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Machine learning predicts risk of cerebrospinal fluid shunt failure in children: a study from the hydrocephalus clinical research network
Journal article   Peer reviewed

Machine learning predicts risk of cerebrospinal fluid shunt failure in children: a study from the hydrocephalus clinical research network

Andrew T. Hale, Jay Riva-Cambrin, John C. Wellons, Eric M. Jackson, John R. W. Kestle, Robert P. Naftel, Todd C. Hankinson, Chevis N. Shannon, C. Rozzelle, J. Drake, …
Child's Nervous System, Vol.37(5)
2021

Abstract

Adult Cerebrospinal Fluid Shunts Child Humans Hydrocephalus Infant Machine Learning Retrospective Studies Ventriculostomy Young Adult antibiotic agent Article artificial intelligence artificial neural network Bayesian learning child clinical research cohort analysis controlled study diagnostic test accuracy study female gestational age human hydrocephalus k nearest neighbor kernel method machine learning major clinical study male patient registry pediatric patient peroperative echography prediction retrospective study shunt failure shunt infection surgeon volume third ventriculostomy adult adverse event cerebrospinal fluid shunting diagnostic imaging infant machine learning ventriculostomy young adult

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