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With the exception of 1 case of AN in the study by Taylor et al [23], cases in these studies were subthreshold BN, BED, ED not otherwise specified or subthreshold ED, and full-syndrome BN and BED.
The results from this study suggest that the guided web-based intervention SB-AN is the first indicated prevention program to significantly reduce risk factors and symptom progression of AN symptoms such as restrained eating and low body weight.
J Med Internet Res 2022;24(6):e35947
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The Challenges in Designing a Prevention Chatbot for Eating Disorders: Observational Study
JMIR Form Res 2022;6(1):e28003
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A Framework for Applying Natural Language Processing in Digital Health Interventions
In step 2 (Figure 2), supervised learning approaches [39] are utilized to (A) infer symptom severity over time; (B) predict a therapeutic outcome, which could include premature dropout; and (C) infer message characteristics. These models are explained below:
Model A—inferring symptom severity over time: Model A tries to establish an association between the symptom level and (temporally) adjacent text snippets.
J Med Internet Res 2020;22(2):e13855
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Efficacy of a Parent-Based, Indicated Prevention for Anorexia Nervosa: Randomized Controlled Trial
We defined at risk as a combination of factors selected from the following 3 categories [15]: (1) A: established risk factors for AN as high weight and shape concerns and drive for thinness (defined by either scoring ≥42 on the Weight Concerns Scale [30,31] or ≥24.1 on the Eating Disorder Inventory (EDI-2) subscale Drive for Thinness [32]), (2) B: early symptoms of AN indicated by low weight (defined as
Exclusion criteria were the presence of a full-syndrome eating disorder in the past 6 months, current major
J Med Internet Res 2018;20(12):e296
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The LEVEL 2—Repetitive Thoughts and Behaviors—Adult (adapted from the Florida Obsessive-Compulsive Inventory [FOCI] Severity Scale [Part B]) [59] assesses obsessive-compulsive disorder symptoms. This emerging measure of the DSM-V was developed to be administered at the initial patient interview and to monitor treatment progress.
JMIR Res Protoc 2015;4(4):e136
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