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Deep Learning Models for Automated Diagnosis of Retinopathy of Prematurity in Preterm Infants

机译:早产儿的自动诊断自动诊断的深度学习模型

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摘要

Retinopathy of prematurity (ROP) is a disease that can cause blindness in premature infants. It is characterized by immature vascular growth of the retinal blood vessels. However, early detection and treatment of ROP can significantly improve the visual acuity of high-risk patients. Thus, early diagnosis of ROP is crucial in preventing visual impairment. However, several patients refrain from treatment owing to the lack of medical expertise in diagnosing the disease; this is especially problematic considering that the number of ROP cases is on the rise. To this end, we applied transfer learning to five deep neural network architectures for identifying ROP in preterm infants. Our results showed that the VGG19 model outperformed the other models in determining whether a preterm infant has ROP, with 96% accuracy, 96.6% sensitivity, and 95.2% specificity. We also classified the severity of the disease; the VGG19 model showed 98.82% accuracy in predicting the severity of the disease with a sensitivity and specificity of 100% and 98.41%, respectively. We performed 5-fold cross-validation on the datasets to validate the reliability of the VGG19 model and found that the VGG19 model exhibited high accuracy in predicting ROP. These findings could help promote the development of computer-aided diagnosis.
机译:早产儿(ROP)的视网膜病变是一种可能导致早产儿失明的疾病。它的特征在于视网膜血管的未成熟血管生长。然而,ROP的早期检测和治疗可以显着改善高风险患者的视力。因此,ROP的早期诊断对于防止视觉损害至关重要。然而,由于诊断疾病缺乏医学专业知识,几名患者避免了治疗;考虑到ROP案件的数量正在上升,这尤其有问题。为此,我们应用转让学习到五个深度神经网络架构,用于识别早产儿婴儿的rop。我们的研究结果表明,VGG19模型在确定早产婴幼儿是否具有ROP的情况下表现出其他模型,精度为96%,灵敏度为96.6%和95.2%。我们还分类了疾病的严重程度; VGG19模型显示出98.82%的准确性,精度分别预测患病的严重程度,分别具有100%和98.41%的敏感性和特异性。我们在数据集上执行了5倍的交叉验证,以验证VGG19模型的可靠性,并发现VGG19模型在预测ROP方面表现出高精度。这些调查结果可以帮助促进计算机辅助诊断的发展。

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