Feature Engineering Combined with 1 D Convolutional Neural Network for Improved Mortality Prediction
The intensive care units (ICUs) are responsible for generating a wealth of useful data in the form of Electronic Health Record (EHR). This data allows for the development of a prediction tool with perfect knowledge backing. We aimed to build a mortality prediction model on 2012 Physionet Challenge m...
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Zusammenfassung: | The intensive care units (ICUs) are responsible for generating a wealth of
useful data in the form of Electronic Health Record (EHR). This data allows for
the development of a prediction tool with perfect knowledge backing. We aimed
to build a mortality prediction model on 2012 Physionet Challenge mortality
prediction database of 4000 patients admitted in ICU. The challenges in the
dataset, such as high dimensionality, imbalanced distribution, and missing
values were tackled with analytical methods and tools via feature engineering
and new variable construction. The objective of the research is to utilize the
relations among the clinical variables and construct new variables which would
establish the effectiveness of 1-Dimensional Convolutional Neural Network (1- D
CNN) with constructed features. Its performance with the traditional machine
learning algorithms like XGBoost classifier, Support Vector Machine (SVM),
K-Neighbours Classifier (K-NN), and Random Forest Classifier (RF) is compared
for Area Under Curve (AUC). The investigation reveals the best AUC of 0.848
using 1-D CNN model. |
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DOI: | 10.48550/arxiv.1912.03789 |