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Accurate discrimination of Alzheimer's disease from other dementia and/or normal subjects using SPECT specific volume analysis

机译:使用SPECT比体积分析可准确地区分阿尔茨海默氏病与其他痴呆症和/或正常人

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Discrimination between Alzheimer's disease and other dementia is clinically significant, however it is often difficult. In this study, we developed classification models among Alzheimer's disease (AD), other dementia (OD) and/or normal subjects (NC) using patient factors and indices obtained by brain perfusion SPECT. SPECT is commonly used to assess cerebral blood flow (CBF) and allows the evaluation of the severity of hypoperfusion by introducing statistical parametric mapping (SPM). We investigated a total of 150 cases (50 cases each for AD, OD, and NC) from Tokai University Hospital, Japan. In each case, we obtained a total of 127 candidate parameters from: (A) 2 patient factors (age and sex), (B) 12 CBF parameters and 113 SPM parameters including (C) 3 from specific volume analysis (SVA), and (D) 110 from voxel-based analysis stereotactic extraction estimation (vbSEE). We built linear classifiers with a statistical stepwise feature selection and evaluated the performance with the leave-one-out cross validation strategy. Our classifiers achieved very high classification performances with reasonable number of selected parameters. In the most significant discrimination in clinical, namely those of AD from OD, our classifier achieved both sensitivity (SE) and specificity (SP) of 96%. In a similar way, our classifiers achieved a SE of 90% and a SP of 98% in AD from NC, as well as a SE of 88% and a SP of 86% in AD from OD and NC cases. Introducing SPM indices such as SVA and vbSEE, classification performances improved around 7-15%. We confirmed that these SPM factors are quite important for diagnosing Alzheimer's disease.
机译:阿尔茨海默氏病与其他痴呆症之间的区别在临床上具有重要意义,但通常很困难。在这项研究中,我们使用脑灌注SPECT获得的患者因素和指标,在阿尔茨海默氏病(AD),其他痴呆(OD)和/或正常受试者(NC)之间建立了分类模型。 SPECT通常用于评估脑血流量(CBF),并通过引入统计参数映射(SPM)来评估灌注不足的严重程度。我们调查了日本东海大学医院的150例病例(AD,OD和NC各50例)。在每种情况下,我们从以下两项中总共获得了127个候选参数:(A)2个患者因素(年龄和性别),(B)12个CBF参数和113个SPM参数,其中包括(C)3个来自特定体积分析(SVA)的参数,以及(D)110来自基于体素的分析立体定向提取估计(vbSEE)。我们建立了具有统计逐步特征选择的线性分类器,并使用留一法交叉验证策略评估了性能。我们的分类器通过合理数量的所选参数实现了非常高的分类性能。在临床上最重要的区分中,即OD对AD的区分中,我们的分类器实现了96%的敏感性(SE)和特异性(SP)。以类似的方式,我们的分类器在NC的AD中达到90%的SE和SP的98%SP,在OD和NC案例中,AD的SE达到88%的SE和86%的SP。通过引入SPM指数(例如SVA和vbSEE),分类性能提高了7-15%。我们证实,这些SPM因素对于诊断阿尔茨海默氏病非常重要。

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