CONTEXT.—: Machine learning (ML) allows for the analysis of massive quantities of high-dimensional clinical laboratory data, thereby revealing complex patterns and trends. Thus, ML can potentially improve the efficiency of clinical data interpretation and the practice of laboratory medicine. However, the risks of generating biased or unrepresentative models, which can lead to misleading clinical conclusions or overestimation of the model performance, should be recognized. OBJECTIVES.—: To discuss the major components for creating ML models, including data collection, data preprocessing, model development, and model evaluation. We also highlight many of the challenges and pitfalls in developing ML models, which could result in misleading cli...
Abstract Advances in medical machine learning are expected to help personalize care, improve outcome...
International audienceBackground: Machine learning (ML) allows the analysis of complex and large dat...
MACHINE LEARNING METHODS IN CLINICAL DECISION-MAKING SUMMARY Machine Learning (ML) in clinical pra...
Developing functional machine learning (ML)-based models to address unmet clinical needs requires un...
Machine learning (ML) is a powerful and flexible tool that can be used to analyze and predict outcom...
Machine learning and data-driven solutions open exciting opportunities in many disciplines including...
Background: As more and more researchers are turning to big data for new opportunities of biomedical...
Abstract Background Interest in the application of...
With the advances in technology and data science, machine learning (ML) is being rapidly adopted by ...
Machine learning (ML) inherently suffers from at least a small amount of inaccuracy. Typically, thes...
Clinical pharmacology is a multidisciplinary data sciences field that utilizes mathematical and stat...
Pre-requisites to better understand the chapter: knowledge of the major steps and procedures of deve...
Machine learning has demonstrated potential in analyzing large, complex datasets and has become ubiq...
Purpose: Despite the potential of machine learning models, the lack of generalizability has hindered...
© 2022 by the authors.Pharmacometrics is a multidisciplinary field utilizing mathematical models of ...
Abstract Advances in medical machine learning are expected to help personalize care, improve outcome...
International audienceBackground: Machine learning (ML) allows the analysis of complex and large dat...
MACHINE LEARNING METHODS IN CLINICAL DECISION-MAKING SUMMARY Machine Learning (ML) in clinical pra...
Developing functional machine learning (ML)-based models to address unmet clinical needs requires un...
Machine learning (ML) is a powerful and flexible tool that can be used to analyze and predict outcom...
Machine learning and data-driven solutions open exciting opportunities in many disciplines including...
Background: As more and more researchers are turning to big data for new opportunities of biomedical...
Abstract Background Interest in the application of...
With the advances in technology and data science, machine learning (ML) is being rapidly adopted by ...
Machine learning (ML) inherently suffers from at least a small amount of inaccuracy. Typically, thes...
Clinical pharmacology is a multidisciplinary data sciences field that utilizes mathematical and stat...
Pre-requisites to better understand the chapter: knowledge of the major steps and procedures of deve...
Machine learning has demonstrated potential in analyzing large, complex datasets and has become ubiq...
Purpose: Despite the potential of machine learning models, the lack of generalizability has hindered...
© 2022 by the authors.Pharmacometrics is a multidisciplinary field utilizing mathematical models of ...
Abstract Advances in medical machine learning are expected to help personalize care, improve outcome...
International audienceBackground: Machine learning (ML) allows the analysis of complex and large dat...
MACHINE LEARNING METHODS IN CLINICAL DECISION-MAKING SUMMARY Machine Learning (ML) in clinical pra...