Predicting 30-days mortality for MIMIC-III patients with sepsis-3: a machine learning approach using XGboost
N Hou, M Li, L He, B Xie, L Wang, R Zhang… - Journal of translational …, 2020 - Springer
Background Sepsis is a significant cause of mortality in-hospital, especially in ICU patients.
Early prediction of sepsis is essential, as prompt and appropriate treatment can improve …
Early prediction of sepsis is essential, as prompt and appropriate treatment can improve …
Imputation with the R Package VIM
Abstract The package VIM (Templ, Alfons, Kowarik, and Prantner 2016) is developed to
explore and analyze the structure of missing values in data using visualization methods, to …
explore and analyze the structure of missing values in data using visualization methods, to …
Recent progress and trends in predictive visual analytics
A wide variety of predictive analytics techniques have been developed in statistics, machine
learning and data mining; however, many of these algorithms take a black-box approach in …
learning and data mining; however, many of these algorithms take a black-box approach in …
A brief review of the main approaches for treatment of missing data
LO Silva, LE Zárate - Intelligent Data Analysis, 2014 - content.iospress.com
Missing data is a significant problem found in data mining projects and data analysis.
Despite being a common problem, the missing data is dealt in a simplistic way and may lead …
Despite being a common problem, the missing data is dealt in a simplistic way and may lead …
Where's my data? evaluating visualizations with missing data
Many real-world datasets are incomplete due to factors such as data collection failures or
misalignments between fused datasets. Visualizations of incomplete datasets should allow …
misalignments between fused datasets. Visualizations of incomplete datasets should allow …
Visplause: Visual data quality assessment of many time series using plausibility checks
C Arbesser, F Spechtenhauser… - IEEE transactions on …, 2016 - ieeexplore.ieee.org
Trends like decentralized energy production lead to an exploding number of time series from
sensors and other sources that need to be assessed regarding their data quality (DQ). While …
sensors and other sources that need to be assessed regarding their data quality (DQ). While …
Predicting ICU mortality in rheumatic heart disease: comparison of XGBoost and logistic regression
Y Xu, D Han, T Huang, X Zhang, H Lu… - Frontiers in …, 2022 - frontiersin.org
Background Rheumatic heart disease (RHD) accounts for a large proportion of Intensive
Care Unit (ICU) deaths. Early prediction of RHD can help with timely and appropriate …
Care Unit (ICU) deaths. Early prediction of RHD can help with timely and appropriate …
Data visualization techniques for real-time information—A custom and dynamic dashboard for analyzing surveys' results
To achieve the most understandable and accurate display of information, a study on the
available techniques of data visualization for real-time information must be made …
available techniques of data visualization for real-time information must be made …
Estimation of social exclusion indicators from complex surveys: The R package laeken
Units sampled from nite populations typically come with di fferent inclusion probabilities.
Together with additional preprocessing steps of the raw data, this yields unequal sampling …
Together with additional preprocessing steps of the raw data, this yields unequal sampling …
Evaluating the use of uncertainty visualisations for imputations of data missing at random in scatterplots
Most real-world datasets contain missing values yet most exploratory data analysis (EDA)
systems only support visualising data points with complete cases. This omission may …
systems only support visualising data points with complete cases. This omission may …