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Hyperplanar Morphological Clustering of a Hippocampus by Using Volumetric Computerized Tomography in Early Alzheimer’s Disease

机译:体积计算机断层扫描技术在早期阿尔茨海默氏病中海马的超平面形态学聚类

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>Background: On diagnosing Alzheimer’s disease (AD), most existing imaging-based schemes have relied on analyzing the hippocampus and its peripheral structures. Recent studies have confirmed that volumetric variations are one of the primary indicators in differentiating symptomatic AD from healthy aging. In this study, we focused on deriving discriminative shape-based parameters that could effectively identify early AD from volumetric computerized tomography (VCT) delineation, which was previously almost intangible. >Methods: Participants were 63 volunteers of Thai nationality, whose ages were between 40 and 90 years old. Thirty subjects (age 68.51 ± 5.5) were diagnosed with early AD, by using Diagnostic and Statistical Manual of Mental Disorders IV (DSM-IV) criteria and the National Institute of Neurological and Communicative Disorders and the Stroke and the Alzheimer’s disease and Related Disorders Association (NINCDS-ADRDA) criteria, while the remaining 33 were in the healthy control group (age 67.93 ± 5.5). The structural imaging study was conducted by using VCT. Three uninformed readers were asked to draw left and right hippocampal outlines on a coronal section. The resultant shapes were aligned and then analyzed with statistical shape analysis to obtain the first few dominant variational parameters, residing in hyperplanes. A supervised machine learning, i.e., support vector machine (SVM) was then employed to elucidate the proposed scheme. >Results: Provided trivial delineations, relatively as low as 5 to 7 implicit model parameters could be extracted and used as discriminants. Clinical verification showed that the model could differentiate early AD from aging, with high sensitivity, specificity, accuracy and F-measure of 0.970, 0.968, 0.983 and 0.983, respectively, with no apparent effect of left-right asymmetry. Thanks to a less laborious task required, yet high discriminating capability, the proposed scheme is expected to be applicable in a typical clinical setting, equipped with only a moderate-specs VCT.
机译:>背景:在诊断阿尔茨海默氏病(AD)时,大多数现有的基于成像的方案都依赖于分析海马及其周围结构。最近的研究已经证实,体积变化是将症状性AD与健康衰老区分开的主要指标之一。在这项研究中,我们专注于推导基于判别形状的参数,这些参数可以有效地从以前几乎是无形的体积计算机断层扫描(VCT)轮廓中识别出早期AD。 >方法:参与者是63位泰国籍志愿者,年龄在40至90岁之间。通过使用《 IV型精神疾病诊断和统计手册》(DSM-IV)标准以及美国国立神经病学和交流性疾病研究所以及中风和阿尔茨海默氏病及相关疾病协会,对30名受试者(年龄68.51±5.5)进行了AD早期诊断。 (NINCDS-ADRDA)标准,而其余33位在健康对照组中(年龄67.93±5.5)。使用VCT进行结构成像研究。要求三位不知情的读者在冠状切片上绘制左右海马轮廓。对齐结果形状,然后使用统计形状分析进行分析,以获得位于超平面中的前几个主要变异参数。然后采用监督式机器学习,即支持向量机(SVM)来阐明所提出的方案。 >结果:提供了简单的描述,可以提取相对低至5到7个隐式模型参数并将其用作判别式。临床验证表明,该模型可以区分早期AD和衰老,灵敏度,特异性,准确性和F值分别为0.970、0.968、0.983和0.983,没有左右对称性的明显影响。由于所需的工作量较少,但具有较高的区分能力,因此该方案可望在仅配备中等规格VCT的典型临床环境中使用。

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