Predicting patient enrollment in a telephone-based principal care management service using topic modeling.

IF 7.7
PLOS digital health Pub Date : 2025-09-18 eCollection Date: 2025-09-01 DOI:10.1371/journal.pdig.0000992
Annisa Marlin Masbar Rus, Julie S Ivy, Min Chi, Mitchell Plyler, Elaine Wells-Gray, Maria E Mayorga
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Abstract

Diabetic Retinopathy (DR) is a complication related to diabetes that can lead to vision impairment. To assist DR patients, a care management company provides a telephone-based principal care management (PCM) service, which includes care coaching and other services to reduce barriers to care for patients with DR. Despite its benefits, enrollment in the program is suboptimal. This study developed predictive models using call transcripts to investigate factors associated with patient enrollment in the PCM service. We analyzed transcripts of calls made during the enrollment process (prior to enrollment) and feature-engineered the call metadata (i.e., transcript length, number of calls, time between calls, customer and agent sentiment). In addition, we extracted topics discussed in the transcripts using Structural Topic Modeling (STM) and converted them into vector representations. Utilizing call metadata alongside topics, we developed three classification models (call metadata, topic-based, and topic+metadata) to predict patient enrollment, with the latter demonstrating superior performance. The topic+metadata classification model outperformed the other two models in distinguishing between patient enrollment and non-enrollment, with AUC values ranging from 0.81 to 0.99 across models using 3 to 15-topics. The findings suggest that proactively offering to schedule an appointment after the program benefits explanation leads to a higher odds of enrollment. When the scheduling portion of the conversation is not considered, agents should cover all parts of the script over multiple calls. Additionally, agents who explain the program and maintain longer intervals between calls have higher odds of patient enrollment, suggesting that there is value in allowing patients adequate time to reflect between calls. These findings offer valuable insights for agents to evaluate their strategies in patient enrollment. As the first point of contact, enrollment agents play a crucial role in determining whether patients can benefit from care coordination and management programs.

使用主题建模预测基于电话的主要护理管理服务的患者登记。
糖尿病视网膜病变(DR)是一种与糖尿病相关的并发症,可导致视力损害。为了帮助DR患者,一家护理管理公司提供了一种基于电话的主要护理管理(PCM)服务,其中包括护理指导和其他服务,以减少对DR患者的护理障碍。本研究开发了预测模型,使用电话记录来调查与患者登记在PCM服务相关的因素。我们分析了在注册过程中(在注册之前)所做的呼叫记录,并对呼叫元数据进行了特征工程(即,记录长度、呼叫数量、呼叫间隔时间、客户和座席情绪)。此外,我们使用结构主题建模(STM)提取文本中讨论的主题,并将其转换为向量表示。利用呼叫元数据和主题,我们开发了三种分类模型(呼叫元数据、基于主题的和主题+元数据)来预测患者登记,后者表现出更好的性能。主题+元数据分类模型在区分患者入组和非入组方面优于其他两种模型,使用3到15个主题的模型的AUC值在0.81到0.99之间。研究结果表明,在项目福利解释之后主动提出预约会导致更高的入学几率。当不考虑会话的调度部分时,座席应该在多个呼叫中覆盖脚本的所有部分。此外,那些解释该计划并保持较长通话间隔的代理人有更高的患者登记几率,这表明在通话之间允许患者有足够的时间来反映是有价值的。这些发现为代理商评估他们在患者登记中的策略提供了有价值的见解。作为第一个接触点,登记代理人在决定患者是否能从护理协调和管理计划中受益方面起着至关重要的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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