Derivation and external validation of machine-learning models for risk stratification in chest pain with normal troponin

Author:

Fernández-Cisnal Agustín1ORCID,Lopez-Ayala Pedro2,Valero Ernesto1,Koechlin Luca2ORCID,Catarralá Arturo3,Boeddinghaus Jasper2,Noceda José4,Nestelberger Thomas2ORCID,Miró Òscar5,Julio Núñez1,Mueller Christian2ORCID,Sanchis Juan1ORCID

Affiliation:

1. Cardiology Department, Hospital Clínico Universitario de València, Instituto de Investigación Sanitaria (INCLIVA), University of València, Centro de Investigación Biomédica en Red Enfermedades Cardiovaculares (CIBERCV) , València , Spain

2. Cardiovascular Research Institute Basel (CRIB) and Department of Cardiology, University Heart Center Basel, University Hospital Basel, University of Basel , Basel , Switzerland

3. Clinical Biochemistry Department, Hospital Clínico Universitario de València, Instituto de Investigación Sanitaria (INCLIVA) , València 46010 , Spain

4. Emergency Department, Hospital Clínico Universitario de València, Instituto de Investigación Sanitaria (INCLIVA) , València 46010 , Spain

5. Emergency Department, Hospital Clinic , Barcelona, Catalonia , Spain

Abstract

Abstract Aims Risk stratification of patients with chest pain and a high-sensitivity cardiac troponin T (hs-cTnT) concentration <upper reference limit (URL) is challenging. The aim of this study was to develop and externally validate clinical models for risk prediction of 90-day death or myocardial infarction in patients presenting to the emergency department with chest pain and an initial hs-cTnT concentration <URL. Methods and results Four machine-learning-based models and one logistic regression (LR) model were trained on 4075 patients (single-centre Spanish cohort) and externally validated on 3609 patients (international prospective Advantageous Predictors of Acute Coronary syndromes Evaluation cohort). Models were compared with GRACE and HEART scores and a single undetectable hs-cTnT-based strategy (u-cTn; hs-cTnT < 5 ng/L and time from symptoms onset >180 min). Probability thresholds for safe discharge were derived in the derivation cohort. The endpoint occurred in 105 (2.6%) patients in the training set and 98 (2.7%) in the external validation set. Gradient boosting full (GBf) showed the best discrimination (area under the curve = 0.808). Calibration was good for the reduced neural network and LR models. Gradient boosting full identified the highest proportion of patients for safe discharge (36.7 vs. 23.4 vs. 27.2%; GBf vs. LR vs. u-cTn, respectively) with similar safety (missed endpoint per 1000 patients: 2.2 vs. 3.5 vs. 3.1, respectively). All derived models were superior to the HEART and GRACE scores (P < 0.001). Conclusion Machine-learning and LR prediction models were superior to the HEART, GRACE, and u-cTn for risk stratification of patients with chest pain and a baseline hs-cTnT <URL. Gradient boosting full models best balanced discrimination, calibration, and efficacy, reducing the need for serial hs-cTnT determination by more than one-third. Clinical trial registration ClinicalTrials.gov number, NCT00470587, https://clinicaltrials.gov/ct2/show/NCT00470587.

Funder

Spanish Ministry of Economy and Competitiveness

Carlos III Health Institute

Swiss National Science Foundation

Swiss Heart Foundation

European Union

Cardiovascular Research Foundation Basel

University Hospital Basel

University of Basel

Abbott

Beckman Coulter

Roche

Ortho Clinical Diagnostics

Quidel

Siemens

Singulex

Publisher

Oxford University Press (OUP)

Subject

Cardiology and Cardiovascular Medicine,Critical Care and Intensive Care Medicine,General Medicine

Cited by 1 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. Accelerating chest pain evaluation with machine learning;European Heart Journal: Acute Cardiovascular Care;2023-10-04

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