An Approach for Prediction of Acute Hypotensive Episodes via the Hilbert-Huang Transform and Multiple Genetic Programming Classifier
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- @Article{journals/ijdsn/JiangLHF15,
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author = "Dazhi Jiang and Liyu Li and Bo Hu and Zhun Fan",
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title = "An Approach for Prediction of Acute Hypotensive
Episodes via the Hilbert-Huang Transform and Multiple
Genetic Programming Classifier",
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journal = "International Journal of Distributed Sensor Networks",
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year = "2015",
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volume = "11",
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number = "8",
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pages = "354807:1--354807:11",
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1155/2015/354807",
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abstract = "Acute hypotensive episodes (AHEs) are one of the
hemodynamic instabilities with high mortality rate that
is frequent among many groups of patients. This study
presents a methodology to predict AHE for ICU patients
based on big data time series. The experimental data we
used is mean arterial pressure (MAP), which is
transformed from arterial blood pressure (ABP) data.
Then, the Hilbert-Huang transform method was used to
calculate patient's MAP time series and some features,
which are the bandwidth of the amplitude modulation,
the frequency modulation, and the power of intrinsic
mode function (IMF), were extracted. Finally, the
multiple genetic programming (Multi-GP) is used to
build the classification models for detection of AHE.
The methodology is applied in the datasets of the 10th
PhysioNet and Computers Cardiology Challenge in 2009
and Multiparameter Intelligent Monitoring for Intensive
Care (MIMIC-II). We achieve the accuracy of
83.33percent in the training set and 91.89percent in
the testing set of the 2009 challenge's dataset and the
84.13percent in the training set and 82.41percent in
the testing set of the MIMIC-II dataset.",
- }
Genetic Programming entries for
Dazhi Jiang
Liyu Li
Bo Hu
Zhun Fan
Citations