This paper presents the effects of late gadolinium enhancement (LGE) magnetic resonance imaging (MRI) image size on deep learning based fully automated quantification of myocardial infarction (MI). The main objective is to determine the best size for LGE MRI images in the training dataset to achieve optimal deep learning training outcomes. To determine the new size of LGE MRI images of the reference training dataset, non-extra pixel and extra pixel interpolation algorithms are used. A novel strategy based on thresholding, median filtering, and subtraction operations is introduced and applied to remove extra class labels in interpolated ground truth (GT) segmentation masks. Fully automated quantification is achieved using the expectation maximization, weighted intensity, a priori information (EWA) algorithm, and the outcome of automatic semantic segmentation of LGE-MRI images with the convolutional neural network (CNN). In the experiments, common class metrics are used to evaluate the quality of semantic segmentation with a CNN architecture of interest (U-net) against the GT segmentation. Arbitrary threshold, comparison of the sums, and sums of differences are used to estimate the relationship between semi-automatic and fully automated quantification of MI results. A close relationship between semi-automatic and fully automated quantification of MI results was more identified in the case involving the dataset of bigger LGE MRI images than in that of the dataset of smaller LGE MRI images, where quantification results based on the dataset of bigger LGE MRI images were 55.5% closer the manual or semi-automatic results while quantification results based on the dataset of smaller LGE MRI images were 22.2% closer the manual results
翻译:本文展示了晚加分增强(LGE)磁共振动成像(MRI)图像大小对深深学习基础、完全自动化地心肌梗塞(MI)完全自动量化(MI)的图像的影响。主要目的是确定培训数据集中LGE MRI图像的最佳规模,以便实现最佳深深学习培训结果。要确定LGE MRI图像的参考培训数据集、非Extra Pixel 和额外的像素内插化算法的新规模,使用基于阈值、中位过滤和减法的新型战略,以删除基于深度阈值、中位图像过滤和减法的更深深深深层学习,以完全自动化地心(GTGE)的更深层图像中更多的类标签。 使用预期最大化、加权强度、事先信息(EWA)的算法以及LGE-M(LWA)图像的自动解析解析法分解新规模。 在实验中,使用普通类测量用于评估与CNNCN(U-net)利益结构结构(U-GE)更深点的精密(U-net)的语结构结构图解质量分析结果,在GLILAL门槛中,同时使用数据结果的更精确、更精确分析、更精确、更精确的LULU。