利用深度学习架构分析MRI预测脑肿瘤

M. Ahmed, Rafeed Rahman, Shahriar Hossain, Shahnewaz Ali Mohammad
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引用次数: 0

摘要

脑瘤是一种致命的疾病,已经折磨了无数人。脑肿瘤导致脑组织的异常生长,这些组织可以是恶性的,也可以是非恶性的,但两者都能造成长期的伤害,大约95%的病例会导致死亡。利用MRI(磁共振成像)扫描已成为识别其在人脑中存在的有意义的技术之一。在获得核磁共振成像过滤器之后,专家会对其进行物理检查,以确定患者是否存在脑肿瘤。不同的专家评估MRI扫描可能会得出不同的结果;之所以会出现这种情况,是因为不同专业人员在形成评估时存在差异。此外,由于MRI扫描分析是一个人工过程,不同的人可能会犯不同的错误。根据专家的解释,对同一病人进行两次不同的核磁共振扫描可能会产生不同的结果。为了使专家和非专业人员在进行MRI扫描评估时获得更简单、可靠和可预测的结果,本研究工作在迁移学习模型(如ResNet 50、ResNet 152 inception v3、VGG16)的背景下提出了深度学习策略,并提出了Conv2d+SVM模型来分析MRI扫描并确定脑肿瘤的存在。此外,本研究工作利用了由253张图像组成的数据集,然后进行了增强,以增加数据量。经过训练,我们的模型在训练和验证方面,ResNet 50的准确率分别为87.17%和76.62%,ResNet 152的准确率为99.28%和88.24%,inception v3的准确率为99.28%和96.08%,VGG16的准确率为99.78和86.27%,Conv2D+SVM的准确率分别为92%和78.3%
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Brain Tumor Prediction by analyzing MRI using deep learning architectures
The brain tumor is a lethal illness that has endured innumerable individuals. Brain tumor causes abnormal growth of brain tissues, the tissues can be either malignant or non-malignant, but both are capable of causing long term harm and in about 95% cases can cause demise. Utilizing MRI (Magnetic resonance imaging) scans has become one of the meaningful techniques for identifying its existence in the human brain. Subsequent to getting the MRI filters these are physically investigated by experts to determine the presence of a brain tumor in a patient. Various specialists assessing MRI scans may result in outcomes that are not same; this happens because of the variance in forming evaluations from one professional to the next. Furthermore, because MRI scan analysis is a manual procedure, various people might make different mistakes. Based on the interpretations of the experts, two distinct MRI scans performed on the same patient may yield different findings. To make things simpler, reliable, and obtaining acquiring predictable outcomes for both specialists and non-specialists while performing assessment of MRI scans, this research work has presented deep learning strategies in the context of transfer learning models such as ResNet 50, ResNet 152 inception v3, VGG16 and also proposed Conv2d+SVM model to analyze MRI scans and determine the presence of a brain tumor. Also, this research work has utilized a dataset consisting of 253 images and then performed augmentation to increase the amount of data. After training, our model portrayed accuracy of 87.17% and 76.62% for ResNet 50, 99.28% and 88.24% for ResNet 152, 99.28% and 96.08% for inception v3, 99.78 and 86.27% for VGG16 and 92% and 78.3% for Conv2D+SVM in terms of training and validation respectively
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