A Polyp Detection Method based on FBnet

The incidence of colorectal cancer (CRC) in China has increased in recent years. The mortality rate of CRC has become one of the highest among all cancers; CRC increasingly affects the health and quality of people’s lives. However, due to the insufficiency of medical resources in China, the workload...

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Veröffentlicht in:Computers, materials & continua materials & continua, 2020-01, Vol.63 (3), p.1263-1272
Hauptverfasser: Wan, Jing-Jing, Chen, Tai-Yue, Chen, Bo-Lun, Yu, Yong-Tao, Sheng, Yi-Yun, Ma, Xing-Gang
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container_end_page 1272
container_issue 3
container_start_page 1263
container_title Computers, materials & continua
container_volume 63
creator Wan, Jing-Jing
Chen, Tai-Yue
Chen, Bo-Lun
Yu, Yong-Tao
Sheng, Yi-Yun
Ma, Xing-Gang
description The incidence of colorectal cancer (CRC) in China has increased in recent years. The mortality rate of CRC has become one of the highest among all cancers; CRC increasingly affects the health and quality of people’s lives. However, due to the insufficiency of medical resources in China, the workload on medical doctors has further increased. In the past few decades, the adult CRC mortality and morbidity rate dropped sharply, mainly because of CRC screening and removal of adenomatous polyps. However, due to the differences in polyp itself and the skills of endoscopists, the detection rate of polyps varies greatly. In this paper, we adopt an anchor-free mechanism and introduce a better method to factorize the process of bounding box regression. Firstly, we regress the shape of object by the variant of Faster RCNN. Secondly, we re-define the target function of the location of object. The experimental result shows that our method achieves a mAP of 55.8%, which outperforms other state-of-the-art methods by at least 11.9%. This will greatly help to reduce the missed diagnosis of clinicians during endoscopy and treatment, and provide effective help for early diagnosis, early treatment and prevention of CRC.
doi_str_mv 10.32604/cmc.2020.010098
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The mortality rate of CRC has become one of the highest among all cancers; CRC increasingly affects the health and quality of people’s lives. However, due to the insufficiency of medical resources in China, the workload on medical doctors has further increased. In the past few decades, the adult CRC mortality and morbidity rate dropped sharply, mainly because of CRC screening and removal of adenomatous polyps. However, due to the differences in polyp itself and the skills of endoscopists, the detection rate of polyps varies greatly. In this paper, we adopt an anchor-free mechanism and introduce a better method to factorize the process of bounding box regression. Firstly, we regress the shape of object by the variant of Faster RCNN. Secondly, we re-define the target function of the location of object. The experimental result shows that our method achieves a mAP of 55.8%, which outperforms other state-of-the-art methods by at least 11.9%. 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subjects Diagnosis
Mortality
Physicians
Polyps
Workload
title A Polyp Detection Method based on FBnet
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