Calibration of a comprehensive predictive model for the development of proximal junctional kyphosis and failure in adult spinal deformity patients with consideration of contemporary goals and techniques.
Abstract
<h4>Objective</h4>The objective of this study was to calibrate an updated predictive
model incorporating novel clinical, radiographic, and prophylactic measures to assess
the risk of proximal junctional kyphosis (PJK) and failure (PJF).<h4>Methods</h4>Operative
patients with adult spinal deformity (ASD) and baseline and 2-year postoperative data
were included. PJK was defined as ≥ 10° in sagittal Cobb angle between the inferior
uppermost instrumented vertebra (UIV) endplate and superior endplate of the UIV +
2 vertebrae. PJF was radiographically defined as a proximal junctional sagittal Cobb
angle ≥ 15° with the presence of structural failure and/or mechanical instability,
or PJK with reoperation. Backstep conditional binary supervised learning models assessed
baseline demographic, clinical, and surgical information to predict the occurrence
of PJK and PJF. Internal cross validation of the model was performed via a 70%/30%
cohort split. Conditional inference tree analysis determined thresholds at an alpha
level of 0.05.<h4>Results</h4>Seven hundred seventy-nine patients with ASD (mean 59.87
± 14.24 years, 78% female, mean BMI 27.78 ± 6.02 kg/m2, mean Charlson Comorbidity
Index 1.74 ± 1.71) were included. PJK developed in 50.2% of patients, and 10.5% developed
PJF by their last recorded visit. The six most significant demographic, radiographic,
surgical, and postoperative predictors of PJK/PJF were baseline age ≥ 74 years, baseline
sagittal age-adjusted score (SAAS) T1 pelvic angle modifier > 1, baseline SAAS pelvic
tilt modifier > 0, levels fused > 10, nonuse of prophylaxis measures, and 6-week SAAS
pelvic incidence minus lumbar lordosis modifier > 1 (all p < 0.015). Overall, the
model was deemed significant (p < 0.001), and internally validated receiver operating
characteristic analysis returned an area under the curve of 0.923, indicating robust
model fit.<h4>Conclusions</h4>PJK and PJF remain critical concerns in ASD surgery,
and efforts to reduce the occurrence of PJK and PJF have resulted in the development
of novel prophylactic techniques and enhanced clinical and radiographic selection
criteria. This study demonstrates a validated model incorporating such techniques
that may allow for the prediction of clinically significant PJK and PJF, and thus
assist in optimizing patient selection, enhancing intraoperative decision making,
and reducing postoperative complications in ASD surgery.
Type
Journal articleSubject
ASDPJF
PJK
adult spinal deformity
predictive model
proximal junctional failure
proximal junctional kyphosis
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https://hdl.handle.net/10161/28325Published Version (Please cite this version)
10.3171/2023.4.spine221412Publication Info
Tretiakov, Peter S; Lafage, Renaud; Smith, Justin S; Line, Breton G; Diebo, Bassel
G; Daniels, Alan H; ... Passias, Peter G (2023). Calibration of a comprehensive predictive model for the development of proximal junctional
kyphosis and failure in adult spinal deformity patients with consideration of contemporary
goals and techniques. Journal of neurosurgery. Spine. pp. 1-9. 10.3171/2023.4.spine221412. Retrieved from https://hdl.handle.net/10161/28325.This is constructed from limited available data and may be imprecise. To cite this
article, please review & use the official citation provided by the journal.
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Show full item recordScholars@Duke
Christopher Ignatius Shaffrey
Professor of Orthopaedic Surgery
I have more than 25 years of experience treating patients of all ages with spinal
disorders. I have had an interest in the management of spinal disorders since starting
my medical education. I performed residencies in both orthopaedic surgery and neurosurgery
to gain a comprehensive understanding of the entire range of spinal disorders. My
goal has been to find innovative ways to manage the range of spinal conditions, straightforward
to complex. I have a focus on managing patients with complex s

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