Prediction model for spinal cord injury in spinal tuberculosis patients using multiple machine learning algorithms: a multicentric study

被引:3
作者
Feng S. [1 ]
Wang S. [2 ]
Liu C. [1 ]
Wu S. [1 ]
Zhang B. [1 ,3 ]
Lu C. [4 ]
Huang C. [1 ]
Chen T. [1 ]
Zhou C. [1 ]
Zhu J. [1 ]
Chen J. [1 ]
Xue J. [1 ]
Wei W. [1 ]
Zhan X. [1 ]
机构
[1] Department of Spine and Osteopathy Ward, The First Affiliated Hospital of Guangxi Medical University, Guangxi, Nanning
[2] Department of Outpatient, General Hospital of Eastern Theater Command, Jiangsu, Nanjing
[3] Department of Spine Ward, Bei Jing Ji Shui Tan Hospital Gui Zhou Hospital, Guizhou, Guiyang
[4] Department of Spine and Osteopathy Ward, Bai Se People’s Hospital, Guangxi, Baise
关键词
Machine learning; Model deployment; Model interpretation; Predictive model; Spinal cord injury; Spinal tuberculosis;
D O I
10.1038/s41598-024-56711-0
中图分类号
学科分类号
摘要
Spinal cord injury (SCI) is a prevalent and serious complication among patients with spinal tuberculosis (STB) that can lead to motor and sensory impairment and potentially paraplegia. This research aims to identify factors associated with SCI in STB patients and to develop a clinically significant predictive model. Clinical data from STB patients at a single hospital were collected and divided into training and validation sets. Univariate analysis was employed to screen clinical indicators in the training set. Multiple machine learning (ML) algorithms were utilized to establish predictive models. Model performance was evaluated and compared using receiver operating characteristic (ROC) curves, area under the curve (AUC), calibration curve analysis, decision curve analysis (DCA), and precision-recall (PR) curves. The optimal model was determined, and a prospective cohort from two other hospitals served as a testing set to assess its accuracy. Model interpretation and variable importance ranking were conducted using the DALEX R package. The model was deployed on the web by using the Shiny app. Ten clinical characteristics were utilized for the model. The random forest (RF) model emerged as the optimal choice based on the AUC, PRs, calibration curve analysis, and DCA, achieving a test set AUC of 0.816. Additionally, MONO was identified as the primary predictor of SCI in STB patients through variable importance ranking. The RF predictive model provides an efficient and swift approach for predicting SCI in STB patients. © The Author(s) 2024.
引用
收藏
相关论文
共 50 条
  • [31] Accurate Differentiation of Spinal Tuberculosis and Spinal Metastases Using MR-Based Deep Learning Algorithms
    Duan, Shuo
    Dong, Weijie
    Hua, Yichun
    Zheng, Yali
    Ren, Zengsuonan
    Cao, Guanmei
    Wu, Fangfang
    Rong, Tianhua
    Liu, Baoge
    INFECTION AND DRUG RESISTANCE, 2023, 16 : 4325 - 4334
  • [32] Clinical prediction model for acute inpatient complications after traumatic cervical spinal cord injury: a subanalysis from the Surgical Timing in Acute Spinal Cord Injury Study
    Wilson, Jefferson R.
    Arnold, Paul M.
    Singh, Anoushka
    Kalsi-Ryan, Sukhvinder
    Fehlings, Michael G.
    JOURNAL OF NEUROSURGERY-SPINE, 2012, 17 : 46 - 51
  • [33] Sacral Neurophysiologic Study in Patients With Chronic Spinal Cord Injury
    Podnar, Simon
    NEUROUROLOGY AND URODYNAMICS, 2011, 30 (04) : 587 - 592
  • [34] Mechanical Ventilation after Traumatic Spinal Cord Injury-A Multicentric Cohort Study-based Prediction Model for Weaning Success: The BICYCLE Score
    Schreiber, Annia F.
    Garlasco, Jacopo
    Urner, Martin
    McFarlan, Amanda
    Baker, Andrew
    Rigamonti, Andrea
    Singh, Jeffrey M.
    Kutsogiannis, Demetrios James
    Brochard, Laurent J.
    ANNALS OF THE AMERICAN THORACIC SOCIETY, 2023, 20 (08) : 1156 - 1165
  • [35] Preventing OsteoPorosis in Spinal Cord Injury (POPSCI) Study-Early Zoledronic Acid Infusion in Patients with Acute Spinal Cord Injury
    Kumar, Shejil
    Doyle, Jean
    Wood, Cameron
    Heriseanu, Roxana
    Weber, Gerard
    Nier, Lianne
    Middleton, James W.
    March, Lyn
    Clifton-Bligh, Roderick J.
    Girgis, Christian M.
    CALCIFIED TISSUE INTERNATIONAL, 2024, 115 (05) : 611 - 623
  • [36] Construction and Verification of Urinary Tract Infection Prediction Model for Hospitalized Rehabilitation Patients with Spinal Cord Injury
    Zhao, Fangfang
    Zhang, Lixiang
    Chen, Xia
    Lei, Mengling
    Sun, Liai
    Ma, Lina
    Wang, Cheng
    WORLD NEUROSURGERY, 2024, 188 : E396 - E404
  • [37] Clinical Prediction Rule for Heterotopic Ossification of the Hip in Patients with Spinal Cord Injury
    Suero, Eduardo M.
    Meindl, Renate
    Schildhauer, Thomas A.
    Citak, Mustafa
    SPINE, 2018, 43 (22) : 1572 - 1578
  • [38] Development of Machine Learning Algorithms for Prediction of 5-Year Spinal Chordoma Survival
    Karhade, Aditya, V
    Thio, Quirina
    Ogink, Paul
    Kim, Jason
    Lozano-Calderon, Santiago
    Raskin, Kevin
    Schwab, Joseph H.
    WORLD NEUROSURGERY, 2018, 119 : E842 - E847
  • [39] Crop Prediction Model Using Machine Learning Algorithms
    Elbasi, Ersin
    Zaki, Chamseddine
    Topcu, Ahmet E.
    Abdelbaki, Wiem
    Zreikat, Aymen I.
    Cina, Elda
    Shdefat, Ahmed
    Saker, Louai
    APPLIED SCIENCES-BASEL, 2023, 13 (16):
  • [40] SPINAL-CORD INJURY POTENTIAL USING AN EXPERIMENTAL BIOMECHANICAL MODEL
    PINTAR, FA
    YOGANANDAN, N
    VOO, LM
    DROESE, K
    REINARTZ, J
    SCHLICK, M
    HOLLOWELL, JP
    SANCES, A
    JOURNAL OF NEUROSURGERY, 1995, 82 (02) : A367 - A368