Literature DB >> 28338449

Development of a preoperative predictive model for major complications following adult spinal deformity surgery.

Justin K Scheer1, Justin S Smith2, Frank Schwab3, Virginie Lafage3, Christopher I Shaffrey2, Shay Bess4, Alan H Daniels5, Robert A Hart6, Themistocles S Protopsaltis4, Gregory M Mundis7, Daniel M Sciubba8, Tamir Ailon2, Douglas C Burton9, Eric Klineberg10, Christopher P Ames11.   

Abstract

OBJECTIVE The operative management of patients with adult spinal deformity (ASD) has a high complication rate and it remains unknown whether baseline patient characteristics and surgical variables can predict early complications (intraoperative and perioperative [within 6 weeks]). The development of an accurate preoperative predictive model can aid in patient counseling, shared decision making, and improved surgical planning. The purpose of this study was to develop a model based on baseline demographic, radiographic, and surgical factors that can predict if patients will sustain an intraoperative or perioperative major complication. METHODS This study was a retrospective analysis of a prospective, multicenter ASD database. The inclusion criteria were age ≥ 18 years and the presence of ASD. In total, 45 variables were used in the initial training of the model including demographic data, comorbidities, modifiable surgical variables, baseline health-related quality of life, and coronal and sagittal radiographic parameters. Patients were grouped as either having at least 1 major intraoperative or perioperative complication (COMP group) or not (NOCOMP group). An ensemble of decision trees was constructed utilizing the C5.0 algorithm with 5 different bootstrapped models. Internal validation was accomplished via a 70/30 data split for training and testing each model, respectively. Overall accuracy, the area under the receiver operating characteristic (AUROC) curve, and predictor importance were calculated. RESULTS Five hundred fifty-seven patients were included: 409 (73.4%) in the NOCOMP group, and 148 (26.6%) in the COMP group. The overall model accuracy was 87.6% correct with an AUROC curve of 0.89 indicating a very good model fit. Twenty variables were determined to be the top predictors (importance ≥ 0.90 as determined by the model) and included (in decreasing importance): age, leg pain, Oswestry Disability Index, number of decompression levels, number of interbody fusion levels, Physical Component Summary of the SF-36, Scoliosis Research Society (SRS)-Schwab coronal curve type, Charlson Comorbidity Index, SRS activity, T-1 pelvic angle, American Society of Anesthesiologists grade, presence of osteoporosis, pelvic tilt, sagittal vertical axis, primary versus revision surgery, SRS pain, SRS total, use of bone morphogenetic protein, use of iliac crest graft, and pelvic incidence-lumbar lordosis mismatch. CONCLUSIONS A successful model (87% accuracy, 0.89 AUROC curve) was built predicting major intraoperative or perioperative complications following ASD surgery. This model can provide the foundation toward improved education and point-of-care decision making for patients undergoing ASD surgery.

Entities:  

Keywords:  ANN = artificial neural network; ASA = American Society of Anesthesiologists; ASD; ASD = adult spinal deformity; AUROC = area under the receiver operating characteristic; BMI = body mass index; BMP = bone morphogenetic protein; CCI = Charlson Comorbidity Index; HRQOL = health-related quality of life; MCS = Mental Component Summary of the SF-36; NRS = numeric rating scale; ODI = Oswestry Disability Index; PCS = Physical Component Summary of the SF-36; PI-LL = pelvic incidence–lumbar lordosis mismatch; PT = pelvic tilt; SRS = Scoliosis Research Society; SRS-22r = SRS-22r questionnaire; SVA = sagittal vertical axis; T1PA = T-1 pelvic angle; TK = thoracic kyphosis; adult spinal deformity; complications; decision tree; predictive modeling; sagittal malalignment; scoliosis

Mesh:

Year:  2017        PMID: 28338449     DOI: 10.3171/2016.10.SPINE16197

Source DB:  PubMed          Journal:  J Neurosurg Spine        ISSN: 1547-5646


  25 in total

1.  A Simpler, Modified Frailty Index Weighted by Complication Occurrence Correlates to Pain and Disability for Adult Spinal Deformity Patients.

Authors:  Peter G Passias; Cole A Bortz; Katherine E Pierce; Haddy Alas; Avery Brown; Dennis Vasquez-Montes; Sara Naessig; Waleed Ahmad; Bassel G Diebo; Tina Raman; Themistocles S Protopsaltis; Aaron J Buckland; Michael C Gerling; Renaud Lafage; Virginie Lafage
Journal:  Int J Spine Surg       Date:  2020-12

Review 2.  [A new classification of surgical complications in adult spinal deformity].

Authors:  S Hemmer; H Almansour; W Pepke; M M Innmann; M Akbar
Journal:  Orthopade       Date:  2018-04       Impact factor: 1.087

Review 3.  Self-learning computers for surgical planning and prediction of postoperative alignment.

Authors:  Renaud Lafage; Sébastien Pesenti; Virginie Lafage; Frank J Schwab
Journal:  Eur Spine J       Date:  2018-02-09       Impact factor: 3.134

4.  Artificial Intelligence in Adult Spinal Deformity.

Authors:  Pramod N Kamalapathy; Aditya V Karhade; Daniel Tobert; Joseph H Schwab
Journal:  Acta Neurochir Suppl       Date:  2022

5.  Might Doctors Really "Know Best"?: Utilizing Surgeon Intuition to Strengthen Preoperative Surgical Risk Assessment.

Authors:  James Kohler; Natalie Glass; Nicolas O Noiseux; John J Callaghan; Benjamin J Miller
Journal:  Iowa Orthop J       Date:  2018

Review 6.  The use of tranexamic acid in spine surgery.

Authors:  Joon S Yoo; Junyoung Ahn; Sailee S Karmarkar; Eric H Lamoutte; Kern Singh
Journal:  Ann Transl Med       Date:  2019-09

7.  Decision Tree-based Modelling for Identification of Predictors of Blood Loss and Transfusion Requirement After Adult Spinal Deformity Surgery.

Authors:  Tina Raman; Dennis Vasquez-Montes; Chris Varlotta; Peter G Passias; Thomas J Errico
Journal:  Int J Spine Surg       Date:  2020-02-29

8.  Predicting critical care unit-level complications after long-segment fusion procedures for adult spinal deformity.

Authors:  Rafael De la Garza-Ramos; Jonathan Nakhla; Yaroslav Gelfand; Murray Echt; Aleka N Scoco; Merritt D Kinon; Reza Yassari
Journal:  J Spine Surg       Date:  2018-03

Review 9.  State-of-the-art reviews predictive modeling in adult spinal deformity: applications of advanced analytics.

Authors:  Rushikesh S Joshi; Darryl Lau; Justin K Scheer; Miquel Serra-Burriel; Alba Vila-Casademunt; Shay Bess; Justin S Smith; Ferran Pellise; Christopher P Ames
Journal:  Spine Deform       Date:  2021-05-18

10.  Development of predictive models for all individual questions of SRS-22R after adult spinal deformity surgery: a step toward individualized medicine.

Authors:  Christopher P Ames; Justin S Smith; Ferran Pellisé; Michael Kelly; Jeffrey L Gum; Ahmet Alanay; Emre Acaroğlu; Francisco Javier Sánchez Pérez-Grueso; Frank S Kleinstück; Ibrahim Obeid; Alba Vila-Casademunt; Christopher I Shaffrey; Douglas C Burton; Virginie Lafage; Frank J Schwab; Christopher I Shaffrey; Shay Bess; Miquel Serra-Burriel
Journal:  Eur Spine J       Date:  2019-07-19       Impact factor: 3.134

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