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Fully automated disease severity assessment and treatment monitoring in retinopathy of prematurity using deep learning

机译:利用深度学习,完全自动化疾病严重评估和治疗监测治疗早产儿

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Retinopathy of prematurity (ROP) is a disease that affects premature infants, where abnormal growth of the retinal blood vessels can lead to blindness unless treated accordingly. Infants considered at risk of severe ROP are monitored for symptoms of plus disease, characterized by arterial tortuosity and venous dilation at the posterior pole, with a standard photographic, definition. Disagreement among ROP experts in diagnosing plus disease has driven the development of computer-based methods that classify images based on hand-crafted features extracted from the vasculature. However, most of these approaches are semi-automated, which are time-consuming and subject to variability. In contrast, deep learning is a fully automated approach that has shown great promise in a wide variety of domains, including medical genetics, informatics and imaging. Convolutional neural networks (CXNs) are deep networks which learn rich representations of disease features that are highly robust to variations in acquisition and image quality. In this study, we utilized a U-Net architecture to perform vessel segmentation and then a GoogLeXet to perform disease classification. The classifier was trained on 3,000 retinal images and validated on an independent test set of patients with different observed progressions and treatments. We show that our fully automated algorithm can be used to monitor the progression of plus disease over multiple patient visits with results that are consistent with the experts' consensus diagnosis. Future work will aim to further validate the method on larger cohorts of patients to assess its applicability within the clinic as a treatment monitoring tool.
机译:早产儿(ROP)的视网膜病变是一种影响过早婴儿的疾病,其中视网膜血管的异常生长可以导致失明,除非相应治疗。考虑严重ROP风险的婴儿被监测为加疾病的症状,其特征在于后极在后杆的动脉曲折和静脉扩张,具有标准的摄影,定义。诊断疾病中ROP专家之间的分歧推动了基于计算机的方法的发展,该方法将根据从脉管系统提取的手工制作的特征进行分类图像。然而,这些方法中的大部分是半自动的,这是耗时的并且受到可变性的影响。相比之下,深度学习是一种全自动的方法,在各种各样的领域中表现出很大的希望,包括医学遗传学,信息和成像。卷积神经网络(CXNS)是深度网络,其学习丰富的疾病特征表示,这对获取和图像质量的变化具有高度稳健的疾病特征。在本研究中,我们利用U-Net架构进行血管分割,然后进行Googlexet进行疾病分类。分类器在3,000个视网膜图像上培训,并在不同观察到的进展和治疗的患者的独立测试组上验证。我们表明,我们的全自动算法可用于监测多重患者的加入疾病的进展与专家共识诊断一致的结果。未来的工作旨在进一步验证较大的患者较大队列的方法,以评估其在临床内的适用性作为治疗监测工具。

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