基于卷积和递归神经网络图像分析的MRI质量控制算法

Grigorii Shoroshov, O. Senyukova, Dmitry Semenov, D. Sharova
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引用次数: 0

摘要

MRI质量控制对保证检查安全和质量起着重要作用。该领域的大部分工作都致力于开发无参考质量度量。最近的一些研究使用了2D或3D卷积神经网络。在本研究中,我们收集了363个已知质量控制结果的临床MRI序列和1295个未已知质量控制结果的临床MRI序列的数据集。我们提出了一种基于神经网络的方法,该方法通过使用双向LSTM来考虑三维环境,以及一种基于无参考质量指标预测的预训练方法,该方法使用effentnet卷积神经网络,允许使用未标记数据。该方法可以预测质量控制结果,ROC-AUC接近0.94。
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MRI Quality Control Algorithm Based on Image Analysis Using Convolutional and Recurrent Neural Networks
MRI quality control plays a significant role in ensuring safety and quality of examinations. Most of the work in the area is devoted to the development of no-reference quality metrics. Some recent works use 2D or 3D convolutional neural networks. For this study, we collected a dataset of 363 clinical MRI sequences with known results of quality control as well as 1295 clinical MRI sequences without known results of quality control. We propose a method based on neural networks that takes into account the three-dimensional context through the use of bidirectional LSTM, as well as a pre-training method based on a prediction of no-reference quality metrics using EfficientNet convolutional neural network that allows the use of unlabeled data. The proposed method makes it possible to predict the result of quality control with ROC-AUC of almost 0.94.
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