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Identifying depression-related topics in smartphone-collected free-response speech recordings using an automatic speech recognition system and a deep learning topic model

Authors :
Zhang, Yuezhou
Folarin, Amos A
Dineley, Judith
Conde, Pauline
de Angel, Valeria
Sun, Shaoxiong
Ranjan, Yatharth
Rashid, Zulqarnain
Stewart, Callum
Laiou, Petroula
Sankesara, Heet
Qian, Linglong
Matcham, Faith
White, Katie M
Oetzmann, Carolin
Lamers, Femke
Siddi, Sara
Simblett, Sara
Schuller, Björn W.
Vairavan, Srinivasan
Wykes, Til
Haro, Josep Maria
Penninx, Brenda WJH
Narayan, Vaibhav A
Hotopf, Matthew
Dobson, Richard JB
Cummins, Nicholas
consortium, RADAR-CNS
Publication Year :
2023

Abstract

Language use has been shown to correlate with depression, but large-scale validation is needed. Traditional methods like clinic studies are expensive. So, natural language processing has been employed on social media to predict depression, but limitations remain-lack of validated labels, biased user samples, and no context. Our study identified 29 topics in 3919 smartphone-collected speech recordings from 265 participants using the Whisper tool and BERTopic model. Six topics with a median PHQ-8 greater than or equal to 10 were regarded as risk topics for depression: No Expectations, Sleep, Mental Therapy, Haircut, Studying, and Coursework. To elucidate the topic emergence and associations with depression, we compared behavioral (from wearables) and linguistic characteristics across identified topics. The correlation between topic shifts and changes in depression severity over time was also investigated, indicating the importance of longitudinally monitoring language use. We also tested the BERTopic model on a similar smaller dataset (356 speech recordings from 57 participants), obtaining some consistent results. In summary, our findings demonstrate specific speech topics may indicate depression severity. The presented data-driven workflow provides a practical approach to collecting and analyzing large-scale speech data from real-world settings for digital health research.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2308.11773
Document Type :
Working Paper