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High-order concept discovery in functional brain imaging

机译:功能性脑成像中的高级概念发现

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Many spatiotemporal medical image datasets exhibit “high-order” structure, in which many independent variables exist (e.g. space and time) or features are not scalar at all. We analyze these datasets as tensors (high-order generalizations of matrices), preprocessing our dataset using wavelets to improve efficiency and performing latent concept discovery using parallel factor analysis. Both our method and naive tensor approaches discovered concepts representing handedness in an 11 subject motor task fMRI dataset. However, our method compressed the dataset by 98% and completed in 2 hours vs. 8 days, suggesting that a wavelet and tensor approach gains the benefits of high-order analysis while preserving the efficiency of low-order techniques.
机译:许多时空医学图像数据集展示了“高阶”结构,其中存在许多独立变量(例如空间和时间)或特征根本不是标量。我们将这些数据集分析为张量(矩阵的高阶概括),使用小波预处理我们的数据集来提高效率,并使用并行因子分析执行潜在概念发现。我们的方法和天真的张量方法都发现了在11个主题电机任务FMRI DataSet中代表了手中的概念。然而,我们的方法将数据集压缩98%并在2小时内完成,与8天内完成,表明小波和张量方法在保持低阶技术的效率时获得了高阶分析的好处。

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