A 2.5-Year Weight Management Program Using Noom Health: Protocol for a Randomized Controlled Trial

Robyn Sysko, Jessica Bibeau, Allison Boyar, Kayla Costello, Andreas Michaelides, Ellen Siobhan Mitchell, Annabel Susanin, Tom Hildebrandt, Robyn Sysko, Jessica Bibeau, Allison Boyar, Kayla Costello, Andreas Michaelides, Ellen Siobhan Mitchell, Annabel Susanin, Tom Hildebrandt

Abstract

Background: Overweight and obesity are serious public health concerns. As the prevalence of excess weight among individuals continues to increase, there is a parallel need for inexpensive, highly accessible, and evidence-based weight loss programs.

Objective: This weight loss trial will aim to examine the efficacy of the Noom weight loss program in comparison to a digital control after a 6-month intervention phase and a 24-month maintenance phase, with assessments continuing for 2 years beyond the intervention (to 30 months-after the baseline). The secondary outcomes include quality of life, psychosocial functioning, sleep quality, physical activity, diet, and health status. This trial will also examine the severity of obesity-related functional impairment, weight loss history, and demographic moderators, along with adherence and self-efficacy as mediators of the outcome.

Methods: A total of 600 participants were randomized in a parallel-group, controlled trial to either Noom Healthy Weight Program (intervention) or Noom Healthy Weight Control (control) for a 6-month intervention. Both intervention and control groups include diet and exercise recommendations, educational content, daily logging capabilities, and daily weigh-in entries. The Noom Healthy Weight Program also includes a coach support for weight loss. Remote follow-up assessments of eating, physical activity, psychosocial factors, app use data, and weight will be conducted at 1, 4, 6, 12, 18, 24, and 30 months after baseline. Weight is measured at each follow-up point during a Zoom call using the participants' scales.

Results: Enrollment began in March 2021 and the 6-month intervention phase ended in March 2022. Data collection for the final assessment will be completed in March 2024.

Conclusions: This study tests commercially available digital lifestyle interventions for individuals with overweight and obesity seeking weight loss support. Data obtained from the study will evaluate whether the Noom Healthy Weight Control Program can help individuals overcome weight loss, achieve long-term maintenance, adhere to lifestyle changes, and feature use barriers that are present in other traditional weight loss treatments.

Trial registration: ClinicalTrials.gov NCT04797169; https://ichgcp.net/clinical-trials-registry/NCT04797169.

International registered report identifier (irrid): DERR1-10.2196/37541.

Keywords: DPP; Diabetes Prevention Program; Noom; digital health; mobile phone; weight loss; weight loss maintenance.

Conflict of interest statement

Conflicts of Interest: TH serves as the advisory board of Noom Inc. TH and RS have equity ownership in Noom Inc, the study sponsor and the manufacturer of the Noom Health platform. AM and ESM were employed by Noom Inc.

©Robyn Sysko, Jessica Bibeau, Allison Boyar, Kayla Costello, Andreas Michaelides, Ellen Siobhan Mitchell, Annabel Susanin, Tom Hildebrandt. Originally published in JMIR Research Protocols (https://www.researchprotocols.org), 12.08.2022.

Figures

Figure 1
Figure 1
Hypothesized moderator and mediator effects.

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