Long Segment Anterior Cervical Discectomy and Fusion, Including C2 Surgical Pearls and Review of Our Experience

CLINICAL SPINE SURGERY(2022)

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摘要
Study Design: A retrospective study of thirteen patients undergoing 5-level anterior spinal surgery for cervical myelopathy. Objective: While limited literature exists in reviewing the treatment of high cervical pathology extending caudally, we believe long segment surgery beginning at C2-3 can be accomplished with good success and is an option more patients may benefit from. We aim to describe the technique in accessing the C2-C3 disk space and efficacy of treating multilevel disease beginning at the C2 vertebral body. This includes an extensive technical report and surgical pearls. Summary of Background Data: Compression at the level of C2 can be daunting to access because of steep approach required. Few studies have described the technique in reaching the C2 level, with less information describing the efficacy of a 5-level anterior fusion starting at C2. Methods: Patients who underwent surgery between 2000 and 2016 were identified utilizing the department billing database and ICD codes. Patients age, operative indications, levels treated, length of hospital stay, fusion outcome, and operative complications were explored. Independent analysis of fusion was performed. Results: The average length of hospital stay was 3.9 days. Eight patients reported significant improvement of hand weakness, numbness, and/or gait at 6 months follow-up. The most frequent complication was dysphagia (23%). One patient experienced recurrent symptoms secondary to nonunion, and another patient suffered a postoperative neurological worsening because of anterior spinal artery syndrome. Conclusion: This retrospective review discusses the technique to visualize and fully decompress C2-C3 spinal segments. In addition, we explored the efficacy and perioperative risk in long segment anterior cervical discectomy and fusion.
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关键词
cervical, fusion, instrumentation, myelopathy, spine
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