Jump to content

  • Set Your Location
  • Sign in or Enroll
Set Your LocationSutter Medical Foundation
  • Sign in or Enroll
    • Open I want to choose my medical group or hospital
    • Clear my location
Change Location
Sutter Health
  • Video Visits
  • Find Doctors
  • Find Locations
  • Treatments & Services
    • Video Visits
    • Find Doctors
    • Find Locations
    • Treatments & Services
    • COVID-19 Resources
    • Pay a Bill
    • Symptom Checker
    • Get Care Today
    • Health & Wellness
    • Classes & Events
    • Research & Clinical Trials
    • For Patients
    • About Sutter Health
    • Giving
    • Volunteering
    • Careers
    • News
    • For Medical Professionals
    • Other Business Services
Close Search
  • Home
  • Sutter Medical Foundation
  • Research
  • Diabetes Type 2
Content

Early weight loss and treatment response: data from a lifestyle change program in clinical practice.

Description

Romanelli RJ, Sudat S, Huang Q, Pressman AR, Azar K., Am J Prev Med. pii: S0749-3797(19)30421-0. doi: 10.1016/j.amepre.2019.09.014. [Epub ahead of print], 2019 Dec 20

Investigators

Kristen Azar, R.N., BSN, MSN/MPH, Investigator, Sylvia Sudat, PhD

Abstract

INTRODUCTION: The purpose of this study was to develop and validate a predictive model for the early identification of nonresponders to a 12-month lifestyle change program in clinical practice.

METHODS: Investigators identified lifestyle change program participants in the electronic health records of a large healthcare delivery system between 2010 and 2017. Nonresponse was defined as weight gain or no weight loss at 12 months from the program initiation (baseline). Logistic regression with percentage weight change at 2-12 weeks from baseline was used as an independent predictor of nonresponse. Baseline demographics and clinical characteristics were also tested as potential predictors. The authors performed ten-fold cross-validation for model assessment and examined model performance with the area under the receiver operating characteristic curve, sensitivity, specificity, and positive and negative predictive values. The analyses were conducted in 2019.

RESULTS: Among 947 program participants, 30% were classified as nonresponders at 12 months. The model with the best discrimination of responders from nonresponders included weight change at 12 weeks from baseline as the sole predictor (area under the receiver operating characteristic curve, 0.789). Sensitivity and positive predictive value were maximized at 0.56 (specificity and negative predictive value, 0.81 each).

CONCLUSIONS: In a cohort of lifestyle change program participants from clinical practice, percentage weight change at 12 weeks from baseline can serve as a single indicator of nonresponse at the completion of the 12-month program. Clinicians can easily apply this algorithm to identify and assess participants in potential need of adjunctive or alternative therapy to maximize treatment outcomes.

Pubmed Abstract

Pubmed AbstractOpens New Window

Associated Topics

  • Cardiovascular Diseases
  • Diabetes Type 2
  • Diabetes, Insulin Resistance and Metabolic Syndrome
  • Food and Nutrition
  • Obesity
  • Prevention and Health Maintenance

Related Publications

Glycemic outcomes in adults with type 2 diabetes participating in a continuous glucose monitor-driven virtual diabetes clinic: prospective trial.

Majithia AR, Kusiak CM, Armento Lee A, Colangelo FR, Romanelli RJ, Robertson S, Miller DP, Erani DM, Layne JE, Dixon RF, Zisser H.
J Med Internet Res. 22(8):e21778. doi: 10.2196/21778.
2020 Aug 28

CM-SHARE: Development, integration, and adoption of an electronic health record-linked digital health solution to support care for diabetes in primary care.

Jones JB, Liang S, Husby HM, Delatorre-Reimer JK, Mosser CA, Hudnut AG, Knobel K, MacDonald K, Yan XS.
Clin Diabetes. 37(4):338-346. doi: 10.2337/cd18-0057.
2019 Oct 01

Implementation of a group-based diabetes prevention program within a healthcare delivery system.

Azar KMJ, Nasrallah C, Szwerinski NK, Petersen JJ, Halley MC, Greenwood D, Romanelli RJ.
BMC Health Serv Res. 19(1):694. doi: 10.1186/s12913-019-4569-0.
2019 Oct 15

Diabetes Prevention Program attendance is associated with improved patient activation: results from the Prediabetes Informed Decisions and Education (PRIDE) study.

Skrine Jeffers K, Castellon-Lopez Y, Grotts J, Mangione CM, Moin T, Tseng CH, Turk N, Frosch DL, Norris KC, Duke CC, Moreno G, Duru OK.
Prev Med Rep. 16:100961. doi: 10.1016/j.pmedr.2019.100961. eCollection 2019 Dec.
2019 Jul 22

Longitudinal weight outcomes from a behavioral lifestyle intervention in clinical practice.

Romanelli RJ, Huang HC, Chopra V, Ma J, Venditti EM, Sudat S, Greenwood DA, Pressman AR, Azar KMJ.
Diabetes Educ. 145721719872553. doi: 10.1177/0145721719872553. [Epub ahead of print]
2019 Sep 03
The Sutter Health Network of Care
Expertise to fit your needs
Primary Care

Check-ups, screenings and sick visits for adults and children.

Specialty Care

Expertise and advanced technologies in all areas of medicine.

Emergency Care

For serious accidents, injuries and conditions that require immediate medical care.

Urgent Care

After-hours, weekend and holiday services.

Walk-In Care

Convenient walk-in care clinics for your non-urgent health needs.

  • Contact Us
  • Find Doctors
  • Find Locations
  • Request Medical Records
  • Make a Gift
Sign in to My Health Online

Billing and Insurance

  • Pay a Bill
  • Accepted Health Plans
  • Estimate Costs
  • Medicare Advantage

About Sutter

  • About Our Network
  • Community Benefit
  • Annual Report
  • News

Our Team

  • For Employees
  • For Medical Professionals
  • For Vendors
  • For Volunteers

Careers

  • Jobs at Sutter
  • Physician Jobs
  • Graduate Medical Education

Copyright © 2023 Sutter Health. All rights reserved. Sutter Health is a registered trademark of Sutter Health ®, Reg. U.S. Patent & Trademark office.

  • ADA Accessibility
  • Privacy
  • Do Not Sell My Personal Information
  • LinkedIn Opens new window
  • YouTube Opens new window
  • Facebook Opens new window
  • Twitter Opens new window
  • Instagram Opens new window
  • Glassdoor Opens new window

Cookie Policy

We use cookies to give you the best possible user experience. By continuing to use the site, you agree to the use of cookies. Privacy Policy Cookie Preferences

Privacy Policy Cookie Preferences