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Automatic detection of lesion load change in Multiple Sclerosis using convolutional neural networks with segmentation confidence

机译:使用分割信心使用卷积神经网络自动检测多发性硬化的损伤负荷变化

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摘要

The detection of new or enlarged white-matter lesions is a vital task in the monitoring of patients undergoing disease-modifying treatment for multiple sclerosis. However, the definition of ‘new or enlarged’ is not fixed, and it is known that lesion-counting is highly subjective, with high degree of inter- and intra-rater variability. Automated methods for lesion quantification, if accurate enough, hold the potential to make the detection of new and enlarged lesions consistent and repeatable. However, the majority of lesion segmentation algorithms are not evaluated for their ability to separate radiologically progressive from radiologically stable patients, despite this being a pressing clinical use-case. In this paper, we explore the ability of a deep learning segmentation classifier to separate stable from progressive patients by lesion volume and lesion count, and find that neither measure provides a good separation. Instead, we propose a method for identifying lesion changes of high certainty, and establish on an internal dataset of longitudinal multiple sclerosis cases that this method is able to separate progressive from stable time-points with a very high level of discrimination (AUC = 0.999), while changes in lesion volume are much less able to perform this separation (AUC = 0.71). Validation of the method on two external datasets confirms that the method is able to generalize beyond the setting in which it was trained, achieving an accuracies of 75 % and 85 % in separating stable and progressive time-points.
机译:新的或扩大的白品病变的检测是监测经过多发性硬化的疾病改性治疗患者的重要任务。然而,“新的或扩大”的定义不是固定的,并且已知病变计数是高度主观的,具有高度和帧内内的变异性。用于病变量化的自动化方法,如果足够准确,可能会使潜力能够检测到新的和扩大的病变一致和可重复。然而,尽管这是压制临床用例,但没有评估大多数病变分割算法的能力,因为这是一种临床用途。在本文中,我们探讨了深度学习分割分类机的能力,通过病变体积和病变计数从渐进式患者分离稳定,并发现两种测量都提供了良好的分离。相反,我们提出了一种用于识别高确定性的病变变化的方法,并在纵向多发性硬化壳体的内部数据集中建立这种方法能够从稳定的时间点与具有非常高的识别(AUC = 0.999)分离逐次,虽然病变量的变化能够执行该分离(AUC = 0.71)。在两个外部数据集上验证方法确认该方法能够超出其培训的设置,在分离稳定和逐步的时间点时,实现75%和85%的精度。

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