Indian Institute of Technology Madras, Non-Invasive Imaging and Diagnostics Laboratory, Biomedical Engineering Group, Department of Applied Mechanics, Chennai, India.
CEG Campus, Department of Electronics and Communication Engineering, Anna University, Chennai, India.
J Med Syst. 2016 Jan;40(1):25. doi: 10.1007/s10916-015-0396-y. Epub 2015 Nov 7.
Automated analysis and differentiation of mild cognitive impairment and Alzheimer's condition using MR images is clinically significant in dementic disorder. Alzheimer's Disease (AD) is a fatal and common form of dementia that progressively affects the patients. Shape descriptors could better differentiate the morphological alterations of brain structures and aid in the development of prospective disease modifying therapies. Ventricle enlargement is considered as a significant biomarker in the AD diagnosis. In this work, a method has been proposed to differentiate MCI from the healthy normal and AD subjects using Laplace-Beltrami (LB) eigen value shape descriptors. Prior to this, Reaction Diffusion (RD) level set is used to segment the ventricles in MR images and the results are validated against the Ground Truth (GT). LB eigen values are infinite series of spectrum that describes the intrinsic geometry of objects. Most significant LB shape descriptors are identified and their performance is analysed using linear Support Vector Machine (SVM) classifier. Results show that, the RD level set is able to segment the ventricles. The segmented ventricles are found to have high correlation with GT. The eigen values in the LB spectrum could show distinction in the feature space better than the geometric features. High accuracy is observed in the classification results of linear SVM. The proposed automated system is able to distinctly separate the MCI from normal and AD subjects. Thus this pipeline of work seems to be clinically significant in the automated analysis of dementic subjects.
使用磁共振图像对轻度认知障碍和阿尔茨海默病状况进行自动分析和区分在痴呆症中具有重要的临床意义。阿尔茨海默病(AD)是一种致命且常见的痴呆症,会逐渐影响患者。形状描述符可以更好地区分脑结构的形态变化,并有助于开发前瞻性的疾病修饰治疗方法。脑室扩大被认为是 AD 诊断的一个重要生物标志物。在这项工作中,提出了一种使用拉普拉斯-贝尔特拉米(LB)特征值形状描述符来区分 MCI 与健康正常人和 AD 受试者的方法。在此之前,使用反应扩散(RD)水平集分割磁共振图像中的脑室,并将结果与地面真实(GT)进行验证。LB 特征值是描述物体内在几何形状的无限级数谱。识别出最重要的 LB 形状描述符,并使用线性支持向量机(SVM)分类器分析其性能。结果表明,RD 水平集能够分割脑室。分割后的脑室与 GT 具有高度相关性。LB 谱中的特征值在特征空间中表现出更好的区分能力,优于几何特征。线性 SVM 的分类结果具有很高的准确性。所提出的自动化系统能够将 MCI 与正常人和 AD 受试者明显区分开来。因此,这项工作似乎在痴呆症患者的自动分析中具有重要的临床意义。