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Integrating compositional pattern-producing networks and optimized convolution neural networks using deep learning techniques for detecting brain abnormalities

机译:使用深度学习技术集成组合模式生产网络和优化的卷积神经网络,用于检测大脑异常

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摘要

In brain abnormality approach, accurate and reliable diagnosis is a critical component, because it provides potential abnormality in tissues as well as functional structures significantly to demarcate surgical plan. In the recent past, various diagnosing procedures have been carried out such as Double Density Discrete Wavelet Transform (DDDWT), Support Vector Machine (SVM) classifier, Convolutional Neural Networks etc., whereas treatment outcome and planning are the critical components. Build upon the successful deep learning approach, a novel brain abnormality diagnostic method has been developed by integrating Compositional Pattern Producing (CPP) and Optimized Convolutional Neural Networks (OCNN) in an unified framework. This hybrid approach includes Independent Component Analysis (ICA) with parallel factor and region of interest (ROI) for preprocessing, training CPP using image patches and fine tuning CPP-OCNN using image slices for segmentation as well as for extraction. This model could segment the images by slices than patches which are more accurate and less complex in segmentation with optimized kernel SVM classifier for abnormality detection. The system is evaluated based on MRI imaging datasets provided by CHB-MIT scalp EEG of micro bleeds dataset and efficiently validated with the help of the experimental results by minimizing the Root mean square and by improving the accuracy, smoothness, correlation, sensitivity and specificity using state of the art techniques.
机译:在脑异常方法中,准确可靠的诊断是关键组成部分,因为它在组织中提供潜在的异常,以及功能性结构,以划分手术计划。在最近,已经进行了各种诊断程序,例如双密度离散小波变换(DDDWT),支持向量机(SVM)分类器,卷积神经网络等,而治疗结果和规划是关键组件。基于成功的深度学习方法,通过将组合模式产生(CPP)和优化的卷积神经网络(OCNN)在统一的框架中积分了一种新的脑异常诊断方法。这种混合方法包括具有用于预处理的平行因子和兴趣区域(ROI)的独立分量分析(ICA),用于使用图像修补程序和微调CPP-OCNN使用图像切片进行分割以及提取。该模型可以通过切片分割图像,而不是在分割中更准确且更复杂,具有用于异常检测的优化内核SVM分类器。基于MICR BLEEDS数据集的CHB-MIT SCARP EEG提供的MRI成像数据集来评估系统,并通过最小化均方根和通过提高精度,平滑度,相关性,灵敏度和特异性,通过实验结果有效地验证最先进的技术。

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