Machine learning-based preoperative predictive analytics for lumbar spinal stenosis

被引:55
|
作者
Siccoli, Alessandro [1 ]
de Wispelaere, Marlies P. [2 ]
Schroder, Marc L. [1 ]
Staartjes, Victor E. [1 ,3 ,4 ]
机构
[1] Bergman Clin, Dept Neurosurg, Amsterdam, Netherlands
[2] Bergman Clin, Dept Clin Informat, Amsterdam, Netherlands
[3] Vrije Univ Amsterdam, Amsterdam UMC, Neurosurg, Amsterdam Movement Sci, Amsterdam, Netherlands
[4] Univ Zurich, Univ Hosp Zurich, Clin Neurosci Ctr, Dept Neurosurg, Zurich, Switzerland
关键词
machine learning; outcome prediction; lumbar spinal stenosis; patient-reported outcome; decompression; laminectomy; FUSION; SURGERY; PAIN; SPONDYLOLISTHESIS; DECOMPRESSION; DISABILITY; OUTCOMES;
D O I
10.3171/2019.2.FOCUS18723
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
OBJECTIVE Patient-reported outcome measures (PROMs) following decompression surgery for lumbar spinal stenosis (LSS) demonstrate considerable heterogeneity. Individualized prediction tools can provide valuable insights for shared decision-making. The authors aim to evaluate the feasibility of predicting short-and long-term PROMs, reoperations, and perioperative parameters by machine learning (ML) methods. METHODS Data were derived from a prospective registry. All patients had undergone single-or multilevel mini-open facet-sparing decompression for LSS. The prediction models were trained using various ML-based algorithms to predict the endpoints of interest. Models were selected by area under the receiver operating characteristic curve (AUC). The endpoints were dichotomized by minimum clinically important difference (MCID) and included 6-week and 12-month numeric rating scales for back pain (NRS-BP) and leg pain (NRS-LP) severity and the Oswestry Disability Index (ODI), as well as prolonged surgery (> 45 minutes), extended length of hospital stay (> 28 hours), and reoperations. RESULTS A total of 635 patients were included. The average age was 62 +/- 10 years, and 333 patients (52%) were male. At 6 weeks, MCID was seen in 63%, 76%, and 61% of patients for ODI, NRS-LP, and NRS-BP, respectively. At internal validation, the models predicted MCID in these variables with accuracies of 69%, 76%, and 85%, and with AUCs of 0.75, 0.79, and 0.92. At 12 months, 66%, 63%, and 51% of patients reported MCID; the observed accuracies were 62%, 74%, and 66%, with AUCs of 0.68, 0.72, and 0.79. Reoperations occurred in 60 patients (9.5%), of which 27 (4.3%) occurred at the index level. Overall and index-level reoperations were predicted with 69% and 63% accuracy, respectively, and with AUCs of 0.66 and 0.61. In 15%, a length of surgery greater than 45 minutes was observed and predicted with 78% accuracy and AUC of 0.54. Only 15% of patients were admitted to the hospital for longer than 28 hours. The developed ML-based model enabled prediction of extended hospital stay with an accuracy of 77% and AUC of 0.58. CONCLUSIONS Preoperative prediction of a range of clinically relevant endpoints in decompression surgery for LSS using ML is feasible, and may enable enhanced informed patient consent and personalized shared decision-making. Access to individualized preoperative predictive analytics for outcome and treatment risks may represent a further step in the evolution of surgical care for patients with LSS.
引用
收藏
页数:9
相关论文
共 50 条
  • [31] Machine learning-based predictive modeling of depression in hypertensive populations
    Lee, Chiyoung
    Kim, Heewon
    [J]. PLOS ONE, 2022, 17 (07):
  • [32] Predictive Maintenance in Building Facilities: A Machine Learning-Based Approach
    Bouabdallaoui, Yassine
    Lafhaj, Zoubeir
    Yim, Pascal
    Ducoulombier, Laure
    Bennadji, Belkacem
    [J]. SENSORS, 2021, 21 (04) : 1 - 15
  • [33] Machine learning-based predictive modeling of contact heat transfer
    Anh Tuan Vu
    Gulati, Shrey
    Vogel, Paul-Alexander
    Grunwald, Tim
    Bergs, Thomas
    [J]. INTERNATIONAL JOURNAL OF HEAT AND MASS TRANSFER, 2021, 174
  • [34] Machine learning-based predictive modelling for the enhancement of wine quality
    Khushboo Jain
    Keshav Kaushik
    Sachin Kumar Gupta
    Shubham Mahajan
    Seifedine Kadry
    [J]. Scientific Reports, 13
  • [35] Machine learning-based predictive model for prevention of metabolic syndrome
    Shin, Hyunseok
    Shim, Simon
    Oh, Sejong
    [J]. PLOS ONE, 2023, 18 (06):
  • [36] Machine Learning-Based Predictive Modeling of Complications of Chronic Diabetes
    Derevitskii, Ilia, V
    Kovalchuk, Sergey, V
    [J]. 9TH INTERNATIONAL YOUNG SCIENTISTS CONFERENCE IN COMPUTATIONAL SCIENCE, YSC2020, 2020, 178 : 274 - 283
  • [37] Machine learning-based predictive modelling for the enhancement of wine quality
    Jain, Khushboo
    Kaushik, Keshav
    Gupta, Sachin Kumar
    Mahajan, Shubham
    Kadry, Seifedine
    [J]. SCIENTIFIC REPORTS, 2023, 13 (01)
  • [38] Machine Learning-Based Predictive Models for Detection of Cardiovascular Diseases
    Ogunpola, Adedayo
    Saeed, Faisal
    Basurra, Shadi
    Albarrak, Abdullah M.
    Qasem, Sultan Noman
    [J]. DIAGNOSTICS, 2024, 14 (02)
  • [39] A machine learning-based predictive approach in evaluating consumer behavior
    Bhoyar, Sanjay
    Bhoyar, Punam
    Shah, Mushtaq Ahmad
    [J]. JOURNAL OF STATISTICS AND MANAGEMENT SYSTEMS, 2023, 26 (08) : 1955 - 1963
  • [40] Predictive analytics for demand forecasting: A deep learning-based decision support system
    Punia, Sushil
    Shankar, Sonali
    [J]. KNOWLEDGE-BASED SYSTEMS, 2022, 258