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Developing Predictive Models to Anticipate Shunt Complications in 33,248 Pediatric Patients with Shunted Hydrocephalus Utilizing Machine Learning

INTRODUCTION: Hydrocephalus is a common pediatric neurosurgical pathology, typically treated with a ventricular shunt, yet approximately 30% of patients experience shunt failure within the first year after surgery. As a result, the objective of the present study was to validate a predictive model of...

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Autores principales: Shahrestani, Shane, Shlobin, Nathan, Gendreau, Julian L., Brown, Nolan J., Himstead, Alexander, Patel, Neal A., Pierzchajlo, Noah, Chakravarti, Sachiv, Lee, Darrin Jason, Chiarelli, Peter A., Bullis, Carli L., Chu, Jason
Formato: Online Artículo Texto
Lenguaje:English
Publicado: S. Karger AG 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10614444/
https://www.ncbi.nlm.nih.gov/pubmed/37393891
http://dx.doi.org/10.1159/000531754
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author Shahrestani, Shane
Shlobin, Nathan
Gendreau, Julian L.
Brown, Nolan J.
Himstead, Alexander
Patel, Neal A.
Pierzchajlo, Noah
Chakravarti, Sachiv
Lee, Darrin Jason
Chiarelli, Peter A.
Bullis, Carli L.
Chu, Jason
author_facet Shahrestani, Shane
Shlobin, Nathan
Gendreau, Julian L.
Brown, Nolan J.
Himstead, Alexander
Patel, Neal A.
Pierzchajlo, Noah
Chakravarti, Sachiv
Lee, Darrin Jason
Chiarelli, Peter A.
Bullis, Carli L.
Chu, Jason
author_sort Shahrestani, Shane
collection PubMed
description INTRODUCTION: Hydrocephalus is a common pediatric neurosurgical pathology, typically treated with a ventricular shunt, yet approximately 30% of patients experience shunt failure within the first year after surgery. As a result, the objective of the present study was to validate a predictive model of pediatric shunt complications with data retrieved from the Healthcare Cost and Utilization Project (HCUP) National Readmissions Database (NRD). METHODS: The HCUP NRD was queried from 2016 to 2017 for pediatric patients undergoing shunt placement using ICD-10 codes. Comorbidities present upon initial admission resulting in shunt placement, Johns Hopkins Adjusted Clinical Groups (JHACG) frailty-defining criteria, and Major Diagnostic Category (MDC) at admission classifications were obtained. The database was divided into training (n = 19,948), validation (n = 6,650), and testing (n = 6,650) datasets. Multivariable analysis was performed to identify significant predictors of shunt complications which were used to develop logistic regression models. Post hoc receiver operating characteristic (ROC) curves were created. RESULTS: A total of 33,248 pediatric patients aged 6.9 ± 5.7 years were included. Number of diagnoses during primary admission (OR: 1.05, 95% CI: 1.04–1.07) and initial neurological admission diagnoses (OR: 3.83, 95% CI: 3.33–4.42) positively correlated with shunt complications. Female sex (OR: 0.87, 95% CI: 0.76–0.99) and elective admissions (OR: 0.62, 95% CI: 0.53–0.72) negatively correlated with shunt complications. ROC curve for the regression model utilizing all significant predictors of readmission demonstrated area under the curve of 0.733, suggesting these factors are possible predictors of shunt complications in pediatric hydrocephalus. CONCLUSION: Efficacious and safe treatment of pediatric hydrocephalus is of paramount importance. Our machine learning algorithm delineated possible variables predictive of shunt complications with good predictive value.
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spelling pubmed-106144442023-10-31 Developing Predictive Models to Anticipate Shunt Complications in 33,248 Pediatric Patients with Shunted Hydrocephalus Utilizing Machine Learning Shahrestani, Shane Shlobin, Nathan Gendreau, Julian L. Brown, Nolan J. Himstead, Alexander Patel, Neal A. Pierzchajlo, Noah Chakravarti, Sachiv Lee, Darrin Jason Chiarelli, Peter A. Bullis, Carli L. Chu, Jason Pediatr Neurosurg Research Article INTRODUCTION: Hydrocephalus is a common pediatric neurosurgical pathology, typically treated with a ventricular shunt, yet approximately 30% of patients experience shunt failure within the first year after surgery. As a result, the objective of the present study was to validate a predictive model of pediatric shunt complications with data retrieved from the Healthcare Cost and Utilization Project (HCUP) National Readmissions Database (NRD). METHODS: The HCUP NRD was queried from 2016 to 2017 for pediatric patients undergoing shunt placement using ICD-10 codes. Comorbidities present upon initial admission resulting in shunt placement, Johns Hopkins Adjusted Clinical Groups (JHACG) frailty-defining criteria, and Major Diagnostic Category (MDC) at admission classifications were obtained. The database was divided into training (n = 19,948), validation (n = 6,650), and testing (n = 6,650) datasets. Multivariable analysis was performed to identify significant predictors of shunt complications which were used to develop logistic regression models. Post hoc receiver operating characteristic (ROC) curves were created. RESULTS: A total of 33,248 pediatric patients aged 6.9 ± 5.7 years were included. Number of diagnoses during primary admission (OR: 1.05, 95% CI: 1.04–1.07) and initial neurological admission diagnoses (OR: 3.83, 95% CI: 3.33–4.42) positively correlated with shunt complications. Female sex (OR: 0.87, 95% CI: 0.76–0.99) and elective admissions (OR: 0.62, 95% CI: 0.53–0.72) negatively correlated with shunt complications. ROC curve for the regression model utilizing all significant predictors of readmission demonstrated area under the curve of 0.733, suggesting these factors are possible predictors of shunt complications in pediatric hydrocephalus. CONCLUSION: Efficacious and safe treatment of pediatric hydrocephalus is of paramount importance. Our machine learning algorithm delineated possible variables predictive of shunt complications with good predictive value. S. Karger AG 2023-06-30 2023-09 /pmc/articles/PMC10614444/ /pubmed/37393891 http://dx.doi.org/10.1159/000531754 Text en © 2023 The Author(s). Published by S. Karger AG, Basel https://creativecommons.org/licenses/by-nc/4.0/This article is licensed under the Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC) (http://www.karger.com/Services/OpenAccessLicense). Usage and distribution for commercial purposes requires written permission.
spellingShingle Research Article
Shahrestani, Shane
Shlobin, Nathan
Gendreau, Julian L.
Brown, Nolan J.
Himstead, Alexander
Patel, Neal A.
Pierzchajlo, Noah
Chakravarti, Sachiv
Lee, Darrin Jason
Chiarelli, Peter A.
Bullis, Carli L.
Chu, Jason
Developing Predictive Models to Anticipate Shunt Complications in 33,248 Pediatric Patients with Shunted Hydrocephalus Utilizing Machine Learning
title Developing Predictive Models to Anticipate Shunt Complications in 33,248 Pediatric Patients with Shunted Hydrocephalus Utilizing Machine Learning
title_full Developing Predictive Models to Anticipate Shunt Complications in 33,248 Pediatric Patients with Shunted Hydrocephalus Utilizing Machine Learning
title_fullStr Developing Predictive Models to Anticipate Shunt Complications in 33,248 Pediatric Patients with Shunted Hydrocephalus Utilizing Machine Learning
title_full_unstemmed Developing Predictive Models to Anticipate Shunt Complications in 33,248 Pediatric Patients with Shunted Hydrocephalus Utilizing Machine Learning
title_short Developing Predictive Models to Anticipate Shunt Complications in 33,248 Pediatric Patients with Shunted Hydrocephalus Utilizing Machine Learning
title_sort developing predictive models to anticipate shunt complications in 33,248 pediatric patients with shunted hydrocephalus utilizing machine learning
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10614444/
https://www.ncbi.nlm.nih.gov/pubmed/37393891
http://dx.doi.org/10.1159/000531754
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