OBJECTIVES: The objective of this study was to compare performance of logistic regression (LR) with machine learning (ML) for clinical prediction modeling in the literature. STUDY DESIGN AND SETTING: We conducted a Medline literature search (1/2016 to 8/2017) and extracted comparisons between LR and ML models for binary outcomes. RESULTS: We included 71 of 927 studies. The median sample size was 1,250 (range 72-3,994,872), with 19 predictors considered (range 5-563) and eight events per predictor (range 0.3-6,697). The most common ML methods were classification trees, random forests, artificial neural networks, and support vector machines. In 48 (68%) studies, we observed potential bias in the validation procedures. Sixty-four (90%) studies...
Background: Statistical models using machine learning (ML) have the potential for more accurate esti...
Objective: We aimed to explore the added value of common machine learning (ML) algorithms for predic...
Objective: Provide guidance on sample size considerations for developing predictive models by empiri...
OBJECTIVE: To compare performance of logistic regression (LR) with machine learning (ML) for clinica...
Background: There is much interest in the use of prognostic and diagnostic prediction models in all ...
Background While many studies have consistently found incomplete reporting of regression-based predi...
Contains fulltext : 172155.pdf (publisher's version ) (Open Access)BACKGROUND: It ...
BACKGROUND: While many studies have consistently found incomplete reporting of regression-based pred...
Objective To assess the methodological quality of studies on prediction models developed using machi...
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...
Introduction Studies addressing the development and/or validation of diagnostic and prognostic predi...
OBJECTIVE: The objective of the study was to compare the performance of logistic regression and boos...
AbstractLogistic regression and artificial neural networks are the models of choice in many medical ...
Machine learning approaches are increasingly suggested as tools to improve prediction of clinical ou...
Background: Statistical models using machine learning (ML) have the potential for more accurate esti...
Objective: We aimed to explore the added value of common machine learning (ML) algorithms for predic...
Objective: Provide guidance on sample size considerations for developing predictive models by empiri...
OBJECTIVE: To compare performance of logistic regression (LR) with machine learning (ML) for clinica...
Background: There is much interest in the use of prognostic and diagnostic prediction models in all ...
Background While many studies have consistently found incomplete reporting of regression-based predi...
Contains fulltext : 172155.pdf (publisher's version ) (Open Access)BACKGROUND: It ...
BACKGROUND: While many studies have consistently found incomplete reporting of regression-based pred...
Objective To assess the methodological quality of studies on prediction models developed using machi...
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...
Introduction Studies addressing the development and/or validation of diagnostic and prognostic predi...
OBJECTIVE: The objective of the study was to compare the performance of logistic regression and boos...
AbstractLogistic regression and artificial neural networks are the models of choice in many medical ...
Machine learning approaches are increasingly suggested as tools to improve prediction of clinical ou...
Background: Statistical models using machine learning (ML) have the potential for more accurate esti...
Objective: We aimed to explore the added value of common machine learning (ML) algorithms for predic...
Objective: Provide guidance on sample size considerations for developing predictive models by empiri...