Public Medical Appeals and Government Online Responses: Big Data Analysis Based on Chinese Digital Governance Platforms

Abstract BackgroundIn the era of internet-based governance, online public appeals—particularly those related to health care—have emerged as a crucial channel through which citizens articulate their needs and concerns. ObjectiveThis study aims to investigate the the...

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Main Authors: Hebin Li, Zhihan Liu, Ziyan Zhang, Lu Ping, Wenxin Gu, Yuan Yao
Format: Article
Language:English
Published: JMIR Publications 2025-08-01
Series:Journal of Medical Internet Research
Online Access:https://www.jmir.org/2025/1/e70087
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author Hebin Li
Zhihan Liu
Ziyan Zhang
Lu Ping
Wenxin Gu
Yuan Yao
author_facet Hebin Li
Zhihan Liu
Ziyan Zhang
Lu Ping
Wenxin Gu
Yuan Yao
author_sort Hebin Li
collection DOAJ
description Abstract BackgroundIn the era of internet-based governance, online public appeals—particularly those related to health care—have emerged as a crucial channel through which citizens articulate their needs and concerns. ObjectiveThis study aims to investigate the thematic structure, emotional tone, and underlying logic of governmental responses related to public medical appeals in China. MethodsWe collected messages posted on the “Message Board for Leaders” hosted by People’s Daily Online between January 2022 and November 2023 to identify valid medical appeals for analysis. (1) Key themes of public appeals were identified using the term frequency-inverse document frequency model for feature word extraction, followed by hierarchical cluster analysis. (2) Sentiment classification was conducted using supervised machine learning, with additional validation through sentiment scores derived from a lexicon-based approach. (3) A binary logistic regression model was employed to examine the influence of textual, transactional, and macro-environmental factors on the likelihood of receiving a government response. Robustness was tested using a Probit model. ResultsFrom a total of 404,428 online appeals, 8864 valid public medical messages were retained after filtering. These primarily concerned pandemic control, fertility policies, health care institutions, and insurance issues. Negative sentiment predominated across message types, accounting for 3328 out of 3877 (85.84%) complaints/help-seeking messages, 1666 out of 2381 (69.97%) consultation messages, and 1710 out of 2606 (65.62%) suggestions. Regression analysis revealed that textual features, issue complexity, and benefit attribution were not significantly associated with government responsiveness. Specifically, for textual features, taking the epidemic issue as the reference category in the appeal theme, the PPPPPPPPPPPP=..PPP<.PP ConclusionsPublic medical appeals exhibit 5 defining characteristics: urgency induced by pandemic conditions, connections to fertility policy reforms, tensions between the efficacy and costs of medical services, challenges related to cross-regional insurance coverage, and a predominance of negative sentiment. The findings indicate that textual features and issue-specific content exert limited influence on government responsiveness, likely due to the politically sensitive and complex nature of health care–
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spelling doaj-art-1eb33977aab74dcfb37e447d124c82762025-08-20T03:36:25ZengJMIR PublicationsJournal of Medical Internet Research1438-88712025-08-0127e70087e7008710.2196/70087Public Medical Appeals and Government Online Responses: Big Data Analysis Based on Chinese Digital Governance PlatformsHebin Lihttp://orcid.org/0009-0004-5305-1589Zhihan Liuhttp://orcid.org/0000-0003-0659-1318Ziyan Zhanghttp://orcid.org/0009-0006-9254-230XLu Pinghttp://orcid.org/0009-0005-9346-8781Wenxin Guhttp://orcid.org/0009-0004-3167-3002Yuan Yaohttp://orcid.org/0009-0004-4800-9626 Abstract BackgroundIn the era of internet-based governance, online public appeals—particularly those related to health care—have emerged as a crucial channel through which citizens articulate their needs and concerns. ObjectiveThis study aims to investigate the thematic structure, emotional tone, and underlying logic of governmental responses related to public medical appeals in China. MethodsWe collected messages posted on the “Message Board for Leaders” hosted by People’s Daily Online between January 2022 and November 2023 to identify valid medical appeals for analysis. (1) Key themes of public appeals were identified using the term frequency-inverse document frequency model for feature word extraction, followed by hierarchical cluster analysis. (2) Sentiment classification was conducted using supervised machine learning, with additional validation through sentiment scores derived from a lexicon-based approach. (3) A binary logistic regression model was employed to examine the influence of textual, transactional, and macro-environmental factors on the likelihood of receiving a government response. Robustness was tested using a Probit model. ResultsFrom a total of 404,428 online appeals, 8864 valid public medical messages were retained after filtering. These primarily concerned pandemic control, fertility policies, health care institutions, and insurance issues. Negative sentiment predominated across message types, accounting for 3328 out of 3877 (85.84%) complaints/help-seeking messages, 1666 out of 2381 (69.97%) consultation messages, and 1710 out of 2606 (65.62%) suggestions. Regression analysis revealed that textual features, issue complexity, and benefit attribution were not significantly associated with government responsiveness. Specifically, for textual features, taking the epidemic issue as the reference category in the appeal theme, the PPPPPPPPPPPP=..PPP<.PP ConclusionsPublic medical appeals exhibit 5 defining characteristics: urgency induced by pandemic conditions, connections to fertility policy reforms, tensions between the efficacy and costs of medical services, challenges related to cross-regional insurance coverage, and a predominance of negative sentiment. The findings indicate that textual features and issue-specific content exert limited influence on government responsiveness, likely due to the politically sensitive and complex nature of health care–https://www.jmir.org/2025/1/e70087
spellingShingle Hebin Li
Zhihan Liu
Ziyan Zhang
Lu Ping
Wenxin Gu
Yuan Yao
Public Medical Appeals and Government Online Responses: Big Data Analysis Based on Chinese Digital Governance Platforms
Journal of Medical Internet Research
title Public Medical Appeals and Government Online Responses: Big Data Analysis Based on Chinese Digital Governance Platforms
title_full Public Medical Appeals and Government Online Responses: Big Data Analysis Based on Chinese Digital Governance Platforms
title_fullStr Public Medical Appeals and Government Online Responses: Big Data Analysis Based on Chinese Digital Governance Platforms
title_full_unstemmed Public Medical Appeals and Government Online Responses: Big Data Analysis Based on Chinese Digital Governance Platforms
title_short Public Medical Appeals and Government Online Responses: Big Data Analysis Based on Chinese Digital Governance Platforms
title_sort public medical appeals and government online responses big data analysis based on chinese digital governance platforms
url https://www.jmir.org/2025/1/e70087
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