Ask Your Doctor to Prescribe a YouTube Video: An Augmented Intelligence Approach to Assess Understandability of YouTube Videos for Patient Education

Xiao Liu, Anjana Susarla, R. Padman
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引用次数: 2

Abstract

Healthcare information in video format may be more understandable for users, offering the promise of improved health literacy, patient-physician interactions, self-care and outcomes. However, while recognizing the value of YouTube videos for patient education, most existing work in health communication has evaluated video understandability manually which is not scalable, replicable or efficient. In this study, we draw on the Patient Education Material Assessment Tool (PEMAT), a systematic approach for audio-visual educational materials assessment, to develop an automated video classification solution that is also generalizable. Extracting video features and metadata from YouTube, we develop an algorithmic approach employing PEMAT-based patient education constructs, annotations from domain experts and co-training methods from machine learning to assess the understandability of diabetes videos for patient education. The co-training approach significantly improves the video understandability classification performance in comparison to three widely used benchmark machine learning models. We further examine the impact of understandability on several dimensions of collective engagement with videos. A challenge in evaluating collective engagement with understandable videos is that there could be content that is not medically validated but yet engage users. Hence, we consider the simultaneous impact of understandability and validated medical information in a video on collective engagement by conducting a multiple-treatment propensity score based matching approach that allows us to implement a quasi-randomization research design. While confirming common assessments of the relationship between user engagement and understandability of education materials, our analysis quantifies these effects using actual viewing data in the specific context of understandability of complex medical information encoded in patient education videos found on YouTube. Implications for research and practice are discussed.
让你的医生开一个YouTube视频:一种增强智能方法来评估YouTube视频对患者教育的可理解性
视频格式的医疗保健信息可能对用户来说更容易理解,提供了改善健康知识、医患互动、自我护理和结果的承诺。然而,在认识到YouTube视频对患者教育的价值的同时,大多数健康传播方面的现有工作都是手动评估视频的可理解性,这是不可扩展的,不可复制的或有效的。在这项研究中,我们借鉴了患者教育材料评估工具(PEMAT),这是一种用于视听教育材料评估的系统方法,以开发一种可推广的自动视频分类解决方案。从YouTube中提取视频特征和元数据,我们开发了一种算法方法,采用基于pmat的患者教育结构、领域专家的注释和机器学习的共同训练方法来评估糖尿病视频的可理解性。与三种广泛使用的基准机器学习模型相比,共同训练方法显著提高了视频可理解性分类性能。我们进一步研究了可理解性对集体参与视频的几个维度的影响。评估对可理解视频的集体参与的一个挑战是,可能存在未经医学验证但仍能吸引用户的内容。因此,我们考虑了视频中可理解性和经过验证的医学信息对集体参与的同时影响,通过进行基于多治疗倾向评分的匹配方法,使我们能够实施准随机化研究设计。在确认用户参与度与教育材料可理解性之间关系的共同评估的同时,我们的分析使用在YouTube上发现的患者教育视频中编码的复杂医疗信息的可理解性的特定背景下的实际观看数据来量化这些影响。讨论了对研究和实践的启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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