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Deep learning with attention supervision for automated motion artefact detection in quality control of cardiac T1-mapping

机译:深度学习,注意力监督在心脏T1映射质量控制中的自动化运动人工检测

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摘要

Cardiac magnetic resonance quantitative T1-mapping is increasingly used for advanced myocardial tissue characterisation. However, cardiac or respiratory motion can significantly affect the diagnostic utility of T1 maps, and thus motion artefact detection is critical for quality control and clinically-robust T1 measurements. Manual quality control of T1-maps may provide reassurance, but is laborious and prone to error. We present a deep learning approach with attention supervision for automated motion artefact detection in quality control of cardiac T1-mapping. Firstly, we customised a multi-stream Convolutional Neural Network (CNN) image classifier to streamline the process of automatic motion artefact detection. Secondly, we imposed attention supervision to guide the CNN to focus on targeted myocardial segments. Thirdly, when there was disagreement between the human operator and machine, a second human validator reviewed and rescored the cases for adjudication and to identify the source of disagreement. The multi-stream neural networks demonstrated 89.8% agreement, 87.4% ROC-AUC on motion artefact detection with the human operator in the 2568 T1 maps. Trained with additional supervision on attention, agreements and AUC significantly improved to 91.5% and 89.1%, respectively (p 0.001). Rescoring of disagreed cases by the second human validator revealed that human operator error was the primary cause of disagreement. Deep learning with attention supervision provides a quick and high-quality assurance of clinical images, and outperforms human operators.y
机译:心脏磁共振定量T1映射越来越多地用于晚期心肌组织表征。然而,心脏或呼吸运动可以显着影响T1地图的诊断效用,因此运动人工制品检测对于质量控制和临床稳健的T1测量至关重要。 T1地图的手动质量控制可能会提供保证,但艰巨且易于错误。我们提出了一种深入的学习方法,对心脏T1映射质量控制中的自动运动伪造检测的注意力监督。首先,我们定制了一个多流卷积神经网络(CNN)图像分类器,以简化自动运动伪字法检测的过程。其次,我们强加监督导致CNN专注于有针对性的心肌细分。第三,当人类经营者和机器之间存在分歧时,第二人体验证者审查并重新审查了案件的裁决,并确定了分歧的来源。多流神经网络符合89.8%的协议,87.4%的Roc-Auc在2568 T1地图中使用人工操作员进行运动人工制品检测。培训额外的注意力监督,协议和AUC分别显着提高至91.5%和89.1%(P <0.001)。第二个人验证者的反派案件的救援揭示了人类运营商错误是分歧的主要原因。深入了解注意力监督提供了临床图像的快速和高质量的保证,并且优于人类运营商.Y

著录项

  • 来源
    《Artificial intelligence in medicine》 |2020年第11期|101955.1-101955.9|共9页
  • 作者单位

    Univ Oxford Radcliffe Dept Med Div Cardiovasc Med Oxford Ctr Clin Magnet Resonance Res Oxford England;

    Univ Oxford Radcliffe Dept Med Div Cardiovasc Med Oxford Ctr Clin Magnet Resonance Res Oxford England;

    Univ Oxford Radcliffe Dept Med Div Cardiovasc Med Oxford Ctr Clin Magnet Resonance Res Oxford England;

    Univ Oxford Radcliffe Dept Med Div Cardiovasc Med Oxford Ctr Clin Magnet Resonance Res Oxford England;

    Univ Oxford Radcliffe Dept Med Div Cardiovasc Med Oxford Ctr Clin Magnet Resonance Res Oxford England;

    Univ Oxford Radcliffe Dept Med Div Cardiovasc Med Oxford Ctr Clin Magnet Resonance Res Oxford England;

    Univ Oxford Radcliffe Dept Med Div Cardiovasc Med Oxford Ctr Clin Magnet Resonance Res Oxford England;

    Univ Oxford Radcliffe Dept Med Div Cardiovasc Med Oxford Ctr Clin Magnet Resonance Res Oxford England;

    Univ Oxford Radcliffe Dept Med Div Cardiovasc Med Oxford Ctr Clin Magnet Resonance Res Oxford England;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Cardiac Magnetic Resonance; T1-mapping; Quality Control; Convolutional Neural Network; Attention Mapping; Attention Supervision;

    机译:心脏磁共振;T1映射;质量控制;卷积神经网络;注意映射;注意监督;

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