NCT05591443

Brief Summary

Heart failure is the major pandemic of the 21st century. The number of patients and of Heart Failure-related deaths is progressively increasing. This means a devastating economic and health organization burden. In fact, chronic heart failure patients are at high risk of death, and the course of the disease is often insidious and uncertain with a progressive deterioration requiring the need for repeated and successive hospitalizations with an ominous prognosis: with each admission for acute heart failure there is a short-term improvement, a phase characterized by a degree of stability, and then a worsening phase follows until a new need for a new hospitalization. Moreover, with each subsequent hospitalization, myocardial function progressively declines, gradually worsening the patient's quality of life until the fatal event. For these reasons, one of the major unmet needs is the identification of patients with a negative trajectory of Heart Failure. Accordingly, early identification of Heart Failure worsening is mandatory to improve patient condition and reduce Heart Failure costs, which are mainly associated with hospitalizations. Our main goal through this project is to create clinical tool for detection of early signs of chronic heart failure (CHF) worsening that will allow timely therapeutic intervention. This timely manner intervention can lead to a much better outcome for the patient, possibly reducing the need for hospitalization or lower the number of hospitalization days. The aim of this project is to develop clinical decision tool based on artificial intelligence (AI) algorithms to early detect the signs of exacerbation of chronic heart failure and predict the risk of its progression, by integrating high quality medical data obtained through a wearable device (L.I.F.E. Italia Srl's "wearable clinic" - a vest with accessories, which is a TRL 9 medical grade sensorized garment, already available on the market). Specifically, the focus will be on the early detection of CHF worsening in patients who have already been diagnosed with CHF.

Trial Health

35
At Risk

Trial Health Score

Automated assessment based on enrollment pace, timeline, and geographic reach

Trial has exceeded expected completion date
Enrollment
120

participants targeted

Target at P50-P75 for all trials

Timeline
Completed

Started May 2023

Typical duration for all trials

Status
not yet recruiting

Health score is calculated from publicly available data and should be used for screening purposes only.

Trial Relationships

Click on a node to explore related trials.

Study Timeline

Key milestones and dates

First Submitted

Initial submission to the registry

October 16, 2022

Completed
8 days until next milestone

First Posted

Study publicly available on registry

October 24, 2022

Completed
6 months until next milestone

Study Start

First participant enrolled

May 1, 2023

Completed
2 years until next milestone

Primary Completion

Last participant's last visit for primary outcome

May 1, 2025

Completed
1 year until next milestone

Study Completion

Last participant's last visit for all outcomes

May 1, 2026

Completed
Last Updated

October 24, 2022

Status Verified

October 1, 2022

Enrollment Period

2 years

First QC Date

October 16, 2022

Last Update Submit

October 20, 2022

Conditions

Outcome Measures

Primary Outcomes (3)

  • Definition of an algorithm for heart failure worsening

    Development by artificial intelligence of an algorithm based on all collected variables able to identify Heart Failure worsening

    6 months

  • Identification of respiratory predictors of heart failure worsening

    Identification of which single respiratory parameters are related to Heart Failure worsening among all those collected by the L.I.F.E. device.

    6 months

  • Identification of ECG predictors of heart failure worsening

    Identification of which single ECG parameters are related to Heart Failure worsening among all those collected by the L.I.F.E. device.

    6 months

Secondary Outcomes (2)

  • Identification of nocturnal parameters related to heart failure worsening

    6 months

  • Heart rate variability as marker of heart failure worsening

    6 months

Study Arms (1)

Heart failure patients

Patients with CHF will be considered for inclusion in the study based on their verified medical record, indicating that they are diagnosed with CHF and are using guideline-directed medical therapy (GDMT). Diagnostic criteria, as laid out in the latest 2021 European Society of Cardiology (ESC) guidelines for the diagnosis and management of chronic and acute heart failure, will be followed.

Eligibility Criteria

Age18 Years - 80 Years
Sexall
Healthy VolunteersNo
Age GroupsAdult (18-64), Older Adult (65+)
Sampling MethodProbability Sample
Study Population

Patients with CHF will be considered for inclusion in the study based on their verified medical record, indicating that they are diagnosed with CHF and are using guideline-directed medical therapy (GDMT). Diagnostic criteria, as laid out in the latest 2021 European Society of Cardiology (ESC) guidelines for the diagnosis and management of chronic and acute heart failure, will be followed.

You may qualify if:

  • Presence of symptoms and/or signs of HF
  • left ventricular ejection fraction (LVEF) ≤40%. LVEF values will be obtained by determining the reduced LV systolic function, by transthoracic echocardiographic assessment as recommended by European Association of Cardiovascular Imaging (EACVI) and American Society of Echocardiography position paper.
  • NYHA functional classes II-III).

You may not qualify if:

  • NYHA functional class IV,
  • Candidates for left-ventricular assist device (LVAD) or heart transplant, as per latest definition of Heart Failure Association of the ESC.
  • Recent acute coronary syndrome within 1-year prior to the date of potential enrollment,
  • Indirect echocardiographic evidence of significantly elevated pulmonary pressures
  • Clinically relevant pulmonary hypertension
  • non-adherence to optimal medical treatment for CHF

Contact the study team to confirm eligibility.

Sponsors & Collaborators

MeSH Terms

Conditions

Heart Failure

Condition Hierarchy (Ancestors)

Heart DiseasesCardiovascular Diseases

Central Study Contacts

Piergiuseppe Agostoni, Prof

CONTACT

Study Design

Study Type
observational
Observational Model
COHORT
Time Perspective
PROSPECTIVE
Sponsor Type
OTHER
Responsible Party
PRINCIPAL INVESTIGATOR
PI Title
Professor

Study Record Dates

First Submitted

October 16, 2022

First Posted

October 24, 2022

Study Start

May 1, 2023

Primary Completion

May 1, 2025

Study Completion

May 1, 2026

Last Updated

October 24, 2022

Record last verified: 2022-10