Purpose: Despite the potential of machine learning models, the lack of generalizability has hindered their widespread adoption in clinical practice. We investigate three methodological pitfalls: (1) violation of independence assumption, (2) model evaluation with an inappropriate performance indicator or baseline for comparison, and (3) batch effect. Materials and Methods: Using several retrospective datasets, we implement machine learning models with and without the pitfalls to quantitatively illustrate these pitfalls' effect on model generalizability. Results: Violation of independence assumption, more specifically, applying oversampling, feature selection, and data augmentation before splitting data into train, validation, and test sets, ...
Introduction: Studies addressing the development and/or validation of diagnostic and prognostic pred...
Reliable and robust evaluation methods are a necessary first step towards developing machine learnin...
Developing state-of-the-art approaches for specific tasks is a major driving force in our research c...
CONTEXT.—: Machine learning (ML) allows for the analysis of massive quantities of high-dimensional c...
OBJECTIVE: To assess the methodological quality of studies on prediction models developed using mach...
Futurists have anticipated that novel autonomous technologies, embedded with machine learning (ML), ...
Forming a reliable judgement of a machine learning (ML) model's appropriateness for an application e...
When evaluating the performance of clinical machine learning models, one must consider the deploymen...
Machine learning and data-driven solutions open exciting opportunities in many disciplines including...
Machine learning methods are widely used within the medical field. However, the reliability and effi...
Prompted by its performance on a variety of benchmark tasks, machine learning (ML) is now being appl...
Aims: We conducted a systematic review assessing the reporting quality of studies validating models ...
INTRODUCTION: Studies addressing the development and/or validation of diagnostic and prognostic pred...
The discussions around Artificial Intelligence (AI) and medical imaging are centered around the succ...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/149333/1/sim8103_am.pdfhttps://deepblu...
Introduction: Studies addressing the development and/or validation of diagnostic and prognostic pred...
Reliable and robust evaluation methods are a necessary first step towards developing machine learnin...
Developing state-of-the-art approaches for specific tasks is a major driving force in our research c...
CONTEXT.—: Machine learning (ML) allows for the analysis of massive quantities of high-dimensional c...
OBJECTIVE: To assess the methodological quality of studies on prediction models developed using mach...
Futurists have anticipated that novel autonomous technologies, embedded with machine learning (ML), ...
Forming a reliable judgement of a machine learning (ML) model's appropriateness for an application e...
When evaluating the performance of clinical machine learning models, one must consider the deploymen...
Machine learning and data-driven solutions open exciting opportunities in many disciplines including...
Machine learning methods are widely used within the medical field. However, the reliability and effi...
Prompted by its performance on a variety of benchmark tasks, machine learning (ML) is now being appl...
Aims: We conducted a systematic review assessing the reporting quality of studies validating models ...
INTRODUCTION: Studies addressing the development and/or validation of diagnostic and prognostic pred...
The discussions around Artificial Intelligence (AI) and medical imaging are centered around the succ...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/149333/1/sim8103_am.pdfhttps://deepblu...
Introduction: Studies addressing the development and/or validation of diagnostic and prognostic pred...
Reliable and robust evaluation methods are a necessary first step towards developing machine learnin...
Developing state-of-the-art approaches for specific tasks is a major driving force in our research c...