MRI-based Diagnosis of Brain Tumours Using a Deep Neural Network Framework

Mrs M Acharya, A. Alsadoon, Shahd Al-Janabi, P. Prasad, A. Dawoud, Ghossoon Alsadoon, M. Paul
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引用次数: 2

Abstract

The median survival time of patients with high grade glioma, a form of brain tumour, is 1-3 years. The current best practice adopts Convolutional Neural Network (CNN) for image classification and tumour detection. This method provides a significant improvement in brain tumour segmentation of Magnetic Resonance Imaging (MRI) images in comparison to other frameworks, but it is nonetheless slow and lacks precision. We sought to build upon the current best practice model by utilising a Deep Neural Network (DNN) model, which entailed modification of the segmentation and feature-extraction stages in order to improve the accuracy of those stages and the resulting segmentation. We contrasted the accuracy and efficiency of our model to the current best practice model using 10 brain tumour patient MRI datasets. First, the segmentation accuracy of our proposed model (M= 90%) outperformed that of the current best practice (M=78%). Second, the tumour detection processing time of our proposed model (M=34 ms) also outperformed that of the current best practice (M=73 ms). We, therefore, replicated previous studies by showing that automatic segmentation can aid in brain tumour detection. Importantly, we extended previous studies by proposing a model that classifies a brain tumour with greater accuracy and within lower processing times. Validation of the model with a larger dataset is recommended.
基于mri的脑肿瘤诊断的深度神经网络框架
高级别胶质瘤是脑肿瘤的一种,其患者的中位生存时间为1-3年。目前的最佳实践是采用卷积神经网络(CNN)进行图像分类和肿瘤检测。与其他框架相比,该方法在磁共振成像(MRI)图像的脑肿瘤分割方面提供了显着改进,但仍然缓慢且缺乏精度。我们试图通过使用深度神经网络(DNN)模型来建立当前的最佳实践模型,该模型需要修改分割和特征提取阶段,以提高这些阶段和最终分割的准确性。我们使用10个脑肿瘤患者MRI数据集对比了我们的模型与当前最佳实践模型的准确性和效率。首先,我们提出的模型的分割精度(M= 90%)优于当前的最佳实践(M=78%)。其次,我们提出的模型的肿瘤检测处理时间(M=34 ms)也优于目前的最佳实践(M=73 ms)。因此,我们复制了以前的研究,表明自动分割可以帮助脑肿瘤检测。重要的是,我们通过提出一个模型来扩展先前的研究,该模型可以在更短的处理时间内以更高的准确性对脑肿瘤进行分类。建议使用更大的数据集验证模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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