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Developing nonlinear k-nearest neighbors classification algorithms to identify patients at high risk of increased length of hospital stay following spine surgery.
Shahrestani, Shane; Chan, Andrew K; Bisson, Erica F; Bydon, Mohamad; Glassman, Steven D; Foley, Kevin T; Shaffrey, Christopher I; Potts, Eric A; Shaffrey, Mark E; Coric, Domagoj; Knightly, John J; Park, Paul; Wang, Michael Y; Fu, Kai-Ming; Slotkin, Jonathan R; Asher, Anthony L; Virk, Michael S; Michalopoulos, Giorgos D; Guan, Jian; Haid, Regis W; Agarwal, Nitin; Chou, Dean; Mummaneni, Praveen V.
Affiliation
  • Shahrestani S; 1Keck School of Medicine, University of Southern California, Los Angeles, California.
  • Chan AK; 2Department of Medical Engineering, California Institute of Technology, Pasadena, California.
  • Bisson EF; 3Department of Neurological Surgery, Columbia University, The Och Spine Hospital at NewYork-Presbyterian, New York, New York.
  • Bydon M; 4Department of Neurological Surgery, University of Utah, Salt Lake City, Utah.
  • Glassman SD; 5Department of Neurological Surgery, Mayo Clinic, Rochester, Minnesota.
  • Foley KT; 6Norton Leatherman Spine Center, Louisville, Kentucky.
  • Shaffrey CI; 7Department of Neurological Surgery, University of Tennessee.
  • Potts EA; Semmes-Murphey Neurologic and Spine Institute, Memphis, Tennessee.
  • Shaffrey ME; Departments of8Neurosurgery andOrthopedic Surgery, Duke University, Durham, North Carolina.
  • Coric D; 10Goodman Campbell Brain and Spine, Indianapolis, Indiana.
  • Knightly JJ; 11Department of Neurological Surgery, University of Virginia, Charlottesville, Virginia.
  • Park P; 12Neuroscience Institute, Carolinas Healthcare System and Carolina Neurosurgery & Spine Associates, Charlotte, North Carolina.
  • Wang MY; 13Atlantic Neurosurgical Specialists, Morristown, New Jersey.
  • Fu KM; 7Department of Neurological Surgery, University of Tennessee.
  • Slotkin JR; 14Department of Neurological Surgery, University of Miami, Florida.
  • Asher AL; 15Department of Neurological Surgery, Weill Cornell Medical Center, New York, New York.
  • Virk MS; 16Geisinger Health, Danville, Pennsylvania.
  • Michalopoulos GD; 12Neuroscience Institute, Carolinas Healthcare System and Carolina Neurosurgery & Spine Associates, Charlotte, North Carolina.
  • Guan J; 15Department of Neurological Surgery, Weill Cornell Medical Center, New York, New York.
  • Haid RW; 5Department of Neurological Surgery, Mayo Clinic, Rochester, Minnesota.
  • Agarwal N; 4Department of Neurological Surgery, University of Utah, Salt Lake City, Utah.
  • Chou D; 17Atlanta Brain and Spine Care, Atlanta, Georgia; and.
  • Mummaneni PV; 18Department of Neurological Surgery, University of California, San Francisco, California.
Neurosurg Focus ; 54(6): E7, 2023 06.
Article in En | MEDLINE | ID: mdl-37283368
OBJECTIVE: Spondylolisthesis is a common operative disease in the United States, but robust predictive models for patient outcomes remain limited. The development of models that accurately predict postoperative outcomes would be useful to help identify patients at risk of complicated postoperative courses and determine appropriate healthcare and resource utilization for patients. As such, the purpose of this study was to develop k-nearest neighbors (KNN) classification algorithms to identify patients at increased risk for extended hospital length of stay (LOS) following neurosurgical intervention for spondylolisthesis. METHODS: The Quality Outcomes Database (QOD) spondylolisthesis data set was queried for patients receiving either decompression alone or decompression plus fusion for degenerative spondylolisthesis. Preoperative and perioperative variables were queried, and Mann-Whitney U-tests were performed to identify which variables would be included in the machine learning models. Two KNN models were implemented (k = 25) with a standard training set of 60%, validation set of 20%, and testing set of 20%, one with arthrodesis status (model 1) and the other without (model 2). Feature scaling was implemented during the preprocessing stage to standardize the independent features. RESULTS: Of 608 enrolled patients, 544 met prespecified inclusion criteria. The mean age of all patients was 61.9 ± 12.1 years (± SD), and 309 (56.8%) patients were female. The model 1 KNN had an overall accuracy of 98.1%, sensitivity of 100%, specificity of 84.6%, positive predictive value (PPV) of 97.9%, and negative predictive value (NPV) of 100%. Additionally, a receiver operating characteristic (ROC) curve was plotted for model 1, showing an overall area under the curve (AUC) of 0.998. Model 2 had an overall accuracy of 99.1%, sensitivity of 100%, specificity of 92.3%, PPV of 99.0%, and NPV of 100%, with the same ROC AUC of 0.998. CONCLUSIONS: Overall, these findings demonstrate that nonlinear KNN machine learning models have incredibly high predictive value for LOS. Important predictor variables include diabetes, osteoporosis, socioeconomic quartile, duration of surgery, estimated blood loss during surgery, patient educational status, American Society of Anesthesiologists grade, BMI, insurance status, smoking status, sex, and age. These models may be considered for external validation by spine surgeons to aid in patient selection and management, resource utilization, and preoperative surgical planning.
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Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Spondylolisthesis Type of study: Etiology_studies / Prognostic_studies / Risk_factors_studies Aspects: Patient_preference Limits: Aged / Female / Humans / Male / Middle aged Language: En Journal: Neurosurg Focus Journal subject: NEUROCIRURGIA Year: 2023 Document type: Article Country of publication: United States

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Spondylolisthesis Type of study: Etiology_studies / Prognostic_studies / Risk_factors_studies Aspects: Patient_preference Limits: Aged / Female / Humans / Male / Middle aged Language: En Journal: Neurosurg Focus Journal subject: NEUROCIRURGIA Year: 2023 Document type: Article Country of publication: United States