Department of Mathematical Sciences, University of Bath, Bath, UK
Department of Mathematical Sciences, University of Bath, Bath, UK.
Evid Based Ment Health. 2020 Feb;23(1):8-14. doi: 10.1136/ebmental-2019-300133.
Across England, 12% of all improving access to psychological therapy (IAPT) appointments are missed, and on average around 40% of first appointments are not attended, varying significantly around the country. In order to intervene effectively, it is important to target the patients who are most likely to miss their appointments.
This research aims to develop and test a model to predict whether an IAPT patient will attend their first appointment.
Data from 19 adult IAPT services were analysed in this research. A multiple logistic regression was used at an individual service level to identify which patient, appointment and referral characteristics are associated with attendance. These variables were then used in a generalised linear mixed effects model (GLMM). We allow random effects in the GLMM for variables where we observe high service to service heterogeneity in the estimated effects from service specific logistic regressions.
We find that patients who self-refer are more likely to attend their appointments with an OR of 1.04. The older a patient is, the fewer the number of previous referrals and consenting to receiving a reminder short message service are also found to increase the likelihood of attendance with ORs of 1.02, 1.10, 1.04, respectively.
Our model is expected to help IAPT services identify which patients are not likely to attend their appointments by highlighting key characteristics that affect attendance.
This analysis will help to identify methods IAPT services could use to increase their attendance rates.
在英格兰,所有改善心理治疗(IAPT)预约的患者中,有 12%的预约被错过,平均约有 40%的首次预约未到场,全国各地的差异很大。为了进行有效的干预,重要的是要针对最有可能错过预约的患者。
本研究旨在开发和测试一种预测 IAPT 患者是否会参加首次预约的模型。
本研究分析了 19 个成人 IAPT 服务的数据。在单个服务水平上使用多项逻辑回归来确定哪些患者、预约和转介特征与出席相关。然后,将这些变量用于广义线性混合效应模型(GLMM)。对于在服务特定逻辑回归的估计效果中观察到高服务间异质性的变量,我们在 GLMM 中允许随机效应。
我们发现自我转诊的患者更有可能参加预约,其比值比(OR)为 1.04。患者年龄越大,以前的转诊次数越少,同意接收提醒短信服务也被发现会增加出席的可能性,OR 分别为 1.02、1.10、1.04。
我们的模型有望通过突出影响出席的关键特征,帮助 IAPT 服务识别哪些患者不太可能参加预约。
该分析将有助于确定 IAPT 服务可以用来提高其出席率的方法。