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Classification of T1 and T2 Weighted Magnetic Resonance Prostate Images Using Convolutional Neural Networks

机译:卷积神经网络的T1和T2加权磁共振前列腺图像分类

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Prostate cancer is a type of cancer that is very common in men. Literature review, it has been observed that there are many studies conducted on this prostate image using various image processing methods for cancer diagnosis and treatment. Secondary hemorrhage sites in prostate biopsy may cause misdiagnosis in T2-weighted magnetic resonance (MR) prostate images, in terms of tumor. In these cases, T1-weighted MR imaging of the prostate is helpful in diagnosing. In such situations, it may be helpful to prevent misdiagnosis and to help diagnosis; In this study, one deep convolutional neural network learning algorithms (CNN) using T1 and T2-weighted MR image classification process of the prostate were performed. As a result of this, an CNN model was developed that can classify MR prostate images.
机译:前列腺癌是一种癌症,在男性中很常见。文献综述,已经观察到,使用各种图像处理方法对癌症诊断和治疗方法进行了许多研究。前列腺活组织检查中的二次出血位点可能导致T2加权磁共振(MR)前列腺图像中的误诊在肿瘤方面。在这些情况下,前列腺的T1加权MR成像有助于诊断。在这种情况下,预防误诊和帮助诊断可能有助于。在该研究中,进行了使用前列腺的T1和T2加权MR图像分类过程的一个深卷积神经网络学习算法(CNN)。结果,开发了CNN模型,其可以对前列腺术图像进行分类。

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