Predictive Algorithm for Surgery Recommendation in Thoracolumbar Burst Fractures Without Neurological Deficits

Author:

Dandurand Charlotte1ORCID,Fallah Nader23,Öner Cumhur F.4,Bransford Richard J.5,Schnake Klaus6,Vaccaro Alexander R.7,Benneker Lorin M.8ORCID,Vialle Emiliano9ORCID,Schroeder Gregory D.7,Rajasekaran Shanmuganathan10ORCID,El-Skarkawi Mohammad11ORCID,Kanna Rishi M.12ORCID,Aly Mohamed1314ORCID,Holas Martin15ORCID,Canseco Jose A7ORCID,Muijs Sander4,Popescu Eugen Cezar16ORCID,Tee Jin Wee17,Camino-Willhuber Gaston18ORCID,Joaquim Andrei Fernandes19ORCID,Keynan Ory20,Chhabra Harvinder Singh21,Bigdon Sebastian22ORCID,Spiegel Ulrich23ORCID,Dvorak Marcel F1

Affiliation:

1. Combined Neurosurgical and Orthopedic Spine Program, Vancouver General Hospital, University of British Columbia, Vancouver, BC, Canada

2. Praxis Spinal Cord Institute, Vancouver, BC, Canada

3. Department of Medicine, University of British Columbia, Koerner Pavilion, UBC Hospital, Vancouver, BC, Canada

4. University Medical Centers, Utrecht, the Netherlands

5. Department of Orthopaedics and Sports Medicine, Harborview Medical Center, University of Washington, Seattle, WA, USA

6. Center for Spinal and Scoliosis Surgery, Department of Orthopedics and Traumatology, Paracelsus Private Medical University Nuremberg, Nuremberg, Germany

7. Department of Orthopaedic Surgery, Rothman Institute, Thomas Jefferson University Hospital, Philadelphia, PA, USA

8. Spine Unit, Sonnenhof Spital, University of Bern, Bern, Switzerland

9. Cajuru Hospital, Catholic University of Paraná, Curitiba, Brazil

10. Department of Orthopaedics and Spine Surgery, Ganga Hospital, Coimbatore, India

11. Department of Orthopaedic and Trauma Surgery, Faculty of Medicine, Assiut University, Assiut, Egypt

12. Spine Department of Orthopaedics and Spine Surgery, Ganga Hospital, Coimbatore, India

13. Department of Neurosurgery, Prince Mohammed Bin Abdulaziz Hospital, Riyadh, Saudi Arabi

14. Department of Neurosurgery, Mansoura University, Mansoura, Egypt

15. Klinika Úrazovej Chirurgie SZU a FNsP F.D.Roosevelta, Banská Bystrica, Slovakia

16. Emergency Hospital, Iasi, Romania

17. Department of Neurosurgery, National Trauma Research Institute (NTRI), The Alfred Hospital, Melbourne, VIC, Australia

18. Orthopaedic and Traumatology Department, Institute of Orthopedics “Carlos E. Ottolenghi” Hospital Italiano de Buenos Aires, Buenos Aires, Argentina

19. Neurosurgery Division, Department of Neurology, State University of Campinas, Campinas-Sao Paulo, Brazil

20. Rambam Health Care Campus, Haifa, Israel

21. Sri Balaji Action Medical Institute, New Delhi, India

22. Department of Orthopaedic Surgery and Traumatology, Inselspital, University Hospital, University of Bern, Bern, Switzerland

23. Department of Orthopaedics, Trauma Surgery and Plastic Surgery, University of Leipzig, Leipzig, Germany

Abstract

Study design Predictive algorithm via decision tree Objectives Artificial intelligence (AI) remain an emerging field and have not previously been used to guide therapeutic decision making in thoracolumbar burst fractures. Building such models may reduce the variability in treatment recommendations. The goal of this study was to build a mathematical prediction rule based upon radiographic variables to guide treatment decisions. Methods Twenty-two surgeons from the AO Knowledge Forum Trauma reviewed 183 cases from the Spine TL A3/A4 prospective study (classification, degree of certainty of posterior ligamentous complex (PLC) injury, use of M1 modifier, degree of comminution, treatment recommendation). Reviewers’ regions were classified as Europe, North/South America and Asia. Classification and regression trees were used to create models that would predict the treatment recommendation based upon radiographic variables. We applied the decision tree model which accounts for the possibility of non-normal distributions of data. Cross-validation technique as used to validate the multivariable analyses. Results The accuracy of the model was excellent at 82.4%. Variables included in the algorithm were certainty of PLC injury (%), degree of comminution (%), the use of M1 modifier and geographical regions. The algorithm showed that if a patient has a certainty of PLC injury over 57.5%, then there is a 97.0% chance of receiving surgery. If certainty of PLC injury was low and comminution was above 37.5%, a patient had 74.2% chance of receiving surgery in Europe and Asia vs 22.7% chance in North/South America. Throughout the algorithm, the use of the M1 modifier increased the probability of receiving surgery by 21.4% on average. Conclusion This study presents a predictive analytic algorithm to guide decision-making in the treatment of thoracolumbar burst fractures without neurological deficits. PLC injury assessment over 57.5% was highly predictive of receiving surgery (97.0%). A high degree of comminution resulted in a higher chance of receiving surgery in Europe or Asia vs North/South America. Future studies could include clinical and other variables to enhance predictive ability or use machine learning for outcomes prediction in thoracolumbar burst fractures.

Funder

AO Spine

Publisher

SAGE Publications

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