Artificial Intelligence to Assist the Echocardiographic Identification of Transthyretin Cardiac Amyloidosis
Overview
- Phase
- Not Applicable
- Intervention
- Not specified
- Conditions
- Amyloid Cardiomyopathy
- Sponsor
- Algalarrondo Vincent
- Enrollment
- 15000
- Locations
- 1
- Primary Endpoint
- Building and validating the diagnostic performance metrics curves of the AI algorithm to diagnose ATTR-CM :
- Status
- Recruiting
- Last Updated
- 2 years ago
Overview
Brief Summary
The goal of this study is to develop an algorithm using artificial intelligence (AI) to assist identification of potential ATTR-CM cases using routine transthoracic echocardiography.
The main questions it aims to answer are:
- is the algorithm able to diagnose ATTR-CM
- is the algorithm able to diagnose different types of ATTR-CM (ATTRv, ATTRwt)
This is a non interventional study. Participant' echocardiographies will be, after deidentification, used to train, valid and test the algorithm.
Detailed Description
Transthyretin (TTR) amyloidosis is a serious systemic disease affecting multiple target organs including the peripheral nervous system, heart, and kidney. In the absence of treatment, the median survival for symptomatic forms with cardiac involvement is 3 to 4 years. In recent years, new treatments have proven their effectiveness in transthyretin amyloidosis, making it possible to slow the progression of neuropathy and cardiac damage. These treatments seem particularly effective when they are initiated at an early stage of the disease. It is therefore necessary to establish the diagnosis as early as possible in order to benefit the most from the treatment. However, during the clinical examination, the electrocardiogram or the routine echocardiography, the signs evoking cardiac amyloidosis are not specific. The initial diagnosis is therefore often difficult, missed or delayed and the median time between the first symptoms and the initiation of treatment is approximately 3 years. It is therefore the initial phase of diagnosis that must be improved in a sufficiently sensitive and specific manner to detect potential cases early while avoiding unnecessary examinations in the event of a low probability. The objective of the study is to develop and validate a tool to assist the screening of cardiac transthyretin amyloidosis, from standard echocardiography, without the need for active participation of the cardiologist in the diagnostic process. This diagnostic contribution will allow the cardiologist to evoke the diagnosis of cardiac amyloidosis and to consider additional explorations.
Investigators
Algalarrondo Vincent
Principal Investigator, Director of the referral center CRMR -CERAMIC CARDIO
Bichat Hospital
Eligibility Criteria
Inclusion Criteria
- •Cardiac transthyretin amyloidosis diagnosed on the classic criteria:
- •Absence of monoclonal immunoglobulin AND
- •Presence of a bisphosphonate scintigraphy with enhancement in the cardiac area OR
- •2-Presence of a cardiac biopsy showing transthyretin (Congo red positive) cardiac amyloidosis (demonstrated either by immunostaining or by mass spectrometry) OR 3-Presence of a peripheral biopsy showing transthyretin amyloidosis (see above) associated with cardiac infiltration (parietal thickness \>12mm without other cause of cardiac hypertrophy)
- •No opposition to research
- •Non-inclusion criteria:
- •Another cause of cardiac amyloidosis: AL AA amyloidosis...
- •Mixed heart disease with associated presence of non-amyloid heart disease (ischemic heart disease, dilated, etc.)
- •Control patients:
- •Inclusion criteria:
Exclusion Criteria
- Not provided
Outcomes
Primary Outcomes
Building and validating the diagnostic performance metrics curves of the AI algorithm to diagnose ATTR-CM :
Time Frame: year 1
To develop and validate a tool using artificial intelligence an algorithm that will improve the automatic detection on routinely acquired echocardiography images of aspects suggestive of transthyretin amyloidosis. A confusion matrix will be built and the following diagnostic performance metrics be computed: * receiver operating characteristic curve (ROC) and area under curve (AUC) of the ROC : AUROC * Precision recall curve (PR) and area under curve (AUC) of the PR curve : AUC-PR
Building and validating the diagnostic performance metrics of the AI algorithm to diagnose ATTR-CM :
Time Frame: year 1
To develop and validate a tool using artificial intelligence an algorithm that will improve the automatic detection on routinely acquired echocardiography images of aspects suggestive of transthyretin amyloidosis ATTR. A confusion matrix will be built and the following diagnostic performance metrics be computed: Accuracy, Sensitivity or Recall, Specificity, False positive rate, False Negative Rate, Precision (all are expressed as ratio)
Secondary Outcomes
- Building and validating the diagnostic performance metrics of the AI algorithm to diagnose ATTRwt-CM :(year 1)
- Building and validating the diagnostic performance metrics of the AI algorithm to differentiate ATTR-CM from LV hypertrophy (LVH) :(year 1)
- Building and validating the diagnostic performance metrics curves of the AI algorithm to diagnose ATTRv-CM :(year 1)
- Building and validating the diagnostic performance metrics of the AI algorithm to diagnose ATTRv-CM :(year 1)
- Building and validating the diagnostic performance metrics curves of the AI algorithm to diagnose ATTRwt-CM :(year 1)
- Building and validating the diagnostic performance metrics of the AI algorithm to diagnose ATTRv-V122I-CM :(year 1)
- Building and validating the diagnostic performance metrics curves of the AI algorithm to diagnose ATTRv-V122I-CM :(year 1)
- Building and validating the diagnostic performance metrics curves of the AI algorithm to differentiate ATTR-CM from LV hypertrophy (LVH) :(year 1)