Clinical Research
A resource to get the latest clinical evidence, studies, models and frameworks to advance knowledge of how best to manage chronic health conditions.
Welldoc is committed to our scientific research, advancing digital health, transforming chronic care, and driving value across healthcare. Areas of focus include digital health engagement, advancing artificial intelligence, cardiometabolic condition outcomes, cost and value, and real-world integration into the health ecosystem.
Behavioral Factors, Empowerment Bolsters Self-Management
The increasing use of web-based or technology-enabled solutions for health management presents opportunities to improve patient self-management…A Novel Approach to Continuous Glucose Monitoring
Health Plan Opportunities to Control Costs Related to Chronic Disease
Moving the Dial in Lowering and Controlling A1C
The Power of Integrated Peer Support and Digital Health
Topics
Type
Food Detection from Continuous Glucose Monitoring Sensors Using Pretrained Transformer-Based Models
In this research, we successfully developed a novel approach for automatedly detecting recent food intake solely based on continuous glucose monitoring (CGM) data and AI with an accuracy of 77.8%.
This research is a blueprint for the next generation of digital health. By enabling tools to gather consistent, complete dietary information without any input from the user, we are moving toward zero-effort self-management.
Abhimanyu Kumbara, MS, Junjie Luo, MS, Mansur Shomali, MD, CM, Anand Iyer, PhD, Gordon Gao, PhD
A Probability State Transition Matrix can be Used to Estimate Weight Loss for Individuals with Overweight or Obesity Enrolled in an AI-enabled Digital Health Weight Management Program
In this research, we studied the probabilities of weight loss, stratified by starting body mass index (BMI) band. We developed a probability state transition matrix to estimate the weight loss effect of a digital health tool on groups of individuals with and without an anti-obesity medication (AOM) in a weight management program.
In general, for users with starting BMI <36, use of the digital health tool proved to be an effective mechanism to lose weight without an AOM. When combined with engagement patterns, this research is foundational to developing AI-based weight loss prediction capabilities, based on both starting BMI level and the level of digital health engagement.
Mansur Shomali, MD,CM, Abhimanyu Kumbara, MS, and Anand Iyer, PhD, MBA
Engagement With an AI-enabled Digital Health Tool by Individuals With Overweight or Obesity Enrolled in a Weight Management Program Differs by Use of Anti-obesity Medications
Studying engagement patterns is a key focus area for Welldoc as we continue to focus our research on further personalizing the weight management journey.
This research indicates that engagement can vary based on medication usage. We observed significantly higher engagement with the non-AOM group. This supports the idea that the need for tracking, guidance, and support needs may be more pronounced for individuals navigating their weight without these medications.
Mansur Shomali, MD,CM, Abhimanyu Kumbara, MS, and Anand Iyer, PhD, MBA
Impact of Food on A Transformer Based Glucose Prediction Model to Predict Glucose Trajectories at Different Time Horizons
Why It Matters:
- Smarter Predictions: We developed a "large health model" (LHM) that uses AI to analyze dense data from CGMs and food intake data. This model is more accurate in predicting future glucose levels over longer periods, with a greater improvement for the 2-hour interval when food's impact is highest. This improved accuracy is critical to establishing trust in the next generation of AI driven digital health coaching capabilities.
- Better Health Outcomes: This work establishes a clear pathway for integrating various types of health data into AI models to enhance their predictive power. The ultimate goal is to apply this improved accuracy to real-world clinical challenges, such as reliably predicting and preventing overnight hyperglycemia.
- A New Approach: Welldoc’s research goes beyond existing models by not only collecting data but also using it to predict future biometric values and offer automated coaching based on those predictions. This is a novel approach that leverages the power of AI to provide actionable insights for.
Junjie Luo, MS, Abhimanyu Kumbara, MS, Mansur Shomali, MD, CM, Anand Iyer, PhD, Gordon Gao, PhD
Integration of the Glucose Management Indicator (GMI) into the electronic health record through a diabetes-cardiometabolic digital health app
Key Takeaways:
- New Metric for Success: Welldoc is the first to utilize GMI as a quality metric within a digital health solution. The GMI is a calculated value used to estimate A1C based on CGM data. It provides a unique value in that it can be reported in a shorter time period (10-14 days) and allows for faster observation of glucose changes. The GMI's inclusion as a quality metric in the 2025 HEDIS measures recognizes the value of CGM data in assessing diabetes management.
- The power of health system-health tech collaboration: Allina and Welldoc partnered to effectively integrate the Welldoc solution into Allina’s diabetes program, which included workflow, eHR integration and incorporating data into clinical interventions and treatment plans.
- Eye on Quality of Care: The incorporation of GMI as a quality metric is essential for maintaining high Health Plan Ratings and Star ratings for value-based care. This integration helps health systems meet their quality goals and ultimately improves care for people with diabetes.
Jennifer Scarsi, RD, CDCES, Welldoc, Dawn McCarter, RN, BSN, CDCES, Allina Health Diabetes Education, Minneapolis, Minnesota, USA; Mary Brunner, MS, RD, CDCES Allina Health Diabetes Education, Malinda Peeples, RN, CDCES, FADCES; Columbia, MD, USA;Janice MacLeod, MA, RD, CDCES, FADCES, Janice MacLeod Consulting, Glen Burnie, MD
A Novel Approach to Estimating Cost Savings and Return on Investment (ROI) for Weight/BMI Changes with Digital Health
Key Takeaways:
- ~25% of individuals with obesity successfully shifted to a BMI below 30
- $1,527 reduction in estimated average cost per person at 6 months
Mansur Shomali, Simon Salgado, Siddharth Banyal, Anand Iyer