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首页> 外文期刊>Medical Physics >DC‐AL GAN: Pseudoprogression and true tumor progression of glioblastoma multiform image classification based on DCGAN and AlexNet
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DC‐AL GAN: Pseudoprogression and true tumor progression of glioblastoma multiform image classification based on DCGAN and AlexNet

机译:DC-AL GaN:基于DCGAN和AlexNet的胶质母细胞瘤多形形图像分类的假冒竞争和真实肿瘤进展

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摘要

Purpose Pseudoprogression (PsP) occurs in 20–30% of patients with glioblastoma multiforme (GBM) after receiving the standard treatment. PsP exhibits similarities in shape and intensity to the true tumor progression (TTP) of GBM on the follow‐up magnetic resonance imaging (MRI). These similarities pose challenges to the differentiation of these types of progression and hence the selection of the appropriate clinical treatment strategy. Methods To address this challenge, we introduced a novel feature learning method based on deep convolutional generative adversarial network (DCGAN) and AlexNet, termed DC‐AL GAN, to discriminate between PsP and TTP in MRI images. Due to the adversarial relationship between the generator and the discriminator of DCGAN, high‐level discriminative features of PsP and TTP can be derived for the discriminator with AlexNet. We also constructed a multifeature selection module to concatenate features from different layers, contributing to more powerful features used for effectively discriminating between PsP and TTP. Finally, these discriminative features from the discriminator are used for classification by a support vector machine (SVM). Tenfold cross‐validation (CV) and the area under the receiver operating characteristic (AUC) were applied to evaluate the performance of this developed algorithm. Results The accuracy and AUC of DC‐AL GAN for discriminating PsP and TTP after tenfold CV were 0.920 and 0.947. We also assessed the effects of different indicators (such as sensitivity and specificity) for features extracted from different layers to obtain a model with the best classification performance. Conclusions The proposed model DC‐AL GAN is capable of learning discriminative representations from GBM datasets, and it achieves desirable PsP and TTP classification performance superior to other state‐of‐the‐art methods. Therefore, the developed model would be useful in the diagnosis of PsP and TTP for GBM.
机译:目的假期激发(PSP)在接受标准治疗后,在20-30%的胶质母细胞瘤患者中发生。 PSP在随访磁共振成像(MRI)上具有形状和强度的形状和强度的相似之处,对GBM的真实肿瘤进展(TTP)。这些异同对这些类型的进展的分化构成挑战,因此选择适当的临床治疗策略。解决这一挑战的方法,我们介绍了一种基于深度卷积生成对冲网络(DCGAN)和亚历克网称为DC-AL GAN的新颖特征学习方法,以区分PSP和TTP在MRI图像中。由于发电机与DCGAN的鉴别器之间的对抗关系,可以为具有AlexNet的鉴别器导出PSP和TTP的高级鉴别特征。我们还构建了一个多端点选择模块,以连接来自不同层的功能,有助于更强大的功能,用于有效地区分PSP和TTP。最后,来自鉴别器的这些判别特征用于通过支持向量机(SVM)进行分类。应用了十倍交叉验证(CV)和接收器操作特性(AUC)下的区域以评估该发达算法的性能。导致十倍CV鉴别PSP和TTP的DC-A1 GaN的精度和AUC为0.920和0.947。我们还评估了不同层次(例如敏感性和特异性)对不同层提取的特征的影响,以获得具有最佳分类性能的模型。结论该模型DC-AL GAN是能够学习从GBM数据集判别表示的,并且实现期望的PSP和TTP分类性能优于其它国家的最先进的方法。因此,开发的模型可用于诊断PSP和TTP的GBM。

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