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A Tool for Interactive Data Visualization: Application to Over 10000 Brain Imaging and Phantom MRI Data Sets

机译:交互式数据可视化工具:应用于10000多种脑成像和幻影MRI数据集

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摘要

In this paper we propose a web-based approach for quick visualization of big data from brain magnetic resonance imaging (MRI) scans using a combination of an automated image capture and processing system, nonlinear embedding, and interactive data visualization tools. We draw upon thousands of MRI scans captured via the COllaborative Imaging and Neuroinformatics Suite (COINS). We then interface the output of several analysis pipelines based on structural and functional data to a t-distributed stochastic neighbor embedding (t-SNE) algorithm which reduces the number of dimensions for each scan in the input data set to two dimensions while preserving the local structure of data sets. Finally, we interactively display the output of this approach via a web-page, based on data driven documents (D3) JavaScript library. Two distinct approaches were used to visualize the data. In the first approach, we computed multiple quality control (QC) values from pre-processed data, which were used as inputs to the t-SNE algorithm. This approach helps in assessing the quality of each data set relative to others. In the second case, computed variables of interest (e.g., brain volume or voxel values from segmented gray matter images) were used as inputs to the t-SNE algorithm. This approach helps in identifying interesting patterns in the data sets. We demonstrate these approaches using multiple examples from over 10,000 data sets including (1) quality control measures calculated from phantom data over time, (2) quality control data from human functional MRI data across various studies, scanners, sites, (3) volumetric and density measures from human structural MRI data across various studies, scanners and sites. Results from (1) and (2) show the potential of our approach to combine t-SNE data reduction with interactive color coding of variables of interest to quickly identify visually unique clusters of data (i.e., data sets with poor QC, clustering of data by site) quickly. Results from (3) demonstrate interesting patterns of gray matter and volume, and evaluate how they map onto variables including scanners, age, and gender. In sum, the proposed approach allows researchers to rapidly identify and extract meaningful information from big data sets. Such tools are becoming increasingly important as datasets grow larger.
机译:在本文中,我们提出了一种基于Web的方法,可以结合使用自动图像捕获和处理系统,非线性嵌入和交互式数据可视化工具来快速可视化来自脑磁共振成像(MRI)扫描的大数据。我们利用通过协同成像和神经信息学套件(COINS)捕获的数千个MRI扫描结果。然后,我们将基于结构和功能数据的多个分析管道的输出连接到t分布的随机邻居嵌入(t-SNE)算法,该算法将输入数据集中每次扫描的维数减少到二维,同时保留了局部数据集的结构。最后,我们基于网页,基于数据驱动文档(D3)JavaScript库,以交互方式显示此方法的输出。使用两种不同的方法来可视化数据。在第一种方法中,我们从预处理数据中计算了多个质量控制(QC)值,这些值被用作t-SNE算法的输入。这种方法有助于评估每个数据集相对于其他数据集的质量。在第二种情况下,将感兴趣的计算变量(例如,来自分段灰质图像的脑容量或体素值)用作t-SNE算法的输入。这种方法有助于识别数据集中有趣的模式。我们使用来自10,000多个数据集的多个示例演示了这些方法,这些实例包括(1)通过幻像数据随时间推移计算​​出的质量控制措施,(2)来自各种研究,扫描仪,部位的人体功能MRI数据的质量控制数据,(3)体积和来自各种研究,扫描仪和站点的人体结构MRI数据的密度测量。 (1)和(2)的结果表明,我们的方法可以将t-SNE数据缩减与感兴趣变量的交互式颜色编码结合起来,以快速识别视觉上唯一的数据集群(即,质量控制较差的数据集,数据集群)网站)。 (3)的结果显示了有趣的灰质和体积模式,并评估了它们如何映射到变量(包括扫描仪,年龄和性别)上。总之,所提出的方法使研究人员能够快速识别并从大数据集中提取有意义的信息。随着数据集的增大,此类工具变得越来越重要。

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