An Improvised Classification Model for Predicting Delirium
- PMID: 31438234
- DOI: 10.3233/SHTI190537
An Improvised Classification Model for Predicting Delirium
Abstract
With the vast increase of digital healthcare data, there is an opportunity to mine the data for understanding inherent health patterns. Although machine-learning techniques demonstrated their applications in healthcare to answer several questions, there is still room for improvement in every aspect. In this paper, we are demonstrating a method that improves the performance of a delirium prediction model using random forest in combination with logistic regression.
Keywords: Algorithms; Delirium; Logistic Models.
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