30Machine learning to predict the long-term risk of myocardial infarction and cardiac death based on clinical risk, coronary calcium and epicardial adipose tissue: a prospective study

2019 ◽  
Vol 40 (Supplement_1) ◽  
Author(s):  
F C Commandeur ◽  
P J Slomka ◽  
M Goeller ◽  
X Chen ◽  
S Cadet ◽  
...  

Abstract Background/Introduction Machine learning (ML) allows objective integration of clinical and imaging data for the prediction of events. ML prediction of cardiovascular events in asymptomatic subjects over long-term follow-up, utilizing quantitative CT measures of coronary artery calcium (CAC) and epicardial adipose tissue (EAT) have not yet been evaluated. Purpose To analyze the ability of machine learning to integrate clinical parameters with coronary calcium and EAT quantification in order to improve prediction of myocardial infarction (MI) and cardiac death in asymptomatic subjects. Methods We assessed 2071 consecutive subjects [1230 (59%) male, age: 56.049.03] from the EISNER (Early Identification of Subclinical Atherosclerosis by Noninvasive Imaging Research) trial with long-term follow-up after non-enhanced cardiac CT. CAC (Agatston) score, age-and-gender-adjusted CAC percentile, and aortic calcium scores were obtained. EAT volume and density were quantified using a fully automated deep learning method. Extreme gradient boosting, a ML algorithm, was trained using demographic variables, plasma lipid panel measurements, risk factors as well as CAC, aortic calcium and EAT measures from CAC CT scans. ML was validated using 10-fold cross validation; event prediction was evaluated using area-under-receiver operating characteristic curve (AUC) analysis and Cox proportional hazards regression. Optimal ML cut-point for risk of MI and cardiac death was determined by highest Youden's index (sensitivity + specificity – 1). Results At 152 years' follow-up, 76 events of MI and/or cardiac death had occurred. ML obtained a significantly higher AUC than the ASCVD risk and CAC score in predicting events (ML: 0.81; ASCVD: 0.76, p<0.05; CAC: 0.75, p<0.01, Figure A). ML performance was mostly driven by age, ASCVD risk and calcium as shown by the variable importance (Figure B); however, all variables with non-zero gain contributed to the ML performance. ML achieved a sensitivity and specificity of 77.6% and 73.5%, respectively. For an equal specificity, ASCVD and CAC scores obtained a sensitivity of 61.8% and 67.1%, respectively. High ML risk was associated with a high risk of suffering an event by Cox regression (HR: 9.25 [95% CI: 5.39–15.87], p<0.001; survival curves in Figure C). The relationships persisted when adjusted for age, gender, CAC, CAC percentile, aortic calcium score, and ASCVD risk score; with a hazard ratio of 3.42 for high ML risk (HR: 3.42 [95% CI: 1.54–7.57], p=0.002). Conclusion(s) Machine learning used to integrate clinical and quantitative imaging-based variables significantly improves prediction of MI and cardiac death in asymptomatic subjects undergoing CAC assessment, compared to standard risk assessment methods. Acknowledgement/Funding NHLBI 1R01HL13361, Bundesministerium für Bildung und Forschung (01EX1012B), Dr. Miriam and Sheldon G. Adelson Medical Research Foundation

2019 ◽  
Vol 116 (14) ◽  
pp. 2216-2225 ◽  
Author(s):  
Frederic Commandeur ◽  
Piotr J Slomka ◽  
Markus Goeller ◽  
Xi Chen ◽  
Sebastien Cadet ◽  
...  

Abstract Aims Our aim was to evaluate the performance of machine learning (ML), integrating clinical parameters with coronary artery calcium (CAC), and automated epicardial adipose tissue (EAT) quantification, for the prediction of long-term risk of myocardial infarction (MI) and cardiac death in asymptomatic subjects. Methods and results Our study included 1912 asymptomatic subjects [1117 (58.4%) male, age: 55.8 ± 9.1 years] from the prospective EISNER trial with long-term follow-up after CAC scoring. EAT volume and density were quantified using a fully automated deep learning method. ML extreme gradient boosting was trained using clinical co-variates, plasma lipid panel measurements, risk factors, CAC, aortic calcium, and automated EAT measures, and validated using repeated 10-fold cross validation. During mean follow-up of 14.5 ± 2 years, 76 events of MI and/or cardiac death occurred. ML obtained a significantly higher AUC than atherosclerotic cardiovascular disease (ASCVD) risk and CAC score for predicting events (ML: 0.82; ASCVD: 0.77; CAC: 0.77, P &lt; 0.05 for all). Subjects with a higher ML score (by Youden’s index) had high hazard of suffering events (HR: 10.38, P &lt; 0.001); the relationships persisted in multivariable analysis including ASCVD-risk and CAC measures (HR: 2.94, P = 0.005). Age, ASCVD-risk, and CAC were prognostically important for both genders. Systolic blood pressure was more important than cholesterol in women, and the opposite in men. Conclusions In this prospective study, machine learning used to integrate clinical and quantitative imaging-based variables significantly improves prediction of MI and cardiac death compared with standard clinical risk assessment. Following further validation, such a personalized paradigm could potentially be used to improve cardiovascular risk assessment.


Cytokine ◽  
2012 ◽  
Vol 60 (3) ◽  
pp. 674-680 ◽  
Author(s):  
Elvis Teijeira-Fernandez ◽  
Sonia Eiras ◽  
Antonio Salgado Somoza ◽  
Jose R. Gonzalez-Juanatey

Circulation ◽  
2014 ◽  
Vol 130 (suppl_2) ◽  
Author(s):  
Kitae Kim ◽  
Shuichiro Kaji ◽  
Takeshi Kitai ◽  
Atsushi Kobori ◽  
Natsuhiko Ehara ◽  
...  

Introduction: Ischemic mitral regurgitation (IMR) portends a poor prognosis during long-term follow-up and has been identified as an independent predictor of heart failure (HF) and reduced long-term survival. Despite the poor prognosis with chronic IMR, few studies report the impact of IMR on long-term prognosis in patients with acute myocardial infarction (AMI) who underwent primary percutaneous coronary intervention (PCI). Methods: We studied 674 consecutive patients with AMI from 2000 to 2006 who underwent emergent coronary angiography and primary PCI, and who were assessed by transthoracic echocardiography during index hospitalization. Primary outcomes were cardiac death and the development of HF during follow-up. Results: The mean age of the study patients was 65±12 years and 534 patients (79%) were men. Sixty patients (9%) had moderate or severe MR before hospital discharge. Patients with moderate or severe MR were older, more frequently non-smoker, and more likely to have Killip class ≥2, lower ejection fraction, larger left ventricular end-diastolic volume, compared with patients with no or mild MR. During the mean follow-up period of 5.7±3.6 years, 35 cardiac deaths and 53 episodes of HF occurred. Kaplan-Meier analysis revealed that patients with moderate or severe MR had significantly increased risk for cardiac death (P<0.001), and HF (P<0.001), compared with patients with no or mild MR. Multivariate analysis revealed that moderate or severe MR was the significant predictor of the development of cardiac death (P<0.001), and the development of HF (P=0.006), independently of age, gender, history of MI, Killip class ≥2, initial TIMI flow≤1, peak CPK level, ejection fraction. Conclusions: Moderate or severe IMR detected early after AMI was independently associated with adverse cardiac events during long-term follow-up in patients with AMI after primary PCI.


2019 ◽  
Vol 42 (6) ◽  
pp. 592-604
Author(s):  
Hanumantha R. Jogu ◽  
Sameer Arora ◽  
Muthiah Vaduganathan ◽  
Arman Qamar ◽  
Ambarish Pandey ◽  
...  

2014 ◽  
Vol 1 (1) ◽  
pp. 21 ◽  
Author(s):  
Katarzyna Anna Mitręga ◽  
Agnieszka Kolczyńska ◽  
Joanna Hanzel ◽  
Sylwia Cebula ◽  
Stanisław Morawski ◽  
...  

Introduction: Despite the continuous development of new methods of pharmacological and invasive treatment for patients with acute myocardial infarction (MI) the prognosis of long-term survival is still uncertain. Therefore, there is still need to look for new noninvasive predictors of death in patients after MI. Aim: To analyze the prognostic value of ventricular arrhythmias in predicting mortality following MI in long-term follow-up. Methods: We analyzed 390 consecutive patients (114 females and 276 males, aged 63.9 ± 11.15 years, mean EF: 43.8 ± 7.9%) with MI treated invasively.  On the 5th day after MI 24-hour digital Holter recording was performed to assess the number of premature ventricular beats (VPB) and their sustained forms such as: salvos and nonsustained ventricular tachycardia (nsVT <  30 s). The large numbers of ventricular extrasystoles: ≥ 10 VPB / hour were considered as abnormal. In echocardiography the size of heart cavities and cardiac contractile function were evaluated. Within 30.1 ± 15.1 months of follow-up 38 patients died. Results: In the group of patients with MI the mean value of ventricular ectopy during the day was: 318.8 ± 1447.6. Large numbers of ventricular extrasystoles were observed in 75% patients, while nsVT in 6% patients. Significant differences in the incidence of death after MI were observed in patients with nsVT and ventricular salvos. In the group of patients who died in comparison to the group of patients who survived in long-term follow-up, a significantly less ventricular ectopic incidence was noted (9.83% vs 90.17%, p < 0.01). In patients who died after MI more premature ventricular beats (≥ 10 VPB / h) and a greater nsVT incidence were observed; however not significant. Moreover, in patients with MI the systolic and diastolic LV dimension, decreased values of hemoglobin, salvos and nsVT incidence are the independent risk factors of death. The strongest independent risk factor of death after MI is salvos (HR: 1.32, P < 0.01). Conclusions: In long term follow-up the largest differences in death were observed in patients with ventricular salvos and nsVT. Furthermore, ventricular salvos are the strongest independent risk factor of death in patients with AMI. 


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