• Spine · Jun 2024

    Early prognostication of critical patients with spinal cord injury: A machine learning study with 1485 cases.

    • Guoxin Fan, Huaqing Liu, Sheng Yang, Libo Luo, Mao Pang, Bin Liu, Liangming Zhang, Lanqing Han, Limin Rong, and Xiang Liao.
    • Department of Pain Medicine, Huazhong University of Science and Technology Union Shenzhen Hospital, Shenzhen, China.
    • Spine. 2024 Jun 1; 49 (11): 754762754-762.

    Study DesignA retrospective case-series.ObjectiveThe study aims to use machine learning to predict the discharge destination of spinal cord injury (SCI) patients in the intensive care unit.Summary Of Background DataPrognostication following SCI is vital, especially for critical patients who need intensive care.Patients And MethodsClinical data of patients diagnosed with SCI were extracted from a publicly available intensive care unit database. The first recorded data of the included patients were used to develop a total of 98 machine learning classifiers, seeking to predict discharge destination (eg, death, further medical care, home, etc.). The microaverage area under the curve (AUC) was the main indicator to assess discrimination. The best average-AUC classifier and the best death-sensitivity classifier were integrated into an ensemble classifier. The discrimination of the ensemble classifier was compared with top death-sensitivity classifiers and top average-AUC classifiers. In addition, prediction consistency and clinical utility were also assessed.ResultsA total of 1485 SCI patients were included. The ensemble classifier had a microaverage AUC of 0.851, which was only slightly inferior to the best average-AUC classifier ( P =0.10). The best average-AUC classifier death sensitivity was much lower than that of the ensemble classifier. The ensemble classifier had a death sensitivity of 0.452, which was inferior to the top 8 death-sensitivity classifiers, whose microaverage AUC were inferior to the ensemble classifier ( P <0.05). In addition, the ensemble classifier demonstrated a comparable Brier score and superior net benefit in the DCA when compared with the performance of the origin classifiers.ConclusionsThe ensemble classifier shows an overall superior performance in predicting discharge destination, considering discrimination ability, prediction consistency, and clinical utility. This classifier system may aid in the clinical management of critical SCI patients in the early phase following injury.Level Of EvidenceLevel 3.Copyright © 2023 Wolters Kluwer Health, Inc. All rights reserved.

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