Alternate Optimization Method for 3D Pulmonary Nodules Retrieval Based on Medical Sign

In order to solve the problems such as the complicated process of manual diagnosis and retrieval, high misdiagnosis rate, large amount of data, sparse Hash codes, a 3D ResNet network based on multi-label semantic supervision was proposed to quantify the medical signs of pulmonary nodules and constru...

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Bibliographic Details
Main Authors: Yanan ZHANG, Juanjuan ZHAO, Wei WU, Xin GENG, Guojie HOU
Format: Article
Language:English
Published: Editorial Office of Journal of Taiyuan University of Technology 2022-01-01
Series:Taiyuan Ligong Daxue xuebao
Subjects:
Online Access:https://tyutjournal.tyut.edu.cn/englishpaper/show-1676.html
Description
Summary:In order to solve the problems such as the complicated process of manual diagnosis and retrieval, high misdiagnosis rate, large amount of data, sparse Hash codes, a 3D ResNet network based on multi-label semantic supervision was proposed to quantify the medical signs of pulmonary nodules and construct a multi-label data set. 3D lung nodules were constructed by trilinear interpolation method, and loss functions were designed by similarity measurement for 3D feature learning. Then Hash codes were constructed. An alternate minimization optimization method was proposed to solve the problem that the traditional method cannot be used because of the discrete Hash code, and the closely expressed Hash code was learned. Finally, a multi-level lung cancer image retrieval algorithm was proposed. The experimental results show that the average accuracy is improved by 18.5% by using the 3D feature proposed in this paper, and the average retrieval accuracy reaches 94.83% on the expanded public data set and the cooperative hospital data set.
ISSN:1007-9432