Leveraging Machine Learning Techniques to Forecast Patient Prognosis After Percutaneous Coronary Intervention

Autor: Mandeep Singh, Malcolm R. Bell, Yaron Kinar, Yoav Bar-Sinai, Chad J. Zack, Conor Senecal, Ryan J. Lennon, R. Jay Widmer, Yaakov Metzger, Amir Lerman, Rajiv Gulati
Rok vydání: 2019
Předmět:
Male
Time Factors
Minnesota
medicine.medical_treatment
Clinical Decision-Making
Population
Coronary Artery Disease
030204 cardiovascular system & hematology
Logistic regression
Machine learning
computer.software_genre
Patient Readmission
Risk Assessment
Decision Support Techniques
Machine Learning
03 medical and health sciences
Percutaneous Coronary Intervention
0302 clinical medicine
Predictive Value of Tests
Risk Factors
Humans
Medicine
Hospital Mortality
Registries
030212 general & internal medicine
education
Aged
Heart Failure
education.field_of_study
business.industry
Area under the curve
Reproducibility of Results
Percutaneous coronary intervention
Middle Aged
Confidence interval
Regression
Treatment Outcome
Conventional PCI
Cohort
Female
Artificial intelligence
Cardiology and Cardiovascular Medicine
business
computer
Zdroj: JACC: Cardiovascular Interventions. 12:1304-1311
ISSN: 1936-8798
DOI: 10.1016/j.jcin.2019.02.035
Popis: Objectives This study sought to determine whether machine learning can be used to better identify patients at risk for death or congestive heart failure (CHF) rehospitalization after percutaneous coronary intervention (PCI). Background Contemporary risk models for event prediction after PCI have limited predictive ability. Machine learning has the potential to identify complex nonlinear patterns within datasets, improving the predictive power of models. Methods We evaluated 11,709 distinct patients who underwent 14,349 PCIs between January 2004 and December 2013 in the Mayo Clinic PCI registry. Fifty-two demographic and clinical parameters known at the time of admission were used to predict in-hospital mortality and 358 additional variables available at discharge were examined to identify patients at risk for CHF readmission. For each event, we trained a random forest regression model (i.e., machine learning) to estimate the time-to-event. Eight-fold cross-validation was used to estimate model performance. We used the predicted time-to-event as a score, generated a receiver-operating characteristic curve, and calculated the area under the curve (AUC). Model performance was then compared with a logistic regression model using pairwise comparisons of AUCs and calculation of net reclassification indices. Results The predictive algorithm identified a high-risk cohort representing 2% of all patients who had an in-hospital mortality of 45.5% (95% confidence interval: 43.5% to 47.5%) compared with a risk of 2.1% for the general population (AUC: 0.925; 95% confidence interval: 0.92 to 0.93). Advancing age, CHF, and shock on presentation were the leading predictors for the outcome. A high-risk group representing 1% of all patients was identified with 30-day CHF rehospitalization of 8.1% (95% confidence interval: 6.3% to 10.2%). Random forest regression outperformed logistic regression for predicting 30-day CHF readmission (AUC: 0.90 vs. 0.85; p = 0.003; net reclassification improvement: 5.14%) and 180-day cardiovascular death (AUC: 0.88 vs. 0.81; p = 0.02; net reclassification improvement: 0.02%). Conclusions Random forest regression models (machine learning) were more predictive and discriminative than standard regression methods at identifying patients at risk for 180-day cardiovascular mortality and 30-day CHF rehospitalization, but not in-hospital mortality. Machine learning was effective at identifying subgroups at high risk for post-procedure mortality and readmission.
Databáze: OpenAIRE