Possible predictive markers in surgical decision making in patients with degenerative or isthmic lumbar spondylolisthesis

Romanian Neurosurgery(2021)

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摘要
Background: Although age, comorbidity, duration and severity of symptoms, slippage degree, and flexion-extension slipping stability during X-ray imaging are effective in making a surgical decision in patients with spondylolisthesis, these factors are rarely based on definitive evidence. The aim of this study was to determine the efficacy of clinical, radiological and biochemical findings in surgical decision making in these patients. Materials and Methods: Patients’ data including age, gender, degree and type (i.e. degenerative or isthmic) of the spondylolisthesis, urinary incontinence, neurogenic claudication were recorded. Radiological imaging studies (lumbar dynamic X-ray, computed tomography, magnetic resonance imaging), serum glucose, C-reactive protein and erythrocyte sedimentation rate values of the patients obtained during hospital admissions were evaluated. Results: Forty patients were followed conservatively and 12 patients were treated surgically. Degenerative spondylolisthesis was seen in 22 patients. Nine patients had neurogenic urinary incontinence and 19 patients had neurogenic claudication. When the patients were divided into two groups with and without surgical treatment, the presence of the pars defect, slipping distance in a neutral position and slipping distance in flexion position was significantly different between groups. A positive correlation was found between pars defect and surgical treatment. Likelihood ratio test results revealed that the presence of pars defect, neurogenic claudication and neurogenic urinary incontinence could be the best parameters in decision making the surgical treatment. Conclusion: The presence of pars defect, neurogenic claudication and urinary incontinence could be the best parameters that may help the surgeon to make the surgical treatment decision.
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surgical decision making,decision making
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