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Inf-Net: Automatic COVID-19 Lung Infection Segmentation From CT Images

Deng-Ping FanInception Institute of Artificial Intelligence, Abu Dhabi, United Arab EmiratesTao ZhouInception Institute of Artificial Intelligence, Abu Dhabi, United Arab EmiratesGe-Peng JiSchool of Computer Science, Wuhan University, Wuhan, ChinaYi ZhouInception Institute of Artificial Intelligence, Abu Dhabi, United Arab EmiratesGeng ChenInception Institute of Artificial Intelligence, Abu Dhabi, United Arab EmiratesHuazhu FuInception Institute of Artificial Intelligence, Abu Dhabi, United Arab EmiratesJianbing ShenInception Institute of Artificial Intelligence, Abu Dhabi, United Arab EmiratesLing ShaoInception Institute of Artificial Intelligence, Abu Dhabi, United Arab Emirates
2020en
ABI

Аннотация

Coronavirus Disease 2019 (COVID-19) spread globally in early 2020, causing the world to face an existential health crisis. Automated detection of lung infections from computed tomography (CT) images offers a great potential to augment the traditional healthcare strategy for tackling COVID-19. However, segmenting infected regions from CT slices faces several challenges, including high variation in infection characteristics, and low intensity contrast between infections and normal tissues. Further, collecting a large amount of data is impractical within a short time period, inhibiting the training of a deep model. To address these challenges, a novel COVID-19 Lung Infection Segmentation Deep Network (Inf-Net) is proposed to automatically identify infected regions from chest CT slices. In our Inf-Net, a parallel partial decoder is used to aggregate the high-level features and generate a global map. Then, the implicit reverse attention and explicit edge-attention are utilized to model the boundaries and enhance the representations. Moreover, to alleviate the shortage of labeled data, we present a semi-supervised segmentation framework based on a randomly selected propagation strategy, which only requires a few labeled images and leverages primarily unlabeled data. Our semi-supervised framework can improve the learning ability and achieve a higher performance. Extensive experiments on our COVID-SemiSeg and real CT volumes demonstrate that the proposed Inf-Net outperforms most cutting-edge segmentation models and advances the state-of-the-art performance.

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