[基于深度学习技术的豹斑眼底自动量化和分级初步研究]。

L Dong, W D Zhou, L Ju, H Q Zhao, Y H Yang, L Shao, K M Song, L Wang, T Ma, Y X Wang, W B Wei
{"title":"[基于深度学习技术的豹斑眼底自动量化和分级初步研究]。","authors":"L Dong, W D Zhou, L Ju, H Q Zhao, Y H Yang, L Shao, K M Song, L Wang, T Ma, Y X Wang, W B Wei","doi":"10.3760/cma.j.cn112142-20231210-00281","DOIUrl":null,"url":null,"abstract":"<p><p><b>Objective:</b> To achieve automatic segmentation, quantification, and grading of different regions of leopard spots fundus (FT) using deep learning technology. The analysis includes exploring the correlation between novel quantitative indicators, leopard spot fundus grades, and various systemic and ocular parameters. <b>Methods:</b> This was a cross-sectional study. The data were sourced from the Beijing Eye Study, a population-based longitudinal study. In 2001, a group of individuals aged 40 and above were surveyed in five urban communities in Haidian District and three rural communities in Daxing District of Beijing. A follow-up was conducted in 2011. This study included individuals aged 50 and above who participated in the second 5-year follow-up in 2011, considering only the data from the right eye. Color fundus images centered on the macula of the right eye were input into the leopard spot segmentation model and macular detection network. Using the macular center as the origin, with inner circle diameters of 1 mm, 3 mm, and outer circle diameter of 6 mm, fine segmentation of the fundus was achieved. This allowed the calculation of the leopard spot density (FTD) and leopard spot grade for each region. Further analyses of the differences in ocular and systemic parameters among different regions' FTD and leopard spot grades were conducted. The participants were categorized into three refractive types based on equivalent spherical power (SE): myopia (SE<-0.25 D), emmetropia (-0.25 D≤SE≤0.25 D), and hyperopia (SE>0.25 D). Based on axial length, the participants were divided into groups with axial length<24 mm, 24-26 mm, and>26 mm for the analysis of different types of FTD. Statistical analyses were performed using one-way analysis of variance, Kruskal-Wallis test, Bonferroni test, and Spearman correlation analysis. <b>Results:</b> The study included 3 369 participants (3 369 eyes) with an average age of (63.9±10.6) years; among them, 1 886 were female (56.0%) and 1, 483 were male (64.0%). The overall FTD for all eyes was 0.060 (0.016, 0.163); inner circle FTD was 0.000 (0.000, 0.025); middle circle FTD was 0.030 (0.000, 0.130); outer circle FTD was 0.055 (0.009, 0.171). The results of the univariate analysis indicated that FTD in various regions was correlated with axial length (overall: <i>r</i>=0.38, <i>P</i><0.001; inner circle: <i>r</i>=0.31, <i>P</i><0.001; middle circle: <i>r</i>=0.36, <i>P</i><0.001; outer circle: <i>r</i>=0.39, <i>P</i><0.001), subfoveal choroidal thickness (SFCT) (overall: <i>r</i>=-0.69, <i>P</i><0.001; inner circle: <i>r</i>=-0.57, <i>P</i><0.001; middle circle: <i>r</i>=-0.68, <i>P</i><0.001; outer circle: <i>r</i>=-0.72, <i>P</i><0.001), age (overall: <i>r</i>=0.34, <i>P</i><0.001; inner circle: <i>r</i>=0.30, <i>P</i><0.001; middle circle: <i>r</i>=0.31, <i>P</i><0.001; outer circle: <i>r</i>=0.35, <i>P</i><0.001), gender (overall: <i>r</i>=-0.11, <i>P</i><0.001; inner circle: <i>r</i>=-0.04, <i>P</i><0.001; middle circle: <i>r</i>=-0.07, <i>P</i><0.001; outer circle: <i>r</i>=-0.11, <i>P</i><0.001), SE (overall: <i>r</i>=-0.20; <i>P</i><0.001; inner circle: <i>r</i>=-0.19, <i>P</i><0.001; middle circle: <i>r</i>=-0.20, <i>P</i><0.001; outer circle: <i>r</i>=-0.20, <i>P</i><0.001), uncorrected visual acuity (overall: <i>r</i>=-0.18, <i>P</i><0.001; inner circle: <i>r</i>=-0.26, <i>P</i><0.001; middle circle: <i>r</i>=-0.24, <i>P</i><0.001; outer circle: <i>r</i>=-0.22, <i>P</i><0.001), and body mass index (BMI) (overall: <i>r</i>=-0.11, <i>P</i><0.001; inner circle: <i>r</i>=-0.13, <i>P</i><0.001; middle circle: <i>r</i>=-0.14, <i>P</i><0.001; outer circle: <i>r</i>=-0.13, <i>P</i><0.001). Further multivariate analysis results indicated that different region FTD was correlated with axial length (overall: <i>β</i>=0.020, <i>P</i><0.001; inner circle: <i>β</i>=-0.022, <i>P</i><0.001; middle circle: <i>β</i>=0.027, <i>P</i><0.001; outer circle: <i>β</i>=0.022, <i>P</i><0.001), SFCT (overall: <i>β</i>=-0.001, <i>P</i><0.001; inner circle: <i>β</i>=-0.001, <i>P</i><0.001; middle circle: <i>β</i>=-0.001, <i>P</i><0.001; outer circle: <i>β</i>=-0.001, <i>P</i><0.001), and age (overall: <i>β</i>=0.002, <i>P</i><0.001; inner circle: <i>β</i>=0.001, <i>P</i><0.001; middle circle: <i>β</i>=0.002, <i>P</i><0.001; outer circle: <i>β</i>=0.002, <i>P</i><0.001). The distribution of overall (<i>H</i>=56.76, <i>P</i><0.001), inner circle (<i>H</i>=72.22, <i>P</i><0.001), middle circle (<i>H</i>=75.83, <i>P</i><0.001), and outer circle (<i>H</i>=70.34, <i>P</i><0.001) FTD differed significantly among different refractive types. The distribution of overall (<i>H</i>=373.15, <i>P</i><0.001), inner circle (<i>H</i>=367.67, <i>P</i><0.001), middle circle (<i>H</i>=389.14, <i>P</i><0.001), and outer circle (<i>H</i>=386.89, <i>P</i><0.001) FTD differed significantly among different axial length groups. Furthermore, comparing various levels of FTD with systemic and ocular parameters, significant differences were found in axial length (<i>F</i>=142.85, <i>P</i><0.001) and SFCT (<i>F</i>=530.46, <i>P</i><0.001). <b>Conclusions:</b> The use of deep learning technology enables automatic segmentation and quantification of different regions of theFT, as well as preliminary grading. Different region FTD is significantly correlated with axial length, SFCT, and age. Individuals with older age, myopia, and longer axial length tend to have higher FTD and more advanced FT grades.</p>","PeriodicalId":39688,"journal":{"name":"中华眼科杂志","volume":"60 3","pages":"257-264"},"PeriodicalIF":0.0000,"publicationDate":"2024-03-11","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"[Preliminary study on automatic quantification and grading of leopard spots fundus based on deep learning technology].\",\"authors\":\"L Dong, W D Zhou, L Ju, H Q Zhao, Y H Yang, L Shao, K M Song, L Wang, T Ma, Y X Wang, W B Wei\",\"doi\":\"10.3760/cma.j.cn112142-20231210-00281\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p><b>Objective:</b> To achieve automatic segmentation, quantification, and grading of different regions of leopard spots fundus (FT) using deep learning technology. The analysis includes exploring the correlation between novel quantitative indicators, leopard spot fundus grades, and various systemic and ocular parameters. <b>Methods:</b> This was a cross-sectional study. The data were sourced from the Beijing Eye Study, a population-based longitudinal study. In 2001, a group of individuals aged 40 and above were surveyed in five urban communities in Haidian District and three rural communities in Daxing District of Beijing. A follow-up was conducted in 2011. This study included individuals aged 50 and above who participated in the second 5-year follow-up in 2011, considering only the data from the right eye. Color fundus images centered on the macula of the right eye were input into the leopard spot segmentation model and macular detection network. Using the macular center as the origin, with inner circle diameters of 1 mm, 3 mm, and outer circle diameter of 6 mm, fine segmentation of the fundus was achieved. This allowed the calculation of the leopard spot density (FTD) and leopard spot grade for each region. Further analyses of the differences in ocular and systemic parameters among different regions' FTD and leopard spot grades were conducted. The participants were categorized into three refractive types based on equivalent spherical power (SE): myopia (SE<-0.25 D), emmetropia (-0.25 D≤SE≤0.25 D), and hyperopia (SE>0.25 D). Based on axial length, the participants were divided into groups with axial length<24 mm, 24-26 mm, and>26 mm for the analysis of different types of FTD. Statistical analyses were performed using one-way analysis of variance, Kruskal-Wallis test, Bonferroni test, and Spearman correlation analysis. <b>Results:</b> The study included 3 369 participants (3 369 eyes) with an average age of (63.9±10.6) years; among them, 1 886 were female (56.0%) and 1, 483 were male (64.0%). The overall FTD for all eyes was 0.060 (0.016, 0.163); inner circle FTD was 0.000 (0.000, 0.025); middle circle FTD was 0.030 (0.000, 0.130); outer circle FTD was 0.055 (0.009, 0.171). The results of the univariate analysis indicated that FTD in various regions was correlated with axial length (overall: <i>r</i>=0.38, <i>P</i><0.001; inner circle: <i>r</i>=0.31, <i>P</i><0.001; middle circle: <i>r</i>=0.36, <i>P</i><0.001; outer circle: <i>r</i>=0.39, <i>P</i><0.001), subfoveal choroidal thickness (SFCT) (overall: <i>r</i>=-0.69, <i>P</i><0.001; inner circle: <i>r</i>=-0.57, <i>P</i><0.001; middle circle: <i>r</i>=-0.68, <i>P</i><0.001; outer circle: <i>r</i>=-0.72, <i>P</i><0.001), age (overall: <i>r</i>=0.34, <i>P</i><0.001; inner circle: <i>r</i>=0.30, <i>P</i><0.001; middle circle: <i>r</i>=0.31, <i>P</i><0.001; outer circle: <i>r</i>=0.35, <i>P</i><0.001), gender (overall: <i>r</i>=-0.11, <i>P</i><0.001; inner circle: <i>r</i>=-0.04, <i>P</i><0.001; middle circle: <i>r</i>=-0.07, <i>P</i><0.001; outer circle: <i>r</i>=-0.11, <i>P</i><0.001), SE (overall: <i>r</i>=-0.20; <i>P</i><0.001; inner circle: <i>r</i>=-0.19, <i>P</i><0.001; middle circle: <i>r</i>=-0.20, <i>P</i><0.001; outer circle: <i>r</i>=-0.20, <i>P</i><0.001), uncorrected visual acuity (overall: <i>r</i>=-0.18, <i>P</i><0.001; inner circle: <i>r</i>=-0.26, <i>P</i><0.001; middle circle: <i>r</i>=-0.24, <i>P</i><0.001; outer circle: <i>r</i>=-0.22, <i>P</i><0.001), and body mass index (BMI) (overall: <i>r</i>=-0.11, <i>P</i><0.001; inner circle: <i>r</i>=-0.13, <i>P</i><0.001; middle circle: <i>r</i>=-0.14, <i>P</i><0.001; outer circle: <i>r</i>=-0.13, <i>P</i><0.001). Further multivariate analysis results indicated that different region FTD was correlated with axial length (overall: <i>β</i>=0.020, <i>P</i><0.001; inner circle: <i>β</i>=-0.022, <i>P</i><0.001; middle circle: <i>β</i>=0.027, <i>P</i><0.001; outer circle: <i>β</i>=0.022, <i>P</i><0.001), SFCT (overall: <i>β</i>=-0.001, <i>P</i><0.001; inner circle: <i>β</i>=-0.001, <i>P</i><0.001; middle circle: <i>β</i>=-0.001, <i>P</i><0.001; outer circle: <i>β</i>=-0.001, <i>P</i><0.001), and age (overall: <i>β</i>=0.002, <i>P</i><0.001; inner circle: <i>β</i>=0.001, <i>P</i><0.001; middle circle: <i>β</i>=0.002, <i>P</i><0.001; outer circle: <i>β</i>=0.002, <i>P</i><0.001). The distribution of overall (<i>H</i>=56.76, <i>P</i><0.001), inner circle (<i>H</i>=72.22, <i>P</i><0.001), middle circle (<i>H</i>=75.83, <i>P</i><0.001), and outer circle (<i>H</i>=70.34, <i>P</i><0.001) FTD differed significantly among different refractive types. The distribution of overall (<i>H</i>=373.15, <i>P</i><0.001), inner circle (<i>H</i>=367.67, <i>P</i><0.001), middle circle (<i>H</i>=389.14, <i>P</i><0.001), and outer circle (<i>H</i>=386.89, <i>P</i><0.001) FTD differed significantly among different axial length groups. Furthermore, comparing various levels of FTD with systemic and ocular parameters, significant differences were found in axial length (<i>F</i>=142.85, <i>P</i><0.001) and SFCT (<i>F</i>=530.46, <i>P</i><0.001). <b>Conclusions:</b> The use of deep learning technology enables automatic segmentation and quantification of different regions of theFT, as well as preliminary grading. Different region FTD is significantly correlated with axial length, SFCT, and age. Individuals with older age, myopia, and longer axial length tend to have higher FTD and more advanced FT grades.</p>\",\"PeriodicalId\":39688,\"journal\":{\"name\":\"中华眼科杂志\",\"volume\":\"60 3\",\"pages\":\"257-264\"},\"PeriodicalIF\":0.0000,\"publicationDate\":\"2024-03-11\",\"publicationTypes\":\"Journal Article\",\"fieldsOfStudy\":null,\"isOpenAccess\":false,\"openAccessPdf\":\"\",\"citationCount\":\"0\",\"resultStr\":null,\"platform\":\"Semanticscholar\",\"paperid\":null,\"PeriodicalName\":\"中华眼科杂志\",\"FirstCategoryId\":\"3\",\"ListUrlMain\":\"https://doi.org/10.3760/cma.j.cn112142-20231210-00281\",\"RegionNum\":0,\"RegionCategory\":null,\"ArticlePicture\":[],\"TitleCN\":null,\"AbstractTextCN\":null,\"PMCID\":null,\"EPubDate\":\"\",\"PubModel\":\"\",\"JCR\":\"Q3\",\"JCRName\":\"Medicine\",\"Score\":null,\"Total\":0}","platform":"Semanticscholar","paperid":null,"PeriodicalName":"中华眼科杂志","FirstCategoryId":"3","ListUrlMain":"https://doi.org/10.3760/cma.j.cn112142-20231210-00281","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q3","JCRName":"Medicine","Score":null,"Total":0}
引用次数: 0

摘要

目的利用深度学习技术实现豹斑眼底(FT)不同区域的自动分割、量化和分级。分析内容包括探索新型量化指标、豹斑眼底分级以及各种系统和眼部参数之间的相关性。研究方法这是一项横断面研究。数据来源于北京眼科研究,这是一项基于人群的纵向研究。2001 年,研究人员在北京市海淀区的 5 个城市社区和大兴区的 3 个农村社区对 40 岁及以上的人群进行了调查。2011 年进行了跟踪调查。本研究纳入了参加 2011 年第二次 5 年随访的 50 岁及以上人群,仅考虑右眼数据。以右眼黄斑为中心的彩色眼底图像被输入到豹斑分割模型和黄斑检测网络中。以黄斑中心为原点,内圈直径为 1 毫米、3 毫米,外圈直径为 6 毫米,实现了眼底的精细分割。这样就可以计算出每个区域的豹斑密度(FTD)和豹斑等级。我们还进一步分析了不同区域的豹斑密度和豹斑等级在眼部和全身参数上的差异。根据等效球面力(SE)将参与者分为三种屈光类型:近视(SE0.25 D)。根据轴长,将参与者分为轴长为 26 mm 的组别,以分析不同类型的 FTD。统计分析采用单因素方差分析、Kruskal-Wallis 检验、Bonferroni 检验和 Spearman 相关分析。研究结果研究共纳入 3 369 名参与者(3 369 只眼睛),平均年龄为(63.9±10.6)岁;其中女性 1 886 人(56.0%),男性 1 483 人(64.0%)。所有眼睛的总体 FTD 为 0.060 (0.016, 0.163);内圈 FTD 为 0.000 (0.000, 0.025);中圈 FTD 为 0.030 (0.000, 0.130);外圈 FTD 为 0.055 (0.009, 0.171)。单变量分析结果表明,不同区域的 FTD 与轴长相关(总体:r=0.38,Pr=0.31,Pr=0.36,Pr=0.39,Pr=-0.69、Pr=-0.57、Pr=-0.68、Pr=-0.72、Pr=0.34、Pr=0.30、Pr=0.31、Pr=0.35、Pr=-0.11、Pr=-0.04、Pr=-0.07、Pr=-0.11、Pr=-0.20;Pr=-0.19、Pr=-0.20、Pr=-0.20、Pr=-0.18、Pr=-0.26, Pr=-0.24, Pr=-0.22, Pr=-0.11, Pr=-0.13, Pr=-0.14, Pr=-0.13, Pβ=0.020, Pβ=-0.022, Pβ=0.027, Pβ=0.022, Pβ=-0.002, Pβ=0.001, Pβ=0.002, Pβ=0.002, PH=56.76, PH=72.22, PH=75.83, PH=70.34, PH=373.15, PH=367.67, PH=389.14, PH=386.89, PF=142.85, PF=530.46, PConclusions:通过使用深度学习技术,可以自动分割和量化 FTD 的不同区域,并进行初步分级。不同区域的 FTD 与轴长、SFCT 和年龄明显相关。年龄越大、近视度数越高、轴向长度越长的人,FTD越高,FT分级也越高。
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[Preliminary study on automatic quantification and grading of leopard spots fundus based on deep learning technology].

Objective: To achieve automatic segmentation, quantification, and grading of different regions of leopard spots fundus (FT) using deep learning technology. The analysis includes exploring the correlation between novel quantitative indicators, leopard spot fundus grades, and various systemic and ocular parameters. Methods: This was a cross-sectional study. The data were sourced from the Beijing Eye Study, a population-based longitudinal study. In 2001, a group of individuals aged 40 and above were surveyed in five urban communities in Haidian District and three rural communities in Daxing District of Beijing. A follow-up was conducted in 2011. This study included individuals aged 50 and above who participated in the second 5-year follow-up in 2011, considering only the data from the right eye. Color fundus images centered on the macula of the right eye were input into the leopard spot segmentation model and macular detection network. Using the macular center as the origin, with inner circle diameters of 1 mm, 3 mm, and outer circle diameter of 6 mm, fine segmentation of the fundus was achieved. This allowed the calculation of the leopard spot density (FTD) and leopard spot grade for each region. Further analyses of the differences in ocular and systemic parameters among different regions' FTD and leopard spot grades were conducted. The participants were categorized into three refractive types based on equivalent spherical power (SE): myopia (SE<-0.25 D), emmetropia (-0.25 D≤SE≤0.25 D), and hyperopia (SE>0.25 D). Based on axial length, the participants were divided into groups with axial length<24 mm, 24-26 mm, and>26 mm for the analysis of different types of FTD. Statistical analyses were performed using one-way analysis of variance, Kruskal-Wallis test, Bonferroni test, and Spearman correlation analysis. Results: The study included 3 369 participants (3 369 eyes) with an average age of (63.9±10.6) years; among them, 1 886 were female (56.0%) and 1, 483 were male (64.0%). The overall FTD for all eyes was 0.060 (0.016, 0.163); inner circle FTD was 0.000 (0.000, 0.025); middle circle FTD was 0.030 (0.000, 0.130); outer circle FTD was 0.055 (0.009, 0.171). The results of the univariate analysis indicated that FTD in various regions was correlated with axial length (overall: r=0.38, P<0.001; inner circle: r=0.31, P<0.001; middle circle: r=0.36, P<0.001; outer circle: r=0.39, P<0.001), subfoveal choroidal thickness (SFCT) (overall: r=-0.69, P<0.001; inner circle: r=-0.57, P<0.001; middle circle: r=-0.68, P<0.001; outer circle: r=-0.72, P<0.001), age (overall: r=0.34, P<0.001; inner circle: r=0.30, P<0.001; middle circle: r=0.31, P<0.001; outer circle: r=0.35, P<0.001), gender (overall: r=-0.11, P<0.001; inner circle: r=-0.04, P<0.001; middle circle: r=-0.07, P<0.001; outer circle: r=-0.11, P<0.001), SE (overall: r=-0.20; P<0.001; inner circle: r=-0.19, P<0.001; middle circle: r=-0.20, P<0.001; outer circle: r=-0.20, P<0.001), uncorrected visual acuity (overall: r=-0.18, P<0.001; inner circle: r=-0.26, P<0.001; middle circle: r=-0.24, P<0.001; outer circle: r=-0.22, P<0.001), and body mass index (BMI) (overall: r=-0.11, P<0.001; inner circle: r=-0.13, P<0.001; middle circle: r=-0.14, P<0.001; outer circle: r=-0.13, P<0.001). Further multivariate analysis results indicated that different region FTD was correlated with axial length (overall: β=0.020, P<0.001; inner circle: β=-0.022, P<0.001; middle circle: β=0.027, P<0.001; outer circle: β=0.022, P<0.001), SFCT (overall: β=-0.001, P<0.001; inner circle: β=-0.001, P<0.001; middle circle: β=-0.001, P<0.001; outer circle: β=-0.001, P<0.001), and age (overall: β=0.002, P<0.001; inner circle: β=0.001, P<0.001; middle circle: β=0.002, P<0.001; outer circle: β=0.002, P<0.001). The distribution of overall (H=56.76, P<0.001), inner circle (H=72.22, P<0.001), middle circle (H=75.83, P<0.001), and outer circle (H=70.34, P<0.001) FTD differed significantly among different refractive types. The distribution of overall (H=373.15, P<0.001), inner circle (H=367.67, P<0.001), middle circle (H=389.14, P<0.001), and outer circle (H=386.89, P<0.001) FTD differed significantly among different axial length groups. Furthermore, comparing various levels of FTD with systemic and ocular parameters, significant differences were found in axial length (F=142.85, P<0.001) and SFCT (F=530.46, P<0.001). Conclusions: The use of deep learning technology enables automatic segmentation and quantification of different regions of theFT, as well as preliminary grading. Different region FTD is significantly correlated with axial length, SFCT, and age. Individuals with older age, myopia, and longer axial length tend to have higher FTD and more advanced FT grades.

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来源期刊
中华眼科杂志
中华眼科杂志 Medicine-Ophthalmology
CiteScore
0.80
自引率
0.00%
发文量
12700
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