2021
DOI: 10.34172/icnj.2021.28
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Machine Learning-Based Clinical Adjusted Selection of Predicting Risk Factors for Shunt Infection in Children

Abstract: Background: Shunt Infection is a common complication of shunt insertion in children which can lead to bad neuro-developmental conditions and impose a considerable economic burden for the health care system. So, identifying predictive factors of shunt infection could help us in the proper improvement of this deteriorating condition. Methods: In this study, related risk factors of 68 patients with history of shunt infection and 80 matched controls without any history of shunt infection, who were all operated in … Show more

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