首页> 外文会议>Pixelization Paradigm; Lecture Notes in Computer Science; 4370 >Analysis and Visualization of Images Overlapping: Automated Versus Expert Anatomical Mapping in Deep Brain Stimulation Targeting
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Analysis and Visualization of Images Overlapping: Automated Versus Expert Anatomical Mapping in Deep Brain Stimulation Targeting

机译:图像重叠的分析和可视化:深脑刺激靶向中的自动化与专家解剖映射

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摘要

In surgical treatment of Parkinson's disease, deep brain stimulation requires high-precision positioning of electrodes, needing accurate localization and outlines of anatomical targets. Manual procedure of anatomical structures outlining on magnetic resonance images (MRI) takes about several hours. We proposed an automated localizing procedure aiming to shorten this task to some seconds. Different parameters were simultaneously assessed in our algorithm undertaking segmentation of anatomical structures. Intraclass correlation coefficients (ICCs) were computed for centers of gravity coordinates of structures between manual expert-mapped MRI and automated-mapped MRI. Tanimoto coefficients were computed accounting for pixels overlapping between these two procedures. Although ICCs showed almost perfect concordance, TC provided further information with a quite severe value about 35%. For both criteria, results were variable regarding each parameter in our process. With such complex results to relate, their presentations were enhanced using visualization methods resembling that of the generalized Case View method.
机译:在帕金森氏病的外科治疗中,深部脑刺激需要电极的高精度定位,并需要精确的定位和解剖目标的轮廓。概述磁共振图像(MRI)的解剖结构的手动程序大约需要几个小时。我们提出了一个自动本地化过程,旨在将该任务缩短到几秒钟。在进行解剖结构分割的算法中,同时评估了不同的参数。对于人工专家映射MRI和自动映射MRI之间的结构重心坐标,计算类内相关系数(ICC)。通过计算这两个过程之间的像素重叠来计算Tanimoto系数。尽管ICC显示出几乎完美的一致性,但TC提供了更多信息,其严重值约为35%。对于这两个标准,结果对于我们流程中的每个参数都是可变的。由于涉及到如此复杂的结果,因此使用类似于广义“案例视图”方法的可视化方法增强了他们的演示效果。

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