Shuffled ECA-Net for stress detection from multimodal wearable sensor data.

Namho Kim, Seongjae Lee, Junho Kim, So Yoon Choi, Sung-Min Park
Author Information
  1. Namho Kim: Department of Convergence IT Engineering, Pohang University of Science and Technology (POSTECH), Pohang, Republic of Korea. Electronic address: skagh1597@postech.ac.kr.
  2. Seongjae Lee: Major of Medical Science and Engineering, Pohang University of Science and Technology (POSTECH), Pohang, Republic of Korea. Electronic address: seongjae.lee@postech.ac.kr.
  3. Junho Kim: School of Interdisciplinary Bioscience and Bioengineering, Pohang University of Science and Technology (POSTECH), Pohang, Republic of Korea. Electronic address: iwog3927@postech.ac.kr.
  4. So Yoon Choi: Department of Pediatrics, Kosin University Gospel Hospital, Kosin University College of Medicine, Busan, Republic of Korea. Electronic address: ks200546@kosinmed.or.kr.
  5. Sung-Min Park: Department of Convergence IT Engineering, Pohang University of Science and Technology (POSTECH), Pohang, Republic of Korea; Major of Medical Science and Engineering, Pohang University of Science and Technology (POSTECH), Pohang, Republic of Korea; Department of Electrical Engineering, Pohang University of Science and Technology (POSTECH), Pohang, Republic of Korea; Department of Mechanical Engineering, Pohang University of Science and Technology (POSTECH), Pohang, Republic of Korea. Electronic address: sungminpark@postech.ac.kr.

Abstract

BACKGROUND: Recently, stress has been recognized as a key factor in the emergence of individual and social issues. Numerous attempts have been made to develop sensor-augmented psychological stress detection techniques, although existing methods are often impractical or overly subjective. To overcome these limitations, we acquired a dataset utilizing both wireless wearable multimodal sensors and salivary cortisol tests for supervised learning. We also developed a novel deep neural network (DNN) model that maximizes the benefits of sensor fusion.
METHOD: We devised a DNN involving a shuffled efficient channel attention (ECA) module called a shuffled ECA-Net, which achieves advanced feature-level sensor fusion by considering inter-modality relationships. Through an experiment involving salivary cortisol tests on 26 participants, we acquired multiple bio-signals including electrocardiograms, respiratory waveforms, and electrogastrograms in both relaxed and stressed mental states. A training dataset was generated from the obtained data. Using the dataset, our proposed model was optimized and evaluated ten times through five-fold cross-validation, while varying a random seed.
RESULTS: Our proposed model achieved acceptable performance in stress detection, showing 0.916 accuracy, 0.917 sensitivity, 0.916 specificity, 0.914 F1-score, and 0.964 area under the receiver operating characteristic curve (AUROC). Furthermore, we demonstrated that combining multiple bio-signals with a shuffled ECA module can more accurately detect psychological stress.
CONCLUSIONS: We believe that our proposed model, coupled with the evidence for the viability of multimodal sensor fusion and a shuffled ECA-Net, would significantly contribute to the resolution of stress-related issues.

Keywords

MeSH Term

Humans
Wearable Electronic Devices
Stress, Psychological
Female
Male
Adult
Signal Processing, Computer-Assisted
Saliva
Hydrocortisone
Electrocardiography
Neural Networks, Computer

Chemicals

Hydrocortisone

Word Cloud

Created with Highcharts 10.0.0stress0modelsensorfusionshuffleddetectiondatasetmultimodalECA-NetproposedissuespsychologicalacquiredwearablesalivarycortisoltestslearningDNNinvolvingECAmodulemultiplebio-signalsdata916BACKGROUND:RecentlyrecognizedkeyfactoremergenceindividualsocialNumerousattemptsmadedevelopsensor-augmentedtechniquesalthoughexistingmethodsoftenimpracticaloverlysubjectiveovercomelimitationsutilizingwirelesssensorssupervisedalsodevelopednoveldeepneuralnetworkmaximizesbenefitsMETHOD:devisedefficientchannelattentioncalledachievesadvancedfeature-levelconsideringinter-modalityrelationshipsexperiment26participantsincludingelectrocardiogramsrespiratorywaveformselectrogastrogramsrelaxedstressedmentalstatestraininggeneratedobtainedUsingoptimizedevaluatedtentimesfive-foldcross-validationvaryingrandomseedRESULTS:achievedacceptableperformanceshowingaccuracy917sensitivityspecificity914F1-score964areareceiveroperatingcharacteristiccurveAUROCFurthermoredemonstratedcombiningcanaccuratelydetectCONCLUSIONS:believecoupledevidenceviabilitysignificantlycontributeresolutionstress-relatedShuffledAttentionDeepElectrogastrogramFunctionalgastrointestinaldiseasesSensor

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