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采用 N 折交叉验证方法更早检测阿尔茨海默病。

Earlier detection of Alzheimer disease using N-fold cross validation approach.

机构信息

Anna University, Chennai, India.

Department of Information Science and Technology, College of Engineering, Guindy, Anna University, Chennai, India.

出版信息

J Med Syst. 2018 Oct 2;42(11):217. doi: 10.1007/s10916-018-1068-5.

Abstract

According to the recent study, world-wide 40 million patients are affected by Alzheimer disease (AD) because it is one of the dangerous neurodegenerative disorders. This AD disease has less symptoms such as short term memory loss, mood swings, problem with language understanding and behavioral issues. Due to these low symptoms, AD disease is difficult to recognize in the early stage. So, the automated computer aided system need to be developed for recognizing the AD disease for minimizing the mortality rate. Initially, brain MRI image is collected from patients which are processed by applying different processing steps such as noise removal, segmentation, feature extraction, feature selection and classification. The captured MRI image has noise that is eliminated by applying the Lucy-Richardson approach which examines the each pixel in the image and removes the Gaussian noise which also eliminates the blur image. After eliminating the noise pixel from the image, affected region is segmented by Prolong adaptive exclusive analytical Atlas approach. From the segmented region, different GLCM statistical features are extracted and optimal features subset is selected by applying the hybrid wrapper filtering approach. This selected features are analyzed by N-fold cross validation approach which recognizes the AD related features successfully. Then the efficiency of the system is evaluated with the help of MATLAB based experimental results, in which Alzheimer's Disease Neuroimaging Initiative (ADNI) dataset images are utilized for examining the efficiency in terms of sensitivity, specificity, ROC curve and accuracy.

摘要

根据最近的研究,全球有 4000 万患者受到阿尔茨海默病(AD)的影响,因为它是一种危险的神经退行性疾病。这种 AD 病的症状较少,如短期记忆丧失、情绪波动、语言理解问题和行为问题。由于这些低症状,AD 病在早期很难被识别。因此,需要开发自动化的计算机辅助系统来识别 AD 病,以降低死亡率。最初,从患者中采集脑 MRI 图像,并通过应用不同的处理步骤(如去除噪声、分割、特征提取、特征选择和分类)对其进行处理。捕获的 MRI 图像具有噪声,通过应用 Lucy-Richardson 方法可以消除噪声,该方法检查图像中的每个像素并去除高斯噪声,从而消除模糊图像。从图像中去除噪声像素后,通过 Prolong 自适应排他性分析图谱方法对受影响的区域进行分割。从分割区域中提取不同的 GLCM 统计特征,并通过应用混合封装过滤方法选择最佳特征子集。通过 N 折交叉验证方法分析这些选定的特征,该方法成功识别了与 AD 相关的特征。然后,借助基于 MATLAB 的实验结果评估系统的效率,其中使用阿尔茨海默病神经影像学倡议(ADNI)数据集图像来检查灵敏度、特异性、ROC 曲线和准确性方面的效率。

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