Multi-Ethnic Norms for Volumes of Subcortical and Lobar Brain Structures Measured by Neuro I: Ethnicity May Improve the Diagnosis of Alzheimer's Disease1.

Y. Choi, J. Lee, Jan te Nijenhuis, K. Y. Choi, Jongseong Park, Jongmyoung Ok, I. Choo, Hoowon Kim, Min-Kyung Song, Seong-Min Choi, Soo Hyun Cho, Youngshik Chae, Byeong C. Kim, Kun Ho Lee
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Abstract

Background We previously demonstrated the validity of a regression model that included ethnicity as a novel predictor for predicting normative brain volumes in old age. The model was optimized using brain volumes measured with a standard tool FreeSurfer. Objective Here we further verified the prediction model using newly estimated brain volumes from Neuro I, a quantitative brain analysis system developed for Korean populations. Methods Lobar and subcortical volumes were estimated from MRI images of 1,629 normal Korean and 786 Caucasian subjects (age range 59-89) and were predicted in linear regression from ethnicity, age, sex, intracranial volume, magnetic field strength, and scanner manufacturers. Results In the regression model predicting the new volumes, ethnicity was again a substantial predictor in most regions. Additionally, the model-based z-scores of regions were calculated for 428 AD patients and the matched controls, and then employed for diagnostic classification. When the AD classifier adopted the z-scores adjusted for ethnicity, the diagnostic accuracy has noticeably improved (AUC = 0.85, ΔAUC = + 0.04, D = 4.10, p <  0.001). Conclusions Our results suggest that the prediction model remains robust across different measurement tool, and ethnicity significantly contributes to the establishment of norms for brain volumes and the development of a diagnostic system for neurodegenerative diseases.
用神经 I 测量皮层下和脑叶结构体积的多种族规范种族可改善阿尔茨海默病的诊断1。
背景我们之前证明了一个回归模型的有效性,该模型将种族作为一个新的预测因子,用于预测老年人的正常脑容量。在此,我们使用针对韩国人群开发的脑容量定量分析系统 Neuro I 最新估算的脑容量进一步验证了该预测模型。方法根据 1629 名正常韩国人和 786 名白种人受试者(年龄在 59-89 岁之间)的 MRI 图像估算出叶体和皮层下体积,并根据种族、年龄、性别、颅内体积、磁场强度和扫描仪制造商进行线性回归预测。结果在预测新体积的回归模型中,种族再次成为大多数区域的主要预测因素。此外,还计算了 428 例 AD 患者和匹配对照组的基于模型的区域 z 值,并将其用于诊断分类。结论我们的研究结果表明,该预测模型在不同的测量工具下都能保持稳健,而种族因素对脑容量标准的建立和神经退行性疾病诊断系统的开发有很大的帮助。
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