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Multimodal visualization of complementary color-coded FA map and tensor glyphs for interactive tractography ROI seeding

机译:互补颜色编码的多媒体可视化和交互式牵引ROI播种的张量晶文

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摘要

Fiber tractography is still unique in providing detailed imaging of white matter fiber bundles and con-nectivity between different brain regions. For finding specific fiber bundles, the most applied technique is tracking fibers from the seeds in a region of interest (ROI) within a diffusion tensor imaging (DTI) volume, or the limitation of tracking results to the ROI. Color-encoded fractional anisotropy (FA) map derived from DTI data, neuroanatomical atlas, and anatomical T1-weighted magnetic resonance imaging (MRI) data have been proposed as complementary data to improve the placement of an ROI. Mental map-ping of colors in color-encoded FA map to directions requires a cognitive process. This paper addresses the fusion of shape with color to make the ROI drawing more a perceptual rather than a cognitive task. We propose the rendering of diffusion tensors as superquadric glyphs (shape) superimposed over the standard practice consisting of a color-encoded FA map (color) co-registered to a T1-weighted MRI image (anatomical constraint). A novel object-space algorithm that can efficiently render diffusion tensor glyphs is presented. A strategy for distributing the GPU hardware workload was devised to maximize its occu-pancy and reduce its stall. Implementations with a compute shader, and a geometry shader are detailed comparatively. We show that our proposal outperforms other rendering solutions. Preliminary quantita-tive comparisons of the nerve fibers reconstructed by interactive seeding strategies with and without the glyphs suggest that the first approach is more accurate in conveying directional information.(c) 2021 Elsevier Ltd. All rights reserved.
机译:光纤牵引术在提供不同脑区之间的白质纤维束和扁平态度的详细成像方面仍然是独一无二的。为了查找特定的光纤束,最施加的技术是在扩散张量成像(DTI)体积(DTI)体积内的感兴趣区域(ROI)中的种子中跟踪纤维,或者跟踪结果对ROI的限制。已经提出了从DTI数据,神经杀死的地图和解剖学T1加权磁共振成像(MRI)数据的颜色编码的分数各向异性(FA)地图作为补充数据以改善投资回报率的放置。颜色编码的FA映射中的颜色的心理映射映射到方向需要认知过程。本文用颜色解决了形状的融合,使ROI吸引更多的感知而不是认知任务。我们提出了扩散张量子作为超级晶格(形状)叠加在由与T1加权MRI图像(解剖结构)共登记的颜色编码的FA映射(颜色)组成的标准实践。提出了一种可以有效地呈现扩散张量字形的新型对象空间算法。设计了一种分发GPU硬件工作负载的策略,以最大限度地提高其偶数悬浮液并减少其摊位。使用计算着色器的实现和几何着色器进行详细说明。我们表明我们的提案优于其他渲染解决方案。初步量子纤维的术纤维通过互动播种策略重建的神经纤维与术语,没有字形的术语表明,第一种方法在传达方向信息中更准确。(c)2021 elestvier有限公司保留所有权利。

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