@Article{信息:doi 10.2196 / /移动医疗。3422,作者=“Stoyanov, Stoyan R和Hides, Leanne和Kavanagh, David J和Zelenko, Oksana和Tjondronegoro, Dian和Mani, Madhavan”,标题=“移动应用程序评级量表:评估健康移动应用程序质量的新工具”,期刊=“JMIR mHealth uHealth”,年=“2015”,月=“3”,日=“11”,卷=“3”,数=“1”,页=“e27”,关键词=“健康;心理健康;e-health;移动保健;移动应用程序;评估;评级;背景:近年来,移动应用程序在促进健康和福祉方面的使用呈指数级增长。然而,目前除了“星级”评级之外,还没有其他应用质量评估工具。 Objective: The objective of this study was to develop a reliable, multidimensional measure for trialling, classifying, and rating the quality of mobile health apps. Methods: A literature search was conducted to identify articles containing explicit Web or app quality rating criteria published between January 2000 and January 2013. Existing criteria for the assessment of app quality were categorized by an expert panel to develop the new Mobile App Rating Scale (MARS) subscales, items, descriptors, and anchors. There were sixty well being apps that were randomly selected using an iTunes search for MARS rating. There were ten that were used to pilot the rating procedure, and the remaining 50 provided data on interrater reliability. Results: There were 372 explicit criteria for assessing Web or app quality that were extracted from 25 published papers, conference proceedings, and Internet resources. There were five broad categories of criteria that were identified including four objective quality scales: engagement, functionality, aesthetics, and information quality; and one subjective quality scale; which were refined into the 23-item MARS. The MARS demonstrated excellent internal consistency (alpha = .90) and interrater reliability intraclass correlation coefficient (ICC = .79). Conclusions: The MARS is a simple, objective, and reliable tool for classifying and assessing the quality of mobile health apps. It can also be used to provide a checklist for the design and development of new high quality health apps. ", issn="2291-5222", doi="10.2196/mhealth.3422", url="http://mhealth.www.mybigtv.com/2015/1/e27/", url="https://doi.org/10.2196/mhealth.3422", url="http://www.ncbi.nlm.nih.gov/pubmed/25760773" }
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