ADS-Net: attention-awareness and deep supervision based network for automatic detection of retinopathy of prematurity

ADS-Net:基于注意力感知和深度监督的早产儿视网膜病变自动检测网络

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Abstract

Retinopathy of prematurity (ROP) is a proliferative vascular disease, which is one of the most dangerous and severe ocular complications in premature infants. Automatic ROP detection system can assist ophthalmologists in the diagnosis of ROP, which is safe, objective, and cost-effective. Unfortunately, due to the large local redundancy and the complex global dependencies in medical image processing, it is challenging to learn the discriminative representation from ROP-related fundus images. To bridge this gap, a novel attention-awareness and deep supervision based network (ADS-Net) is proposed to detect the existence of ROP (Normal or ROP) and 3-level ROP grading (Mild, Moderate, or Severe). First, to balance the problems of large local redundancy and complex global dependencies in images, we design a multi-semantic feature aggregation (MsFA) module based on self-attention mechanism to take full advantage of convolution and self-attention, generating attention-aware expressive features. Then, to solve the challenge of difficult training of deep model and further improve ROP detection performance, we propose an optimization strategy with deeply supervised loss. Finally, the proposed ADS-Net is evaluated on ROP screening and grading tasks with per-image and per-examination strategies, respectively. In terms of per-image classification pattern, the proposed ADS-Net achieves 0.9552 and 0.9037 for Kappa index in ROP screening and grading, respectively. Experimental results demonstrate that the proposed ADS-Net generally outperforms other state-of-the-art classification networks, showing the effectiveness of the proposed method.

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