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One-shot domain adaptation in multiple sclerosis lesion segmentation using convolutional neural networks

机译:卷积神经网络在多发性硬化病变分割中的单发域适应

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摘要

In recent years, several convolutional neural network (CNN) methods have been proposed for the automated white matter lesion segmentation of multiple sclerosis (MS) patient images, due to their superior performance compared with those of other state-of-the-art methods. However, the accuracies of CNN methods tend to decrease significantly when evaluated on different image domains compared with those used for training, which demonstrates the lack of adaptability of CNNs to unseen imaging data. In this study, we analyzed the effect of intensity domain adaptation on our recently proposed CNN-based MS lesion segmentation method. Given a source model trained on two public MS datasets, we investigated the transferability of the CNN model when applied to other MRI scanners and protocols, evaluating the minimum number of annotated images needed from the new domain and the minimum number of layers needed to re-train to obtain comparable accuracy. Our analysis comprised MS patient data from both a clinical center and the public ISBI2015 challenge database, which permitted us to compare the domain adaptation capability of our model to that of other state-of-the-art methods. In both datasets, our results showed the effectiveness of the proposed model in adapting previously acquired knowledge to new image domains, even when a reduced number of training samples was available in the target dataset. For the ISBI2015 challenge, our one-shot domain adaptation model trained using only a single case showed a performance similar to that of other CNN methods that were fully trained using the entire available training set, yielding a comparable human expert rater performance. We believe that our experiments will encourage the MS community to incorporate its use in different clinical settings with reduced amounts of annotated data. This approach could be meaningful not only in terms of the accuracy in delineating MS lesions but also in the related reductions in time and economic costs derived from manual lesion labeling.
机译:近年来,由于卷积神经网络与其他最新方法相比具有优越的性能,因此已经提出了几种卷积神经网络(CNN)方法用于多发性硬化(MS)患者图像的自动白质病变分割。但是,与用于训练的CNN方法相比,在不同图像域上进行评估时,其准确性往往会显着降低,这表明CNN对看不见的成像数据缺乏适应性。在这项研究中,我们分析了强度域适应对我们最近提出的基于CNN的MS病变分割方法的影响。给定在两个公共MS数据集上训练过的源模型,我们研究了CNN模型在应用于其他MRI扫描仪和协议时的可移植性,评估了新域中所需的带注释的图像的最小数量以及重新进行图像处理所需的最小层数训练以获得可比的精度。我们的分析包括来自临床中心和ISBI2015公共挑战数据库的MS患者数据,这使我们能够将模型的领域适应能力与其他最新方法的领域适应能力进行比较。在两个数据集中,我们的结果表明,即使目标数据集中可用的训练样本数量减少,所提出的模型在将先前获得的知识应用于新的图像域方面的有效性。对于ISBI2015挑战,我们仅使用一个案例进行训练的单域适应模型就显示出与使用整个可用训练集进行全面训练的其他CNN方法相似的性能,从而产生了可比的人类专家评分器性能。我们相信,我们的实验将鼓励MS社区在减少注释数据量的情况下,将其在不同的临床环境中使用。这种方法不仅在描述MS病变的准确性方面,而且在从手动病变标记中获得的相关时间和经济成本的减少方面都可能是有意义的。

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