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中国关于二尖瓣反流的信息来源——TikTok 质量评估:横断面研究。

Quality Assessment of TikTok as a Source of Information About Mitral Valve Regurgitation in China: Cross-Sectional Study.

机构信息

Department of Surgical Intensive Care Unit, The First Affiliated Hospital, Zhejiang University School of Medicine, Hangzhou, China.

Department of Ultrasonography, The First Affiliated Hospital, Zhejiang University School of Medicine, Hangzhou, China.

出版信息

J Med Internet Res. 2024 Aug 20;26:e55403. doi: 10.2196/55403.

Abstract

BACKGROUND

In China, mitral valve regurgitation (MR) is the most common cardiovascular valve disease. However, patients in China typically experience a high incidence of this condition, coupled with a low level of health knowledge and a relatively low rate of surgical treatment. TikTok hosts a vast amount of content related to diseases and health knowledge, providing viewers with access to relevant information. However, there has been no investigation or evaluation of the quality of videos specifically addressing MR.

OBJECTIVE

This study aims to assess the quality of videos about MR on TikTok in China.

METHODS

A cross-sectional study was conducted on the Chinese version of TikTok on September 9, 2023. The top 100 videos on MR were included and evaluated using quantitative scoring tools such as the modified DISCERN (mDISCERN), the Journal of the American Medical Association (JAMA) benchmark criteria, the Global Quality Score (GQS), and the Patient Education Materials Assessment Tool for Audio-Visual Content (PEMAT-A/V). Correlation and stepwise regression analyses were performed to examine the relationships between video quality and various characteristics.

RESULTS

We obtained 88 valid video files, of which most (n=81, 92%) were uploaded by certified physicians, primarily cardiac surgeons, and cardiologists. News agencies/organizations and physicians had higher GQS scores compared with individuals (news agencies/organizations vs individuals, P=.001; physicians vs individuals, P=.03). Additionally, news agencies/organizations had higher PEMAT understandability scores than individuals (P=.01). Videos focused on disease knowledge scored higher in GQS (P<.001), PEMAT understandability (P<.001), and PEMAT actionability (P<.001) compared with videos covering surgical cases. PEMAT actionability scores were higher for outpatient cases compared with surgical cases (P<.001). Additionally, videos focused on surgical techniques had lower PEMAT actionability scores than those about disease knowledge (P=.04). The strongest correlations observed were between thumbs up and comments (r=0.92, P<.001), thumbs up and favorites (r=0.89, P<.001), thumbs up and shares (r=0.87, P<.001), comments and favorites (r=0.81, P<.001), comments and shares (r=0.87, P<.001), and favorites and shares (r=0.83, P<.001). Stepwise regression analysis identified "length (P<.001)," "content (P<.001)," and "physicians (P=.004)" as significant predictors of GQS. The final model (model 3) explained 50.1% of the variance in GQSs. The predictive equation for GQS is as follows: GQS = 3.230 - 0.294 × content - 0.274 × physicians + 0.005 × length. This model was statistically significant (P=.004) and showed no issues with multicollinearity or autocorrelation.

CONCLUSIONS

Our study reveals that while most MR-related videos on TikTok were uploaded by certified physicians, ensuring professional and scientific content, the overall quality scores were suboptimal. Despite the educational value of these videos, the guidance provided was often insufficient. The predictive equation for GQS developed from our analysis offers valuable insights but should be applied with caution beyond the study context. It suggests that creators should focus on improving both the content and presentation of their videos to enhance the quality of health information shared on social media.

摘要

背景

在中国,二尖瓣反流(MR)是最常见的心血管瓣膜疾病。然而,中国患者通常会经历这种疾病的高发,同时健康知识水平较低,手术治疗率相对较低。TikTok 上拥有大量与疾病和健康知识相关的内容,为观众提供了获取相关信息的途径。然而,目前还没有针对专门讨论 MR 的视频质量进行调查或评估。

目的

本研究旨在评估中国 TikTok 上关于 MR 的视频质量。

方法

于 2023 年 9 月 9 日对中文版 TikTok 进行了一项横断面研究。纳入了前 100 个关于 MR 的视频,并使用定量评分工具,如改良的 DISCERN(mDISCERN)、《美国医学会杂志》(JAMA)基准标准、全球质量评分(GQS)和视听内容患者教育材料评估工具(PEMAT-A/V)进行评估。进行了相关性和逐步回归分析,以研究视频质量与各种特征之间的关系。

结果

我们获得了 88 个有效视频文件,其中大多数(n=81,92%)是由认证医师,主要是心脏外科医生和心脏病专家上传的。新闻机构/组织和医师的 GQS 评分高于个人(新闻机构/组织比个人,P=.001;医师比个人,P=.03)。此外,新闻机构/组织的 PEMAT 可理解性评分高于个人(P=.01)。与涵盖手术病例的视频相比,专注于疾病知识的视频在 GQS(P<.001)、PEMAT 可理解性(P<.001)和 PEMAT 可操作性(P<.001)方面得分更高。与手术病例相比,门诊病例的 PEMAT 可操作性评分更高(P<.001)。此外,与疾病知识相关的视频相比,专注于手术技术的视频的 PEMAT 可操作性评分较低(P=.04)。观察到的最强相关性是点赞和评论(r=0.92,P<.001)、点赞和收藏(r=0.89,P<.001)、点赞和分享(r=0.87,P<.001)、评论和收藏(r=0.81,P<.001)、评论和分享(r=0.87,P<.001)以及收藏和分享(r=0.83,P<.001)。逐步回归分析确定了“长度(P<.001)”“内容(P<.001)”和“医师(P=.004)”是 GQS 的显著预测因素。最终模型(模型 3)解释了 GQS 方差的 50.1%。GQS 的预测方程如下:GQS = 3.230 - 0.294 × 内容 - 0.274 × 医师 + 0.005 × 长度。该模型具有统计学意义(P=.004),且不存在多重共线性或自相关性问题。

结论

本研究表明,尽管 TikTok 上大多数与 MR 相关的视频是由认证医师上传的,能够确保内容专业且科学,但整体质量评分并不理想。尽管这些视频具有教育价值,但提供的指导往往不足。我们从分析中得出的 GQS 预测方程提供了有价值的见解,但应谨慎应用,超出研究范围可能会存在问题。它表明创作者应专注于提高视频的内容和呈现方式,以提高社交媒体上共享的健康信息质量。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/09ff/11372326/305f1f0e8cef/jmir_v26i1e55403_fig1.jpg

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