Dewey Chadrick, Feltrin Fabricio, Shah Bhavya, Pinho Marco, DeBevits John, Achilleos Michael, McCreary Morgan, Lynch Sloan, Chitnis Shilpa, Dewey Richard
Department of Neurology (CD, SL, SC, RD), Department of Radiology (FF, BS, MP, JD, MA), Division of Neuroradiology, and Perot Foundation Neuroscience Translational Research Center (MM), O'Donnell Brain Institute, University of Texas Southwestern Medical Center.
Neurol Clin Pract. 2023 Jun;13(3):e200157. doi: 10.1212/CPJ.0000000000200157. Epub 2023 Apr 27.
Parkinson disease (PD) and progressive supranuclear palsy (PSP) are often difficult to differentiate in the clinic. The MR parkinsonism index (MRPI) has been recommended to assist in making this distinction. We aimed to assess the usefulness of this tool in our real-world practice of movement disorders.
We prospectively obtained MRI scans on consecutive patients with movement disorders with a clinical indication for imaging and obtained measures of MRI regions of interest (ROIs) from our neuroradiologists. The authors reviewed all MRI scans and corrected any errors in the original ROI drawings for this analysis. We retrospectively assigned diagnoses using established consensus criteria from progress notes stored in our electronic medical record. We analyzed the data using multinomial logistic regression models and receiver operating curve analysis to determine the predictive accuracy of the MRI ratios.
MRI measures and consensus diagnoses were available on 130 patients with PD, 54 with PSP, and 77 diagnosed as other. The out-of-sample prediction error rate of our 5 regression models ranged from 45% to 59%. The average sensitivity and specificity of the 5 models in the testing sample were 53% and 80%, respectively. The positive predictive value of an MRPI ≥13.55 (the published cutoff) in our patients was 79%.
These results indicate that MRI measures of brain structures were not effective at predicting diagnosis in individual patients. We conclude that the search for a biomarker that can differentiate PSP from PD must continue.
帕金森病(PD)和进行性核上性麻痹(PSP)在临床上常常难以区分。推荐使用磁共振帕金森病指数(MRPI)来辅助进行这种鉴别。我们旨在评估该工具在我们现实世界的运动障碍实践中的实用性。
我们前瞻性地对有影像学临床指征的连续性运动障碍患者进行了磁共振成像(MRI)扫描,并从我们的神经放射科医生那里获取了MRI感兴趣区域(ROI)的测量值。作者复查了所有MRI扫描,并校正了本次分析中原ROI绘图中的任何错误。我们使用存储在我们电子病历中的病程记录中的既定共识标准进行回顾性诊断。我们使用多项逻辑回归模型和受试者工作特征曲线分析来分析数据,以确定MRI比率的预测准确性。
130例帕金森病患者、54例进行性核上性麻痹患者和77例诊断为其他疾病的患者有MRI测量值和共识诊断结果。我们5个回归模型的样本外预测误差率在45%至59%之间。测试样本中5个模型的平均敏感性和特异性分别为53%和80%。在我们的患者中,MRPI≥13.55(已发表的临界值)的阳性预测值为79%。
这些结果表明,脑结构的MRI测量在预测个体患者的诊断方面无效。我们得出结论,寻找能够区分进行性核上性麻痹和帕金森病的生物标志物的工作必须继续。