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Sex Differences in Predictors of Seizure in Contrast-Enhancing Gliomas at Clinical Presentation: A Network Approach

Authors :
Leland S. Hu
Peter Canoll
Akanksha Sharma
Sara Ranjbar
Aditya Khurana
Alyx B. Porter
Andrea Hawkins-Daarud
Sandra K. Johnston
Kathleen M. Egan
Priya Kumthekar
Maciej M. Mrugala
Paula Whitmire
Joshua B. Rubin
Kristin R. Swanson
Publication Year :
2019
Publisher :
Cold Spring Harbor Laboratory, 2019.

Abstract

BackgroundBrain tumor related epilepsy (BTE) is a major co-morbidity related to the management of patients with brain cancer. Despite published practice guidelines recommending against anti-epileptic drug (AED) utilization in patients with gliomas, there is heterogeneity in prescription practices of AEDs in these patients. In an attempt to impact BTE management, we statistically analyzed clinically relevant attributes (sex, age, tumor size, tumor growth kinetics, and tumor location) pertaining to seizure at presentation and used them to build a computational machine learning model to predict the probability of a seizure (at presentation).MethodsFrom our clinical data repository, we identified 223 patients (females, n=86; males, n=137) with pathologically-determined glioma and known seizure status at clinical presentation. Non-parametric and Fisher’s Exact tests were used to identify statistical differences in clinical characteristics. We utilized a random forest machine learning method for generating our predictive models by entire cohort and separated by male and female.FindingsPatients were divided into those that presented with seizure (SP, n=96, 43%; F, n= 28; M, n= 68) and those that presented without seizure (nSP, n=127, 57%, F n=58, M n=69). Females presented with seizures significantly less often than males (x2=6·28, p=0·01). SP patients had significantly smaller T1Gd radius compared to nSP (SP 11·30mm, nSP 18.66mm, pInterpretationDespite heterogeneity across our patient cohort, there is strong evidence of a role for patient sex, tumor size, tumor invasion, and patient age in predicting the incidence of seizures at diagnosis. Future studies, with prospectively detailed data collection, may provide clearer insights into the incidence of seizures through a patient’s treatment course.

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....2a2135183dfd696f7d71a9753e2dffd6
Full Text :
https://doi.org/10.1101/708032