CLLGOct 28, 2022

Deep Temporal Modelling of Clinical Depression through Social Media Text

arXiv:2211.07717v310 citationsh-index: 64
Originality Incremental advance
AI Analysis

This work addresses the problem of mental health monitoring for clinicians and researchers by providing an incremental improvement in depression detection from social media data.

The authors tackled the problem of detecting clinical depression from users' temporal social media posts by developing a model that extracts clinically relevant features and evaluates their efficacy across datasets, showing that semantic models perform well and clinical features enhance performance under specific conditions, with depression scores increasing predictive capability significantly in sensitive settings.

We describe the development of a model to detect user-level clinical depression based on a user's temporal social media posts. Our model uses a Depression Symptoms Detection (DSD) classifier, which is trained on the largest existing samples of clinician annotated tweets for clinical depression symptoms. We subsequently use our DSD model to extract clinically relevant features, e.g., depression scores and their consequent temporal patterns, as well as user posting activity patterns, e.g., quantifying their ``no activity'' or ``silence.'' Furthermore, to evaluate the efficacy of these extracted features, we create three kinds of datasets including a test dataset, from two existing well-known benchmark datasets for user-level depression detection. We then provide accuracy measures based on single features, baseline features and feature ablation tests, at several different levels of temporal granularity. The relevant data distributions and clinical depression detection related settings can be exploited to draw a complete picture of the impact of different features across our created datasets. Finally, we show that, in general, only semantic oriented representation models perform well. However, clinical features may enhance overall performance provided that the training and testing distribution is similar, and there is more data in a user's timeline. The consequence is that the predictive capability of depression scores increase significantly while used in a more sensitive clinical depression detection settings.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes