Automatic Segmentation of Heschl Gyrus and Planum Temporale by MRICloud

Carlos Perez-Heydrich, Dominic Padova, Kwame S. Kutten, C. Ceritoglu, Andreia Faria, J. Ratnanather, Yuri Agrawal
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Abstract

This study used a cloud-based program, MRICloud, which parcellates T1 MRI brain scans using a probabilistic classification based on manually labeled multi-atlas, to create a tool to segment Heschl gyrus (HG) and the planum temporale (PT). MRICloud is an online platform that can automatically segment structural MRIs into 287 labeled brain regions. A 31-brain multi-atlas was manually resegmented to include tags for the HG and PT. This modified atlas set with additional manually labeled regions of interest acted as a new multi-atlas set and was uploaded to MRICloud. This new method of automated segmentation of HG and PT was then compared to manual segmentation of HG and PT in MRIs of 10 healthy adults using Dice similarity coefficient (DSC), Hausdorff distance (HD), and intraclass correlation coefficient (ICC). This multi-atlas set was uploaded to MRICloud for public use. When compared to reference manual segmentations of the HG and PT, there was an average DSC for HG and PT of 0.62 ± 0.07, HD of 8.10 ± 3.47 mm, and an ICC for these regions of 0.83 (0.68–0.91), consistent with an appropriate automatic segmentation accuracy. This multi-atlas can alleviate the manual segmentation effort and the difficulty in choosing an HG and PT anatomical definition. This protocol is limited by the morphology of the MRI scans needed to make the MRICloud atlas set. Future work will apply this multi-atlas to observe MRI changes in hearing-associated disorders.
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利用 MRICloud 自动分割赫氏回和颞叶平面
本研究使用基于云的程序MRICloud,该程序在人工标记的多图谱基础上使用概率分类法对T1 MRI脑扫描进行分割,从而创建了一种分割Heschl回(HG)和颞平面(PT)的工具。 MRICloud 是一个在线平台,可将结构性 MRI 图像自动分割为 287 个已标记的脑区。人工重新分割了 31 个脑部多图集,加入了 HG 和 PT 的标记。这套修改后的图集加上额外的人工标记感兴趣区,就成了一套新的多图集,并被上传到 MRICloud。然后,使用狄斯相似性系数(DSC)、豪斯多夫距离(HD)和类内相关系数(ICC),将这种自动分割 HG 和 PT 的新方法与手动分割 10 名健康成人 MRI 中的 HG 和 PT 进行比较。 该多图集已上传至 MRICloud 供公众使用。与 HG 和 PT 的参考人工分割相比,HG 和 PT 的平均 DSC 为 0.62 ± 0.07,HD 为 8.10 ± 3.47 mm,这些区域的 ICC 为 0.83(0.68-0.91),符合适当的自动分割准确性。 这种多图谱可减轻手动分割的工作量以及选择 HG 和 PT 解剖定义的难度。该方案受限于制作 MRICloud 地图集所需的 MRI 扫描的形态。未来的工作将应用该多图集来观察听力相关疾病的 MRI 变化。
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