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A Novel Fundus Image Reading Tool for Efficient Generation of a Multi-dimensional Categorical Image Database for Machine Learning Algorithm Training

机译:一种新型的眼底图像阅读工具,可有效生成用于机器学习算法训练的多维分类图像数据库

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Background We described a novel multi-step retinal fundus image reading system for providing high-quality large data for machine learning algorithms, and assessed the grader variability in the large-scale dataset generated with this system. Methods A 5-step retinal fundus image reading tool was developed that rates image quality, presence of abnormality, findings with location information, diagnoses, and clinical significance. Each image was evaluated by 3 different graders. Agreements among graders for each decision were evaluated. Results The 234,242 readings of 79,458 images were collected from 55 licensed ophthalmologists during 6 months. The 34,364 images were graded as abnormal by at-least one rater. Of these, all three raters agreed in 46.6% in abnormality, while 69.9% of the images were rated as abnormal by two or more raters. Agreement rate of at-least two raters on a certain finding was 26.7%–65.2%, and complete agreement rate of all-three raters was 5.7%–43.3%. As for diagnoses, agreement of at-least two raters was 35.6%–65.6%, and complete agreement rate was 11.0%–40.0%. Agreement of findings and diagnoses were higher when restricted to images with prior complete agreement on abnormality. Retinal/glaucoma specialists showed higher agreements on findings and diagnoses of their corresponding subspecialties. Conclusion This novel reading tool for retinal fundus images generated a large-scale dataset with high level of information, which can be utilized in future development of machine learning-based algorithms for automated identification of abnormal conditions and clinical decision supporting system. These results emphasize the importance of addressing grader variability in algorithm developments.
机译:背景技术我们描述了一种新颖的多步骤视网膜眼底图像读取系统,该系统可为机器学习算法提供高质量的大数据,并评估了使用该系统生成的大规模数据集中的平地机变异性。方法开发了一种5步视网膜眼底图像读取工具,该工具可以评估图像质量,异常的存在,具有位置信息的发现,诊断和临床意义。每个图像由3位不同的评分者进行评估。评估了评分者之间对于每个决定的协议。结果在6个月内,从55位持牌眼科医生那里收集了234,242份读数,共79,458张图像。至少有一个评分者将34,364张图像分类为异常。其中,所有三个评估者均认为异常率为46.6%,而两个或两个以上评估者将69.9%的图像评估为异常。在确定的发现中,至少两名评估者的同意率为26.7%–65.2%,所有三评估者的完全同意率为5.7%–43.3%。至于诊断,至少两个评估者的一致性为35.6%–65.6%,完全一致性率为11.0%–40.0%。当限于事先与异常完全一致的图像时,发现和诊断的一致性更高。视网膜/青光眼专家对相应亚专业的发现和诊断显示出更高的共识。结论这种新颖的视网膜眼底图像阅读工具生成了一个具有高水平信息的大规模数据集,可用于未来基于机器学习的算法的自动开发,用于异常状况的自动识别和临床决策支持系统。这些结果强调了在算法开发中解决平地机差异的重要性。

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