School of Systems Engineering, University of Reading, Reading, United Kingdom.
JMIR Mhealth Uhealth. 2016 Aug 1;4(3):e85. doi: 10.2196/mhealth.5846.
A key challenge in human nutrition is the assessment of usual food intake. This is of particular interest given recent proposals of eHealth personalized interventions. The adoption of mobile phones has created an opportunity for assessing and improving nutrient intake as they can be used for digitalizing dietary assessments and providing feedback. In the last few years, hundreds of nutrition-related mobile apps have been launched and installed by millions of users.
This study aims to analyze the main features of the most popular nutrition apps and to compare their strategies and technologies for dietary assessment and user feedback.
Apps were selected from the two largest online stores of the most popular mobile operating systems-the Google Play Store for Android and the iTunes App Store for iOS-based on popularity as measured by the number of installs and reviews. The keywords used in the search were as follows: calorie(s), diet, diet tracker, dietician, dietitian, eating, fit, fitness, food, food diary, food tracker, health, lose weight, nutrition, nutritionist, weight, weight loss, weight management, weight watcher, and ww calculator. The inclusion criteria were as follows: English language, minimum number of installs (1 million for Google Play Store) or reviews (7500 for iTunes App Store), relation to nutrition (ie, diet monitoring or recommendation), and independence from any device (eg, wearable) or subscription.
A total of 13 apps were classified as popular for inclusion in the analysis. Nine apps offered prospective recording of food intake using a food diary feature. Food selection was available via text search or barcode scanner technologies. Portion size selection was only textual (ie, without images or icons). All nine of these apps were also capable of collecting physical activity (PA) information using self-report, the global positioning system (GPS), or wearable integrations. Their outputs focused predominantly on energy balance between dietary intake and PA. None of these nine apps offered features directly related to diet plans and motivational coaching. In contrast, the remaining four of the 13 apps focused on these opportunities, but without food diaries. One app-FatSecret-also had an innovative feature for connecting users with health professionals, and another-S Health-provided a nutrient balance score.
The high number of installs indicates that there is a clear interest and opportunity for diet monitoring and recommendation using mobile apps. All the apps collecting dietary intake used the same nutrition assessment method (ie, food diary record) and technologies for data input (ie, text search and barcode scanner). Emerging technologies, such as image recognition, natural language processing, and artificial intelligence, were not identified. None of the apps had a decision engine capable of providing personalized diet advice.
人体营养的一个关键挑战是评估通常的食物摄入量。鉴于最近提出的电子健康个性化干预措施,这一点尤其值得关注。手机的采用为评估和改善营养摄入提供了机会,因为它们可用于数字化饮食评估并提供反馈。在过去几年中,数以百计的与营养相关的手机应用程序已经推出,并被数百万用户安装。
本研究旨在分析最受欢迎的营养应用程序的主要功能,并比较它们用于饮食评估和用户反馈的策略和技术。
根据安装次数和评价数衡量的流行度,从两个最受欢迎的移动操作系统(安卓系统的 Google Play 商店和 iOS 系统的 iTunes App Store)的两个最大在线商店中选择应用程序。搜索中使用的关键词如下:卡路里、饮食、饮食追踪、营养师、营养学家、吃、健身、健康、减肥、营养、营养学家、体重、体重减轻、体重管理、体重观察家、ww 计算器。纳入标准如下:英语语言、最小安装次数(Google Play 商店为 100 万次,iTunes App Store 为 7500 次)、与营养相关(即饮食监测或推荐)以及不依赖于任何设备(例如,可穿戴设备)或订阅。
共有 13 个应用程序被归类为受欢迎的应用程序进行分析。9 个应用程序提供使用饮食日记功能的前瞻性食物摄入记录。食物选择可通过文本搜索或条形码扫描技术进行。部分大小选择仅为文本(即没有图像或图标)。这 9 个应用程序都能够使用自我报告、全球定位系统(GPS)或可穿戴设备集成来收集身体活动(PA)信息。它们的输出主要集中在饮食摄入和 PA 之间的能量平衡上。这 9 个应用程序中没有一个提供直接与饮食计划和激励教练相关的功能。相比之下,其余 13 个应用程序中的 4 个应用程序专注于这些机会,但没有饮食日记。一个名为 FatSecret 的应用程序还具有与健康专业人员联系的创新功能,另一个名为 S Health 的应用程序提供了营养平衡评分。
高安装次数表明,使用移动应用程序进行饮食监测和推荐具有明显的兴趣和机会。所有收集饮食摄入的应用程序都使用相同的营养评估方法(即饮食日记记录)和数据输入技术(即文本搜索和条形码扫描)。没有发现新兴技术,如图像识别、自然语言处理和人工智能。没有一个应用程序具有能够提供个性化饮食建议的决策引擎。