Validation of the Prognostic Impact of a Retinal Photograph-based Cardiovascular Disease Risk Stratification System in de Novo HFrEF

Last updated: May 11, 2025
Sponsor: Yonsei University
Overall Status: Active - Recruiting

Phase

N/A

Condition

Chest Pain

Hyponatremia

Congestive Heart Failure

Treatment

N/A

Clinical Study ID

NCT06978998
4-2024-1332
  • Ages > 20
  • All Genders

Study Summary

"Despite significant advances in pharmacologic and device-based therapies, heart failure (HF) remains a major public health burden, with persistently high rates of hospitalization, impaired quality of life, and excess mortality-often exceeding those of leading malignancies. Prognosis in HF is shaped by its underlying etiology: ischemic HF often responds to revascularization strategies, whereas non-ischemic HF, particularly due to idiopathic or genetic cardiomyopathies, demonstrates highly variable outcomes and limited responsiveness to guideline-directed medical therapy (GDMT). Although left ventricular reverse remodeling (LVRR) is associated with favorable outcomes, only 40-50% of non-ischemic HF patients achieve meaningful LVRR with GDMT alone.

In this context of therapeutic uncertainty and prognostic heterogeneity, there is a critical need for novel, non-invasive risk stratification tools. Retinal imaging offers a unique advantage, enabling direct, in vivo visualization of systemic microvascular and neurovascular integrity. Prior work from our group has demonstrated that deep learning algorithms applied to retinal fundus photographs can estimate physiologic and metabolic markers-including CAC scores-and predict future cardiovascular events. The Reti-CVD scoring system, derived from these models, has been externally validated in independent populations.

In the present study, we aim to evaluate the prognostic utility of the Reti-CVD model in a cohort of patients with newly diagnosed HF and reduced ejection fraction. Specifically, we will assess whether retinal-derived risk scores at baseline are associated with adverse clinical outcomes, including cardiovascular events and all-cause mortality, and whether prognostic performance varies according to HF etiology."

Eligibility Criteria

Inclusion

Inclusion Criteria:

  • Patients aged between 20 and 79 years with a left ventricular ejection fraction of 40% or less (assessed by transthoracic echocardiography), who have provided writtenconsent for participation, have the capability to consent voluntarily

Exclusion

Exclusion Criteria:

  • Inability to obtain high-quality fundus photographs due to severe ophthalmologicconditions

  • Presence of extensive retinal diseases that significantly impair visualization ofthe retinal vasculature

  • Decline to provide informed consent for study participation, including:

  • Pregnant individuals

  • Individuals lacking decision-making capacity

Study Design

Total Participants: 100
Study Start date:
December 10, 2024
Estimated Completion Date:
December 10, 2030

Study Description

"Study Methods

  1. Eligible participants will be approached during outpatient visits or hospitalization. The purpose and procedures of the study will be explained in detail, and informed consent will be obtained prior to data collection. Even after initial enrollment, participants will undergo continuous re-confirmation of consent at each subsequent visit.

  2. All data will be collected in accordance with clinical guideline of heart failure in Korea (published from KHFS). This includes demographic characteristics, clinical history, echocardiographic parameters, laboratory findings, and cardiovascular outcomes. These data will be documented in a dedicated case report form.

  3. Participants will undergo assessments during the first year following enrollment, with a target total follow-up duration of at least five years to evaluate long-term clinical outcomes.

  4. All study data will be stored on password-protected computers with restricted access. No personal identifiers will be included and only de-identified, coded data will be used for analysis to ensure data confidentiality. This study will not involve development or modification of a deep learning algorithm. Instead, we will apply a pre-existing, validated retinal-based cardiovascular risk classification algorithm to newly diagnosed heart failure patients. Prognostic analyses will be conducted to determine whether algorithm-derived risk stratification is associated with differences in clinical outcomes during follow-up."

Connect with a study center

  • Severance hospital

    Seoul,
    Korea, Republic of

    Active - Recruiting

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