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The Effect of Spectral Resolution Upon the Accuracy of Brain Tumor Segmentation from Multi-Spectral MRI Data

机译:光谱分辨率对多光谱MRI数据脑肿瘤细分精度的影响

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Ensemble learning methods are frequently employed for brain tumor segmentation from multi-spectral MRI data. These techniques often require involving several hundreds of computed features for the characterization of the voxels, causing a rise in the necessary storage space by two order of magnitude. Processing such amounts of data also represents a serious computational burden. Under such circumstances it is useful to optimize the feature generation process. This paper proposes to establish the optimal spectral resolution of multispectral MRI data based feature values that allows for the best achievable brain tumor segmentation accuracy without causing unnecessary computational load and storage space waste. Experiments revealed that an 8-bit spectral resolution of the MRI-based feature data is sufficient to obtain the best possible accuracy of ensemble learning methods, while it allows for 50% reduction of the storage space required by the segmentation procedure, compared to the usually deployed featured encoding techniques.
机译:来自多光谱MRI数据的脑肿瘤分割经常使用集合学习方法。这些技术通常需要涉及若干数百个计算的特征来表征体素,从而使必要的存储空间增加了两个数量级。处理此类数据也代表了严重的计算负担。在这种情况下,优化特征生成过程是有用的。本文建议建立基于多光谱MRI数据的最佳光谱分辨率,其允许最佳可实现的脑肿瘤分割精度,而不会导致不必要的计算负荷和存储空间浪费。实验表明,基于MRI的特征数据的8位谱分辨率足以获得集合学习方法的最佳精度,而其允许通常相比,它允许分割过程所需的存储空间减少50%部署的特色编码技巧。

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