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Validation of Automated PET Segmentation Methods Based on Connected Components for Myocardium

机译:基于心肌的连接组分验证自动宠物分割方法

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Automated segmentation of myocardium is essential as it allows reproducible and fast image analysis. In this study, three methods for automated myocardial segmentation were validated. The methods were based on the connected components (CC) derived from Positron Emission Tomography (PET) images. PET images were acquired on 22 patients with [18F]- Fluorodeoxyglucose ([18F]-FDG). The methods were compared against manual segmentation in terms of Dice indices as well as volume and center-of-mass (COM) differences. The developed methods are called the largest of CCs (LCC), number of CCs (NCC) and supervised CCs (SCC). LCC method is based on deriving the largest CCs, NCC deriving the number of CCs and SCC considers CCs that contain a voxel that locates in the myocardium. Dice indices for these methods (mean ± SD) were 0.70 ± 0.35, 0.54 ± 0.45 and 0.84 ± 0.17 for LCC, NCC and SCC, respectively. Volume differences were (mean ± SD) 0.73 dL ± 0.65 dL, 4.78 dL ± 5.77 dL and 0.58 dL ± 0.63 dL and COM differences were (mean ± SD) 16.9 mm ± 36.7 mm, 46.3 mm ± 58.1 mm and 2.47 mm ± 2.54 mm for LCC, NCC and SCC, respectively. The SCC method had the highest Dice indices with lower volume and COM differences compared to NCC and LCC.
机译:心肌的自动分割对于它允许可重复和快速的图像分析至关重要。在这项研究中,验证了三种自动心肌细分方法。该方法基于来自正电子发射断层扫描(PET)图像的连接组分(CC)。在22名患者中获得PET图像[ 18 F] - 氟脱氧葡萄糖([ 18 f] -fdg)。将这些方法与骰子指数的手动分段进行比较,以及体积和质量(COM)差异。开发方法称为CCS(LCC),CCS数量(NCC)和监督CCS(SCC)的最大。 LCC方法基于导出最大的CCS,NCC导出CCS的数量和SCC考虑包含在心肌中定位的体素的CC。对于LCC,NCC和SCC,这些方法(平均值±SD)的骰子指数分别为0.70±0.35,0.54±0.45和0.84±0.17。体积差异是(平均值±SD)0.73 DL±0.65 DL,4.78 DL±5.77 DL和0.58 DL±0.63 DL和COM差异(平均±SD)16.9 mm±36.7 mm,46.3mm±58.1mm和2.47mm±2.54 MM对于LCC,NCC和SCC。与NCC和LCC相比,SCC方法具有较低的体积和COM差异的最高骰子指数。

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