Evaluating Spatial Filtering on Diffusion MRI Data Harmonization in Parkinsonism

Madelyn Corliss, David E Vaillancourt
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Abstract

Background: Parkinsonism is an umbrella term encompassing several disease pathologies that share common motor symptoms. The most prevalent diagnosis is Parkinson’s disease, followed by multiple system atrophy, and progressive supranuclear palsy. Early detection and differentiation between types of Parkinsonism remain an issue in clinical practice.Objective: MRI has the potential to aid the diagnosis of Parkinsonisms. A major hurdle is combining and harmonizing the data across different MRI vendors. The objective of this study was to determine if a full width half maximum gaussian spatial filter helps harmonize data sets collected from different scanners.Methods: Using 17 different MRI scanners, data was collected from 1,002 subjects. First, the data were spatially filtered using different sizes (no filter, 2mm, 4mm, 6mm). Data were then preprocessed and transformed into Montreal Neurological Institute (MNI) space. Next, support vector machine learning tested the training and validation accuracy of predicting diagnosis at each spatial filter setting.Results: The training and validation data for weighted sensitivity, specificity, and accuracy were similar for all filter conditions. Differences between the weighted sensitivity, specificity, and accuracy of the training groups for all filter sizes were less than 0.1 and less than 0.2 for validation groups.Conclusions: Training and validation predictions did not differ across spatial filters, suggesting the accuracy of the algorithm is robust at different spatial filter sizes. In conclusion, the size of the spatial filter applied to diffusion MRI data does not result in a change in the outcome of the machine learning approach.
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帕金森病弥散MRI数据协调的空间滤波评价
背景:帕金森病是一个涵盖几种疾病病理的总称,这些疾病具有共同的运动症状。最常见的诊断是帕金森病,其次是多系统萎缩和进行性核上性麻痹。早期发现和区分类型的帕金森病仍然是一个问题,在临床实践。目的:MRI具有帮助帕金森病诊断的潜力。一个主要的障碍是整合和协调不同MRI供应商的数据。本研究的目的是确定是否全宽半最大高斯空间滤波器有助于协调从不同的扫描仪收集的数据集。方法:使用17种不同的MRI扫描仪,收集1002名受试者的数据。首先,对不同尺寸的数据进行空间滤波(无滤波、2mm、4mm、6mm)。然后对数据进行预处理并转换到蒙特利尔神经学研究所(MNI)的空间。接下来,支持向量机器学习测试了在每个空间滤波设置下预测诊断的训练和验证精度。结果:在所有过滤条件下,加权灵敏度、特异性和准确性的训练和验证数据相似。所有过滤器大小的训练组的加权灵敏度、特异性和准确性之间的差异小于0.1,验证组的差异小于0.2。结论:训练和验证预测在不同的空间滤波器中没有差异,表明该算法在不同的空间滤波器尺寸下具有鲁棒性。总之,应用于弥散MRI数据的空间滤波器的大小不会导致机器学习方法的结果发生变化。
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