Process Mining Model to Predict Mortality in Paralytic Ileus Patients
- URL: http://arxiv.org/abs/2108.01267v1
- Date: Tue, 3 Aug 2021 03:09:13 GMT
- Title: Process Mining Model to Predict Mortality in Paralytic Ileus Patients
- Authors: Maryam Pishgar, Martha Razo, Julian Theis, and Houshang Darabi
- Abstract summary: Paralytic Ileus (PI) patients are at high risk of death when admitted to the Intensive care unit (ICU), with mortality as high as 40%.
This paper demonstrates performance improvements in predicting the mortality of ICU patients diagnosed with PI after 24 hours of being admitted.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Paralytic Ileus (PI) patients are at high risk of death when admitted to the
Intensive care unit (ICU), with mortality as high as 40\%. There is minimal
research concerning PI patient mortality prediction. There is a need for more
accurate prediction modeling for ICU patients diagnosed with PI. This paper
demonstrates performance improvements in predicting the mortality of ICU
patients diagnosed with PI after 24 hours of being admitted. The proposed
framework, PMPI(Process Mining Model to predict mortality of PI patients), is a
modification of the work used for prediction of in-hospital mortality for ICU
patients with diabetes. PMPI demonstrates similar if not better performance
with an Area under the ROC Curve (AUC) score of 0.82 compared to the best
results of the existing literature. PMPI uses patient medical history, the time
related to the events, and demographic information for prediction. The PMPI
prediction framework has the potential to help medical teams in making better
decisions for treatment and care for ICU patients with PI to increase their
life expectancy.
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