Cristina Cuscó, Pau Esteve-Bricullé, Ana Almazán-Moga, Jimena Fernández-Carneado, Berta Ponsati
{"title":"糖尿病视网膜病变的微血管指标:从真实世界数据的糖尿病眼图像元分析中获得的启示","authors":"Cristina Cuscó, Pau Esteve-Bricullé, Ana Almazán-Moga, Jimena Fernández-Carneado, Berta Ponsati","doi":"10.1101/2024.08.01.24311332","DOIUrl":null,"url":null,"abstract":"Objective: To quantify microvascular lesions in a large Real-World Data (RWD) set, based on single central retinal fundus images from different origins, with the aim of validating its use as a precision tool for classifying Diabetic Retinopathy (DR) severity.\nDesign: Retrospective meta-analysis across multiple fundus image datasets.\nSample size: The study analyzed 2,340 retinal fundus images from diabetic patients across four diverse RWD international datasets, including populations from Spain, India, China and the US.\nIntervention: The quantification of specific microvascular lesions: microaneurysms (MAs), hemorrhages (Hmas) and hard exudates (HEs) using advanced automated image analysis techniques on central retinal images to validate reliable metrics for DR severity assessment. The images were pre-classified in the DR severity levels as defined by the International Clinical Diabetic Retinopathy (ICDR) scale.\nMain Outcome Measures: The primary variables measured were the number of MAs, Hmas, red lesions (RLs) and HEs. These counts were related with DR severity levels using statistical methods to validate the relationship between lesion counts and disease severity.\nResults: The analysis revealed a robust and statistically significant increase (p<0.001) in the number of microvascular lesions and the DR severity across all datasets. Tight data distributions were reported for MAs, Hmas and RLs, supporting the reliability of lesion quantification for accurately assessing DR severity. HEs also followed a similar pattern, but with a broader dispersion of data. Data used in this study are consistent with the definition of the DR severity levels established by the ICDR guidelines.\nConclusions: The statistically significant increase in the number of microvascular lesions across DR severity validate the use of lesion quantification in a single central retinal field as a key biomarker for disease classification and assessment. This quantification method demonstrates an improvement over traditional assessment scales, providing a quantitative metric that enhances the precision of disease classification and patient monitoring. The inclusion of a numerical component allows for the detection of subtle variations within the same severity level, offering a deeper understanding of disease progression. The consistency of results across diverse datasets not only confirms the method's reliability but also its applicability in a global healthcare setting.","PeriodicalId":501390,"journal":{"name":"medRxiv - Ophthalmology","volume":"37 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-08-02","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Microvascular Metrics on Diabetic Retinopathy: Insights from a Meta-Analysis of Diabetic Eye Images from Real-World Data\",\"authors\":\"Cristina Cuscó, Pau Esteve-Bricullé, Ana Almazán-Moga, Jimena Fernández-Carneado, Berta Ponsati\",\"doi\":\"10.1101/2024.08.01.24311332\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"Objective: To quantify microvascular lesions in a large Real-World Data (RWD) set, based on single central retinal fundus images from different origins, with the aim of validating its use as a precision tool for classifying Diabetic Retinopathy (DR) severity.\\nDesign: Retrospective meta-analysis across multiple fundus image datasets.\\nSample size: The study analyzed 2,340 retinal fundus images from diabetic patients across four diverse RWD international datasets, including populations from Spain, India, China and the US.\\nIntervention: The quantification of specific microvascular lesions: microaneurysms (MAs), hemorrhages (Hmas) and hard exudates (HEs) using advanced automated image analysis techniques on central retinal images to validate reliable metrics for DR severity assessment. The images were pre-classified in the DR severity levels as defined by the International Clinical Diabetic Retinopathy (ICDR) scale.\\nMain Outcome Measures: The primary variables measured were the number of MAs, Hmas, red lesions (RLs) and HEs. These counts were related with DR severity levels using statistical methods to validate the relationship between lesion counts and disease severity.\\nResults: The analysis revealed a robust and statistically significant increase (p<0.001) in the number of microvascular lesions and the DR severity across all datasets. Tight data distributions were reported for MAs, Hmas and RLs, supporting the reliability of lesion quantification for accurately assessing DR severity. HEs also followed a similar pattern, but with a broader dispersion of data. Data used in this study are consistent with the definition of the DR severity levels established by the ICDR guidelines.\\nConclusions: The statistically significant increase in the number of microvascular lesions across DR severity validate the use of lesion quantification in a single central retinal field as a key biomarker for disease classification and assessment. This quantification method demonstrates an improvement over traditional assessment scales, providing a quantitative metric that enhances the precision of disease classification and patient monitoring. The inclusion of a numerical component allows for the detection of subtle variations within the same severity level, offering a deeper understanding of disease progression. 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引用次数: 0
摘要
目的根据不同来源的单个中心视网膜眼底图像,量化大型真实世界数据集(RWD)中的微血管病变,以验证其作为糖尿病视网膜病变(DR)严重程度分级精确工具的有效性:设计:对多个眼底图像数据集进行回顾性荟萃分析:研究分析了来自四个不同 RWD 国际数据集的 2340 张糖尿病患者视网膜眼底图像,包括来自西班牙、印度、中国和美国的人群:干预措施:在中心视网膜图像上使用先进的自动图像分析技术量化特定微血管病变:微动脉瘤(MA)、出血(Hmas)和硬性渗出(HE),以验证用于 DR 严重程度评估的可靠指标。根据国际临床糖尿病视网膜病变(ICDR)量表的定义,这些图像被预先划分为 DR 严重程度等级:测量的主要变量是 MA、Hmas、红色病变 (RL) 和 HE 的数量。使用统计方法将这些计数与 DR 严重程度相关联,以验证病变计数与疾病严重程度之间的关系:结果:分析表明,在所有数据集中,微血管病变数量和 DR 严重程度都出现了稳健且具有统计学意义的增长(p<0.001)。据报告,MAs、Hmas 和 RL 的数据分布紧密,证明了病变量化在准确评估 DR 严重程度方面的可靠性。HEs也遵循类似的模式,但数据分布更广。本研究使用的数据与 ICDR 指南确定的 DR 严重程度定义一致:微血管病变的数量在不同的 DR 严重程度下都有统计学意义上的明显增加,这验证了将单个中心视网膜视野中的病变量化作为疾病分类和评估的关键生物标志物的有效性。与传统的评估量表相比,这种量化方法有所改进,提供了一种量化指标,提高了疾病分类和患者监测的精确度。数字成分的加入可以检测同一严重程度的细微变化,从而更深入地了解疾病的进展。不同数据集之间结果的一致性不仅证实了该方法的可靠性,还证实了它在全球医疗环境中的适用性。
Microvascular Metrics on Diabetic Retinopathy: Insights from a Meta-Analysis of Diabetic Eye Images from Real-World Data
Objective: To quantify microvascular lesions in a large Real-World Data (RWD) set, based on single central retinal fundus images from different origins, with the aim of validating its use as a precision tool for classifying Diabetic Retinopathy (DR) severity.
Design: Retrospective meta-analysis across multiple fundus image datasets.
Sample size: The study analyzed 2,340 retinal fundus images from diabetic patients across four diverse RWD international datasets, including populations from Spain, India, China and the US.
Intervention: The quantification of specific microvascular lesions: microaneurysms (MAs), hemorrhages (Hmas) and hard exudates (HEs) using advanced automated image analysis techniques on central retinal images to validate reliable metrics for DR severity assessment. The images were pre-classified in the DR severity levels as defined by the International Clinical Diabetic Retinopathy (ICDR) scale.
Main Outcome Measures: The primary variables measured were the number of MAs, Hmas, red lesions (RLs) and HEs. These counts were related with DR severity levels using statistical methods to validate the relationship between lesion counts and disease severity.
Results: The analysis revealed a robust and statistically significant increase (p<0.001) in the number of microvascular lesions and the DR severity across all datasets. Tight data distributions were reported for MAs, Hmas and RLs, supporting the reliability of lesion quantification for accurately assessing DR severity. HEs also followed a similar pattern, but with a broader dispersion of data. Data used in this study are consistent with the definition of the DR severity levels established by the ICDR guidelines.
Conclusions: The statistically significant increase in the number of microvascular lesions across DR severity validate the use of lesion quantification in a single central retinal field as a key biomarker for disease classification and assessment. This quantification method demonstrates an improvement over traditional assessment scales, providing a quantitative metric that enhances the precision of disease classification and patient monitoring. The inclusion of a numerical component allows for the detection of subtle variations within the same severity level, offering a deeper understanding of disease progression. The consistency of results across diverse datasets not only confirms the method's reliability but also its applicability in a global healthcare setting.