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Accepted for/Published in: JMIR Medical Informatics

Date Submitted: Aug 23, 2021
Open Peer Review Period: Aug 23, 2021 - Aug 31, 2021
Date Accepted: Jan 2, 2022
(closed for review but you can still tweet)

The final, peer-reviewed published version of this preprint can be found here:

Panic Attack Prediction Using Wearable Devices and Machine Learning: Development and Cohort Study

Tsai CH, Chen PC, Wu CT, Kuo YY, Hsieh TT, Chiang DL, Lai F

Panic Attack Prediction Using Wearable Devices and Machine Learning: Development and Cohort Study

JMIR Med Inform 2022;10(2):e33063

DOI: 10.2196/33063

PMID: 35166679

PMCID: 8889475

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

Panic attack prediction using wearable devices and machine learning: development and cohort study

  • Chan-Hen Tsai; 
  • Pei-Chen Chen; 
  • Chia-Tung Wu; 
  • Ying-Ying Kuo; 
  • Tsung-Ting Hsieh; 
  • Dai-Lun Chiang; 
  • Feipei Lai

ABSTRACT

Background:

A panic attack (PA) is an intense form of anxiety accompanied by multiple somatic presentations, leading to frequent emergency department visits and repetitive medical examinations before a formal diagnosis. Designing a PA prediction model could help prevent iatrogenic harm to patients and facilitate more personalized treatment.

Objective:

This study aimed to provide a seven-day PA prediction model and determine the relationship between physiological factors, anxiety and depressive factors, and air quality index.

Methods:

We enrolled 59 participants with PD (DMS-5 and MINI interview). Participants used smartwatches (Garmin vivosmart 4) and mobile applications to collect their sleep, heart rate, activity level, anxiety, and depression scores (BDI, BAI, STAI-S, STAI-T, and PDSS-SR) in their real life for a duration of one year. We also included air quality indexes from open data. To analyze these data, our team used six machine learning methods: random forests, decision trees, LDA, AdaBoost, XgBoost, and regularized greedy forests.

Results:

For seven-day PA prediction, the random forest produced the best prediction rate. The model achieved an accuracy of 97.5% on the training set. Overall, the accuracy of the testing set was 67.4–81.3% for different machine learning algorithms. The most critical variables in the model were questionnaire and physiological features such as BAI, BDI, STAI, MINI, average heart rate, resting heart rate, and deep sleep duration.

Conclusions:

It is possible to predict panic attacks using a combination of data from questionnaires, and physiological and environmental data. Prediction accuracy was 97.5% on the training data and 81.3% on the testing data.


 Citation

Please cite as:

Tsai CH, Chen PC, Wu CT, Kuo YY, Hsieh TT, Chiang DL, Lai F

Panic Attack Prediction Using Wearable Devices and Machine Learning: Development and Cohort Study

JMIR Med Inform 2022;10(2):e33063

DOI: 10.2196/33063

PMID: 35166679

PMCID: 8889475

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