Predicting 30-Day Non-Seizure Outcomes Following Temporal Lobectomy with Personalized Machine Learning Models
- PMID: 38006940
- DOI: 10.1016/j.wneu.2023.11.077
Predicting 30-Day Non-Seizure Outcomes Following Temporal Lobectomy with Personalized Machine Learning Models
Abstract
Background: Temporal lobe epilepsy is the most common reason behind drug-resistant seizures and temporal lobectomy (TL) is performed after all other efforts have been taken for a Temporal lobe epilepsy. Our study aims to develop multiple machine learning (ML) models capable of predicting postoperative outcomes following TL surgery.
Methods: Data from the American College of Surgeons National Surgical Quality Improvement Program database identified patients who underwent TL surgery. We focused on 3 outcomes: prolonged length of stay (LOS), nonhome discharges, and 30-day readmissions. Six ML algorithms, TabPFN, XGBoost, LightGBM, Support Vector Machine, Random Forest, and Logistic Regression, coupled with the Optuna optimization library for hyperparameter tuning, were tested. Models with the highest area under the receiver operating characteristic (AUROC) values were included in the web application. SHapley Additive exPlanations was used to evaluate importance of predictor variables.
Results: Our analysis included 423 patients. Of these patients, 111 (26.2%) experienced prolonged LOS, 33 (7.8%) had nonhome discharges, and 29 (6.9%) encountered 30-day readmissions. The top-performing models for each outcome were those built with the Random Forest algorithm. The Random Forest models yielded AUROCs of 0.868, 0.804, and 0.742 in predicting prolonged LOS, nonhome discharges, and 30-day readmissions, respectively.
Conclusions: Our study uses ML to forecast adverse postoperative outcomes following TL. We developed accessible predictive models that enhance prognosis prediction for TL surgery. Making ML models available for this purpose represents a significant advancement in shifting toward a more patient-centric, data-driven paradigm.
Keywords: Artificial intelligence; Epilepsy surgery; Machine learning; Outcome prediction; Personalized medicine; Temporal lobectomy; Web application.
Copyright © 2023. Published by Elsevier Inc.
Similar articles
-
Personalized Prognosis with Machine Learning Models for Predicting In-Hospital Outcomes Following Intracranial Meningioma Resections.World Neurosurg. 2024 Feb;182:e210-e230. doi: 10.1016/j.wneu.2023.11.081. Epub 2023 Nov 24. World Neurosurg. 2024. PMID: 38006936
-
Machine learning models on a web application to predict short-term postoperative outcomes following anterior cervical discectomy and fusion.BMC Musculoskelet Disord. 2024 May 21;25(1):401. doi: 10.1186/s12891-024-07528-5. BMC Musculoskelet Disord. 2024. PMID: 38773464 Free PMC article.
-
Precision medicine for traumatic cervical spinal cord injuries: accessible and interpretable machine learning models to predict individualized in-hospital outcomes.Spine J. 2023 Dec;23(12):1750-1763. doi: 10.1016/j.spinee.2023.08.009. Epub 2023 Aug 23. Spine J. 2023. PMID: 37619871
-
Machine Learning-Driven Prognostication in Traumatic Subdural Hematoma: Development of a Predictive Web Application.Neurosurg Pract. 2024 Feb 21;5(1):e00079. doi: 10.1227/neuprac.0000000000000079. eCollection 2024 Mar. Neurosurg Pract. 2024. PMID: 39957853 Free PMC article.
-
The Predictive Abilities of Machine Learning Algorithms in Patients with Thoracolumbar Spinal Cord Injuries.World Neurosurg. 2024 Feb;182:e67-e90. doi: 10.1016/j.wneu.2023.11.043. Epub 2023 Nov 28. World Neurosurg. 2024. PMID: 38030070
MeSH terms
LinkOut - more resources
Full Text Sources