Efficient Novelty Detection Methods for Early Warning of Potential Fatal
Diseases
- URL: http://arxiv.org/abs/2208.04732v1
- Date: Sat, 6 Aug 2022 19:04:51 GMT
- Title: Efficient Novelty Detection Methods for Early Warning of Potential Fatal
Diseases
- Authors: S\`edjro Salomon Hotegni (1), Ernest Fokou\'e (2) ((1) African
Institute for Mathematical Sciences - Rwanda, (2) Rochester Institute of
Technology - United States)
- Abstract summary: Fatal diseases, as Critical Health Episodes (CHEs), represent real dangers for patients hospitalized in Intensive Care Units.
This study focused on building a highly effective early warning system for CHEs such as Acute Hypotensive Episodes and Tachycardia Episodes.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Fatal diseases, as Critical Health Episodes (CHEs), represent real dangers
for patients hospitalized in Intensive Care Units. These episodes can lead to
irreversible organ damage and death. Nevertheless, diagnosing them in time
would greatly reduce their inconvenience. This study therefore focused on
building a highly effective early warning system for CHEs such as Acute
Hypotensive Episodes and Tachycardia Episodes. To facilitate the precocity of
the prediction, a gap of one hour was considered between the observation
periods (Observation Windows) and the periods during which a critical event can
occur (Target Windows). The MIMIC II dataset was used to evaluate the
performance of the proposed system. This system first includes extracting
additional features using three different modes. Then, the feature selection
process allowing the selection of the most relevant features was performed
using the Mutual Information Gain feature importance. Finally, the
high-performance predictive model LightGBM was used to perform episode
classification. This approach called MIG-LightGBM was evaluated using five
different metrics: Event Recall (ER), Reduced Precision (RP), average
Anticipation Time (aveAT), average False Alarms (aveFA), and Event F1-score
(EF1-score). A method is therefore considered highly efficient for the early
prediction of CHEs if it exhibits not only a large aveAT but also a large
EF1-score and a low aveFA. Compared to systems using Extreme Gradient Boosting,
Support Vector Classification or Naive Bayes as a predictive model, the
proposed system was found to be highly dominant. It also confirmed its
superiority over the Layered Learning approach.
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