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Deep learning model integrating features and novel classifiers fusion for brain tumor segmentation

机译:深度学习模型集成特征和新型分类器脑肿瘤分割的融合

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Automatic and precise segmentation and classification of tumor area in medical images is still a challenging task in medical research. Most of the conventional neural network based models usefully connected or convolutional neural networks to perform segmentation and classification. In this research, we present deep learning models using long short term memory (LSTM) and convolutional neural networks (ConvNet) for accurate brain tumor delineation from benchmark medical images. The two different models, that is, ConvNet and LSTM networks are trained using the same data set and combined to form an ensemble to improve the results. We used publicly available MICCAI BRATS 2015 brain cancer data set consisting of MRI images of four modalities T1, T2, T1c, and FLAIR. To enhance the quality of input images, multiple combinations of preprocessing methods such as noise removal, histogram equalization, and edge enhancement are formulated and best performer combination is applied. To cope with the class imbalance problem, class weighting is used in proposed models. The trained models are tested on validation data set taken from the same image set and results obtained from each model are reported. The individual score (accuracy) of ConvNet is found 75% whereas for LSTM based network produced 80% and ensemble fusion produced 82.29% accuracy.
机译:医学图像中的肿瘤区域的自动和精确分割和分类仍然是医学研究的具有挑战性的任务。基于传统的神经网络的大多数模型有机连接或卷积神经网络进行分段和分类。在这项研究中,我们使用长短期内存(LSTM)和卷积神经网络(ConvNet)的深度学习模型,用于从基准医学图像中精确脑肿瘤描绘。这两个不同的模型,即,使用相同的数据集培训并组合以形成合奏以改进结果的培训。我们使用公开可用的Miccai Brats 2015脑癌数据集,包括四种模式T1,T2,T1C和Flair的MRI图像。为了增强输入图像的质量,配制了预处理方法的多种组合,例如噪声,直方图均衡和边缘增强,并且应用了最佳表现者组合。要应对课堂不平衡问题,则在提出的模型中使用类加权。经过训练的模型在从相同图像集中拍摄的验证数据集上进行测试,并报告从每个型号获得的结果。 ConvNet的个别得分(准确性)被发现75%,而基于LSTM的网络产生80%,精心融合的精度产生82.29%。

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