Using natural language from a smartphone pregnancy app to identify maternal depression

Res Sq [Preprint]. 2023 Feb 21:rs.3.rs-2583296. doi: 10.21203/rs.3.rs-2583296/v1.

Abstract

Depression is highly prevalent in pregnancy, yet it often goes undiagnosed and untreated. Language can be an indicator of psychological well-being. This longitudinal, observational cohort study of 1,274 pregnancies examined written language shared in a prenatal smartphone app. Natural language feature of text entered in the app (e.g. in a journaling feature) throughout the course of participants' pregnancies were used to model subsequent depression symptoms. Language features were predictive of incident depression symptoms in a 30-day window (AUROC = 0.72) and offer insights into topics most salient in the writing of individuals experiencing those symptoms. When natural language inputs were combined with self-reported current mood, a stronger predictive model was produced (AUROC = 0.84). Pregnancy apps are a promising way to illuminate experiences contributing to depression symptoms. Even sparse language and simple patient-reports collected directly from these tools may support earlier, more nuanced depression symptom identification.

Keywords: Depression; digital health; machine learning; mhealth; natural language processing; pregnancy; risk prediction; women’s health.

Publication types

  • Preprint