Kim Hyug-Gi, Tian Yunan, Jung Sue Min, Park Soonchan, Rhee Hak Young, Ryu Chang-Woo, Jahng Geon-Ho
Department of Radiology, Kyung Hee University Hospital, Seoul, Republic of Korea.
Department of Medicine, Graduate School, Kyung Hee University College of Medicine, Seoul, Republic of Korea.
Brain Behav. 2024 Jan;14(1):e3381. doi: 10.1002/brb3.3381.
Apolipoprotein E (ApoE) ε4 carriers have a higher risk of developing Alzheimer's disease (AD) and show brain atrophy and cognitive decline even before diagnosis.
To predict ApoE ε4 status using gray matter volume (GMV) obtained from magnetic resonance imaging images and demographic data with machine learning (ML) methods.
We recruited 74 participants (25 probable AD, 24 amnestic mild cognitive impairment, and 25 cognitively normal older people) with known ApoE genotype (22 ApoE ε4 carriers and 52 noncarriers) and scanned them with three-dimensional (3D) T1-weighted (T1W) and 3D double inversion recovery (DIR) sequences. We extracted GMV from regions of interest related to AD pathology and used them as features along with age and mini-mental state examination (MMSE) scores to train different ML models. We performed both receiver operating characteristic curve analysis and the prediction analysis of the ApoE ε4 carrier with different ML models.
The best model of ML analyses was a cubic support vector machine (SVM3) that used age, the MMSE score, and DIR GMVs at the amygdala, hippocampus, and precuneus as features (AUC = .88). This model outperformed models using T1W GMV or demographic data alone.
Our results suggest that brain atrophy with DIR GMV and cognitive decline with aging can be useful biomarkers for predicting ApoE ε4 status and identifying individuals at risk of AD progression.
载脂蛋白E(ApoE)ε4携带者患阿尔茨海默病(AD)的风险更高,甚至在诊断前就出现脑萎缩和认知衰退。
使用从磁共振成像图像获得的灰质体积(GMV)和人口统计学数据,通过机器学习(ML)方法预测ApoE ε4状态。
我们招募了74名已知ApoE基因型的参与者(25名可能患有AD、24名遗忘型轻度认知障碍和25名认知正常的老年人)(22名ApoE ε4携带者和52名非携带者),并用三维(3D)T1加权(T1W)和3D双反转恢复(DIR)序列对他们进行扫描。我们从与AD病理学相关的感兴趣区域提取GMV,并将其与年龄和简易精神状态检查(MMSE)评分一起用作特征,以训练不同的ML模型。我们对不同的ML模型进行了受试者操作特征曲线分析和ApoE ε4携带者的预测分析。
ML分析的最佳模型是三次支持向量机(SVM3),它使用年龄、MMSE评分以及杏仁核、海马体和楔前叶的DIR GMV作为特征(AUC = 0.88)。该模型优于仅使用T1W GMV或人口统计学数据的模型。
我们的结果表明,DIR GMV导致的脑萎缩和衰老导致的认知衰退可能是预测ApoE ε4状态和识别有AD进展风险个体的有用生物标志物。