ETRI Journal (Feb 2023)

Automated detection of panic disorder based on multimodal physiological signals using machine learning

  • Eun Hye Jang,
  • Kwan Woo Choi,
  • Ah Young Kim,
  • Han Young Yu,
  • Hong Jin Jeon,
  • Sangwon Byun

DOI
https://doi.org/10.4218/etrij.2021-0299
Journal volume & issue
Vol. 45, no. 1
pp. 105 – 118

Abstract

Read online

We tested the feasibility of automated discrimination of patients with panic disorder (PD) from healthy controls (HCs) based on multimodal physiological responses using machine learning. Electrocardiogram (ECG), electrodermal activity (EDA), respiration (RESP), and peripheral temperature (PT) of the participants were measured during three experimental phases: rest, stress, and recovery. Eleven physiological features were extracted from each phase and used as input data. Logistic regression (LoR), k-nearest neighbor (KNN), support vector machine (SVM), random forest (RF), and multilayer perceptron (MLP) algorithms were implemented with nested cross-validation. Linear regression analysis showed that ECG and PT features obtained in the stress and recovery phases were significant predictors of PD. We achieved the highest accuracy (75.61%) with MLP using all 33 features. With the exception of MLP, applying the significant predictors led to a higher accuracy than using 24 ECG features. These results suggest that combining multimodal physiological signals measured during various states of autonomic arousal has the potential to differentiate patients with PD from HCs.

Keywords