Quality assessment of web-based information on type 2 diabetes

Didem Ölçer, T. Taşkaya-Temizel
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引用次数: 4

Abstract

PurposeThis paper proposes a framework that automatically assesses content coverage and information quality of health websites for end-users.Design/methodology/approachThe study investigates the impact of textual and content-based features in predicting the quality of health-related texts. Content-based features were acquired using an evidence-based practice guideline in diabetes. A set of textual features inspired by professional health literacy guidelines and the features commonly used for assessing information quality in other domains were also used. In this study, 60 websites about type 2 diabetes were methodically selected for inclusion. Two general practitioners used DISCERN to assess each website in terms of its content coverage and quality.FindingsThe proposed framework outputs were compared with the experts' evaluation scores. The best accuracy was obtained as 88 and 92% with textual features and content-based features for coverage assessment respectively. When both types of features were used, the proposed framework achieved 90% accuracy. For information quality assessment, the content-based features resulted in a higher accuracy of 92% against 88% obtained using the textual features.Research limitations/implicationsThe experiments were conducted for websites about type 2 diabetes. As the whole process is costly and requires extensive expert human labelling, the study was carried out in a single domain. However, the methodology is generalizable to other health domains for which evidence-based practice guidelines are available.Practical implicationsFinding high-quality online health information is becoming increasingly difficult due to the high volume of information generated by non-experts in the area. The search engines fail to rank objective health websites higher within the search results. The proposed framework can aid search engine and information platform developers to implement better retrieval techniques, in turn, facilitating end-users' access to high-quality health information.Social implicationsErroneous, biased or partial health information is a serious problem for end-users who need access to objective information on their health problems. Such information may cause patients to stop their treatments provided by professionals. It might also have adverse financial implications by causing unnecessary expenditures on ineffective treatments. The ability to access high-quality health information has a positive effect on the health of both individuals and the whole society.Originality/valueThe paper demonstrates that automatic assessment of health websites is a domain-specific problem, which cannot be addressed with the general information quality assessment methodologies in the literature. Content coverage of health websites has also been studied in the health domain for the first time in the literature.
2型糖尿病网上信息的质量评估
目的提出一种面向终端用户的健康网站内容覆盖率和信息质量自动评估框架。设计/方法/方法本研究调查了文本和基于内容的特征对预测健康相关文本质量的影响。基于内容的特征是使用基于证据的糖尿病实践指南获得的。还使用了一套受专业卫生知识普及指南启发的文本特征和其他领域中通常用于评估信息质量的特征。在这项研究中,有系统地选择了60个关于2型糖尿病的网站。两名全科医生使用DISCERN来评估每个网站的内容覆盖率和质量。建议的框架输出与专家的评估分数进行了比较。文本特征和基于内容的特征覆盖率评估的准确率分别为88%和92%。当两种类型的特征都被使用时,所提出的框架达到了90%的准确率。对于信息质量评估,基于内容的特征的准确率为92%,而使用文本特征的准确率为88%。研究局限性/意义本实验是针对2型糖尿病网站进行的。由于整个过程是昂贵的,需要大量的专家人类标签,研究是在单一领域进行的。然而,该方法可推广到其他有循证实践指南的卫生领域。由于该领域非专家产生的大量信息,寻找高质量的在线健康信息变得越来越困难。搜索引擎无法在搜索结果中对客观健康网站进行更高的排名。所提出的框架可以帮助搜索引擎和信息平台开发人员实施更好的检索技术,从而促进最终用户访问高质量的健康信息。社会影响对于需要获得关于其健康问题的客观信息的最终用户来说,严重的、有偏见的或不完整的健康信息是一个严重问题。这些信息可能会导致患者停止专业人员提供的治疗。它还可能造成对无效治疗的不必要支出,从而产生不利的财政影响。获得高质量健康信息的能力对个人和整个社会的健康都有积极影响。本文表明,健康网站的自动评估是一个特定领域的问题,不能用文献中一般的信息质量评估方法来解决。文献中也首次在健康领域对健康网站的内容覆盖进行了研究。
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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