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Computer-aided Tuberculosis Diagnosis with Attribute Reasoning Assistance

Computer-aided Tuberculosis Diagnosis with Attribute Reasoning Assistance

来源:Arxiv_logoArxiv
英文摘要

Although deep learning algorithms have been intensively developed for computer-aided tuberculosis diagnosis (CTD), they mainly depend on carefully annotated datasets, leading to much time and resource consumption. Weakly supervised learning (WSL), which leverages coarse-grained labels to accomplish fine-grained tasks, has the potential to solve this problem. In this paper, we first propose a new large-scale tuberculosis (TB) chest X-ray dataset, namely the tuberculosis chest X-ray attribute dataset (TBX-Att), and then establish an attribute-assisted weakly-supervised framework to classify and localize TB by leveraging the attribute information to overcome the insufficiency of supervision in WSL scenarios. Specifically, first, the TBX-Att dataset contains 2000 X-ray images with seven kinds of attributes for TB relational reasoning, which are annotated by experienced radiologists. It also includes the public TBX11K dataset with 11200 X-ray images to facilitate weakly supervised detection. Second, we exploit a multi-scale feature interaction model for TB area classification and detection with attribute relational reasoning. The proposed model is evaluated on the TBX-Att dataset and will serve as a solid baseline for future research. The code and data will be available at https://github.com/GangmingZhao/tb-attribute-weak-localization.

Yizhou Yu、Jiaheng Liu、Jinpeng Li、Baolian Qi、Gangming Zhao、Chengwei Pan、Chaowei Fang、Junjie Fang、Dingwen Zhang

医学研究方法计算技术、计算机技术基础医学

Yizhou Yu,Jiaheng Liu,Jinpeng Li,Baolian Qi,Gangming Zhao,Chengwei Pan,Chaowei Fang,Junjie Fang,Dingwen Zhang.Computer-aided Tuberculosis Diagnosis with Attribute Reasoning Assistance[EB/OL].(2022-07-01)[2025-08-02].https://arxiv.org/abs/2207.00251.点此复制

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