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The PICM Risk Prediction Study - Application of AI to Pacing

G

Guy's and St Thomas' NHS Foundation Trust

Status

Not yet enrolling

Conditions

Pacemaker Complication
Pacemaker-Induced Cardiomyopathy
Heart Failure

Treatments

Other: Machine learning

Study type

Observational

Funder types

Other

Identifiers

Details and patient eligibility

About

Development of pacing induced cardiomyopathy (PICM) is correlated to a high morbidity as signified by an increase in heart failure admissions and mortality. At present a lack of data leads to a failure to identify patients who are at risk of PICM and would benefit from pre-selection to physiological pacing. In the light of the foregoing, there is an urgent need for novel non-invasive detection techniques which would aid risk stratification, offer a better understanding of the prevalence and incidence of PICM in individuals with pacing devices and the contribution of additional risk factors.

Full description

Retrospective review of patient characteristics including 12 lead resting electrocardiograms and imaging data (CMR, CT, echo, CXR and fluoroscopy of pacing leads) of patients with right sided ventricular pacing lead due to symptomatic bradycardia, who developed pacing induced cardiomyopathy (or need for CRT upgrade) versus patients who did not using supervised machine learning methods. Development of personalised predictive pacing algorithm to improve right ventricular lead placement, such as conduction system pacing or pre-emptive implantation of an additional left ventricular lead to prevent left ventricular dilatation and pacemaker-induced cardiomyopathy (PICM) with heart failure (left ventricular ejection fraction <50% by Simpson method), hospitalisation or death with the use of the retrospective patient data through machine learning.

Enrollment

10,000 estimated patients

Sex

All

Ages

18+ years old

Volunteers

No Healthy Volunteers

Inclusion criteria

  • All patients who received a pacing device (VVI, DDD, ICD, leadless pacemaker) from the GSTT/RBH/KCH/ICH database in the last 10 years (from 01/01/2014)
  • All patients who are >18 years old.
  • Male and Female

Exclusion criteria

  • Patients who did not receive a pacing device (VVI, DDD, ICD, leadless pacemaker)
  • All patients <18 years old
  • Patients with congenital heart disease
  • Patients who have received artificial heart valves or underwent cardiac bypass surgery
  • Patients who did not have an echocardiogram after receiving a pacing device

Trial design

10,000 participants in 2 patient groups

Pacing induced cardiomyopathy
Description:
Patients who received a pacing device and developed pacing induced cardiomyopathy
Treatment:
Other: Machine learning
Non-pacing induced cardiomyopathy
Description:
Patients who received a pacing device and did not develop pacing induced cardiomyopathy
Treatment:
Other: Machine learning

Trial contacts and locations

3

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Data sourced from clinicaltrials.gov

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