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Classification of amyloid status using machine learning with histograms of oriented 3D gradients

机译:使用定向3D梯度直方图的机器学习对淀粉样状态进行分类

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摘要

Brain amyloid burden may be quantitatively assessed from positron emission tomography imaging using standardised uptake value ratios. Using these ratios as an adjunct to visual image assessment has been shown to improve inter-reader reliability, however, the amyloid positivity threshold is dependent on the tracer and specific image regions used to calculate the uptake ratio. To address this problem, we propose a machine learning approach to amyloid status classification, which is independent of tracer and does not require a specific set of regions of interest. Our method extracts feature vectors from amyloid images, which are based on histograms of oriented three-dimensional gradients. We optimised our method on 133 18F-florbetapir brain volumes, and applied it to a separate test set of 131 volumes. Using the same parameter settings, we then applied our method to 209 11C-PiB images and 128 18F-florbetaben images. We compared our method to classification results achieved using two other methods: standardised uptake value ratios and a machine learning method based on voxel intensities. Our method resulted in the largest mean distances between the subjects and the classification boundary, suggesting that it is less likely to make low-confidence classification decisions. Moreover, our method obtained the highest classification accuracy for all three tracers, and consistently achieved above 96% accuracy.
机译:可以使用标准摄取值比率从正电子发射断层显像中定量评估脑淀粉样蛋白负荷。使用这些比率作为视觉图像评估的辅助手段已显示可提高阅读器间的可靠性,但是,淀粉样蛋白阳性阈值取决于示踪剂和用于计算摄取比率的特定图像区域。为了解决这个问题,我们提出了一种机器学习方法来进行淀粉样蛋白状态分类,该方法独立于示踪剂,不需要特定的目标区域集。我们的方法从淀粉样图像中提取特征向量,这些图像基于定向三维梯度的直方图。我们优化了133个 18 F-florbetapir脑体积的方法,并将其应用于131个体积的单独测试集。使用相同的参数设置,然后将我们的方法应用于209个 11 C-PiB图像和128个 18 F-florbetaben图像。我们将我们的方法与使用其他两种方法获得的分类结果进行了比较:标准化摄取值比率和基于体素强度的机器学习方法。我们的方法导致受试者与分类边界之间的平均距离最大,这表明做出低置信度分类决策的可能性较小。此外,我们的方法对所有三个示踪剂均获得了最高的分类精度,并始终达到96%以上的精度。

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