CNN用于多发性硬化症病灶分割:有多少患者需要完全监督的方法?

A. Fenneteau, P. Bourdon, D. Helbert, C. Fernandez-Maloigne, C. Habas, R. Guillevin
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引用次数: 2

摘要

在这项研究中,我们提出了改进现有的人工神经网络架构,MPU-net,它是为磁共振图像上的多发性硬化症病变分割而设计的,具有很少的参数。利用这种改进的体系结构,我们进行了一项研究,以评估训练样本数量对模型性能和泛化的影响。这项研究背后的问题是:“在一个合适的架构下,我们需要多少病人?”我们评估了9种不同的MPU-net架构。然后,在选择出最佳架构后,我们对不同患者数量的模型进行多次学习,并评估其性能。深度监督的加入、卷积层数的减少和正则化层的增加产生了一个更加稳定和高性能的体系结构。只有10次考试的选定模型的学习效果与23次考试的学习效果相当。因此,在我们的实验设置中,仅用10个完全注释的示例就可以学习一个高性能模型。
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CNN for multiple sclerosis lesion segmentation: How many patients for a fully supervised method?
In this study we propose to improve an existing artificial neural network architecture, the MPU-net, which is designed for having very few parameters for multiple sclerosis lesion segmentation on magnetic resonance images. With this improved architecture we conducted a study to assess the influence of the number of training examples on the model performance and generalization. The question behind this study is: "With an appropriate architecture, how many patients do we need?". We evaluated 9 different adaptations of the MPU-net architecture. Then, after the selection of the best architecture we learned the model multiple times with different numbers of patients and assessed its performances. The addition of deep supervision, the reduction of number of convolutional layers and the addition of regularization layers produced a more stable and performant architecture. Learnings of selected model with only 10 exams delivered performances equivalent to learnings with 23 exams. So, in our experimental setup, it is possible to learn a performant model with only 10 fully annotated examples.
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