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Article: Classification of mindfulness experiences from gamma-band effective connectivity: Application of machine-learning algorithms on resting, breathing, and body scan

TitleClassification of mindfulness experiences from gamma-band effective connectivity: Application of machine-learning algorithms on resting, breathing, and body scan
Authors
KeywordsDecision tree
Effective connectivity
Electroencephalography (EEG)
Machine learning
Mindfulness
Mindfulness-based stress reduction (MBSR)
Issue Date2024
Citation
Computer Methods and Programs in Biomedicine, 2024, v. 257, article no. 108446 How to Cite?
AbstractBackground and Objective: Practicing mindfulness is a mental process toward interoceptive awareness, achieving stress reduction and emotion regulation through brain-function alteration. Literature has shown that electroencephalography (EEG)-derived connectivity possesses the potential to differentiate brain functions between mindfulness naïve and mindfulness experienced, where such quantitative differentiation could benefit telediagnosis for mental health. However, there is no prior guidance in model selection targeting on the mindfulness-experience prediction. Here we hypothesized that the EEG effective connectivity could reach a good prediction performance in mindfulness experiences with brain interpretability. Methods: We aimed at probing direct Directed Transfer Function (dDTF) to classify the participants’ history of mindfulness-based stress reduction (MBSR), and aimed at optimizing the prediction accuracy by comparing multiple machine learning (ML) algorithms. Targeting the gamma-band effective connectivity, we evaluated the EEG-based prediction of the mindfulness experiences across 7 machine learning (ML) algorithms and 3 sessions (i.e., resting, focus-breathing, and body-scan). Results: The support vector machine and naïve Bayes classifiers exhibited significant accuracies above the chance level across all three sessions, and the decision tree algorithm reached the highest prediction accuracy of 91.7 % with the resting state, compared to the classification accuracies with the other two mindful states. We further conducted the analysis on essential EEG channels to preserve the classification accuracy, revealing that preserving just four channels (F7, F8, T7, and P7) out of 19 yielded the accuracy of 83.3 %. Delving into the contribution of connectivity features, specific connectivity features predominantly located in the frontal lobe contributed more to classifier construction, which aligned well with the existing mindfulness literature. Conclusion: In the present study, we initiated a milestone of developing an EEG-based classifier to detect a person's mindfulness experience objectively. The prediction accuracy of the decision tree was optimal to differentiate the mindfulness experiences using the local resting-state EEG data. The suggested algorithm and key channels on the mindfulness-experience prediction may provide guidance for predicting mindfulness experiences using the EEG-based classification embedded in future wearable neurofeedback systems or plausible digital therapeutics.
Persistent Identifierhttp://hdl.handle.net/10722/363668
ISSN
2023 Impact Factor: 4.9
2023 SCImago Journal Rankings: 1.189

 

DC FieldValueLanguage
dc.contributor.authorHsu, Ai Ling-
dc.contributor.authorWu, Chun Yu-
dc.contributor.authorNg, Hei Yin Hydra-
dc.contributor.authorChuang, Chun Hsiang-
dc.contributor.authorHuang, Chih Mao-
dc.contributor.authorWu, Changwei W.-
dc.contributor.authorChao, Yi Ping-
dc.date.accessioned2025-10-10T07:48:29Z-
dc.date.available2025-10-10T07:48:29Z-
dc.date.issued2024-
dc.identifier.citationComputer Methods and Programs in Biomedicine, 2024, v. 257, article no. 108446-
dc.identifier.issn0169-2607-
dc.identifier.urihttp://hdl.handle.net/10722/363668-
dc.description.abstractBackground and Objective: Practicing mindfulness is a mental process toward interoceptive awareness, achieving stress reduction and emotion regulation through brain-function alteration. Literature has shown that electroencephalography (EEG)-derived connectivity possesses the potential to differentiate brain functions between mindfulness naïve and mindfulness experienced, where such quantitative differentiation could benefit telediagnosis for mental health. However, there is no prior guidance in model selection targeting on the mindfulness-experience prediction. Here we hypothesized that the EEG effective connectivity could reach a good prediction performance in mindfulness experiences with brain interpretability. Methods: We aimed at probing direct Directed Transfer Function (dDTF) to classify the participants’ history of mindfulness-based stress reduction (MBSR), and aimed at optimizing the prediction accuracy by comparing multiple machine learning (ML) algorithms. Targeting the gamma-band effective connectivity, we evaluated the EEG-based prediction of the mindfulness experiences across 7 machine learning (ML) algorithms and 3 sessions (i.e., resting, focus-breathing, and body-scan). Results: The support vector machine and naïve Bayes classifiers exhibited significant accuracies above the chance level across all three sessions, and the decision tree algorithm reached the highest prediction accuracy of 91.7 % with the resting state, compared to the classification accuracies with the other two mindful states. We further conducted the analysis on essential EEG channels to preserve the classification accuracy, revealing that preserving just four channels (F7, F8, T7, and P7) out of 19 yielded the accuracy of 83.3 %. Delving into the contribution of connectivity features, specific connectivity features predominantly located in the frontal lobe contributed more to classifier construction, which aligned well with the existing mindfulness literature. Conclusion: In the present study, we initiated a milestone of developing an EEG-based classifier to detect a person's mindfulness experience objectively. The prediction accuracy of the decision tree was optimal to differentiate the mindfulness experiences using the local resting-state EEG data. The suggested algorithm and key channels on the mindfulness-experience prediction may provide guidance for predicting mindfulness experiences using the EEG-based classification embedded in future wearable neurofeedback systems or plausible digital therapeutics.-
dc.languageeng-
dc.relation.ispartofComputer Methods and Programs in Biomedicine-
dc.subjectDecision tree-
dc.subjectEffective connectivity-
dc.subjectElectroencephalography (EEG)-
dc.subjectMachine learning-
dc.subjectMindfulness-
dc.subjectMindfulness-based stress reduction (MBSR)-
dc.titleClassification of mindfulness experiences from gamma-band effective connectivity: Application of machine-learning algorithms on resting, breathing, and body scan-
dc.typeArticle-
dc.description.naturelink_to_subscribed_fulltext-
dc.identifier.doi10.1016/j.cmpb.2024.108446-
dc.identifier.pmid39369588-
dc.identifier.scopuseid_2-s2.0-85205458844-
dc.identifier.volume257-
dc.identifier.spagearticle no. 108446-
dc.identifier.epagearticle no. 108446-
dc.identifier.eissn1872-7565-

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