Brain Stroke Detection Using Convolutional Neural Network and Deep Learning Models

Bhagyashree Rajendra Gaidhani, R. R.Rajamenakshi, Samadhan Sonavane
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引用次数: 12

Abstract

For the last few decades, machine learning is used to analyze medical dataset. Recently, deep learning technology gaining success in many domain including computer vision, image recognition, natural language processing and especially in medical field of radiology. This research attempts to diagnose brain stroke from MRI using CNN and deep learning models. The proposed methodology is to classify brain stroke MRI images into normal and abnormal images and delineate abnormal regions using semantic segmentation [4]. In particular, two types of convolutional neural network that are LeNet [2] and SegNet are used. For classification, we passed pre-processed stroke MRI for training, trained all layers of LeNet and classify normal and abnormal patient. Then this abnormal patient data stored into two dimensional array and passed this two dimensional array to SegNet which is auto encoder decoder [3] model for segmentation, trained all layers of SegNet except fully connection layer. The experimental result show that classification model achieve accuracy between 9697% and segmentation model achieve accuracy between 8587%.Through experimental results, we found that deep learning models not only used in non-medical images but also give accurate result on medical image diagnosis, especially in brain stroke detection.
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脑卒中检测使用卷积神经网络和深度学习模型
在过去的几十年里,机器学习被用来分析医学数据集。近年来,深度学习技术在计算机视觉、图像识别、自然语言处理等诸多领域取得了成功,尤其是在医学放射学领域。本研究试图利用CNN和深度学习模型从MRI诊断脑卒中。提出的方法是将脑卒中MRI图像分为正常和异常图像,并使用语义分割来描绘异常区域[4]。特别地,使用了LeNet[2]和SegNet两种卷积神经网络。对于分类,我们通过预处理的脑卒中MRI进行训练,训练各层LeNet,并对正常和异常患者进行分类。然后将该异常患者数据存储到二维数组中,并将该二维数组传递给自动编码器-解码器[3]模型SegNet进行分割,训练除全连接层外的SegNet各层。实验结果表明,分类模型的准确率在967%之间,分割模型的准确率在857%之间。通过实验结果,我们发现深度学习模型不仅可以用于非医学图像,而且在医学图像诊断,特别是脑卒中检测中也能给出准确的结果。
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