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简化腰椎 MRI 退变表现通用分级:非放射科脊柱专家间的读者间一致性。

Simplified Universal Grading of Lumbar Spine MRI Degenerative Findings: Inter-Reader Agreement of Non-Radiologist Spine Experts.

机构信息

Department of Radiology, Brigham and Women's Hospital, Harvard Medical School, Boston, Massachusetts, USA.

Department of Physical Medicine and Rehabilitation, Brigham and Women's Hospital, Harvard Medical School, Boston, Massachusetts, USA.

出版信息

Pain Med. 2021 Jul 25;22(7):1485-1495. doi: 10.1093/pm/pnab098.

DOI:10.1093/pm/pnab098
PMID:33713135
Abstract

OBJECTIVE

  1. To describe a simplified multidisciplinary grading system for the most clinically relevant lumbar spine degenerative changes. 2) To measure the inter-reader variability among non-radiologist spine experts in their use of the classification system for interpretation of a consecutive series of lumbar spine magnetic resonance imaging (MRI) examinations.

METHODS

ATS multidisciplinary and collaborative standardized grading of spinal stenosis, foraminal stenosis, lateral recess stenosis, and facet arthropathy was developed. Our institution's picture archiving and communication system was searched for 50 consecutive patients who underwent non-contrast MRI of the lumbar spine for chronic back pain, radiculopathy, or symptoms of spinal stenosis. Three fellowship-trained spine subspecialists from neurosurgery, orthopedic surgery, and physiatry interpreted the 50 exams using the classification at the L4-L5 and L5-S1 levels. Inter-reader agreement was assessed with Cohen's kappa coefficient.

RESULTS

For spinal stenosis, the readers demonstrated substantial agreement (κ = 0.702). For foraminal stenosis and facet arthropathy, the three readers demonstrated moderate agreement (κ = 0.544, and 0.557, respectively). For lateral recess stenosis, there was fair agreement (κ = 0.323).

CONCLUSIONS

A simplified universal grading system of lumbar spine MRI degenerative findings is newly described. Use of this multidisciplinary grading system in the assessment of clinically relevant degenerative changes revealed moderate to substantial agreement among non-radiologist spine physicians. This standardized grading system could serve as a foundation for interdisciplinary communication.

摘要

目的

1)描述一种简化的多学科腰椎退行性病变分级系统,该系统与临床相关性最强。2)测量非放射科脊柱专家在使用分类系统解读连续系列腰椎磁共振成像(MRI)检查结果时的读者间变异性。

方法

制定了 ATS 多学科协作的脊柱狭窄、神经孔狭窄、侧隐窝狭窄和小关节关节炎的标准化分级系统。在我们医院的影像归档和通信系统中,搜索了 50 例连续接受非对比腰椎 MRI 检查的慢性腰痛、神经根病或椎管狭窄症状的患者。来自神经外科、骨科和物理治疗的 3 名脊柱专科研究员使用该分类在 L4-L5 和 L5-S1 水平对这 50 次检查进行了解读。使用 Cohen's kappa 系数评估读者间的一致性。

结果

对于脊柱狭窄,读者之间表现出高度一致性(κ=0.702)。对于神经孔狭窄和小关节关节炎,三位读者表现出中度一致性(κ=0.544 和 0.557)。对于侧隐窝狭窄,一致性为一般(κ=0.323)。

结论

新描述了一种简化的通用腰椎 MRI 退行性病变分级系统。在评估与临床相关的退行性变化时使用这种多学科分级系统,非放射科脊柱医生之间表现出中度至高度的一致性。这种标准化分级系统可以作为跨学科交流的基础。

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