Multiple Sclerosis (MS) is a chronic autoimmune demyelinating disease of the central nervous system (CNS) characterized by inflammation, demyelination, and axonal damage. Early recognition and treatment are important for preventing or minimizing the long-term effects of the disease. Current gold standard modalities of diagnosis (e.g., CSF and MRI) are invasive and expensive in nature, warranting alternative methods of detection and screening. Oculomics, the interdisciplinary combination of ophthalmology, genetics, and bioinformatics to study the molecular basis of eye diseases, has seen rapid development through various technologies that detect structural, functional, and visual changes in the eye. Ophthalmic biomarkers (e.g., tear composition, retinal nerve fibre layer thickness, saccadic eye movements) are emerging as promising tools for evaluating MS progression. The eye's structural and embryological similarity to the brain makes it a potentially suitable assessment of neurological and microvascular changes in CNS. In the advent of more powerful machine learning algorithms, oculomics screening modalities such as optical coherence tomography (OCT), eye tracking, and protein analysis become more effective tools aiding in MS diagnosis. Artificial intelligence can analyse larger and more diverse data sets to potentially discover new parameters of pathology for efficiently diagnosing MS before symptom onset. While there is no known cure for MS, the integration of oculomics with current modalities of diagnosis creates a promising future for developing more sensitive, non-invasive, and cost-effective approaches to MS detection and diagnosis.
摘要: 多发性硬化(MS)是一种以慢性自身免疫性中枢神经系统(CNS)受累为特征的脱髓鞘疾病, 以炎症、脱髓鞘和轴突损伤为临床特征。早期识别和治疗对于预防或最大限度地减少疾病的长期损伤至关重要。目前诊断的金标准 (如脑脊液检测和核磁共振)具有侵入性和价格昂贵等缺点, 需探索检测和筛查的替代方法。眼部组学是眼科学、遗传学和生物信息学的交叉学科, 旨在研究眼病的分子基础, 通过检测眼的结构、功能和视觉变化的各项技术的革新, 得到了快速发展。眼科生物标志物(如泪液、视网膜神经纤维层厚度、眼球扫视运动)将成为评估MS进展的有前景的工具。眼与脑在结构和胚胎学上的相似之处为其评估中枢神经系统的神经和微血管变化提供了潜在可能。随着更强大的机器学习算法的出现, 眼部组学筛查方式, 如相干光断层扫描技术(OCT)、眼跟踪和蛋白质分析, 成为MS辅助诊断的更有效工具。人工智能可分析更大、更多样化的数据集, 可能发现新的病理学参数, 以便在症状出现前有效诊断MS。虽然MS的治疗方法未知, 但眼部组学与当前诊断方法的结合有望在未来开发更敏感、无创和更具成本效益的MS检测和诊断方法。.
© 2024. The Author(s).