Artificially Generated Training Datasets for Supervised Machine Learning Techniques in Magnetic Resonance Imaging: An Example in Myocardial Segmentation

C. Xanthis, K. Haris, D. Filos, A. Aletras
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Abstract

Machine learning techniques have become increasingly successful over the last few years in medical image analysis and radiology. However, the low availability, relativeness and size of the training data sets required by the associated learning algorithms prevents their further development or delays their application in clinical practice.This study presented for the first time the development of artificially generated training datasets for supervised learning techniques through the incorporation of a realistic simulation framework in the field of Magnetic Resonance Imaging (MRI). An example in left-ventricle segmentation was utilized and the performance of a fully convolutional network on true cardiac MR data was evaluated.
磁共振成像中用于监督机器学习技术的人工生成训练数据集:以心肌分割为例
在过去的几年里,机器学习技术在医学图像分析和放射学方面变得越来越成功。然而,相关学习算法所需的训练数据集的低可用性、相对性和规模阻碍了它们的进一步发展或延迟了它们在临床实践中的应用。本研究通过结合磁共振成像(MRI)领域的现实模拟框架,首次提出了为监督学习技术人工生成训练数据集的发展。以左心室分割为例,对全卷积网络在真实心脏MR数据上的性能进行了评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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