Public Discourse Toward Older Drivers in Japan: Longitudinal Analysis of Social Media Data from 2010 to 2022 (Preprint) DOI Creative Commons

Akito Nakanishi,

Masao Ichikawa, Yukie Sano

и другие.

JMIR Infodemiology, Год журнала: 2024, Номер unknown

Опубликована: Ноя. 26, 2024

Язык: Английский

Assessing Awareness, Want, and Adoption of Internet Medical Services Among Chronic Disease Patients in China:A Structural Equation Model and Matrix Analysis DOI Creative Commons
Rui Qiu,

Rui Song,

Xiaoyi Wu

и другие.

Research Square (Research Square), Год журнала: 2025, Номер unknown

Опубликована: Март 25, 2025

Abstract Background Internet Medical Services (IMS) hold substantial potential to address healthcare challenges arising from demographic shifts, such as aging populations, and the evolving disease spectrum, marked by rising prevalence of chronic conditions. However, their practical impact has yet fully meet these expectations. This study seeks investigate factors influencing adoption utilization IMS among patients, focusing on effects across specific domains acceptance processes, provide a fresh perspective enhancing management. Methods We extended Technology Acceptance Model (TAM) with Information-Motivation-Behavioral Skills (IMB) framework, incorporating eHealth literacy, patient activation, demographics (age, education duration, income level). A cross-sectional survey 520 patients in Jinan, China, was analyzed using Structural Equation Modeling (SEM) matrix analysis evaluate patterns factors. Results Information showed high minimal disparities, while Diagnose exhibited low uptake significant gaps, particularly older, less-educated, rural, multimorbid patients. Notably, higher-income displayed lower all categories, expected enhance adoption, unexpectedly hindered use. SEM confirmed Perceived Usefulness duration positive drivers stages, literacy boosting Adoption, age exerting negative effect. Conclusions trailblazing model elucidates complexities, revealing counterintuitive barriers like activation. It underscores need for targeted interventions service quality, providing robust framework optimizing deployment advancing digital health strategies care.

Язык: Английский

Процитировано

0

Public Discourse and Sentiment Toward Older Drivers on Social Media in Japan (Preprint) DOI
A. Nakanishi, Masao Ichikawa, Yukie Sano

и другие.

Опубликована: Ноя. 26, 2024

BACKGROUND As the global population ages, concerns about older drivers are intensifying. Although not inherently more dangerous than other age groups, traditional surveys in Japan reveal persistent negative sentiments toward them. This discrepancy suggests importance of analyzing discourse on social media, where public perceptions and societal attitudes actively shaped. OBJECTIVE study aims to quantify long-term through Twitter, a leading media platform. The specific objectives to: (1) examine tweets, (2) identify textual contents topics discussed (3) analyze how associated with these contents. METHODS We collected Japanese tweet related from 2010 2022. Each quarter, we applied J-LIWC J-MFD dictionaries for sentiment analysis, employed two-layer Non-negative Matrix Factorization dynamic topic modeling, logistic regression analyses explore relationships between topics. RESULTS obtained 2,625,807 tweets 1,052,976 unique users discussing drivers. number has steadily increased, significant peak 2016, 2019, 2021, coinciding high-profile traffic crashes. Sentiment analysis revealed predominance emotion (62.4%), anger (17.4%), anxiety (18.6%), risk (58.2%). Topic modeling identified 29 topics, including those driving licenses, crashes, personal perspectives, issues. Crash events topic, which increased by 0.08% per showed strong correlation (B = 23.39, P < .001) 24.1, .001). CONCLUSIONS 13-year quantified using Twitter data, revealing paradoxical increase perceived risk, despite decline actual crash rate among These findings underscore accurate communication crashed caused mitigate undue prejudice avoid unnecessary disadvantages

Язык: Английский

Процитировано

0

Public Discourse Toward Older Drivers in Japan: Longitudinal Analysis of Social Media Data from 2010 to 2022 (Preprint) DOI Creative Commons

Akito Nakanishi,

Masao Ichikawa, Yukie Sano

и другие.

JMIR Infodemiology, Год журнала: 2024, Номер unknown

Опубликована: Ноя. 26, 2024

Язык: Английский

Процитировано

0