山东大学耳鼻喉眼学报 ›› 2025, Vol. 39 ›› Issue (5): 76-82.doi: 10.6040/j.issn.1673-3770.0.2024.329

• 论著 • 上一篇    

基于YOLOv8模型辅助诊断斜肌功能异常

姚雪1,陆小凤1,张梦芮2,胡馨雅1,赵嘉洛1,赖思思1,李玄1,刘子潇1,沈超凡1,范梓欣2,张寅升3,张国明2   

  1. 1.深圳市眼科医院 医学影像科, 广东 深圳 518000;
    2.深圳市眼科医院 眼底病科, 广东 深圳 518000;
    3.浙江工商大学 食药质量安全工程研究院, 浙江 杭州 310018
  • 发布日期:2025-09-19
  • 通讯作者: 张国明. E-mail:zhangguoming@sz-eyes.com
  • 基金资助:
    国家自然科学基金资助项目(82271103);深圳市“医疗卫生三名工程”项目资助(SZSM202311018);广东省基础与应用基础研究基金项目(2022A1515012326);深圳市医学研究专项资金(C2301005);白求恩公益基金会朗视界-沐光明中青年眼科科研项目(BCF-KH-YK-20230803-08)

Research on auxiliary diagnosis of ocular oblique muscle dysfunction based on the YOLOv8 model

YAO Xue1, LU Xiaofeng1, ZHANG Mengrui2, HU Xinya1, ZHAO Jialuo1, LAI Sisi1, LI Xuan1, LIU Zixiao1, SHEN Chaofan1, FAN Zixin2, ZHANG Yinsheng3, ZHANG Guoming2   

  1. 1. Department of Medical Imaging, Shenzhen Eye Hospital, Shenzhen 518000, Guangdong, China2. Department of Pediatric Retinal Surgery, Shenzhen Eye Hospital, 18 Zetian Road, Shenzhen 518040, Guangdong, China3. Zhejiang Food and Drug Quality & Safety Engineering Research Institute, Zhejiang Gongshang University, Hangzhou 310018, Zhejiang, China
  • Published:2025-09-19

摘要: 目的 评估使用YOLOv8模型辅助诊断斜肌功能的准确性和可行性。 方法 研究收集深圳市眼科医院斜肌功能异常及正常受试者的眼底照相图片。使用YOLOv8模型进行训练,标记识别眼底照相图片的黄斑区及视盘区,定量检测黄斑中心凹-视盘中心夹角(disc-fovea angle, DFA)的大小以评估斜肌功能。 结果 斜肌功能异常组与正常组受试者的性别(χ2=0.478,P=0.489)和年龄(U=35891.5,P=0.770)差异均无统计学意义。概率密度曲线结果表明斜肌功能异常组与正常组的DFA分布存在差异。YOLOv8模型针对视盘类别的识别准确率为100%,对黄斑类别的识别准确率为95%,其在不同置信度阈值下对视盘类别的识别性能优于黄斑类别(对于整体类别,在置信度0.307时,模型的F1分数最高,为0.92)。独立样本t检验、Mann-Whitney U检验、Kolmogorov-Smirnov检验和Levene's检验均表明基于YOLOv8模型识别斜肌功能异常组和正常组的DFA存在显著差异(P均<0.001)。当DFA<-17.286或DFA>6.278时,DFA分布结果属于斜肌功能异常类别的概率>80.00%。 结论 应用YOLOv8模型可辅助临床评估斜肌功能。当DFA<-17.286°或DFA>6.278°时,斜肌功能异常的概率>80%。

关键词: 斜肌功能, 眼底照相, 黄斑中心凹-视盘中心夹角, YOLOv8模型, 机器学习

Abstract: Objective To evaluate the accuracy and feasibility of using YOLOv8 model to assist in diagnosing oblique muscle function. Methods Fundus photographs of abnormal oblique muscle function and normal subjects were collected from Shenzhen Eye Hospital. The YOLOv8 model was used for training, and the macular areas and optic disc area in fundus photographs were marked and identified, and the disc-fovea angle(DFA)of the macular fovea was quantitatively detected to evaluate the oblique muscle function. Results There were no significant differences in gender(χ2=0.478, P=0.489)and age(U=358 91.5, P=0.770)between the abnormal oblique muscle function group and the normal group. The results of the probability density curve showed that there were differences in DFA distribution between the abnormal oblique muscle function group and the normal one. The YOLOv8 model demonstrated a 100% recognition accuracy for the optic disc category and a 95% recognition accuracy for the macular category. The model exhibited superior recognition performance for the optic disc category in comparison to the macular category across diverse confidence thresholds(for the overall category, the F1 score of the model was the highest, at 0.92, when the confidence was 0.307). Independent sample t test, Mann-Whitney U test, Kolmogorov-Smirnov test and Levene's test all showed that there were significant differences in DFA between abnormal and normal oblique muscle function groups based on YOLOv8 model(all P<0.001). When DFA<-17.286 or DFA>6.278, the probability of DFA distribution results belonging to the category of oblique muscle dysfunction is greater than 80%. Conclusion The application of YOLOv8 model can assist clinical evaluation of oblique muscle function. When DFA is less than-17.286° or greater than 6.278°, the probability of abnormal oblique muscle function is greater than 80%.

Key words: Oblique muscle function, Fundus photography, Disc-fovea angle, YOLOv8 model, Machine learning

中图分类号: 

  • R779.7
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