Yu Xianfeng, Sun Xiaoming, Wei Min, Deng Shuqing, Zhang Qi, Guo Tengfei, Shao Kai, Zhang Mingkai, Jiang Jiehui, Han Ying
Department of Neurology, Xuanwu Hospital of Capital Medical University, Beijing 100053, China.
Institute of Biomedical Engineering, School of Life Science, Shanghai University, Shanghai 200444, China.
Research (Wash D C). 2024 Apr 16;7:0354. doi: 10.34133/research.0354. eCollection 2024.
To explore the complementary relationship between magnetic resonance imaging (MRI) radiomic and plasma biomarkers in the early diagnosis and conversion prediction of Alzheimer's disease (AD), our study aims to develop an innovative multivariable prediction model that integrates those two for predicting conversion results in AD. This longitudinal multicentric cohort study included 2 independent cohorts: the Sino Longitudinal Study on Cognitive Decline (SILCODE) project and the Alzheimer Disease Neuroimaging Initiative (ADNI). We collected comprehensive assessments, MRI, plasma samples, and amyloid positron emission tomography data. A multivariable logistic regression analysis was applied to combine plasma and MRI radiomics biomarkers and generate a new composite indicator. The optimal model's performance and generalizability were assessed across populations in 2 cross-racial cohorts. A total of 897 subjects were included, including 635 from the SILCODE cohort (mean [SD] age, 64.93 [6.78] years; 343 [63%] female) and 262 from the ADNI cohort (mean [SD] age, 73.96 [7.06] years; 140 [53%] female). The area under the receiver operating characteristic curve of the optimal model was 0.9414 and 0.8979 in the training and validation dataset, respectively. A calibration analysis displayed excellent consistency between the prognosis and actual observation. The findings of the present study provide a valuable diagnostic tool for identifying at-risk individuals for AD and highlight the pivotal role of the radiomic biomarker. Importantly, built upon data-driven analyses commonly seen in previous radiomics studies, our research delves into AD pathology to further elucidate the underlying reasons behind the robust predictive performance of the MRI radiomic predictor.
为了探索磁共振成像(MRI)影像组学与血浆生物标志物在阿尔茨海默病(AD)早期诊断和病情转化预测中的互补关系,我们的研究旨在开发一种创新的多变量预测模型,将两者整合起来以预测AD的病情转化结果。这项纵向多中心队列研究包括2个独立队列:中国认知衰退纵向研究(SILCODE)项目和阿尔茨海默病神经影像倡议(ADNI)。我们收集了全面评估、MRI、血浆样本和淀粉样蛋白正电子发射断层扫描数据。应用多变量逻辑回归分析来结合血浆和MRI影像组学生物标志物,并生成一个新的综合指标。在2个跨种族队列的人群中评估了最佳模型的性能和可推广性。总共纳入了897名受试者,其中635名来自SILCODE队列(平均[标准差]年龄,64.93[6.78]岁;343名[63%]为女性),262名来自ADNI队列(平均[标准差]年龄,73.96[7.06]岁;140名[53%]为女性)。最佳模型在训练数据集和验证数据集中的受试者工作特征曲线下面积分别为0.9414和0.8979。校准分析显示预后与实际观察之间具有良好的一致性。本研究结果为识别AD高危个体提供了一种有价值的诊断工具,并突出了影像组学生物标志物的关键作用。重要的是,基于以往影像组学研究中常见的数据驱动分析,我们的研究深入探讨了AD病理学,以进一步阐明MRI影像组学预测指标强大预测性能背后的潜在原因。