Park Bumhee, Choi Byung Jin, Lee Heirim, Jang Jong-Hwan, Roh Hyun Woong, Kim Eun Young, Hong Chang Hyung, Son Sang Joon, Yoon Dukyong
Department of Biomedical Informatics, Ajou University School of Medicine, Suwon-si, South Korea.
Office of Biostatistics, Ajou Research Institute for Innovative Medicine, Ajou University Medical Center, Suwon-si, South Korea.
Front Neuroinform. 2022 Mar 9;16:795171. doi: 10.3389/fninf.2022.795171. eCollection 2022.
There is a proven correlation between the severity of dementia and reduced brain volumes. Several studies have attempted to use activity data to estimate brain volume as a means of detecting reduction early; however, raw activity data are not directly interpretable and are unstructured, making them challenging to utilize. Furthermore, in the previous research, brain volume estimates were limited to total brain volume and the investigators were unable to detect reductions in specific regions of the brain that are typically used to characterize disease progression. We aimed to evaluate volume prediction of 116 brain regions through activity data obtained combining time-frequency domain- and unsupervised deep learning-based feature extraction methods. We developed a feature extraction model based on unsupervised deep learning using activity data from the National Health and Nutrition Examination Survey (NHANES) dataset ( = 14,482). Then, we applied the model and the time-frequency domain feature extraction method to the activity data of the Biobank Innovations for chronic Cerebrovascular disease With ALZheimer's disease Study (BICWALZS) datasets ( = 177) to extract activity features. Brain volumes were calculated from the brain magnetic resonance imaging of the BICWALZS dataset and anatomically subdivided into 116 regions. Finally, we fitted linear regression models to estimate each regional volume of the 116 brain areas based on the extracted activity features. Regression models were statistically significant for each region, with an average correlation coefficient of 0.990 ± 0.006. In all brain regions, the correlation was > 0.964. Particularly, regions of the temporal lobe that exhibit characteristic atrophy in the early stages of Alzheimer's disease showed the highest correlation (0.995). Through a combined deep learning-time-frequency domain feature extraction method, we could extract activity features based solely on the activity dataset, without including clinical variables. The findings of this study indicate the possibility of using activity data for the detection of neurological disorders such as Alzheimer's disease.
痴呆症的严重程度与脑容量减少之间存在已被证实的关联。多项研究试图利用活动数据来估计脑容量,以此作为早期检测脑容量减少的一种方法;然而,原始活动数据无法直接解读且无结构,难以利用。此外,在先前的研究中,脑容量估计仅限于全脑容量,研究人员无法检测到通常用于表征疾病进展的特定脑区的减少。我们旨在通过结合时频域和基于无监督深度学习的特征提取方法获得的活动数据,评估116个脑区的容量预测。我们使用来自美国国家健康与营养检查调查(NHANES)数据集(n = 14482)的活动数据,开发了一种基于无监督深度学习的特征提取模型。然后,我们将该模型和时频域特征提取方法应用于慢性脑血管疾病伴阿尔茨海默病研究生物样本库(BICWALZS)数据集(n = 177)的活动数据,以提取活动特征。根据BICWALZS数据集的脑磁共振成像计算脑容量,并在解剖学上细分为116个区域。最后,我们拟合线性回归模型,基于提取的活动特征估计116个脑区的每个区域容量。回归模型对每个区域均具有统计学意义,平均相关系数为0.990±0.006。在所有脑区中,相关性均>0.964。特别是,在阿尔茨海默病早期表现出特征性萎缩的颞叶区域显示出最高的相关性(0.995)。通过深度学习 - 时频域特征提取方法的结合,我们可以仅基于活动数据集提取活动特征,而无需纳入临床变量。本研究结果表明,利用活动数据检测阿尔茨海默病等神经系统疾病具有可能性。