Machine learning approaches are increasingly suggested as tools to improve prediction of clinical outcomes. We aimed to identify when machine learning methods perform better than a classical learning method. We hereto examined the impact of the data-generating process on the relative predictive accuracy of six machine and statistical learning methods: bagged classification trees, stochastic gradient boosting machines using trees as the base learners, random forests, the lasso, ridge regression, and unpenalized logistic regression. We performed simulations in two large cardiovascular datasets which each comprised an independent derivation and validation sample collected from temporally distinct periods: patients hospitalized with acute myoca...
Heart disease is a significant health concern, warranting accurate prediction models for timely inte...
OBJECTIVE: To compare performance of logistic regression (LR) with machine learning (ML) for clinica...
Machine learning methods are widely used within the medical field. However, the reliability and effi...
Machine learning approaches are increasingly suggested as tools to improve prediction of clinical ou...
Machine learning approaches are increasingly suggested as tools to improve prediction of clinical ou...
This work investigates the predictive performance of 10 Machine learning models on three medical dat...
This work investigates the predictive performance of 10 Machine learning models on three medical dat...
International audienceTraditional statistical models allow population based inferences and compariso...
In the modern state-of-art of technology, Machine Learning emerges out as a boom to extract informat...
Abstract Machine learning (ML) has been suggested to improve the performance of prediction models. N...
There is an increasing interest in machine learning (ML) algorithms for predicting patient outcomes,...
The aim of this study is to compare the utility of several supervised machine learning (ML) algorith...
Heart disease, one of the main reasons behind the high mortality rate around the world, requires a s...
BACKGROUND: Prior studies have demonstrated that cardiorespiratory fitness (CRF) is a strong marker ...
About 26 million people worldwide experience its effects each year. Both cardiologists and surgeons ...
Heart disease is a significant health concern, warranting accurate prediction models for timely inte...
OBJECTIVE: To compare performance of logistic regression (LR) with machine learning (ML) for clinica...
Machine learning methods are widely used within the medical field. However, the reliability and effi...
Machine learning approaches are increasingly suggested as tools to improve prediction of clinical ou...
Machine learning approaches are increasingly suggested as tools to improve prediction of clinical ou...
This work investigates the predictive performance of 10 Machine learning models on three medical dat...
This work investigates the predictive performance of 10 Machine learning models on three medical dat...
International audienceTraditional statistical models allow population based inferences and compariso...
In the modern state-of-art of technology, Machine Learning emerges out as a boom to extract informat...
Abstract Machine learning (ML) has been suggested to improve the performance of prediction models. N...
There is an increasing interest in machine learning (ML) algorithms for predicting patient outcomes,...
The aim of this study is to compare the utility of several supervised machine learning (ML) algorith...
Heart disease, one of the main reasons behind the high mortality rate around the world, requires a s...
BACKGROUND: Prior studies have demonstrated that cardiorespiratory fitness (CRF) is a strong marker ...
About 26 million people worldwide experience its effects each year. Both cardiologists and surgeons ...
Heart disease is a significant health concern, warranting accurate prediction models for timely inte...
OBJECTIVE: To compare performance of logistic regression (LR) with machine learning (ML) for clinica...
Machine learning methods are widely used within the medical field. However, the reliability and effi...