Using Machine Learning Techniques to Predict MACE in Very Young Acute Coronary Syndrome Patients.
Pablo Juan-SalvadoresCesar VeigaVíctor Alfonso Jiménez DíazAlba Guitián GonzálezCristina Iglesia CarreñoCristina Martínez-RegleroJosé Antonio Baz AlonsoFrancisco Caamano-IsornaAndrés Iñiguez RomoPublished in: Diagnostics (Basel, Switzerland) (2022)
Coronary artery disease is a chronic disease with an increased expression in the elderly. However, different studies have shown an increased incidence in young subjects over the last decades. The prediction of major adverse cardiac events (MACE) in very young patients has a significant impact on medical decision-making following coronary angiography and the selection of treatment. Different approaches have been developed to identify patients at a higher risk of adverse outcomes after their coronary anatomy is known. This is a prognostic study of combined data from patients ≤40 years old undergoing coronary angiography (n = 492). We evaluated whether different machine learning (ML) approaches could predict MACE more effectively than traditional statistical methods using logistic regression (LR). Our most effective model for long-term follow-up (60 ± 27 months) was random forest (RF), obtaining an area under the curve (AUC) = 0.79 (95%CI 0.69-0.88), in contrast with LR, obtaining AUC = 0.66 (95%CI 0.53-0.78, p = 0.021). At 1-year follow-up, the RF test found AUC 0.80 (95%CI 0.71-0.89) vs. LR 0.50 (95%CI 0.33-0.66, p < 0.001). The results of our study support the hypothesis that ML methods can improve both the identification of MACE risk patients and the prediction vs. traditional statistical techniques even in a small sample size. The application of ML techniques to focus the efforts on the detection of MACE in very young patients after coronary angiography could help tailor upfront follow-up strategies in such young patients according to their risk of MACE and to be used for proper assignment of health resources.
Keyphrases
- end stage renal disease
- newly diagnosed
- coronary artery disease
- chronic kidney disease
- machine learning
- ejection fraction
- acute coronary syndrome
- prognostic factors
- healthcare
- peritoneal dialysis
- heart failure
- cardiovascular disease
- middle aged
- risk assessment
- magnetic resonance
- magnetic resonance imaging
- mental health
- patient reported
- poor prognosis
- electronic health record
- contrast enhanced
- big data
- coronary artery bypass grafting
- quantum dots
- health promotion