Patel J, Pires A, Derman A, Fatterpekar G, Charlson R E, Oh C, Kister I
NYU MS Comprehensive Care Center, Department of Neurology, New York University Grossman School of Medicine, New York, NY, USA.
Department of Radiology, New York University Grossman School of Medicine, New York, NY, USA.
J Clin Neurosci. 2022 Jul;101:32-36. doi: 10.1016/j.jocn.2022.04.035. Epub 2022 May 4.
There is an unmet need to develop practical methods for differentiating multiple sclerosis (MS) from other neuroinflammatory disorders using standard brain MRI. To develop a practical approach for differentiating MS from neuromyelitis optica spectrum disorder (NMOSD) and MOG antibody-associated disorder (MOGAD) with brain MRI, we first identified lesion locations in the brain that are suggestive of MS-associated demyelination ("MS Lesion Checklist") and compared frequencies of brain lesions in the "MS Lesion Checklist" locations in a development sample of patients (n = 82) with clinically definite MS, NMOSD, and MOGAD. Patients with MS were more likely than patients with non-MS to have lesions in 3 locations only: anterior temporal horn (p < 0.0001), periventricular ("Dawson's finger") (p < 0.0001), and cerebellar hemisphere (p = 0.02). These three lesion locations were used as predictor variables in a multivariable regression model for discriminating MS from non-MS. The model had area under the curve (AUC) of 0.853 (95% confidence interval: 0.76-0.945), sensitivity of 87.1%, and specificity of 72.5%. We then used an independent validation sample with equal representation of MS and NMOSD/MOGAD cases (n = 97) to validate our prediction model. In the validation sample, the model was 76.3% accurate in discriminating MS from non-MS. Our simple method for predicting MS versus NMOSD/MOGAD only requires a neuroradiologist or clinician to ascertain the presence of lesions in three locations on conventional MRI sequences. It can therefore be readily applied in the real-world setting for training and clinical practice.
利用标准脑MRI开发将多发性硬化症(MS)与其他神经炎症性疾病区分开来的实用方法仍存在未满足的需求。为了开发一种利用脑MRI将MS与视神经脊髓炎谱系障碍(NMOSD)和MOG抗体相关疾病(MOGAD)区分开来的实用方法,我们首先确定了提示MS相关脱髓鞘的脑内病变位置(“MS病变清单”),并比较了临床确诊的MS、NMOSD和MOGAD患者的开发样本(n = 82)中“MS病变清单”位置的脑病变频率。与非MS患者相比,MS患者仅在三个位置更易出现病变:颞前角(p < 0.0001)、脑室周围(“道森指征”)(p < 0.0001)和小脑半球(p = 0.02)。这三个病变位置被用作多变量回归模型中的预测变量,以区分MS与非MS。该模型的曲线下面积(AUC)为0.853(95%置信区间:0.76 - 0.945),灵敏度为87.1%,特异性为72.5%。然后,我们使用了一个MS与NMOSD/MOGAD病例数量相等的独立验证样本(n = 97)来验证我们的预测模型。在验证样本中,该模型区分MS与非MS的准确率为76.3%。我们预测MS与NMOSD/MOGAD的简单方法仅需神经放射科医生或临床医生在传统MRI序列上确定三个位置是否存在病变。因此,它可以很容易地应用于现实环境中的培训和临床实践。