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Comparative analysis of Alzheimer's disease classification by CDR level using CNN, feature selection, and machine-learning techniques

机译:CNN,特征选择和机器学习技术对阿尔茨海默氏病分类的比较分析

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Magnetic resonance imaging (MRI) of brain needs an impeccable analysis to investigate all its structure and pattern. This analysis may be a sharp visual analysis by an experienced medical professional or by a computer aided diagnosis system that can help to predict, what may be the recent condition. Similarly, on the basis of various information and technique, a system can be designed to detect whether a patient is prone to Alzheimer's disease or not. And this task of detection of abnormalities at an initial stage from brain MRI is a major challenge in the field of neurosciences. The main idea behind our research is to utilize the deep layers feature extraction benefited from deep neural network architecture, without extensive hardware resource training, and classifying the image on a basis of simple machine-learning algorithm with selected best features in order to reduce work load, classification error and hardware utilization time. We have utilized convolution neural network (CNN) layer using similar architecture like that of Alexnet with some parametric change, for the automatic extraction of features of images obtained from slice extraction of whole brain MRI whereas 13 manual features based on gray level co-occurrence matrix were also extracted to test the impact of this features on ranking. If we had only classified using CNN network, the misclassification rate was much higher. So, feature selection is achieved with feature ranking algorithms like Mutinffs, ReliefF, Laplacian and UDFS and so on and also tested with different machine-learning techniques like Support Vector Machine, K-Nearest Neighbor and Subspace Ensemble under different testing condition. The performance of the result is satisfactory with classification accuracy around 98% to 99% with 7:3 ratio of random holdout partition of training to testing image sets and also with fivefolds of cross-validation on the same set using a standardized template.
机译:大脑的磁共振成像(MRI)需要一个无可挑剔的分析来调查其所有结构和模式。该分析可能是经验丰富的医疗专业人员或通过有助于预测的计算机辅助诊断系统的清晰视觉分析,可能是最近的条件。类似地,在各种信息和技术的基础上,可以设计一种系统来检测患者是否容易发生阿尔茨海默病。并且,从脑MRI初始阶段检测异常的这项任务是神经科领域的主要挑战。我们研究背后的主要思想是利用深度层的特征提取,从深度神经网络架构中受益,而无需广泛的硬件资源训练,并根据具有所选最佳功能的简单机器学习算法对图像进行分类,以减少工作负载,分类错误和硬件利用时间。我们利用卷积神经网络(CNN)层使用与亚历尼特的类似架构具有一些参数变化,用于自动提取从整个脑部MRI的切片提取获得的图像的特征,而基于灰度的手动特征是基于灰度的共同矩阵还提取了测试该特征对排名的影响。如果我们只使用CNN网络进行分类,则错误分类率高得多。因此,具有特征排名算法,如uminffs,Credifef,Laplacian和UDF等特征选择,并通过不同的机器学习技术进行了测试,如不同的测试条件下的支持向量机,k最近邻和子空间集合。结果的性能令人满意,分类精度约为98%至99%,7:3的随机阻止分区与使用标准化模板的相同组上的交叉验证的五倍的培训比例。

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