Zee Benny, Wong Yanny, Lee Jack, Fan Yuhua, Zeng Jinsheng, Lam Bonnie, Wong Adrian, Shi Lin, Lee Allen, Kwok Chloe, Lai Maria, Mok Vincent, Lau Alexander
Centre for Clinical Research and Biostatistics, Jockey Club School of Public Health and Primary Care, Faculty of Medicine, The Chinese University of Hong Kong, Shatin, Hong Kong, China.
Clinical Trials and Biostatistics Lab, CUHK Shenzhen Research Institute, Shenzhen, China.
Brain Commun. 2021 Jun 3;3(3):fcab124. doi: 10.1093/braincomms/fcab124. eCollection 2021 Jul.
Retinal vessels are known to be associated with various cardiovascular and cerebrovascular disease outcomes. Recent research has shown significant correlations between retinal characteristics and the presence of cerebral small vessel disease as measured by white matter hyperintensities from cerebral magnetic resonance imaging. Early detection of age-related white matter changes using retinal images is potentially helpful for population screening and allow early behavioural and lifestyle intervention. This study investigates the ability of the machine-learning method for the localization of brain white matter hyperintensities. All subjects were age 65 or above without any history of stroke and dementia and recruited from local community centres and community networks. Subjects with known retinal disease or disease influencing vessel structure in colour retina images were excluded. All subjects received MRI on the brain, and age-related white matter changes grading was determined from MRI as the primary endpoint. The presence of age-related white matter changes on each of the six brain regions was also studied. Retinal images were captured using a fundus camera, and the analysis was done based on a machine-learning approach. A total of 240 subjects are included in the study. The analysis of various brain regions included the left and right sides of frontal lobes, parietal-occipital lobes and basal ganglia. Our results suggested that data from both eyes are essential for detecting age-related white matter changes in the brain regions, but the retinal parameters useful for estimation of the probability of age-related white matter changes in each of the brain regions may differ for different locations. Using a classification and regression tree approach, we also found that at least three significant heterogeneous subgroups of subjects were identified to be essential for the localization of age-related white matter changes. Namely those with age-related white matter changes in the right frontal lobe, those without age-related white matter changes in the right frontal lobe but with age-related white matter changes in the left parietal-occipital lobe, and the rest of the subjects. Outcomes such as risks of severe grading of age-related white matter changes and the proportion of hypertension were significantly related to these subgroups. Our study showed that automatic retinal image analysis is a convenient and non-invasive screening tool for detecting age-related white matter changes and cerebral small vessel disease with good overall performance. The localization analysis for various brain regions shows that the classification models on each of the six brain regions can be done, and it opens up potential future clinical application.
视网膜血管与多种心血管和脑血管疾病的预后相关。最近的研究表明,视网膜特征与通过脑磁共振成像的白质高信号所测量的脑小血管疾病的存在之间存在显著相关性。使用视网膜图像早期检测与年龄相关的白质变化可能有助于人群筛查,并允许早期进行行为和生活方式干预。本研究调查了机器学习方法对脑白质高信号进行定位的能力。所有受试者年龄在65岁及以上,无任何中风和痴呆病史,从当地社区中心和社区网络招募。排除患有已知视网膜疾病或影响彩色视网膜图像中血管结构疾病的受试者。所有受试者均接受脑部MRI检查,并将根据MRI确定的与年龄相关的白质变化分级作为主要终点。还研究了六个脑区中每个脑区与年龄相关的白质变化的存在情况。使用眼底相机拍摄视网膜图像,并基于机器学习方法进行分析。本研究共纳入240名受试者。对各个脑区的分析包括额叶、顶枕叶和基底神经节的左右两侧。我们的结果表明,双眼的数据对于检测脑区中与年龄相关的白质变化至关重要,但对于估计每个脑区中与年龄相关的白质变化概率有用的视网膜参数可能因不同位置而有所不同。使用分类和回归树方法,我们还发现至少有三个显著的异质子组的受试者被确定为对与年龄相关的白质变化的定位至关重要。即右侧额叶有与年龄相关的白质变化的受试者、右侧额叶无与年龄相关的白质变化但左侧顶枕叶有与年龄相关的白质变化的受试者,以及其余受试者。与年龄相关的白质变化严重分级风险和高血压比例等结果与这些亚组显著相关。我们的研究表明,自动视网膜图像分析是一种方便且无创的筛查工具,用于检测与年龄相关的白质变化和脑小血管疾病,总体性能良好。对各个脑区的定位分析表明,可以对六个脑区中的每个脑区进行分类模型,这为未来潜在的临床应用开辟了道路。