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Deep learning for segmentation of brain tumors: Can we train with images from different institutions?

机译:深度学习脑肿瘤的分割:我们可以用不同机构的图像训练吗?

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Deep learning and convolutional neural networks (CNNs) in particular are increasingly popular tools for segmentation and classification of medical images. CNNs were shown to be successful for segmentation of brain tumors into multiple regions or labels. However, in the environment which fosters data-sharing and collection of multi-institutional datasets, a question arises: does training with data from another institution with potentially different imaging equipment, contrast protocol, and patient population impact the segmentation performance of the CNN? Our study presents preliminary data towards answering this question. Specifically, we used MRI data of glioblastoma (GBM) patients for two institutions present in The Cancer Imaging Archive. We performed a process of training and testing CNN multiple times such that half of the time the CNN was tested on data from the same institution that was used for training and half of the time it was tested on another institution, keeping the training and testing set size constant. We observed a decrease in performance as measured by Dice coefficient when the CNN was trained with data from a different institution as compared to training with data from the same institution. The changes in performance for the entire tumor and for four different labels within the tumor were: 0.72 to 0.65 (p=0.06), 0.61 to 0.58 (p=0.49), 0.54 to 0.51 (p=0.82), 0.31 to 0.24 (p<0.03), and 0.43 to 0.31(p<0.003) respectively. In summary, we found that while data across institutions can be used for development of CNNs, this might be associated with a decrease in performance.
机译:特别是深度学习和卷积神经网络(CNNS)尤其是用于分割和医学图像分类的越来越流行的工具。显示CNNS成功用于将脑肿瘤分割成多个区域或标签。但是,在促进数据共享和集合的环境共享和收集多机构数据集的环境中,出现了一个问题:使用其他机构的数据与潜在不同的成像设备,对比度协议和患者人口影响CNN的分割性能?我们的研究提出了回答这个问题的初步数据。具体地,我们使用胶质母细胞瘤(GBM)患者的MRI数据进行癌症成像档案中存在的两种院校。我们在多次上进行了培训和测试CNN的过程,使得CNN在来自用于培训的同一机构的数据上测试了一半的时间,并在另一个机构测试了一半的时间,保持培训和测试集尺寸常数。当CNN与来自不同机构的数据的训练相比,当CNN训练时,我们观察到通过骰子系数测量的性能降低。整个肿瘤的性能和肿瘤中四种不同标签的变化为:0.72至0.65(p = 0.06),0.61至0.58(p = 0.49),0.54至0.51(p = 0.82),0.31至0.24(p <0.03),分别为0.43至0.31(P <0.003)。总之,我们发现,虽然跨机构的数据可用于开发CNN,但这可能与性能降低相关。

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