Ruppert-Junck Marina C, Kräling Gunter, Greuel Andrea, Tittgemeyer Marc, Timmermann Lars, Drzezga Alexander, Eggers Carsten, Pedrosa David
Department of Neurology, Philipps-University of Marburg, Marburg, Germany.
Clinic for Neurology, University Hospital Gießen and Marburg GmbH, Marburg, Germany.
Front Comput Neurosci. 2024 Feb 7;18:1328699. doi: 10.3389/fncom.2024.1328699. eCollection 2024.
Parkinson's disease (PD) is currently diagnosed largely on the basis of expert judgement with neuroimaging serving only as a supportive tool. In a recent study, we identified a hypometabolic midbrain cluster, which includes parts of the substantia nigra, as the best differentiating metabolic feature for PD-patients based on group comparison of [F]-fluorodeoxyglucose ([F]-FDG) PET scans. Longitudinal analyses confirmed progressive metabolic changes in this region and, an independent study showed great potential of nigral metabolism for diagnostic workup of parkinsonian syndromes. In this study, we applied a machine learning approach to evaluate midbrain metabolism measured by [F]-FDG PET as a diagnostic marker for PD. In total, 51 mid-stage PD-patients and 16 healthy control subjects underwent high-resolution [F]-FDG PET. Normalized tracer update values of the midbrain cluster identified by between-group comparison were extracted voxel-wise from individuals' scans. Extracted uptake values were subjected to a random forest feature classification algorithm. An adapted leave-one-out cross validation approach was applied for testing robustness of the model for differentiating between patients and controls. Performance of the model across all runs was evaluated by calculating sensitivity, specificity and model accuracy for the validation data set and the percentage of correctly categorized subjects for test data sets. The random forest feature classification of voxel-based uptake values from the midbrain cluster identified patients in the validation data set with an average sensitivity of 0.91 (Min: 0.82, Max: 0.94). For all 67 runs, in which each of the individuals was treated once as test data set, the test data set was correctly categorized by our model. The applied feature importance extraction consistently identified a subset of voxels within the midbrain cluster with highest importance across all runs which spatially converged with the left substantia nigra. Our data suggest midbrain metabolism measured by [F]-FDG PET as a promising diagnostic imaging tool for PD. Given its close relationship to PD pathophysiology and very high discriminatory accuracy, this approach could help to objectify PD diagnosis and enable more accurate classification in relation to clinical trials, which could also be applicable to patients with prodromal disease.
帕金森病(PD)目前主要是基于专家判断进行诊断,神经影像学仅作为一种辅助工具。在最近的一项研究中,我们通过对[F]-氟代脱氧葡萄糖([F]-FDG)PET扫描进行组间比较,确定了一个低代谢的中脑簇,其中包括黑质的部分区域,作为帕金森病患者最佳的鉴别代谢特征。纵向分析证实了该区域代谢的进行性变化,并且一项独立研究表明黑质代谢在帕金森综合征的诊断检查中具有巨大潜力。在本研究中,我们应用机器学习方法来评估通过[F]-FDG PET测量的中脑代谢作为帕金森病的诊断标志物。总共51名中期帕金森病患者和16名健康对照者接受了高分辨率[F]-FDG PET检查。从个体扫描中逐体素提取通过组间比较确定的中脑簇的标准化示踪剂摄取值。提取的摄取值采用随机森林特征分类算法。应用一种改良的留一法交叉验证方法来测试模型区分患者和对照的稳健性。通过计算验证数据集的敏感性、特异性和模型准确性以及测试数据集正确分类的受试者百分比,评估模型在所有运行中的性能。基于中脑簇体素摄取值的随机森林特征分类在验证数据集中识别出患者,平均敏感性为0.91(最小值:0.82,最大值:0.94)。在所有67次运行中,每次将每个个体作为测试数据集,我们的模型都能正确分类测试数据集。应用的特征重要性提取始终确定中脑簇内一个体素子集在所有运行中具有最高重要性,其在空间上与左侧黑质汇聚。我们的数据表明,通过[F]-FDG PET测量的中脑代谢是一种有前景的帕金森病诊断成像工具。鉴于其与帕金森病病理生理学的密切关系以及非常高的鉴别准确性,这种方法有助于使帕金森病诊断客观化,并在临床试验中实现更准确的分类,这也可能适用于前驱疾病患者。