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Automated Characterization of Mobile Health Apps' Features by Extracting Information From the Web: An Exploratory Stu.

机译:通过从网络中提取信息来自动描述移动运行状况应用程序的功能:探索性STU。

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摘要

Purpose: The aim of this study was to test the viability of a novel method for automated characterization of mobile health apps. Method: In this exploratory study, we developed the basic modules of an automated method, based on text analytics, able to characterize the apps' medical specialties by extracting information from the web. We analyzed apps in the Medical and Health & Fitness categories on the U.S. iTunes store. Results: We automatically crawled 42,007 Medical and 79,557 Health & Fitness apps' webpages. After removing duplicates and non-English apps, the database included 80,490 apps. We tested the accuracy of the automated method on a subset of 400 apps. We observed 91% accuracy for the identification of apps related to health or medicine, 95% accuracy for sensory systems apps, and an average of 82% accuracy for classification into medical specialties. Conclusions: These preliminary results suggested the viability of automated characterization of apps based on text analytics and highlighted directions for improvement in terms of classification rules and vocabularies, analysis of semantic types, and extraction of key features (promoters, services, and users). The availability of automated tools for app characterization is important as it may support health care professionals in informed, aware selection of health apps to recommend to their patients.
机译:目的:本研究的目的是测试一种新颖方法的可行性,用于移动健康应用程序的自动表征。方法:在此探索性研究中,我们通过文本分析开发了一种自动方法的基本模块,能够通过从网络中提取信息来表征Apps的医学专业。我们分析了美国iTunes商店的医疗和健身类别中的应用程序。结果:我们自动爬行42,007张医疗和79,557个健身和健身应用程序的网页。删除重复和非英文应用后,数据库包括80,490个应用程序。我们在400个应用程序的子集上测试了自动方法的准确性。我们观察了91%的准确性,可识别与健康或医学相关的应用,感官系统应用的95%,分类为医学专业的平均准确性为82%。结论:这些初步结果提出了基于文本分析的自动描述应用程序的可行性,并突出显示分类规则和词汇表的改进方向,语义类型分析以及关键特征的提取(启动子,服务和用户)。应用程序特征的自动化工具的可用性很重要,因为它可以支持卫生保健专业人员在知情,意识到健康应用选择的选择,以推荐给患者。

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