Cargando…

Using machine learning and big data for the prediction of venous thromboembolic events after spine surgery: A single-center retrospective analysis of multiple models on a cohort of 6869 patients

OBJECTIVE: Venous thromboembolic event (VTE) after spine surgery is a rare but potentially devastating complication. With the advent of machine learning, an opportunity exists for more accurate prediction of such events to aid in prevention and treatment. METHODS: Seven models were screened using 10...

Descripción completa

Detalles Bibliográficos
Autores principales: Hopkins, Benjamin S., Cloney, Michael B., Dhillon, Ekamjeet S., Texakalidis, Pavlos, Dallas, Jonathan, Nguyen, Vincent N., Ordon, Matthew, Tecle, Najib El, Chen, Thomas C., Hsieh, Patrick C., Liu, John C., Koski, Tyler R., Dahdaleh, Nader S.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wolters Kluwer - Medknow 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10583792/
https://www.ncbi.nlm.nih.gov/pubmed/37860027
http://dx.doi.org/10.4103/jcvjs.jcvjs_69_23
_version_ 1785122624840400896
author Hopkins, Benjamin S.
Cloney, Michael B.
Dhillon, Ekamjeet S.
Texakalidis, Pavlos
Dallas, Jonathan
Nguyen, Vincent N.
Ordon, Matthew
Tecle, Najib El
Chen, Thomas C.
Hsieh, Patrick C.
Liu, John C.
Koski, Tyler R.
Dahdaleh, Nader S.
author_facet Hopkins, Benjamin S.
Cloney, Michael B.
Dhillon, Ekamjeet S.
Texakalidis, Pavlos
Dallas, Jonathan
Nguyen, Vincent N.
Ordon, Matthew
Tecle, Najib El
Chen, Thomas C.
Hsieh, Patrick C.
Liu, John C.
Koski, Tyler R.
Dahdaleh, Nader S.
author_sort Hopkins, Benjamin S.
collection PubMed
description OBJECTIVE: Venous thromboembolic event (VTE) after spine surgery is a rare but potentially devastating complication. With the advent of machine learning, an opportunity exists for more accurate prediction of such events to aid in prevention and treatment. METHODS: Seven models were screened using 108 database variables and 62 preoperative variables. These models included deep neural network (DNN), DNN with synthetic minority oversampling technique (SMOTE), logistic regression, ridge regression, lasso regression, simple linear regression, and gradient boosting classifier. Relevant metrics were compared between each model. The top four models were selected based on area under the receiver operator curve; these models included DNN with SMOTE, linear regression, lasso regression, and ridge regression. Separate random sampling of each model was performed 1000 additional independent times using a randomly generated training/testing distribution. Variable weights and magnitudes were analyzed after sampling. RESULTS: Using all patient-related variables, DNN using SMOTE was the top-performing model in predicting postoperative VTE after spinal surgery (area under the curve [AUC] =0.904), followed by lasso regression (AUC = 0.894), ridge regression (AUC = 0.873), and linear regression (AUC = 0.864). When analyzing a subset of only preoperative variables, the top-performing models were lasso regression (AUC = 0.865) and DNN with SMOTE (AUC = 0.864), both of which outperform any currently published models. Main model contributions relied heavily on variables associated with history of thromboembolic events, length of surgical/anesthetic time, and use of postoperative chemoprophylaxis. CONCLUSIONS: The current study provides promise toward machine learning methods geared toward predicting postoperative complications after spine surgery. Further study is needed in order to best quantify and model real-world risk for such events.
format Online
Article
Text
id pubmed-10583792
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Wolters Kluwer - Medknow
record_format MEDLINE/PubMed
spelling pubmed-105837922023-10-19 Using machine learning and big data for the prediction of venous thromboembolic events after spine surgery: A single-center retrospective analysis of multiple models on a cohort of 6869 patients Hopkins, Benjamin S. Cloney, Michael B. Dhillon, Ekamjeet S. Texakalidis, Pavlos Dallas, Jonathan Nguyen, Vincent N. Ordon, Matthew Tecle, Najib El Chen, Thomas C. Hsieh, Patrick C. Liu, John C. Koski, Tyler R. Dahdaleh, Nader S. J Craniovertebr Junction Spine Original Article OBJECTIVE: Venous thromboembolic event (VTE) after spine surgery is a rare but potentially devastating complication. With the advent of machine learning, an opportunity exists for more accurate prediction of such events to aid in prevention and treatment. METHODS: Seven models were screened using 108 database variables and 62 preoperative variables. These models included deep neural network (DNN), DNN with synthetic minority oversampling technique (SMOTE), logistic regression, ridge regression, lasso regression, simple linear regression, and gradient boosting classifier. Relevant metrics were compared between each model. The top four models were selected based on area under the receiver operator curve; these models included DNN with SMOTE, linear regression, lasso regression, and ridge regression. Separate random sampling of each model was performed 1000 additional independent times using a randomly generated training/testing distribution. Variable weights and magnitudes were analyzed after sampling. RESULTS: Using all patient-related variables, DNN using SMOTE was the top-performing model in predicting postoperative VTE after spinal surgery (area under the curve [AUC] =0.904), followed by lasso regression (AUC = 0.894), ridge regression (AUC = 0.873), and linear regression (AUC = 0.864). When analyzing a subset of only preoperative variables, the top-performing models were lasso regression (AUC = 0.865) and DNN with SMOTE (AUC = 0.864), both of which outperform any currently published models. Main model contributions relied heavily on variables associated with history of thromboembolic events, length of surgical/anesthetic time, and use of postoperative chemoprophylaxis. CONCLUSIONS: The current study provides promise toward machine learning methods geared toward predicting postoperative complications after spine surgery. Further study is needed in order to best quantify and model real-world risk for such events. Wolters Kluwer - Medknow 2023 2023-09-18 /pmc/articles/PMC10583792/ /pubmed/37860027 http://dx.doi.org/10.4103/jcvjs.jcvjs_69_23 Text en Copyright: © 2023 Journal of Craniovertebral Junction and Spine https://creativecommons.org/licenses/by-nc-sa/4.0/This is an open access journal, and articles are distributed under the terms of the Creative Commons Attribution-NonCommercial-ShareAlike 4.0 License, which allows others to remix, tweak, and build upon the work non-commercially, as long as appropriate credit is given and the new creations are licensed under the identical terms.
spellingShingle Original Article
Hopkins, Benjamin S.
Cloney, Michael B.
Dhillon, Ekamjeet S.
Texakalidis, Pavlos
Dallas, Jonathan
Nguyen, Vincent N.
Ordon, Matthew
Tecle, Najib El
Chen, Thomas C.
Hsieh, Patrick C.
Liu, John C.
Koski, Tyler R.
Dahdaleh, Nader S.
Using machine learning and big data for the prediction of venous thromboembolic events after spine surgery: A single-center retrospective analysis of multiple models on a cohort of 6869 patients
title Using machine learning and big data for the prediction of venous thromboembolic events after spine surgery: A single-center retrospective analysis of multiple models on a cohort of 6869 patients
title_full Using machine learning and big data for the prediction of venous thromboembolic events after spine surgery: A single-center retrospective analysis of multiple models on a cohort of 6869 patients
title_fullStr Using machine learning and big data for the prediction of venous thromboembolic events after spine surgery: A single-center retrospective analysis of multiple models on a cohort of 6869 patients
title_full_unstemmed Using machine learning and big data for the prediction of venous thromboembolic events after spine surgery: A single-center retrospective analysis of multiple models on a cohort of 6869 patients
title_short Using machine learning and big data for the prediction of venous thromboembolic events after spine surgery: A single-center retrospective analysis of multiple models on a cohort of 6869 patients
title_sort using machine learning and big data for the prediction of venous thromboembolic events after spine surgery: a single-center retrospective analysis of multiple models on a cohort of 6869 patients
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10583792/
https://www.ncbi.nlm.nih.gov/pubmed/37860027
http://dx.doi.org/10.4103/jcvjs.jcvjs_69_23
work_keys_str_mv AT hopkinsbenjamins usingmachinelearningandbigdataforthepredictionofvenousthromboemboliceventsafterspinesurgeryasinglecenterretrospectiveanalysisofmultiplemodelsonacohortof6869patients
AT cloneymichaelb usingmachinelearningandbigdataforthepredictionofvenousthromboemboliceventsafterspinesurgeryasinglecenterretrospectiveanalysisofmultiplemodelsonacohortof6869patients
AT dhillonekamjeets usingmachinelearningandbigdataforthepredictionofvenousthromboemboliceventsafterspinesurgeryasinglecenterretrospectiveanalysisofmultiplemodelsonacohortof6869patients
AT texakalidispavlos usingmachinelearningandbigdataforthepredictionofvenousthromboemboliceventsafterspinesurgeryasinglecenterretrospectiveanalysisofmultiplemodelsonacohortof6869patients
AT dallasjonathan usingmachinelearningandbigdataforthepredictionofvenousthromboemboliceventsafterspinesurgeryasinglecenterretrospectiveanalysisofmultiplemodelsonacohortof6869patients
AT nguyenvincentn usingmachinelearningandbigdataforthepredictionofvenousthromboemboliceventsafterspinesurgeryasinglecenterretrospectiveanalysisofmultiplemodelsonacohortof6869patients
AT ordonmatthew usingmachinelearningandbigdataforthepredictionofvenousthromboemboliceventsafterspinesurgeryasinglecenterretrospectiveanalysisofmultiplemodelsonacohortof6869patients
AT teclenajibel usingmachinelearningandbigdataforthepredictionofvenousthromboemboliceventsafterspinesurgeryasinglecenterretrospectiveanalysisofmultiplemodelsonacohortof6869patients
AT chenthomasc usingmachinelearningandbigdataforthepredictionofvenousthromboemboliceventsafterspinesurgeryasinglecenterretrospectiveanalysisofmultiplemodelsonacohortof6869patients
AT hsiehpatrickc usingmachinelearningandbigdataforthepredictionofvenousthromboemboliceventsafterspinesurgeryasinglecenterretrospectiveanalysisofmultiplemodelsonacohortof6869patients
AT liujohnc usingmachinelearningandbigdataforthepredictionofvenousthromboemboliceventsafterspinesurgeryasinglecenterretrospectiveanalysisofmultiplemodelsonacohortof6869patients
AT koskitylerr usingmachinelearningandbigdataforthepredictionofvenousthromboemboliceventsafterspinesurgeryasinglecenterretrospectiveanalysisofmultiplemodelsonacohortof6869patients
AT dahdalehnaders usingmachinelearningandbigdataforthepredictionofvenousthromboemboliceventsafterspinesurgeryasinglecenterretrospectiveanalysisofmultiplemodelsonacohortof6869patients