Krishnamurti Tamar, Allen Kristen, Hayani Laila, Rodriguez Samantha, Davis Alexander L
Division of General Internal Medicine, University of Pittsburgh, Pittsburgh, PA, USA.
Department of Engineering and Public Policy, Carnegie Mellon University, Pittsburgh, PA, USA.
Procedia Comput Sci. 2022;206:132-140. doi: 10.1016/j.procs.2022.09.092. Epub 2022 Sep 21.
Depression is one of the most common pregnancy complications, affecting approximately 15% of pregnant people. While valid psychometric measures of depression risk exist, they are not consistently administered at routine prenatal care, exacerbating the problem of adequate detection. The language we use in daily life offers a window into our psychological wellbeing. In this longitudinal observational cohort study of prenatal patients using a prenatal care mobile health app, we examine how features of app-entered natural language and other app-entered patient-reported data may be used as indicators for validated depression risk measures. Patient participants (n=1091) were prescribed a prenatal care app as part of a quality improvement initiative in the UPMC healthcare system from September 2019 - May 2022. Natural language from open-ended writing prompts in the app and self-reported daily mood, were entered by patients using the tool. Participants also completed a validated measure of depression risk - the Edinburgh Postnatal Depression Scale (EPDS) - at least once in their pregnancy. A variety of natural language processing tools were used to score sentiment, categorize topics, and capture other semantic and syntactic information from text entries. LASSO was used to model the relationship between the natural language features and depression risk. Open-ended text within a 30-day and 60-day timeframe of completing an EPDS was found to be moderately predictive of moderate to severe depression risk (AUROC=0.66 and 0.67, for each respective timeframe). When combined with average daily reported mood, open-ended text showed good predictive power (AUROC=0.87). Consistently predictive language features across all models included themes of "money" and "sadness." The combination of natural language and other user-reported data collected through a mobile health app offers an opportunity for identifying depression risk among a pregnant population.
抑郁症是最常见的妊娠并发症之一,影响着约15%的孕妇。虽然存在有效的抑郁症风险心理测量方法,但在常规产前检查中并未始终如一地应用,这加剧了充分检测的问题。我们在日常生活中使用的语言为了解我们的心理健康状况提供了一个窗口。在这项对使用产前护理移动健康应用程序的产前患者进行的纵向观察队列研究中,我们研究了应用程序中输入的自然语言特征和其他患者报告的数据如何用作经过验证的抑郁症风险测量指标。作为UPMC医疗保健系统2019年9月至2022年5月质量改进计划的一部分,患者参与者(n = 1091)被指定使用一款产前护理应用程序。患者使用该工具输入应用程序中开放式写作提示的自然语言和自我报告的每日情绪。参与者在孕期至少完成一次经过验证的抑郁症风险测量——爱丁堡产后抑郁量表(EPDS)。使用了各种自然语言处理工具来对文本进行情感评分、主题分类,并从文本条目中获取其他语义和句法信息。套索回归用于模拟自然语言特征与抑郁症风险之间的关系。发现在完成EPDS的30天和60天时间范围内的开放式文本对中度至重度抑郁症风险具有中度预测性(每个时间范围的曲线下面积分别为0.66和0.67)。当与每日报告的平均情绪相结合时,开放式文本显示出良好的预测能力(曲线下面积 = 0.87)。所有模型中一致具有预测性的语言特征包括“金钱”和“悲伤”主题。通过移动健康应用程序收集的自然语言和其他用户报告数据的组合为识别孕妇群体中的抑郁症风险提供了机会。