1Department of Neurosurgery, Sheba Medical Center, Ramat-Gan, affiliated with Sackler Faculty of Medicine, Tel Aviv University, Tel Aviv.
2Arrow Program for Medical Research Education, Sheba Medical Center, Ramat-Gan; and.
Neurosurg Focus. 2023 Jun;54(6):E11. doi: 10.3171/2023.3.FOCUS2390.
Currently, CT is considered the gold standard for the diagnosis of ossification of the posterior longitudinal ligament (OPLL). The objective of this study was to develop artificial intelligence (AI) software and a validated model for the identification and representation of cervical OPLL (C-OPLL) on MRI, obviating the need for spine CT.
A retrospective evaluation was performed of consecutive imaging studies of all adult patients who underwent both cervical CT and MRI for any clinical indication within a span of 36 months (between January 2017 and July 2020) in a single tertiary-care referral hospital. C-OPLL was identified by a panel of neurosurgeons and a neuroradiologist. MATLAB software was then used to create an AI tool for the diagnosis of C-OPLL by using a convolutional neural network method to identify features on MR images. A reader study was performed to compare the performance of the AI model to that of the diagnostic panel using standard test performance metrics. Interobserver variability was assessed using Cohen's kappa score.
Nine hundred consecutive patients were found to be eligible for radiological evaluation, yielding 65 identified C-OPLL carriers. The AI model, utilizing MR images, was able to accurately segment the vertebral bodies, PLL, and discoligamentous complex, and detect C-OPLL carriers. The AI model identified 5 additional C-OPLL patients who were not initially detected. The performance of the MRI-based AI model resulted in a sensitivity of 85%, specificity of 98%, negative predictive value of 98%, and positive predictive value of 85%. The overall accuracy of the model was 98%, with a kappa score of 0.917.
The novel AI software developed in this study was highly specific for identifying C-OPLL on MRI, without the use of CT. This model may obviate the need for CT scans while maintaining adequate diagnostic accuracy. With further development, this MRI-based AI model has the potential to aid in the diagnosis of various spinal disorders and its automated layers may lay the foundation for MRI-specific diagnostic criteria for C-OPLL.
目前,计算机断层扫描(CT)被认为是诊断后纵韧带骨化(OPLL)的金标准。本研究的目的是开发人工智能(AI)软件和经过验证的模型,用于在 MRI 上识别和表示颈椎 OPLL(C-OPLL),从而无需进行脊柱 CT 检查。
对在一家三级转诊医院因任何临床指征在 36 个月内(2017 年 1 月至 2020 年 7 月)连续进行颈椎 CT 和 MRI 检查的所有成年患者的影像学研究进行回顾性评估。C-OPLL 由一组神经外科医生和神经放射科医生识别。然后使用 MATLAB 软件创建一个 AI 工具,使用卷积神经网络方法来识别 MRI 图像上的特征,以诊断 C-OPLL。通过使用标准测试性能指标,进行读者研究来比较 AI 模型和诊断小组的性能。使用 Cohen's kappa 评分评估观察者间的变异性。
发现 900 名连续患者符合放射学评估标准,其中 65 名被确定为 C-OPLL 携带者。AI 模型利用 MRI 图像能够准确地分割椎体、后纵韧带和椎间盘韧带复合体,并检测 C-OPLL 携带者。AI 模型还识别出了 5 名最初未被发现的 C-OPLL 患者。基于 MRI 的 AI 模型的性能产生了 85%的敏感性、98%的特异性、98%的阴性预测值和 85%的阳性预测值。该模型的总体准确性为 98%,kappa 评分为 0.917。
本研究开发的新型 AI 软件在 MRI 上识别 C-OPLL 的特异性很高,无需进行 CT 检查。该模型在保持足够诊断准确性的同时,可能无需进行 CT 扫描。随着进一步的发展,这种基于 MRI 的 AI 模型有可能辅助各种脊柱疾病的诊断,其自动分层可能为 C-OPLL 的 MRI 特定诊断标准奠定基础。