Author:
Bartal Alon,Jagodnik Kathleen M.,Chan Sabrina J.,Dekel Sharon
Abstract
AbstractFree-text analysis using machine learning (ML)-based natural language processing (NLP) shows promise for diagnosing psychiatric conditions. Chat Generative Pre-trained Transformer (ChatGPT) has demonstrated preliminary initial feasibility for this purpose; however, whether it can accurately assess mental illness remains to be determined. This study evaluates the effectiveness of ChatGPT and the text-embedding-ada-002 (ADA) model in detecting post-traumatic stress disorder following childbirth (CB-PTSD), a maternal postpartum mental illness affecting millions of women annually, with no standard screening protocol. Using a sample of 1295 women who gave birth in the last six months and were 18+ years old, recruited through hospital announcements, social media, and professional organizations, we explore ChatGPT’s and ADA’s potential to screen for CB-PTSD by analyzing maternal childbirth narratives. The PTSD Checklist for DSM-5 (PCL-5; cutoff 31) was used to assess CB-PTSD. By developing an ML model that utilizes numerical vector representation of the ADA model, we identify CB-PTSD via narrative classification. Our model outperformed (F1 score: 0.81) ChatGPT and six previously published large text-embedding models trained on mental health or clinical domains data, suggesting that the ADA model can be harnessed to identify CB-PTSD. Our modeling approach could be generalized to assess other mental health disorders.
Funder
Data Science Institute (DSI) at Bar-Ilan University
Mortimer B. Zuckerman STEM Leadership Program
Eunice Kennedy Shriver National Institute of Child Health and Human Development
Publisher
Springer Science and Business Media LLC
Reference67 articles.
1. Wang, L. et al. Boosting delirium identification accuracy with sentiment-based natural language processing: Mixed methods study. JMIR Med. Inform. 10(12), e38161 (2022).
2. Liu, N., Luo, K., Yuan, Z. & Chen, Y. A transfer learning method for detecting Alzheimer’s disease based on speech and natural language processing. Front. Public Health 10, 772592 (2022).
3. Levis, M., Westgate, C. L., Gui, J., Watts, B. V. & Shiner, B. Natural language processing of clinical mental health notes may add predictive value to existing suicide risk models. Psychol. Med. 51, 1382–1391 (2021).
4. Brown, T. et al. Language models are few-shot learners. Adv. Neural Inf. Proc. Syst. 33, 1877–1901 (2020).
5. Brants, T., Popat, A. C., Xu, P., Och, F. J. & Dean, J. Large language models in machine translation. In Proc. 2007 Joint Conf. Empirical Meth. Nat. Lang. Proc. Computat. Nat. Lang. Learn. Prague. 858–867 (2007).
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