A machine learning algorithm to predict a culprit lesion after out of hospital cardiac arrest

Author:

Pareek Nilesh12ORCID,Frohmaier Christopher34ORCID,Smith Mathew4,Kordis Peter5,Cannata Antonio12,Nevett Jo6,Fothergill Rachael6,Nichol Robert C.3,Sullivan Mark4,Sunderland Nicholas5ORCID,Johnson Thomas W.5,Noc Marko7,Byrne Jonathan12,MacCarthy Philip12,Shah Ajay M.2

Affiliation:

1. King's College Hospital NHS Foundation Trust London UK

2. School of Cardiovascular and Metabolic Medicine and Sciences, BHF Center of Excellence King's College London London UK

3. Institute of Cosmology and Gravitation University of Portsmouth Portsmouth UK

4. Department of Physics and Astronomy University of Southampton Southampton UK

5. Bristol Heart Institute Bristol UK

6. London Ambulance Service NHS Trust London UK

7. Centre for Intensive Internal Medicine University Medical Center Ljubljana Slovenia

Abstract

AbstractBackgroundWe aimed to develop a machine learning algorithm to predict the presence of a culprit lesion in patients with out‐of‐hospital cardiac arrest (OHCA).MethodsWe used the King's Out‐of‐Hospital Cardiac Arrest Registry, a retrospective cohort of 398 patients admitted to King's College Hospital between May 2012 and December 2017. The primary outcome was the presence of a culprit coronary artery lesion, for which a gradient boosting model was optimized to predict. The algorithm was then validated in two independent European cohorts comprising 568 patients.ResultsA culprit lesion was observed in 209/309 (67.4%) patients receiving early coronary angiography in the development, and 199/293 (67.9%) in the Ljubljana and 102/132 (61.1%) in the Bristol validation cohorts, respectively. The algorithm, which is presented as a web application, incorporates nine variables including age, a localizing feature on electrocardiogram (ECG) (≥2 mm of ST change in contiguous leads), regional wall motion abnormality, history of vascular disease and initial shockable rhythm. This model had an area under the curve (AUC) of 0.89 in the development and 0.83/0.81 in the validation cohorts with good calibration and outperforms the current gold standard‐ECG alone (AUC: 0.69/0.67/0/67).ConclusionsA novel simple machine learning‐derived algorithm can be applied to patients with OHCA, to predict a culprit coronary artery disease lesion with high accuracy.

Publisher

Wiley

Subject

Cardiology and Cardiovascular Medicine,Radiology, Nuclear Medicine and imaging,General Medicine

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Simple Non-Invasive Coronary Artery Disease Detection Using Machine Learning;2024 4th International Conference on Innovative Practices in Technology and Management (ICIPTM);2024-02-21

2. Indications for Cardiac Catheterization and Percutaneous Coronary Intervention in Patients with Resuscitated Out-of-Hospital Cardiac Arrest;Current Cardiology Reports;2023-10-24

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