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Hybrid Unified Deep Learning Network for Highly Precise Gleason Grading of Prostate Cancer

机译:高度统一的Gleason前列腺癌分级的混合统一深度学习网络

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Prostate cancer is one of the leading causes of death around the world. The manual Gleason grading of prostate cancer after histological analysis of stained tissue slides is rigorous, time-consuming and also suffers from subjectivity among experts. Image-based computer-assisted diagnosis can serve pathologists to efficiently diagnose cancer in early stages. We have proposed a Hybrid Unified Deep Learning Architecture to grade the prostate cancer accurately and quickly. For the feature analysis technique, we have implemented the shearlet transform in addition to original RGB images. We have introduced saliency maps of images using a Deep Convolutional Generative Adversarial Network (DCGAN) by applying semantic segmentation technique with the salient maps provided by pathology experts. Our proposed architecture is a combination of Convolutional Neural Netowork (CNN), Recurrent Neural Netowrk (RNN) and fine-tuned VGGnet. We have introduced a novel approach of utilizing LSTM-RNN for the sequential subband images of the shearlet coefficients. Our hybrid framework is a computationally high-cost architecture to train but proved to be highly accurate and faster in the testing phase. With our approach, we have achieved an accuracy of 0.98 ± 0.02 for Gleason grading of prostate cancer on the dataset provided by Jafari-Khouzani and Soltanian-Zadeh which is used in successive research work.
机译:前列腺癌是世界范围内主要的死亡原因之一。在对染色的组织玻片进行组织学分析后,对前列腺癌进行的手动格里森分级是严格,耗时的,并且还存在专家的主观性。基于图像的计算机辅助诊断可以帮助病理学家在早期阶段有效地诊断癌症。我们提出了一种混合统一深度学习架构,可以准确,快速地对前列腺癌进行分级。对于特征分析技术,除了原始的RGB图像外,我们还实现了剪切波变换。我们通过应用语义分割技术和病理学专家提供的显着图,使用深度卷积生成对抗网络(DCGAN)引入了图像的显着图。我们提出的体系结构是卷积神经网络(CNN),递归神经网络(RNN)和微调的VGGnet的组合。我们介绍了一种利用LSTM-RNN来获取小波系数的连续子带图像的新颖方法。我们的混合框架是需要训练的高计算成本架构,但在测试阶段证明是高度准确且速度更快。通过我们的方法,在由Jafari-Khouzani和Soltanian-Zadeh提供的数据集上,我们对前列腺癌的Gleason分级的准确性达到了0.98±0.02,该数据被用于后续的研究工作中。

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