A Bibliometric Study of Oncology Imaging Diagnosis Based on Convolutional Neural Networks
10.3971/j.issn.1000-8578.2023.22.1123
- VernacularTitle:基于卷积神经网络的肿瘤影像诊断文献计量研究
- Author:
Lingtao LIU
1
;
Yuwen LIU
;
Jinquan HUANG
;
Chu ZHANG
;
Xingzhi CHEN
Author Information
1. School of Health Management, Bengbu Medical College, Bengbu 233030, China
- Publication Type:Research Article
- Keywords:
Convolutional neural networks;
Oncology;
Imaging;
Diagnosis;
Bibliometrics
- From:
Cancer Research on Prevention and Treatment
2023;50(5):512-517
- CountryChina
- Language:Chinese
-
Abstract:
Objective To understand the research hotspots and research trends about convolutional neural networks in the field of oncology imaging diagnosis by analyzing the characteristics of published literature at home and abroad over the past decade. Methods The SCI-E database was used as the data source to retrieve literature about convolutional neural networks in the field of oncology imaging diagnosis published from 2012 to 2022. The distribution characteristics of countries, institutions, journals, co-cited authors, and keywords of the studies were analyzed by CiteSpace software. Results A total of 1088 papers were eventually included, and they were mostly from China, the United States, and India. A total of 39 papers were published by Sun Yat-sen University, the research institution with the highest number of publications. Radiology Nuclear Medicine Medical Imaging was the journal with the highest number of publications. A total of 25 high-frequency keywords and 15 burst keywords were obtained. The formation of 12 author co-citation clusters such as image segmentation and lung nodule, as well as 11 keyword clusters such as automatic segmentation and breast cancer, was observed. Conclusion Current research on convolutional neural networks for oncology imaging diagnosis focuses on oncology segmentation, lung-nodule recognition, assisted diagnosis of breast cancer, and other high-frequency oncology.