论文标题

通过同时识别相关的视网膜病变来改善AMD诊断

Improving AMD diagnosis by the simultaneous identification of associated retinal lesions

论文作者

Morano, José, Hervella, Álvaro S., Rouco, José, Novo, Jorge, Fernández-Vigo, José I., Ortega, Marcos

论文摘要

与年龄相关的黄斑变性(AMD)是发达国家(特别是老年人)失明的主要原因。此外,由于全球人口衰老,其流行率正在增加。在这种情况下,早期检测对于避免后来的视力障碍至关重要。尽管如此,实施大规模筛查计划通常是不可行的,因为处于风险的人口很大,并且必须由专家临床医生进行分析。同样,AMD的诊断被认为特别困难,因为它的特征是许多不同的病变,在许多情况下,这些病变类似于其他黄斑疾病。为了克服这些问题,有几项作品提出了用于检测AMD图像中AMD的自动方法,这是筛查疾病的最广泛使用的方式。如今,这些作品中的大多数使用卷积神经网络(CNN)将图像分类为AMD和非AMD类。在这项工作中,我们提出了一种基于CNN的新方法,该方法同时执行AMD诊断及其潜在病变的分类。该领域尚未解决后一个次要任务,并提供了补充有用的信息,可改善诊断性能并帮助理解决策。使用带有图像级标签的AMD和病变存在的图像级标签的视网膜图像对CNN模型进行了训练,这相对容易获得。在几个公共数据集中进行的实验表明,所提出的方法改善了AMD的检测,同时在鉴定大多数病变的情况下取得了令人满意的结果。

Age-related Macular Degeneration (AMD) is the predominant cause of blindness in developed countries, specially in elderly people. Moreover, its prevalence is increasing due to the global population ageing. In this scenario, early detection is crucial to avert later vision impairment. Nonetheless, implementing large-scale screening programmes is usually not viable, since the population at-risk is large and the analysis must be performed by expert clinicians. Also, the diagnosis of AMD is considered to be particularly difficult, as it is characterized by many different lesions that, in many cases, resemble those of other macular diseases. To overcome these issues, several works have proposed automatic methods for the detection of AMD in retinography images, the most widely used modality for the screening of the disease. Nowadays, most of these works use Convolutional Neural Networks (CNNs) for the binary classification of images into AMD and non-AMD classes. In this work, we propose a novel approach based on CNNs that simultaneously performs AMD diagnosis and the classification of its potential lesions. This latter secondary task has not yet been addressed in this domain, and provides complementary useful information that improves the diagnosis performance and helps understanding the decision. A CNN model is trained using retinography images with image-level labels for both AMD and lesion presence, which are relatively easy to obtain. The experiments conducted in several public datasets show that the proposed approach improves the detection of AMD, while achieving satisfactory results in the identification of most lesions.

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