论文标题

使用新的进化卷积神经网络进行脑肿瘤检测和分类

Brain Tumor Detection and Classification Using a New Evolutionary Convolutional Neural Network

论文作者

Dehkordi, Amin Abdollahi, Hashemi, Mina, Neshat, Mehdi, Mirjalili, Seyedali, Sadiq, Ali Safaa

论文摘要

对脑肿瘤的明确诊断对于增强治疗成功和患者生存至关重要。但是,很难手动评估诊所中产生的多个磁共振成像(MRI)图像。因此,需要更精确的基于计算机的肿瘤检测方法。近年来,许多努力调查了经典的机器学习方法来自动化此过程。深度学习技术最近引发了人们的兴趣,以此作为更准确,更牢固地诊断脑肿瘤的一种手段。因此,这项研究的目的是利用脑MRI图像来区分健康和不健康的患者(包括肿瘤组织)。结果,在本文中开发了增强的卷积神经网络,以进行准确的大脑图像分类。增强的卷积神经网络结构由用于特征提取和最佳分类的组件组成。非线性Lévy混乱的飞蛾优化器(NLCMFO)优化了用于训练卷积神经网络层的超参数。使用哈佛医学院的BRATS 2015数据集和大脑图像数据集,对提出的模型进行了评估,并将其与各种优化技术进行了比较。优化的CNN模型通过提供97.4%的精度,96.0%的敏感性,98.6%的特异性,98.4%的精度和96.6%的F1得分(CNN精确度和回忆的加权谐波值的平均值),优于文献中的其他模型。

A definitive diagnosis of a brain tumour is essential for enhancing treatment success and patient survival. However, it is difficult to manually evaluate multiple magnetic resonance imaging (MRI) images generated in a clinic. Therefore, more precise computer-based tumour detection methods are required. In recent years, many efforts have investigated classical machine learning methods to automate this process. Deep learning techniques have recently sparked interest as a means of diagnosing brain tumours more accurately and robustly. The goal of this study, therefore, is to employ brain MRI images to distinguish between healthy and unhealthy patients (including tumour tissues). As a result, an enhanced convolutional neural network is developed in this paper for accurate brain image classification. The enhanced convolutional neural network structure is composed of components for feature extraction and optimal classification. Nonlinear Lévy Chaotic Moth Flame Optimizer (NLCMFO) optimizes hyperparameters for training convolutional neural network layers. Using the BRATS 2015 data set and brain image datasets from Harvard Medical School, the proposed model is assessed and compared with various optimization techniques. The optimized CNN model outperforms other models from the literature by providing 97.4% accuracy, 96.0% sensitivity, 98.6% specificity, 98.4% precision, and 96.6% F1-score, (the mean of the weighted harmonic value of CNN precision and recall).

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