MAchine Learning to Boost the Early Diagnosis of Acute Cardiovascular Conditions
- Conditions
- Acute Cardiovascular DiseaseST-segment Elevation Myocardial Infarction (STEMI)NSTEMI - Non-ST Segment Elevation MI
- Registration Number
- NCT06927791
- Lead Sponsor
- University Hospital, Basel, Switzerland
- Brief Summary
The research project aims to develop clinical decision support tools integrating established diagnostic variables and machine learning (ML) models for rapid diagnosis of acute life-threatening cardiovascular conditions in emergency department (ED) patients with chest pain or dyspnea with the ultimate goal of Improved diagnostic accuracy, faster patient management, and reduced medical errors.
- Detailed Description
Current State of Research in the Field
Acute cardiovascular disease (ACVD) is the leading cause of death in Switzerland and Europe, responsible for 29% of deaths in Switzerland and 36% across Europe. The increasing prevalence of ACVD, including acute myocardial infarction (AMI), acute heart failure (AHF), pulmonary embolism (PE), and acute aortic syndromes (AAS), places a significant burden on healthcare systems. Diagnosing these conditions in emergency departments (EDs) is challenging due to overlapping symptoms and the need for rapid, accurate decision-making.
The introduction of cardiovascular biomarkers, including high-sensitivity cardiac troponin, B-type natriuretic peptide, and D-dimer has revolutionized early diagnosis. These biomarkers, alongside clinical assessments and electrocardiograms (ECGs), are now essential diagnostic tools. However, current diagnostic algorithms have still tremendous limitations.
Recent advances in machine learning (ML) and deep learning (DL) offer opportunities to improve diagnosis. ML-based ECG interpretation and deep transferable learning (DTL) techniques could enhance diagnostic accuracy by integrating complex ECG and biomarker data. AutoML approaches can further refine these models, reducing human error and improving clinical workflows.
The research team has conducted multiple large-scale studies leading to significant advancements in cardiovascular biomarker research and precision medicine. Their contributions include:
* Validation of the MI3 model, which uses ML to improve NSTEMI
* Introduction of the BASEL ECG Score, a quantitative tool that enhances NSTEMI diagnosis.
* Validation of CoDE-ACS, an ML-based clinical decision support-tool that predicts the probability of NSTEMI more effectively than standard cardiac troponin thresholds.
The team is now focussing on integrating ECG data with biomarkers using AI/ML to enhance accuracy and automate decision-making. Collaboration with international experts has enabled the successful application of neural networks to ECG interpretation. The next steps include:
* Refining ML-based ECG interpretation to incorporate non-additive effects.
* Expanding ML models to include multiple cardiovascular conditions beyond AMI.
* Integrating these AI-driven tools into clinical workflows and electronic health records.
This research aims to revolutionise cardiovascular diagnostics by leveraging AI and ML for more precise, faster, and clinically relevant decision-making.
Objectives:
1. Develop and implement a clinical decision support tool that visualizes key diagnostic data.
2. Train and validate ML models to diagnose acute cardiovascular diseases (ACVD).
3. Compare ML model performance with existing diagnostic algorithms.
4. Validate ML models in large international clinical trials.
5. Integrate ML models into the electronic patient record at the University Hospital Basel.
Recruitment & Eligibility
- Status
- RECRUITING
- Sex
- All
- Target Recruitment
- 200000
• Acute cardiovascular disease (ACVD)
Exclusion Criteria
- age < 18 years old
- patients presenting in cardiogenic shock
- chronic terminal kidney failure requiring dialysis
Not provided
Study & Design
- Study Type
- OBSERVATIONAL
- Study Design
- Not specified
- Primary Outcome Measures
Name Time Method Validate machine learning (ML) models During whole study duration of 3 years Derive and validate ML models that integrate cardiac biomarkers with key clinical information and the digital 12-lead ECG to rapidly inform the diagnostic probability for six acute life-threatening cardiovascular conditions in patients presenting with acute chest pain and/or acute dyspnoea to the Emergency Department
Developing a clinical decision support tool During whole study duration of 3 years Developing and implementing a clinical decision support tool that integrates and visualizes results of established diagnostic variables in a dashboard
- Secondary Outcome Measures
Name Time Method
Related Research Topics
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Trial Locations
- Locations (1)
University Hospital Basel
🇨🇭Basel, Switzerland
University Hospital Basel🇨🇭Basel, SwitzerlandJasper Boeddinghaus, PD Dr. medContact+41 61 32 87897jasper.boeddinghaus@usb.ch