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
  • [21] Machine Learning-Based Predictive Modeling of Postpartum Depression
    Shin, Dayeon
    Lee, Kyung Ju
    Adeluwa, Temidayo
    Hur, Junguk
    JOURNAL OF CLINICAL MEDICINE, 2020, 9 (09) : 1 - 14
  • [22] Personalized Medicine Using Predictive Analytics: A Machine Learning-Based Prognostic Model for Patients Undergoing Hip Arthroscopy
    Domb, Benjamin G.
    Ouyang, Vivian W.
    Go, Cammille C.
    Gornbein, Jeffrey A.
    Shapira, Jacob
    Meghpara, Mitchell B.
    Maldonado, David R.
    Lall, Ajay C.
    Rosinsky, Philip J.
    AMERICAN JOURNAL OF SPORTS MEDICINE, 2022, 50 (07): : 1900 - 1908
  • [23] Differentiation of lumbar disc herniation and lumbar spinal stenosis using natural language processing-based machine learning based on positive symptoms
    Ren, GuanRui
    Yu, Kun
    Xie, ZhiYang
    Liu, Lei
    Wang, PeiYang
    Zhang, Wei
    Wang, YunTao
    Wu, XiaoTao
    NEUROSURGICAL FOCUS, 2022, 52 (04)
  • [24] Reliability of preoperative MRI findings in patients with lumbar spinal stenosis
    Banitalebi, Hasan
    Espeland, Ansgar
    Anvar, Masoud
    Hermansen, Erland
    Hellum, Christian
    Brox, Jens Ivar
    Myklebust, Tor Age
    Indrekvam, Kari
    Brisby, Helena
    Weber, Clemens
    Aaen, Jorn
    Austevoll, Ivar Magne
    Grundnes, Oliver
    Negard, Anne
    BMC MUSCULOSKELETAL DISORDERS, 2022, 23 (01)
  • [25] Reliability of preoperative MRI findings in patients with lumbar spinal stenosis
    Hasan Banitalebi
    Ansgar Espeland
    Masoud Anvar
    Erland Hermansen
    Christian Hellum
    Jens Ivar Brox
    Tor Åge Myklebust
    Kari Indrekvam
    Helena Brisby
    Clemens Weber
    Jørn Aaen
    Ivar Magne Austevoll
    Oliver Grundnes
    Anne Negård
    BMC Musculoskeletal Disorders, 23
  • [26] Outcomes of decompression for lumbar spinal canal stenosis based upon preoperative radiographic severity
    Weiner B.K.
    Patel N.M.
    Walker M.A.
    Journal of Orthopaedic Surgery and Research, 2 (1)
  • [27] Big Data, Predictive Analytics and Machine Learning
    Ongsulee, Pariwat
    Chotchaung, Veena
    Bamrungsi, Eak
    Rodcheewit, Thanaporn
    2018 16TH INTERNATIONAL CONFERENCE ON ICT AND KNOWLEDGE ENGINEERING (ICT&KE), 2018, : 37 - 42
  • [28] Combinations in predictive analytics by using machine learning
    Gulay, Emrah
    Duru, Okan
    2018 IEEE SYMPOSIUM SERIES ON COMPUTATIONAL INTELLIGENCE (IEEE SSCI), 2018, : 2097 - 2103
  • [29] Predictive analytics of HR - A machine learning approach
    Kakulapati, V.
    Chaitanya, Kalluri Krishna
    Chaitanya, Kolli Vamsi Guru
    Akshay, Ponugoti
    JOURNAL OF STATISTICS & MANAGEMENT SYSTEMS, 2020, 23 (06): : 959 - 969
  • [30] Design of a Machine Learning Based Predictive Analytics System for Spam Problem
    Yuksel, A. S.
    Cankaya, S. F.
    Uncu, I. S.
    ACTA PHYSICA POLONICA A, 2017, 132 (03) : 500 - 504