Retinal imaging

视网膜成像
  • 文章类型: Journal Article
    人类的视网膜结构和功能变化可以是不同生理或病理状况的表现。视网膜成像是非侵入性地直接检查全身血管及其病理变化的唯一方法。各种定量分析指标已用于测量不同视网膜背景下的视网膜微血管异常,大脑和全身性疾病。最近开发的光学相干断层扫描血管造影(OCTA)是一种非侵入性成像工具,可对视网膜微血管进行高分辨率三维映射。从OCTA图像中识别视网膜生物标志物可以促进各种情况下的临床研究。我们提供了一个框架,用于通过知识驱动的计算机化自动分析系统从OCTA图像中提取计算视网膜微血管生物标志物(CRMB)。我们的方法可以改善对中央凹无血管区(FAZ)的识别,并引入了黄斑区域血管分散的新定义。此外,视网膜大血管和毛细血管的浅层和深丛可以区分,与视网膜病理有关。通过对30名健康受试者和43名视网膜静脉阻塞(RVO)患者的横断面研究,证明了OCTACRMBs的诊断价值。该研究确定了RVO患者OCTACRMBs与视网膜功能之间的强相关性。通过这种“一体化”管道产生的这些OCTACRMB可以为临床医生提供有关疾病严重程度的见解,治疗反应和预后,帮助管理和早期发现各种疾病。
    Retinal structural and functional changes in humans can be manifestations of different physiological or pathological conditions. Retinal imaging is the only way to directly inspect blood vessels and their pathological changes throughout the whole body non-invasively. Various quantitative analysis metrics have been used to measure the abnormalities of retinal microvasculature in the context of different retinal, cerebral and systemic disorders. Recently developed optical coherence tomography angiography (OCTA) is a non-invasive imaging tool that allows high-resolution three-dimensional mapping of the retinal microvasculature. The identification of retinal biomarkers from OCTA images could facilitate clinical investigation in various scenarios. We provide a framework for extracting computational retinal microvasculature biomarkers (CRMBs) from OCTA images through a knowledge-driven computerized automatic analytical system. Our method allows for improved identification of the foveal avascular zone (FAZ) and introduces a novel definition of vessel dispersion in the macular region. Furthermore, retinal large vessels and capillaries of the superficial and deep plexus can be differentiated, correlating with retinal pathology. The diagnostic value of OCTA CRMBs was demonstrated by a cross-sectional study with 30 healthy subjects and 43 retinal vein occlusion (RVO) patients, which identified strong correlations between OCTA CRMBs and retinal function in RVO patients. These OCTA CRMBs generated through this \"all-in-one\" pipeline may provide clinicians with insights about disease severity, treatment response and prognosis, aiding in the management and early detection of various disorders.
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  • 文章类型: Journal Article
    背景:糖尿病性黄斑水肿(DME)是糖尿病患者视力丧失的主要原因。本研究旨在开发和评估用于评估DME患者抗血管内皮生长因子(VEGF)治疗反应的OCT组学预测模型。
    方法:对82例DME患者113只眼进行回顾性分析。综合特征工程应用于临床和光学相干断层扫描(OCT)数据。Logistic回归,支持向量机(SVM),和反向传播神经网络(BPNN)分类器使用79只眼睛的训练集进行训练,并在34只眼睛的测试集上进行评估。通过决策曲线分析评估OCT组学预测模型的临床意义。性能指标(灵敏度、特异性,F1得分,和AUC)进行计算。
    结果:物流,SVM,和BPNN分类器在训练集和测试集中都表现出了鲁棒的判别能力。在训练集中,logistic分类器的敏感性为0.904,特异性为0.741,F1评分为0.887,AUC为0.910.SVM分类器的灵敏度为0.923,特异性为0.667,F1评分为0.881,AUC为0.897。BPNN分类器表现出0.962的灵敏度、0.926的特异性、0.962的F1评分和0.982的AUC。在测试集中保持了类似的辨别能力。非持续性DME组的OCT组学评分明显高于持续性DME组(p<0.001)。OCT组学评分也与治疗后中央亚区厚度下降率呈正相关(Pearson'sR=0.44,p<0.001)。
    结论:开发的OCT组学模型准确评估了DME患者的抗VEGF治疗反应。该模型的强大性能和临床意义突出了其作为个性化治疗预测和视网膜病理评估的非侵入性工具的实用性。
    BACKGROUND: Diabetic macular edema (DME) is a leading cause of vision loss in patients with diabetes. This study aimed to develop and evaluate an OCT-omics prediction model for assessing anti-vascular endothelial growth factor (VEGF) treatment response in patients with DME.
    METHODS: A retrospective analysis of 113 eyes from 82 patients with DME was conducted. Comprehensive feature engineering was applied to clinical and optical coherence tomography (OCT) data. Logistic regression, support vector machine (SVM), and backpropagation neural network (BPNN) classifiers were trained using a training set of 79 eyes, and evaluated on a test set of 34 eyes. Clinical implications of the OCT-omics prediction model were assessed by decision curve analysis. Performance metrics (sensitivity, specificity, F1 score, and AUC) were calculated.
    RESULTS: The logistic, SVM, and BPNN classifiers demonstrated robust discriminative abilities in both the training and test sets. In the training set, the logistic classifier achieved a sensitivity of 0.904, specificity of 0.741, F1 score of 0.887, and AUC of 0.910. The SVM classifier showed a sensitivity of 0.923, specificity of 0.667, F1 score of 0.881, and AUC of 0.897. The BPNN classifier exhibited a sensitivity of 0.962, specificity of 0.926, F1 score of 0.962, and AUC of 0.982. Similar discriminative capabilities were maintained in the test set. The OCT-omics scores were significantly higher in the non-persistent DME group than in the persistent DME group (p < 0.001). OCT-omics scores were also positively correlated with the rate of decline in central subfield thickness after treatment (Pearson\'s R = 0.44, p < 0.001).
    CONCLUSIONS: The developed OCT-omics model accurately assesses anti-VEGF treatment response in DME patients. The model\'s robust performance and clinical implications highlight its utility as a non-invasive tool for personalized treatment prediction and retinal pathology assessment.
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  • 文章类型: Journal Article
    为了安全起见,识别未知类型的疾病是视网膜成像分类的关键步骤。这被称为视网膜成像的异常检测。然而,广泛使用的监督学习算法不适合这个问题,因为未知类别的数据是无法获得的。此外,用于不同类型异常区域的视网膜成像,使用单分辨率输入会导致信息丢失。因此,我们提出了一种具有多分辨率输入和输出的无监督自动编码器模型。我们提供了对重建误差的有效性以及用于异常检测的自监督学习的改进的理论理解。我们在两个广泛使用的视网膜成像数据集上的实验表明,所提出的方法优于其他方法,实验验证了所提方法各部分的有效性。
    Identifying unknown types of diseases is a crucial step in preceding retinal imaging classification for the sake of safety, which is known as anomaly detection of retinal imaging. However, the widely-used supervised learning algorithms are not suitable for this problem, since the data of the unknown category is unobtainable. Moreover, for retinal imaging with different types of anomalous regions, using a single-resolution input causes information loss. Therefore, we propose an unsupervised auto-encoder model with multi-resolution inputs and outputs. We provide a theoretical understanding of the effectiveness of reconstruction error and the improvement of self-supervised learning for anomaly detection. Our experiments on two widely-used retinal imaging datasets show that the proposed methods are superior to other methods, and further experiments verify the validity of each part of the proposed method.
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  • 文章类型: Journal Article
    我们探索了10年来视网膜血管特征与痴呆发病率之间的纵向关系。
    在来自三城外星人(3C-Alienor)人群队列的584名参与者中,定量视网膜血管特征(口径,弯曲,分形维数)使用半自动软件测量。在随访期间积极诊断出痴呆症。
    一百二十八名参与者(21.9%)在平均7.1年的时间内发展为痴呆。在针对社会人口统计学特征进行调整的Cox比例风险模型中,载脂蛋白E(APOE)ε4和血管因子,视网膜小动脉弯曲增加与全因痴呆相关(每标准差增加的风险比,1.21;95%置信区间:1.02-1.44)。较宽的视网膜口径和较高的静脉曲折与混合性/血管性痴呆有关,但不是老年痴呆症.分形维度与痴呆无关。
    视网膜微脉管系统的变化与痴呆风险相关。需要更多的研究来复制这些发现,并确定哪些特征可能有助于在早期阶段识别有风险的人。
    结论:视网膜微脉管系统可能反映了脑微脉管系统。我们探讨了视网膜血管特征与事件性痴呆之间的关系。对来自三城-阿尼诺队列的584名参与者进行了为期10年的随访。
    UNASSIGNED: We explored the longitudinal relationship between retinal vascular features and dementia incidence over 10 years.
    UNASSIGNED: Among 584 participants from the Three-City-Alienor (3C-Alienor) population-based cohort, quantitative retinal vascular features (caliber, tortuosity, fractal dimension) were measured using semi-automated software. Dementia was actively diagnosed over the follow-up period.
    UNASSIGNED: One hundred twenty-eight participants (21.9%) developed dementia over a median of 7.1 years. In Cox proportional hazards models adjusted for sociodemographic characteristics, apolipoprotein E (APOE) ε4, and vascular factors, increased retinal arteriolar tortuosity was associated with all-cause dementia (hazard ratio per standard deviation increase, 1.21; 95% confidence interval: 1.02-1.44). Wider retinal calibers and a higher venular tortuosity were associated with mixed/vascular dementia, but not Alzheimer\'s disease. Fractal dimensions were not associated with dementia.
    UNASSIGNED: Changes in the retinal microvasculature were associated with dementia risk. More studies are needed to replicate these findings and determine which features might help identify persons at risk at an early stage.
    CONCLUSIONS: The retinal microvasculature might reflect the brain microvasculatureWe explored the association between retinal vascular features and incident dementia584 participants from the Three-City-Alienor cohort were followed-up over 10 yearsIncreased arteriolar tortuosity and venular calibers were associated with dementia riskRetinal imaging might help identify persons at risk of future dementia.
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  • 文章类型: Journal Article
    青光眼是一种慢性疾病,会损害视神经并导致不可逆转的失明。视杯(OC)与视盘(OD)比值的计算在青光眼的初筛和诊断中起着重要作用。因此,OD和OC的自动和精确分割是高度优选的。最近,深度神经网络在OD和OC分割方面取得了显著进展,然而,它们在跨不同的扫描仪和图像分辨率的推广中受到严重阻碍。在这项工作中,我们提出了一种新颖的基于域自适应的框架,以减轻OD和OC分割中的性能下降。我们首先设计一个有效的基于变压器的分割网络作为骨干,以准确分割OD和OC区域。然后,为了解决领域转移的问题,我们将领域适应引入学习范式以鼓励领域不变特征。由于基于分段的域自适应损失不足以捕获分段细节,我们进一步提出了一个辅助分类器来实现对分割细节的区分。在三个公共视网膜眼底图像数据集上进行详尽的实验,即,REFUGE,drishti-GS和RIM-ONE-r3,展示了我们在OD和OC分割方面的卓越表现。这些结果表明,我们的建议具有很大的潜力,可以成为自动青光眼筛查系统的重要组成部分。
    Glaucoma is a chronic disorder that harms the optic nerves and causes irreversible blindness. The calculation of optic cup (OC) to optic disc (OD) ratio plays an important role in the primary screening and diagnosis of glaucoma. Thus, automatic and precise segmentations of OD and OC is highly preferable. Recently, deep neural networks demonstrate remarkable progress in the OD and OC segmentation, however, they are severely hindered in generalizing across different scanners and image resolution. In this work, we propose a novel domain adaptation-based framework to mitigate the performance degradation in OD and OC segmentation. We first devise an effective transformer-based segmentation network as a backbone to accurately segment the OD and OC regions. Then, to address the issue of domain shift, we introduce domain adaptation into the learning paradigm to encourage domain-invariant features. Since the segmentation-based domain adaptation loss is insufficient for capturing segmentation details, we further propose an auxiliary classifier to enable the discrimination on segmentation details. Exhaustive experiments on three public retinal fundus image datasets, i.e., REFUGE, Drishti-GS and RIM-ONE-r3, demonstrate our superior performance on the segmentation of OD and OC. These results suggest that our proposal has great potential to be an important component for an automated glaucoma screening system.
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  • 文章类型: Journal Article
    构建了基于1060nm的高速扫描激光的眼科SS-OCT系统,扫描速率为100KHz。由于干涉仪的样品臂由多种玻璃材料组成,随之而来的色散严重降低成像质量。在本文中,首先对各种材料进行了二阶色散模拟分析,利用物理补偿方法实现色散平衡。色散补偿后,在模型眼实验中实现了4.013mm的空气成像深度,信噪比提高了11.6%,值为53.8dB。进行人视网膜的体内成像以显示结构上可区分的视网膜图像,其特征是轴向分辨率提高了19.8%,值7.7μm接近理论值7.5μm。提出的物理色散补偿方法提高了SS-OCT系统的成像性能,使几个低散射介质的可视化。本文受版权保护。保留所有权利。
    An ophthalmic swept source-optical coherence tomography (SS-OCT) system based on a high-speed scanning laser at 1060 nm with a scanning rate of 100 KHz is constructed. Since the sample arm of the interferometer is comprised of multiple glass materials, the ensuing dispersion severely degrades imaging quality. In this article, second-order dispersion simulation analysis for various materials was performed first, and dispersion equilibrium was implemented utilizing physical compensation methods. After dispersion compensation, an imaging depth in air of 4.013 mm was achieved in model eye experiments, and signal-to-noise ratio was enhanced by 11.6%, with a value of 53.8 dB. In vivo imaging of the human retina was performed to demonstrate structurally distinguishable retinal images, characterized by an axial resolution improvement of 19.8%, with a value of 7.7 μm close to the theoretical value of 7.5 μm. The proposed physical dispersion compensation method enhances imaging performance in SS-OCT systems, enabling visualization of several low scattering mediums.
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  • 文章类型: Journal Article
    据推测,视网膜中的异常微循环可能预测大脑缺血性损伤的风险。使用类似的动物制剂和类似的实验条件,直接比较视网膜和大脑微循环将有助于检验这一假设。
    我们研究了在受控条件下的毛细血管红细胞(RBC)通量变化以及双侧颈动脉狭窄(BCAS)引起的灌注不足,然后将它们与我们之前在大脑中进行的测量进行比较。
    我们使用荧光标记的RBC通道方法用双光子显微镜测量小鼠视网膜中的毛细血管RBC通量。在实验期间监测关键生理参数以确保稳定的生理学。
    我们发现在受控条件下,视网膜中的毛细血管红细胞通量远高于大脑(即,大脑皮层灰质和皮层下白质),并且BCAS诱导视网膜中毛细血管红细胞通量比大脑中更大的减少。
    我们展示了一种基于双光子显微镜的技术,可有效地测量视网膜中的毛细血管RBC通量。由于大脑皮质下白质通常由于整体灌注不足而表现出早期病理发展,我们的结果提示,视网膜微循环可作为涉及整体灌注不足的脑部疾病的早期标志物.
    UNASSIGNED: It has been hypothesized that abnormal microcirculation in the retina might predict the risk of ischemic damages in the brain. Direct comparison between the retinal and the cerebral microcirculation using similar animal preparation and under similar experimental conditions would help test this hypothesis.
    UNASSIGNED: We investigated capillary red-blood-cell (RBC) flux changes under controlled conditions and bilateral-carotid-artery-stenosis (BCAS)-induced hypoperfusion, and then compared them with our previous measurements performed in the brain.
    UNASSIGNED: We measured capillary RBC flux in mouse retina with two-photon microscopy using a fluorescence-labeled RBC-passage approach. Key physiological parameters were monitored during experiments to ensure stable physiology.
    UNASSIGNED: We found that under the controlled conditions, capillary RBC flux in the retina was much higher than in the brain (i.e., cerebral cortical gray matter and subcortical white matter), and that BCAS induced a much larger decrease in capillary RBC flux in the retina than in the brain.
    UNASSIGNED: We demonstrated a two-photon microscopy-based technique to efficiently measure capillary RBC flux in the retina. Since cerebral subcortical white matter often exhibits early pathological developments due to global hypoperfusion, our results suggest that retinal microcirculation may be utilized as an early marker of brain diseases involving global hypoperfusion.
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  • 文章类型: Journal Article
    阿尔茨海默病(Alzheimer’sdisease,AD)在21世纪仍然是一个全球性的健康挑战,因为它是痴呆的主要原因。最先进的基于人工智能(AI)的测试可能会改善基于人群的策略来检测和管理AD。当前的视网膜成像显示出作为AD的非侵入性筛查措施的巨大潜力,通过研究视网膜神经元和血管结构的定性和定量变化,这些变化通常与大脑的退行性变化有关。另一方面,人工智能的巨大成功,尤其是深度学习,近年来,人们鼓励将其与视网膜成像相结合,以预测系统性疾病。深度强化学习(DRL)的进一步发展,定义为结合深度学习和强化学习的机器学习子领域,还提示了它如何与视网膜成像一起作为自动预测AD的可行工具的问题。本文旨在讨论DRL在视网膜成像研究AD中的潜在应用。以及它们的协同应用来解锁其他可能性,如AD检测和预测AD进展。挑战和未来方向,例如在定义奖励函数时使用逆DRL,视网膜成像缺乏标准化,和数据可用性,还将解决弥合差距,以过渡到临床使用。
    Alzheimer\'s disease (AD) remains a global health challenge in the 21st century due to its increasing prevalence as the major cause of dementia. State-of-the-art artificial intelligence (AI)-based tests could potentially improve population-based strategies to detect and manage AD. Current retinal imaging demonstrates immense potential as a non-invasive screening measure for AD, by studying qualitative and quantitative changes in the neuronal and vascular structures of the retina that are often associated with degenerative changes in the brain. On the other hand, the tremendous success of AI, especially deep learning, in recent years has encouraged its incorporation with retinal imaging for predicting systemic diseases. Further development in deep reinforcement learning (DRL), defined as a subfield of machine learning that combines deep learning and reinforcement learning, also prompts the question of how it can work hand in hand with retinal imaging as a viable tool for automated prediction of AD. This review aims to discuss potential applications of DRL in using retinal imaging to study AD, and their synergistic application to unlock other possibilities, such as AD detection and prediction of AD progression. Challenges and future directions, such as the use of inverse DRL in defining reward function, lack of standardization in retinal imaging, and data availability, will also be addressed to bridge gaps for its transition into clinical use.
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  • 文章类型: Journal Article
    背景:目前在英国,心血管疾病(CVD)风险评估基于QRISK3评分,其中10%的10年CVD风险表明临床干预。然而,这一基准在临床实践中疗效有限,需要更简单的方法,非侵入性风险分层工具是必要的。视网膜摄影作为CVD的非侵入性成像工具正变得越来越可接受。以前,我们开发了一种基于预测未来CVD风险的视网膜照片的新型CVD风险分层系统.这项研究旨在进一步验证我们的生物标志物,Reti-CVD,(1)在10年CVD风险中检测≥10%的风险组;(2)使用UKBiobank增强QRISK3为7.5-10%的个体(称为边界QRISK3组)的风险评估。
    方法:根据来自英国生物库的优化临界值,计算Reti-CVD评分并将其分层为三个风险组。我们使用Cox比例风险模型来评估Reti-CVD预测普通人群中CVD事件的能力。C统计学用于评估在临界QRISK3组和三个易损亚组中在QRISK3中添加Reti-CVD的预后价值。
    结果:在48,260名没有心血管疾病史的参与者中,6.3%的患者在11年随访期间发生了CVD事件。Reti-CVD与CVD风险增加相关(调整后风险比[HR]1.41;95%置信区间[CI],1.30-1.52),Reti-CVD高危人群的10年CVD风险为13.1%(95%CI,11.7-14.6%)。在Reti-CVD高风险组中,临界QRISK3组的10年CVD风险大于10%(非他汀类药物队列中为11.5%[n=45,473],1期高血压队列中11.5%[n=11,966],中年队列中占14.2%[n=38,941])。非他汀类药物队列中的C统计数据增加了0.014(0.010-0.017),1期高血压队列中的0.013(0.007-0.019),将Reti-CVD添加到QRISK3后,中年队列中的CVD事件预测为0.023(0.018-0.029)。
    结论:Reti-CVD有可能识别10年CVD风险≥10%的个体,这些个体可能从早期的预防性CVD干预中获益。对于10年CVD风险在7.5%至10%之间的临界QRISK3个体,Reti-CVD可以用作风险增强工具,以帮助提高识别准确性,尤其是在可能倾向于CVD的成人群体中。
    Currently in the United Kingdom, cardiovascular disease (CVD) risk assessment is based on the QRISK3 score, in which 10% 10-year CVD risk indicates clinical intervention. However, this benchmark has limited efficacy in clinical practice and the need for a more simple, non-invasive risk stratification tool is necessary. Retinal photography is becoming increasingly acceptable as a non-invasive imaging tool for CVD. Previously, we developed a novel CVD risk stratification system based on retinal photographs predicting future CVD risk. This study aims to further validate our biomarker, Reti-CVD, (1) to detect risk group of ≥ 10% in 10-year CVD risk and (2) enhance risk assessment in individuals with QRISK3 of 7.5-10% (termed as borderline-QRISK3 group) using the UK Biobank.
    Reti-CVD scores were calculated and stratified into three risk groups based on optimized cut-off values from the UK Biobank. We used Cox proportional-hazards models to evaluate the ability of Reti-CVD to predict CVD events in the general population. C-statistics was used to assess the prognostic value of adding Reti-CVD to QRISK3 in borderline-QRISK3 group and three vulnerable subgroups.
    Among 48,260 participants with no history of CVD, 6.3% had CVD events during the 11-year follow-up. Reti-CVD was associated with an increased risk of CVD (adjusted hazard ratio [HR] 1.41; 95% confidence interval [CI], 1.30-1.52) with a 13.1% (95% CI, 11.7-14.6%) 10-year CVD risk in Reti-CVD-high-risk group. The 10-year CVD risk of the borderline-QRISK3 group was greater than 10% in Reti-CVD-high-risk group (11.5% in non-statin cohort [n = 45,473], 11.5% in stage 1 hypertension cohort [n = 11,966], and 14.2% in middle-aged cohort [n = 38,941]). C statistics increased by 0.014 (0.010-0.017) in non-statin cohort, 0.013 (0.007-0.019) in stage 1 hypertension cohort, and 0.023 (0.018-0.029) in middle-aged cohort for CVD event prediction after adding Reti-CVD to QRISK3.
    Reti-CVD has the potential to identify individuals with ≥ 10% 10-year CVD risk who are likely to benefit from earlier preventative CVD interventions. For borderline-QRISK3 individuals with 10-year CVD risk between 7.5 and 10%, Reti-CVD could be used as a risk enhancer tool to help improve discernment accuracy, especially in adult groups that may be pre-disposed to CVD.
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  • 文章类型: Journal Article
    以前的研究已经探索了视网膜血管口径的关联,使用半自动计算机程序从视网膜照片或眼底图像测量,患有认知障碍和痴呆,支持视网膜血管反映大脑微血管变化的概念。最近,人工智能深度学习算法已被开发用于视网膜血管口径的全自动评估。因此,我们的目的是确定基于深度学习的视网膜血管口径测量是否可以预测认知功能减退和痴呆的风险.我们进行了一项前瞻性研究,招募了来自新加坡国立大学医院和圣卢克医院记忆诊所的参与者;所有参与者在基线时都进行了全面的临床和神经心理学检查,为期5年。使用深度学习系统估计来自视网膜眼底图像的视网膜小动脉和静脉口径的全自动测量。然后使用Cox回归模型来评估基线视网膜血管口径与认知下降和发展为痴呆的风险之间的关系。调整年龄,性别,种族,教育,脑血管疾病状态,高血压,高脂血症,糖尿病,和吸烟。本研究共纳入491名参与者,其中254人在5年内出现认知能力下降。在多变量模型中,狭窄的视网膜小动脉口径(每标准差降低的风险比=1.258,P=0.008)和较宽的视网膜小静脉口径(每标准差增加的风险比=1.204,P=0.037)与认知功能下降的风险增加相关.在有认知障碍但基线无痴呆的参与者中(n=212),44进展为偶发性痴呆;较窄的视网膜小动脉口径也与偶发性痴呆相关(每标准偏差降低的风险比=1.624,P=0.021)。总之,基于深度学习的视网膜血管口径测量与认知功能减退和痴呆风险相关.
    Previous studies have explored the associations of retinal vessel calibre, measured from retinal photographs or fundus images using semi-automated computer programs, with cognitive impairment and dementia, supporting the concept that retinal blood vessels reflect microvascular changes in the brain. Recently, artificial intelligence deep-learning algorithms have been developed for the fully automated assessment of retinal vessel calibres. Therefore, we aimed to determine whether deep-learning-based retinal vessel calibre measurements are predictive of risk of cognitive decline and dementia. We conducted a prospective study recruiting participants from memory clinics at the National University Hospital and St. Luke\'s Hospital in Singapore; all participants had comprehensive clinical and neuropsychological examinations at baseline and annually for up to 5 years. Fully automated measurements of retinal arteriolar and venular calibres from retinal fundus images were estimated using a deep-learning system. Cox regression models were then used to assess the relationship between baseline retinal vessel calibre and the risk of cognitive decline and developing dementia, adjusting for age, gender, ethnicity, education, cerebrovascular disease status, hypertension, hyperlipidemia, diabetes, and smoking. A total of 491 participants were included in this study, of whom 254 developed cognitive decline over 5 years. In multivariable models, narrower retinal arteriolar calibre (hazard ratio per standard deviation decrease = 1.258, P = 0.008) and wider retinal venular calibre (hazard ratio per standard deviation increase = 1.204, P = 0.037) were associated with increased risk of cognitive decline. Among participants with cognitive impairment but no dementia at baseline (n = 212), 44 progressed to have incident dementia; narrower retinal arteriolar calibre was also associated with incident dementia (hazard ratio per standard deviation decrease = 1.624, P = 0.021). In summary, deep-learning-based measurement of retinal vessel calibre was associated with risk of cognitive decline and dementia.
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