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OnTrack: development and feasibility of a smartphone app designed to predict and prevent dietary lapses

机译:Ontrack:智能手机应用程序的开发和可行性,旨在预测和防止饮食失误

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Given that the overarching goal of weight loss programs is to remain adherent to a dietary prescription, specific moments of nonadherence known as "dietary lapses" can threaten weight control via the excess energy intake they represent and by provoking future lapses. Just-in-time adaptive interventions could be particularly useful in preventing dietary lapses because they use real-time data to generate interventions that are tailored and delivered at a moment computed to be of high risk for a lapse. To this end, we developed a smartphone application (app) called OnTrackthat utilizes machine learning to predict dietary lapses and deliver a targeted intervention designed to prevent the lapse from occurring. This study evaluated the feasibility, acceptability, and preliminary effectiveness of OnTrack among weight loss program participants. An open trial was conducted to investigate subjective satisfaction, objective usage, algorithm performance, and changes in lapse frequency and weight loss among individuals (N= 43; 86% female; body mass index = 35.6 kg/m~2) attempting to follow a structured online weight management plan for 8 weeks. Participants were adherent with app prompts to submit data, engaged with interventions, and reported high levels of satisfaction. Over the course of the study, participants averaged a 3.13% weight loss and experienced a reduction in unplanned lapses. OnTrack, the first Just-in-time adaptive intervention for dietary lapses was shown to be feasible and acceptable, and OnTrack users experienced weight loss and lapse reduction over the study period. These data provide the basis for further development and evaluation.
机译:鉴于减肥计划的总体目标是保持依赖于饮食处方,所谓的非正常的特定时刻被称为“饮食失误”可以通过它们所代表的过量的能量摄入和消除未来失误来威胁体重控制。即时适应性干预措施对于防止饮食失误可能特别有用,因为它们使用实时数据来生成在计算为高风险的时刻量身定制和交付的干预措施。为此,我们开发了一个智能手机应用程序(应用程序),名为Ontrackthat,利用机器学习来预测饮食,并提供旨在防止失效的目标干预。本研究评估了减肥计划参与者之间的可行性,可接受性和初步效益。进行了开放式试验,以调查主观满意度,客观使用,算法性能,并且个体间隔频率和减肥的变化(n = 43; 86%的女性;体重指数= 35.6 kg / m〜2)试图遵循a结构化在线重量管理计划8周。与会者遵循应用程序提示提交与干预措施进行的数据,并报告了高度满意度。在研究过程中,参与者平均减肥3.13%,并经历了未计过期的失效。 Ontrack,饮食失误的第一个立即适应性干预措施被认为是可行的和可接受的,而Ontrack用户在研究期间经历了体重减轻和减少的减少。这些数据为进一步发展和评估提供了基础。

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