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Using Ultromics EchoGo HFpEF Algorithm to Identify and Treat High Heart Failure Risk in Patients With Type 2 Diabetes

NCT06593314 · University of Texas Southwestern Medical Center
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Official title
Identifying Undiagnosed HFpEF Among Patients With Type 2 Diabetes Using Ultromics AI HFpEF Algorithm
About this study
Historic echocardiograms will be analyzed using the Ultromics EchoGo algorithm. For patients that have a positive EchoGO result i.e. HFpEF detected, the provider will get an clinical decision support alert flagging high risk of HFpEF based on randomized assignment. Experimental: Alert Group Provider will receive a computer-based provider-to-provider message notifying the provider that the patient has subclinical HFpEF as determined by the Ultromics EchoGo algorithm and associated guideline recommendations for the management of these patients. The alert will include guideline-based and standard-of-care recommendations for the use of SGLT-2 inhibitors, non-steroidal MRA, or GLP-1 RA (if obesity is present). The purpose of the alert is to inform the providers about the risk of heart failure and provide them guidance regarding the guideline-recommended standard of care. The providers can choose to provide care as deemed fit based on the information provided. The investigators will assess the practice patterns of providers in response to the EHR-based alert over the study period (3, and 6-month follow-up). The investigators will also assess the downstream hospitalization events for HF within 12 months of the initial alert. Control arm: Standard Message Providers in the control group will receive a standard message that will recommend either SGLT2i, GLP-1RA, and/or ns-MRA for treatment of diabetes and for prevention of heart failure. This group will not receive any information about the presence of subclinical heart failure detected by the EchoGo algorithm. The investigators will monitor the practice pattern in this group as well over the study period. Follow Up. Adherence to SGLT-2i and GLP-1 RA medications will be assessed by evaluating the electronic health record and documenting if the patient had a follow-up with a healthcare provider at 3 and 6 months and medication listed in the active prescription medication list. Sample Size: The investigators plan to enroll 800 anticipated patients using a parallel design with 1:1 allocation and a binary primary endpoint (SGLT2i use). Using a two-sample test for difference in proportions with the normal (Fleiss) approximation, pooled variance without continuity correction, and assuming a control proportion of 30%, α=0.05 (two-sided), and 80% power, an N=800 (400/arm) provides a minimum detectable absolute increase of \~9.4 percentage points (30.0% to 39.4% in the intervention arm). This corresponds to RR = 1.31(95% CI 1.08, 1.59) and Cohen's h = 0.20.
Eligibility criteria
Clinical cohort inclusion exclusion criteria: Inclusion Criteria: * Patients with diagnosis of Type 2 diabetes and High WATCH DM score. * Echocardiogram available in last 6-months. Exclusion Criteria: * History of HF * Not eligible for prescription of new GLP-1RA or SGLT2i or ns-MRA Corresponding providers to patients identified by the above inclusion exclusion criteria will be included in the clinical trial of the decision support tool.
Study design
Enrollment target: 800 participants
Allocation: randomized
Masking: none
Age groups: child, adult, older_adult
Timeline
Starts: 2025-08-06
Estimated completion: 2026-10-15
Last updated: 2026-05-07
Interventions
Behavioral: Message with EchoGoBehavioral: Standard Message
Primary outcomes
  • Frequency of prescription of SGLT-2i medication at outpatient clinic visits over 3 months follow-up (3-month follow-up)
  • Frequency of prescription of SGLT-2i medication at outpatient clinic visits over 6 months follow-up (3-month follow-up)
Sponsor
University of Texas Southwestern Medical Center · other
Contacts & investigators
ContactAmbarish Pandey, MD · contact · Ambarish.Pandey@UTSouthwestern.edu · 617-869-8957
InvestigatorAmbarish Pandey, MD · principal_investigator, University of Texas Southwestern Medical Center
All locations (1)
UT Southwestern Medical CenterRecruiting
Dallas, Texas, United States
Using Ultromics EchoGo HFpEF Algorithm to Identify and Treat High Heart Failure Risk in Patients With Type 2 Diabetes · TrialPath