LGMay 29, 2025

On the Validity of Head Motion Patterns as Generalisable Depression Biomarkers

arXiv:2505.23427v1h-index: 27
Originality Incremental advance
AI Analysis

It addresses the need for generalisable biomarkers in mental health diagnostics, though it is incremental by focusing on a previously understudied cue within existing frameworks.

This paper tackles the problem of automated depression assessment by examining head motion patterns as biomarkers, finding that they achieve highly competitive performance, including the second best Mean Absolute Error on the AVEC2013 dataset, and are more generalisable than other features across multiple datasets.

Depression is a debilitating mood disorder negatively impacting millions worldwide. While researchers have explored multiple verbal and non-verbal behavioural cues for automated depression assessment, head motion has received little attention thus far. Further, the common practice of validating machine learning models via a single dataset can limit model generalisability. This work examines the effectiveness and generalisability of models utilising elementary head motion units, termed kinemes, for depression severity estimation. Specifically, we consider three depression datasets from different western cultures (German: AVEC2013, Australian: Blackdog and American: Pitt datasets) with varied contextual and recording settings to investigate the generalisability of the derived kineme patterns via two methods: (i) k-fold cross-validation over individual/multiple datasets, and (ii) model reuse on other datasets. Evaluating classification and regression performance with classical machine learning methods, our results show that: (1) head motion patterns are efficient biomarkers for estimating depression severity, achieving highly competitive performance for both classification and regression tasks on a variety of datasets, including achieving the second best Mean Absolute Error (MAE) on the AVEC2013 dataset, and (2) kineme-based features are more generalisable than (a) raw head motion descriptors for binary severity classification, and (b) other visual behavioural cues for severity estimation (regression).

Foundations

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

Your Notes