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International Study of Artificial Intelligence-based Diagnosis of Cardiomyopathy Using Cardiac MRI (AID-MRI)

Conditions
Cardiomyopathies
Registration Number
NCT05793840
Lead Sponsor
University of Calgary
Brief Summary

The goal of this observational study is to test the accuracy of computer (machine learning-based) algorithms to diagnosis heart diseases and predict if and when heart complications will occur. The AID-MRI research team has developed algorithms aimed at modelling 3D heart structure and movement (deformation), showing these may be of value to achieve these tasks. The International AID-MRI study aims to test the performance of these algorithms across 11 international sites, using data obtained from a broad variety of patients using different MRI scanners. In addition to an established cohort of 10,000 patients, AID-MRI will recruit an additional 1100 patients from its international sites, these serving as an external validation cohort.

Detailed Description

There are many types of heart muscle diseases that can reduce heart function or lead to heart rhythm problems, these collectively called cardiomyopathies. Cardiac MRI is a non-invasive test without radiation that can be used to diagnose these diseases as well as help to predict future complications. Currently, the interpretation of these tests relies on the experience of physicians looking at these images and their ability to recognize specific features. However, computers can be trained to pick up more subtle features of disease from images that a human may not see, and can be more rapidly trained from thousands of cases where the final diagnosis has already been confirmed. The AID-MRI research team has collected cardiac MRI images and heart diagnoses from over 10,000 patients in Alberta, Canada and is using this data to train computer algorithms to diagnose heart disease and predict if heart complications will occur in the future. The International AID-MRI study is a publicly funded, investigator initiated study testing the accuracy of these algorithms to accomplish these tasks in an international setting.

The primary approach being tested is conversion of raw 2D cine MRI images into a standardized 4D model of cardiac shape and deformation. This approach has been shown to allow computer algorithms to recognize different cardiomyopathies. We will test the ability of this data to inform computer algorithms to i) decide what disease a patient has, and ii) predict if a patient will experience a major cardiac complication in the near future. The value and influence of other non-imaging data (i.e., patient features), to improve performance will also be assessed.

Recruitment & Eligibility

Status
ENROLLING_BY_INVITATION
Sex
All
Target Recruitment
1100
Inclusion Criteria
  • Must have provided informed consent in a manner approved by the Investigator's Institutional Review Board (IRB) prior to any study-related procedure being performed. If a participant is unable to provide informed consent due to his/her medical condition, the participant's legally authorized representative may consent on behalf of the study participant, as permitted by local law and institutional Standard Operating Procedures
  • Age ≥18 years at the time of informed consent;
  • In-patient or out-patient referral for CMR imaging;
  • Referral for suspected acute or chronic cardiomyopathy state(s) of ischemic and/or non-ischemic etiology;
  • Recently drawn (≤180 days) and available serum laboratory markers of hemoglobin, hematocrit, and creatinine;
  • Willing and able to abide by all study requirements
Exclusion Criteria
  • Standard contraindication(s) to magnetic resonance imaging performance based upon local site policies;
  • Able to breath hold (i.e. real-time cine imaging not supported);
  • Current or recent (≤ 60 days) pregnancy;
  • Current or recent (≤ 60 days) sepsis requiring intubation;
  • Cardiac implantable electronic implanted device (CIED) of any type (excluded due to likelihood of reduced image quality and anticipated influence on algorithm performance), inclusive of permanent pacemaker, implantable cardioverter defibrillator or implantable loop recorder;
  • Severe aortic valve stenosis (i.e., mean AVG >40 mmHg);
  • Prosthetic valve (mechanical or bioprosthetic) in mitral or aortic position
  • Congenital heart disease, inclusive of any surgically-corrected disease, dextrocardia, Tetralogy of Fallot, uncorrected partial anomalous pulmonary venous return, or large atrial septal defect (Qp:Qs ≥1.5) [Note: bicuspid aortic valve disease is not an exclusion criterion in isolation];

Study & Design

Study Type
OBSERVATIONAL
Study Design
Not specified
Primary Outcome Measures
NameTimeMethod
Prediction accuracy2 years

The primary endpoint is performance gains using 3D myocardial deformation analysis (3D-MDA) classification versus raw image-based classification. The primary outcome will be assessed in 1,000 externally recruited subjects.

For diagnostic models, performance will be described by AUC, Precision, Recall and F1 for each disease class. Predicted disease class will be defined as the highest probability observed across all possible classes. Ground truth will be assigned by pre-defined diagnostic criteria by enrolling site PIs following CMR interpretation with access to medical records.

For prognostic models, algorithm-predicted major adverse cardiovascular events (MACE) will be tested from CMR to first observed MACE. Both regression (time to event) and classification modelling (at 1-year and 2-year time points) will be assessed. Classification performance will be assessed similar to diagnostic models. Regression performance will be assessed by time-dependent AUC (tAUC).

Secondary Outcome Measures
NameTimeMethod
Secondary Efficacy2 years

The secondary outcomes of AID-MRI are aimed at identifying the influence of bias in AI-model performance and to assess the capacity of image pre-processing using 3D-MDA to mitigate such influence and improve generalizability. This will be achieved through stratified analyses of the primary endpoint across pre-defined sub-groups of the prospectively recruited patient population.

These analyses will include the following:

* Comparative model performance in female versus male birth sex

* Comparative model performance in major ethnicity subgroups

* Comparative model performance in binary versus non-binary gender

* Comparative model performance based on vendor hardware and field strength

Trial Locations

Locations (2)

Foothills Medical Centre

🇨🇦

Calgary, Alberta, Canada

South Health Campus

🇨🇦

Calgary, Alberta, Canada

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