Many clinical research datasets have a large percentage of missing values that directly impacts their usefulness in yielding high accuracy classifiers when used for training in supervised machine learning. While missing value imputation methods have been shown to work well with smaller percentages of missing values, their ability to impute sparse clinical research data can be problem specific. We previously attempted to learn quantitative guidelines for ordering cardiac magnetic resonance imaging during the evaluation for pediatric cardiomyopathy, but missing data significantly reduced our usable sample size. In this work, we sought to determine if increasing the usable sample size through imputation would allow us to learn better guideline...
BackgroundMachine learning (ML) models can improve prediction of major adverse cardiovascular events...
International audienceBACKGROUND: As databases grow larger, it becomes harder to fully control their...
According to the estimations of the World Health Organization and the International Agency for Resea...
Prediction and learning in the presence of missing data are pervasive problems in data analysis by m...
The incomplete dataset is an unescapable problem in data preprocessing that primarily machine learni...
Legacy (and current) medical datasets are rich source of information and knowledge. However, the use...
Clinical decision support using data mining techniques offers more intelligent way to reduce the dec...
Many real-world datasets suffer from missing data, which can introduce uncertainty into ensuing anal...
Clinical data often contains missing values. Imputation is one of the best known schemes to overcome...
[[abstract]]While there is an ample amount of medical information available for data mining, many of...
Background Classifying samples in incomplete datasets is a common aim for machine learning practitio...
BackgroundMachine learning (ML) models can improve prediction of major adverse cardiovascular events...
International audienceBACKGROUND: As databases grow larger, it becomes harder to fully control their...
According to the estimations of the World Health Organization and the International Agency for Resea...
Prediction and learning in the presence of missing data are pervasive problems in data analysis by m...
The incomplete dataset is an unescapable problem in data preprocessing that primarily machine learni...
Legacy (and current) medical datasets are rich source of information and knowledge. However, the use...
Clinical decision support using data mining techniques offers more intelligent way to reduce the dec...
Many real-world datasets suffer from missing data, which can introduce uncertainty into ensuing anal...
Clinical data often contains missing values. Imputation is one of the best known schemes to overcome...
[[abstract]]While there is an ample amount of medical information available for data mining, many of...
Background Classifying samples in incomplete datasets is a common aim for machine learning practitio...
BackgroundMachine learning (ML) models can improve prediction of major adverse cardiovascular events...
International audienceBACKGROUND: As databases grow larger, it becomes harder to fully control their...
According to the estimations of the World Health Organization and the International Agency for Resea...