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Application of Self-Organizing Artificial Neural Networks on Simulated Diffusion Tensor Images

机译:自组织人工神经网络在模拟扩散张量图像中的应用

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摘要

Diffusion tensor magnetic resonance imaging (DTMRI) as a noninvasive modality providing in vivo anatomical information allows determination of fiber connections which leads to brain mapping. The success of DTMRI is very much algorithm dependent, and its verification is of great importance due to limited availability of a gold standard in the literature. In this study, unsupervised artificial neural network class, namely, self-organizing maps, is employed to discover the underlying fiber tracts. A common artificial diffusion tensor resource, named "phantom images for simulating tractography errors" (PISTE), is used for the accuracy verification and acceptability of the proposed approach. Four different tract geometries with varying SNRs and fractional anisotropy are investigated. The proposed method, SOFMAT, is able to define the predetermined fiber paths successfully with a standard deviation of (0.8-1.9) × 10~(-3) depending on the trajectory and the SNR value selected. The results illustrate the capability of SOFMAT to reconstruct complex fiber tract configurations. The ability of SOFMAT to detect fiber paths in low anisotropy regions, which physiologically may correspond to either grey matter or pathology (abnormality) and uncertainty areas in real data, is an advantage of the method for future studies.
机译:扩散张量磁共振成像(DTMRI)作为提供体内解剖学信息的一种非侵入性方式,可以确定导致大脑定位的纤维连接。 DTMRI的成功在很大程度上取决于算法,并且由于文献中黄金标准的可用性有限,其验证非常重要。在这项研究中,采用无监督的人工神经网络类,即自组织图,来发现潜在的纤维束。一种通用的人工扩散张量资源,称为“用于仿真束线图错误的幻像”(PISTE),用于所提出方法的准确性验证和可接受性。研究了具有不同SNR和分数各向异性的四种不同的管道几何形状。所提出的方法SOFMAT能够成功地定义预定的光纤路径,其标准偏差为(0.8-1.9)×10〜(-3),具体取决于轨迹和所选的SNR值。结果说明了SOFMAT重建复杂纤维束配置的能力。 SOFMAT检测低各向异性区域中的光纤路径的能力(在生理上可能对应于灰质或病理学(异常)和真实数据中的不确定区域)是该方法未来研究的优势。

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  • 来源
    《Mathematical Problems in Engineering》 |2013年第5期|690140.1-690140.13|共13页
  • 作者单位

    Institute of Biomedical Engineering, Bogazici University, Kandilli Campus, 34684 Istanbul, Turkey;

    Institute of Biomedical Engineering, Bogazici University, Kandilli Campus, 34684 Istanbul, Turkey;

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