Multimodal approach to public health interventions using EGG and mobile health technologies

IntroductionPublic health interventions increasingly integrate multimodal data sources, such as Electroencephalogram (EEG) data, to enhance monitoring and predictive capabilities for mental health conditions. However, traditional models often face challenges with the complexity and high dimensionali...

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Main Authors: Xiao Zhang, Han Liu, Mingyang Sun, Shuangyi Feng
Format: Article
Language:English
Published: Frontiers Media S.A. 2025-01-01
Series:Frontiers in Public Health
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Online Access:https://www.frontiersin.org/articles/10.3389/fpubh.2024.1520343/full
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author Xiao Zhang
Han Liu
Mingyang Sun
Shuangyi Feng
author_facet Xiao Zhang
Han Liu
Mingyang Sun
Shuangyi Feng
author_sort Xiao Zhang
collection DOAJ
description IntroductionPublic health interventions increasingly integrate multimodal data sources, such as Electroencephalogram (EEG) data, to enhance monitoring and predictive capabilities for mental health conditions. However, traditional models often face challenges with the complexity and high dimensionality of EEG signals. While recent advancements like Contrastive Language-lmage Pre-training(CLIP) models excel in cross-modal understanding, their application to EEG-based tasks remains limited due to the unique characteristics of EEG data.MethodsIn response, we introduce PH-CLIP (Public Health Contrastive Language-lmage Pretraining), a novel framework that combines CLIP's representational power with a multi-scale fusion mechanism designed specifically for EEG data within mobile health technologies. PH-CLIP employs hierarchical feature extraction to capture the temporal dynamics of EEG signals, aligning them with contextually relevant textual descriptions for improved public health insights. Through a multi-scale fusion layer, PH-CLIP enhances interpretability and robustness in EEG embeddings, thereby supporting more accurate and scalable interventions across diverse public health applications.Results and discussionExperimental results indicate that PH-CLIP achieves significant improvements in EEG classification accuracy and mental health prediction efficiency compared to leading EEG analysis models. This framework positions PH-CLIP as a transformative tool in public health monitoring, with the potential to advance large-scale mental health interventions through integrative mobile health technologies.
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spelling doaj-art-56af2fd5e06d4767a4338313aca317772025-01-22T07:11:26ZengFrontiers Media S.A.Frontiers in Public Health2296-25652025-01-011210.3389/fpubh.2024.15203431520343Multimodal approach to public health interventions using EGG and mobile health technologiesXiao Zhang0Han Liu1Mingyang Sun2Shuangyi Feng3School of Physical Education Institute, Yunnan Minzu University, Kunming, Yunnan, ChinaSchool of Physical Education Institute, Yunnan Minzu University, Kunming, Yunnan, ChinaThe Catholic University of Korea, Seoul, Republic of KoreaThe Catholic University of Korea, Seoul, Republic of KoreaIntroductionPublic health interventions increasingly integrate multimodal data sources, such as Electroencephalogram (EEG) data, to enhance monitoring and predictive capabilities for mental health conditions. However, traditional models often face challenges with the complexity and high dimensionality of EEG signals. While recent advancements like Contrastive Language-lmage Pre-training(CLIP) models excel in cross-modal understanding, their application to EEG-based tasks remains limited due to the unique characteristics of EEG data.MethodsIn response, we introduce PH-CLIP (Public Health Contrastive Language-lmage Pretraining), a novel framework that combines CLIP's representational power with a multi-scale fusion mechanism designed specifically for EEG data within mobile health technologies. PH-CLIP employs hierarchical feature extraction to capture the temporal dynamics of EEG signals, aligning them with contextually relevant textual descriptions for improved public health insights. Through a multi-scale fusion layer, PH-CLIP enhances interpretability and robustness in EEG embeddings, thereby supporting more accurate and scalable interventions across diverse public health applications.Results and discussionExperimental results indicate that PH-CLIP achieves significant improvements in EEG classification accuracy and mental health prediction efficiency compared to leading EEG analysis models. This framework positions PH-CLIP as a transformative tool in public health monitoring, with the potential to advance large-scale mental health interventions through integrative mobile health technologies.https://www.frontiersin.org/articles/10.3389/fpubh.2024.1520343/fullpublic health interventionsPH-CLIPEEG signal analysismulti-scale fusion mechanismmobile health technologies
spellingShingle Xiao Zhang
Han Liu
Mingyang Sun
Shuangyi Feng
Multimodal approach to public health interventions using EGG and mobile health technologies
Frontiers in Public Health
public health interventions
PH-CLIP
EEG signal analysis
multi-scale fusion mechanism
mobile health technologies
title Multimodal approach to public health interventions using EGG and mobile health technologies
title_full Multimodal approach to public health interventions using EGG and mobile health technologies
title_fullStr Multimodal approach to public health interventions using EGG and mobile health technologies
title_full_unstemmed Multimodal approach to public health interventions using EGG and mobile health technologies
title_short Multimodal approach to public health interventions using EGG and mobile health technologies
title_sort multimodal approach to public health interventions using egg and mobile health technologies
topic public health interventions
PH-CLIP
EEG signal analysis
multi-scale fusion mechanism
mobile health technologies
url https://www.frontiersin.org/articles/10.3389/fpubh.2024.1520343/full
work_keys_str_mv AT xiaozhang multimodalapproachtopublichealthinterventionsusingeggandmobilehealthtechnologies
AT hanliu multimodalapproachtopublichealthinterventionsusingeggandmobilehealthtechnologies
AT mingyangsun multimodalapproachtopublichealthinterventionsusingeggandmobilehealthtechnologies
AT shuangyifeng multimodalapproachtopublichealthinterventionsusingeggandmobilehealthtechnologies