Abstract
Abstract
Background
Whole-body bone scan is the widely used tool for surveying bone metastases caused by various primary solid tumors including lung cancer. Scintigraphic images are characterized by low specificity, bringing a significant challenge to manual analysis of images by nuclear medicine physicians. Convolutional neural network can be used to develop automated classification of images by automatically extracting hierarchal features and classifying high-level features into classes.
Results
Using convolutional neural network, a multi-class classification model has been developed to detect skeletal metastasis caused by lung cancer using clinical whole-body scintigraphic images. The proposed method consisted of image aggregation, hierarchal feature extraction, and high-level feature classification. Experimental evaluations on a set of clinical scintigraphic images have shown that the proposed multi-class classification network is workable for automated detection of lung cancer-caused metastasis, with achieving average scores of 0.7782, 0.7799, 0.7823, 0.7764, and 0.8364 for accuracy, precision, recall, F-1 score, and AUC value, respectively.
Conclusions
The proposed multi-class classification model can not only predict whether an image contains lung cancer-caused metastasis, but also differentiate between subclasses of lung cancer (i.e., adenocarcinoma and non-adenocarcinoma). On the context of two-class (i.e., the metastatic and non-metastatic) classification, the proposed model obtained a higher score of 0.8310 for accuracy metric.
Funder
Youth Ph.D. Foundation of Gansu Education Department
Fundamental Research Funds for the Central Universities
Key Research and Development Project of Gansu Province
Natural Science Foundation of Gansu Province
National Natural Science Foundation of China
Publisher
Springer Science and Business Media LLC
Subject
Radiology, Nuclear Medicine and imaging
Reference35 articles.
1. Valkenburg KC, Steensma MR, Williams BO et al (2013) Skeletal metastasis: treatments, mouse models, and the Wnt signaling. Chin J Cancer 32(7):380–396
2. Hess KR, Varadhachary GR, Taylor SH et al (2006) Metastatic patterns in adenocarcinoma. Cancer 106:1624–1633
3. Mehlen P, Puisieux A (2006) Metastasis: a question of life or death. Nat Rev Cancer 6(6):449–458
4. Chang CY, Gill CM, Simeone FJ, et al (2014) Comparison of the diagnostic accuracy of 99m-Tc-MDP bone scintigraphy and 18F-FDG PET/CT for the detection of skeletal metastases. Acta Radiol 58:1–8
5. Sadik M, Jakobsson D, Olofsson F et al (2006) A new computer-based decision-support system for the interpretation of bone scans. Nucl Med Commun 27(5):417–423
Cited by
15 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献