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Multi-structure Segmentation of Multi-modal Brain Images using Artificial Neural Networks

机译:使用人工神经网络的多模式脑图像的多结构分割

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A method for simultaneous segmentation of multiple anatomical brain structures from multi-modal MR images has been developed. An artificial neural network (ANN) was trained from a set of feature vectors created by a combination of high-resolution registration methods, atlas based spatial probability distributions, and a training set of 16 expert traced data sets. A set of feature vectors were adapted to increase performance of ANN segmentation; 1) a modified spatial location for structural symmetry of human brain, 2) neighbors along the priors descent for directional consistency, and 3) candidate vectors based on the priors for the segmentation of multiple structures. The trained neural network was then applied to 8 data sets, and the results were compared with expertly traced structures for validation purposes. Comparing several reliability metrics, including a relative overlap, similarity index, and intraclass correlation of the ANN generated segmentations to a manual trace are similar or higher to those measures previously developed methods. The ANN provides a level of consistency between subjects and time efficiency comparing human labor that allows it to be used for very large studies.
机译:已经开发了一种用于从多模态MR图像同时分割多个解剖结构大脑结构的方法。人工神经网络(ANN)是从一组特征向量中训练出来的,这些特征向量是由高分辨率配准方法,基于图集的空间概率分布以及16个专家跟踪数据集的训练集组合而成的。调整了一组特征向量以提高ANN分割的性能; 1)修改后的空间位置,以实现人脑的结构对称性; 2)沿先验先后下降以求方向一致性,以及3)基于先验先验的多个结构分割候选向量。然后将训练有素的神经网络应用于8个数据集,并将结果与​​专家追踪的结构进行比较以进行验证。比较几个可靠性指标,包括相对重叠,相似性索引以及ANN生成的细分与手动跟踪的类内相关性,与以前开发的那些方法相似或更高。与人工相比,人工神经网络在主题和时间效率之间提供了一定程度的一致性,从而使其可以用于非常大的研究。

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