Predictive Model for Selection of Upper Treated Vertebra Using a Machine Learning Approach

被引:14
作者
Lafage, Renaud [1 ]
Ang, Bryan [1 ]
Alshabab, Basel Sheikh [1 ]
Elysee, Jonathan [1 ]
Lovecchio, Francis C. [1 ]
Weissmann, Karen [1 ]
Kim, Han Jo [1 ]
Schwab, Frank J. [1 ]
Lafage, Virginie [1 ]
机构
[1] Hosp Special Surg, Dept Spine Surg, 535 E 70th St, New York, NY 10021 USA
关键词
Deep learning; Lumbar; Thoracolumbar; Treatment outcome;
D O I
10.1016/j.wneu.2020.10.073
中图分类号
R74 [神经病学与精神病学];
学科分类号
摘要
OBJECTIVE: To train and validate an algorithm mimicking decision making of experienced surgeons regarding upper instrumented vertebra (UIV) selection in surgical correction of thoracolumbar adult spinal deformity. METHODS: A retrospective review was conducted of patients with adult spinal deformity who underwent fusion of at least the lumbar spine (UIV > L1 to pelvis) during 2013-2018. Demographic and radiographic data were collected. The sample was stratified into 3 groups: training (70%), validation (15%) and performance testing (15%). Using a deep learning algorithm, a neural network model was trained to select between upper thoracic (T1-T6) and lower thoracic (T7-T12) UIV. Parameters used in the deep learning algorithm included demographics, coronal and sagittal preoperative alignment, and postoperative pelvic incidenceelumbar lordosis mismatch. RESULTS: The study included 143 patients (mean age 63.3 +/- 10.6 years, 81.8% women) with moderate to severe deformity (maximum Cobb angle: 43 degrees +/- 22 degrees; T1 pelvic angle: 27 degrees +/- 14 degrees; pelvic incidenceelumbar lordosis mismatch: 22 degrees +/- 21 degrees). Patients underwent a significant change in lumbar alignment (Dpelvic incidenceelumbar lordosis mismatch: 21 degrees +/- 16 degrees, P < 0.001); 35.0% had UIV in the upper thoracic region, and 65.0% had UIV in the lower thoracic region. At 1 year, revision rate was 11.9%, and rate of radiographic proximal junctional kyphosis was 29.4%. Neural network comprised 8 inputs, 10 hidden neurons, and 1 output (upper thoracic or lower thoracic). After training, results demonstrated an accuracy of 81.0%, precision of 87.5%, and recall of 87.5% on testing. CONCLUSIONS: An artificial neural network successfully mimicked 2 lead surgeons' decision making in the selection of UIV for adult spinal deformity correction. Future models integrating surgical outcomes should be developed.
引用
收藏
页码:E225 / E232
页数:8
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