT模型。电子补充材料本文的在线版本(10.1208 / s12248-019-0319-9)包含补充材料,可供授权用户使用。

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