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Automatic PET Cervical Tumor Segmentation by Deep Learning with Prior Information

机译:通过具有先验信息的深度学习自动进行PET宫颈肿瘤分割

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Cervical tumor segmentation on 3D ~(18)FDG PET images is a challenging task due to the proximity between cervix and bladder. Since bladder has high capacity of ~(18)FDG tracers, bladder intensity is similar to cervical tumor intensity in the PET image. This inhibits traditional segmentation methods based on intensity variation of the image to achieve high accuracy. We propose a supervised machine learning method that integrates a convolutional neural network (CNN) with prior information of cervical tumor. In the proposed prior information constraint CNN (PIC-CNN) algorithm, we first construct a CNN to weaken the bladder intensity value in the image. Based on the roundness of cervical tumor and relative positioning information between bladder and cervix, we obtain the final segmentation result from the output of the network by an auto-thresholding method. We evaluate the performance of the proposed PIC-CNN method on PET images from 50 cervical cancer patients whose cervix and bladder are abutting. The PIC-CNN method achieves a mean DSC value of 0.84 while transfer learning method based on fully convolutional neural networks (FCN) achieves 0.77 DSC. In addition, traditional segmentation methods such as automatic threshold and region-growing method only achieve 0.59 and 0.52 DSC values, respectively. The proposed method provides a more accurate way for segmenting cervical tumor in 3D PET image.
机译:由于子宫颈和膀胱之间的距离,在3D〜(18)FDG PET图像上进行宫颈肿瘤分割是一项艰巨的任务。由于膀胱具有〜(18)FDG示踪剂的高容量,因此膀胱强度类似于PET图像中的宫颈肿瘤强度。这抑制了基于图像强度变化的传统分割方法以实现高精度。我们提出了一种监督式机器学习方法,该方法将卷积神经网络(CNN)与子宫颈肿瘤的先验信息集成在一起。在提出的先验信息约束CNN(PIC-CNN)算法中,我们首先构造一个CNN以削弱图像中的膀胱强度值。基于子宫颈肿瘤的圆度和膀胱与子宫颈之间的相对定位信息,我们通过自动阈值法从网络的输出中获得最终的分割结果。我们评估拟议的PIC-CNN方法在50例子宫颈和膀胱紧靠的宫颈癌患者的PET图像上的性能。 PIC-CNN方法的平均DSC值为0.84,而基于全卷积神经网络(FCN)的转移学习方法的DSC值为0.77。此外,传统的分割方法(例如自动阈值和区域增长方法)分别只能达到0.59和0.52 DSC值。所提出的方法为分割3D PET图像中的宫颈肿瘤提供了一种更准确的方法。

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