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Glioma Diagnosis Aid through CNNs and Fuzzy-C Means for MRI

机译:胶质瘤诊断助剂通过CNN和FUZZY-C为MRI手段

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Glioma is a type of brain tumor that causes mortality in many cases. Early diagnosis is an important factor. Typically, it is detected through MRI and then either a treatment is applied, or it is removed through surgery. Deep-learning techniques are becoming popular in medical applications and image-based diagnosis. Convolutional Neural Networks are the preferred architecture for object detection and classification in images. In this paper, we present a study to evaluate the efficiency of using CNNs for diagnosis aids in glioma detection and the improvement of the method when using a clustering method (Fuzzy C-means) for preprocessing the input MRI dataset. Results offered an accuracy improvement from 0.77 to 0.81 when using Fuzzy C-Means.
机译:胶质瘤是一种脑肿瘤,在许多情况下会导致死亡率。早期诊断是一个重要因素。通常,通过MRI检测,然后施加治疗,或者通过手术去除。深度学习技术在医疗应用和基于图像的诊断中变得流行。卷积神经网络是图像检测和图像分类的首选架构。在本文中,我们提出了一项研究,评估使用CNNS用于诊断胶质瘤检测中的诊断效率的效率和使用聚类方法(模糊C型方式)进行预处理输入MRI数据集的方法。结果在使用模糊C-Meance时,从0.77到0.81的准确性提高。

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