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A new point-based warping method for enhanced and simplified analysis of functional brain image data.

机译:一种新的基于点的变形方法,用于增强和简化功能性大脑图像数据的分析。

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摘要

Comparison of brain imaging data requires the exact matching of data sets from different individuals. Warping methods, used to optimize matching of data sets, can exploit either local gray value distribution or identifiable reference points within the images to be compared. Gray value-based warping, which is more comfortable, cannot be used if gray values include functional information that should be compared between images. A major drawback in the use of point-based warping methods is the lack of methods for efficient and precise definition of reference points (landmarks) within comparable data sets. Here, we present a novel approach to automatically detect sufficient numbers of landmarks, which is based on 3D differential operators. In addition, we have developed a new distance-weighted warping method, which optimizes individual local weighting factors of displacement vectors. The quality of the methods was evaluated using a set of autoradiographs documenting the metabolic activity of gerbil brains after acoustic stimulation. The new warping method was compared with known methods of landmark-based warping, i.e., warping with radial basis functions and with distance-weighted methods. For the data sets presented in this study our new optimized warping method produced an increase in linear cross correlation of 4.44%, an increase in volume overlap index of 1.55%, and a decrease in the registration error of 36.2%. In addition, the detection of functional differences was improved after warping. Therefore, the new method is a powerful tool, which enhances the comparison of complex biological structures and the quantitative evaluation of functional imaging data.
机译:脑成像数据的比较需要来自不同个体的数据集的精确匹配。用于优化数据集匹配的变形方法可以利用局部灰度值分布或要比较的图像内的可识别参考点。如果灰度值包含应在图像之间进行比较的功能信息,则无法使用更舒适的基于灰度值的变形。使用基于点的变形方法的主要缺点是缺乏在可比较的数据集中有效,精确定义参考点(地标)的方法。在这里,我们提出了一种基于3D差分算子的自动检测足够数量的界标的新颖方法。此外,我们开发了一种新的距离加权变形方法,该方法优化了位移矢量的各个局部加权因子。使用一套放射自显影仪评估方法的质量,该放射自显影仪记录了声刺激后沙鼠大脑的代谢活性。将新的翘曲方法与基于界标的翘曲的已知方法(即,具有径向基函数的翘曲和距离加权方法)进行了比较。对于本研究中介绍的数据集,我们新的优化变形方法使线性互相关性增加了4.44%,体积重叠指数增加了1.55%,配准误差减少了36.2%。另外,翘曲后功能差异的检测得到改善。因此,该新方法是强大的工具,可增强复杂生物结构的比较和功能成像数据的定量评估。

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