论文标题
策划负责任的和代表性的医疗保健视频建议,用于患者教育和健康素养:增强情报方法
On Curating Responsible and Representative Healthcare Video Recommendations for Patient Education and Health Literacy: An Augmented Intelligence Approach
论文作者
论文摘要
研究表明,美国三分之一的成年人使用互联网诊断或了解健康问题。但是,这种在线访问健康信息可能会加剧健康信息可用性和使用的差异。健康信息寻求行为(HISB)是指个人寻求有关其健康,风险,疾病和健康保护行为的信息的方式。对于在数字媒体平台上搜索健康信息的患者,健康素养鸿沟既可以通过自己的知识和算法建议来加剧,从而使弱势群体,少数群体和低健康素养用户的结果不成比例。这项研究通过研究是否可以使用YouTube社交媒体平台上的慢性病(糖尿病)(糖尿病)应用于大型视频及其元数据,对上述挑战进行了探索性研究。本文着重于使用与糖尿病的视频有关的与演员的人口特征相关的偏见,这些视频被检索和策划了多种标准,例如编码的医学内容,以及它们以满足患者教育和人口健康素养需求的理解性。这种方法通过将卫生专业人员和患者的观点结合到可扩展且可概括的机器学习框架中,以赋予患者赋权和改善的健康生产能力,从而在人类界,增强,偏见和负责任的算法建议方面提供了巨大的创新机会。
Studies suggest that one in three US adults use the Internet to diagnose or learn about a health concern. However, such access to health information online could exacerbate the disparities in health information availability and use. Health information seeking behavior (HISB) refers to the ways in which individuals seek information about their health, risks, illnesses, and health-protective behaviors. For patients engaging in searches for health information on digital media platforms, health literacy divides can be exacerbated both by their own lack of knowledge and by algorithmic recommendations, with results that disproportionately impact disadvantaged populations, minorities, and low health literacy users. This study reports on an exploratory investigation of the above challenges by examining whether responsible and representative recommendations can be generated using advanced analytic methods applied to a large corpus of videos and their metadata on a chronic condition (diabetes) from the YouTube social media platform. The paper focusses on biases associated with demographic characters of actors using videos on diabetes that were retrieved and curated for multiple criteria such as encoded medical content and their understandability to address patient education and population health literacy needs. This approach offers an immense opportunity for innovation in human-in-the-loop, augmented-intelligence, bias-aware and responsible algorithmic recommendations by combining the perspectives of health professionals and patients into a scalable and generalizable machine learning framework for patient empowerment and improved health outcomes.