Metabolic Imaging Based Sub-Classification of Lung Cancer
Loading...
Date
2020
Journal Title
Journal ISSN
Volume Title
Publisher
IEEE-Inst Electrical Electronics Engineers Inc
Open Access Color
GOLD
Green Open Access
Yes
OpenAIRE Downloads
109
OpenAIRE Views
143
Publicly Funded
No
Abstract
Lung cancer is one of the deadliest cancer types whose 84% is non-small cell lung cancer (NSCLC). In this study, deep learning-based classification methods were investigated comprehensively to differentiate two subtypes of NSCLC, namely adenocarcinoma (ADC) and squamous cell carcinoma (SqCC). The study used 1457 F-18-FDG PET images/slices with tumor from 94 patients (88 men), 38 of which were ADC and the rest were SqCC. Three experiments were carried out to examine the contribution of peritumoral areas in PET images on subtype classification of tumors. We assessed multilayer perceptron (MLP) and three convolutional neural network (CNN) models such as SqueezeNet, VGG16 and VGG19 using three kinds of images in these experiments: 1) Whole slices without cropping or segmentation, 2) cropped image portions (square subimages) that include the tumor and 3) segmented image portions corresponding to tumors using random walk method. Several optimizers and regularization methods were used to optimize each model for the diagnostic classification. The classification models were trained and evaluated by performing stratified 10-fold cross validation, and F-score and area-under-curve (AUC) metrics were used to quantify the performance. According to our results, it is possible to say that inclusion of peritumoral regions/tissues both contributes to the success of models and makes segmentation effort unnecessary. To the best of our knowledge, deep learning-based models have not been applied to the subtype classification of NSCLC in PET imaging, therefore, this study is a significant cornerstone providing thorough comparisons and evaluations of several deep learning models on metabolic imaging for lung cancer. Even simpler deep learning models are found promising in this domain, indicating that any improvement in deep learning models in machine learning community can be reflected well in this domain as well.
Description
Karacavus, Seyhan/0000-0002-0651-6441; Bicakci, Mustafa/0000-0002-0517-2245; Yilmaz, Bulent/0000-0003-2954-1217; Basturk, Alper/0000-0001-5810-0643
Keywords
Tumors, Deep Learning, Lung Cancer, Imaging, Cancer, Standards, Positron Emission Tomography, Convolutional Neural Networks, Deep Learning, PET Imaging, Subtype Classification, Non-Small Cell Lung Cancer, Positron emission tomography, Standards, PET imaging, deep learning, Imaging, TK1-9971, subtype classification, Convolutional neural networks, Electrical engineering. Electronics. Nuclear engineering, Lung cancer, non-small cell lung cancer, Cancer, Tumors
Fields of Science
0301 basic medicine, 0303 health sciences, 03 medical and health sciences
Citation
WoS Q
Q2
Scopus Q
Q1

OpenCitations Citation Count
36
Source
IEEE Access
Volume
8
Issue
Start Page
218470
End Page
218476
PlumX Metrics
Citations
CrossRef : 2
Scopus : 43
Captures
Mendeley Readers : 44
SCOPUS™ Citations
47
checked on Mar 06, 2026
Web of Science™ Citations
26
checked on Mar 06, 2026
Page Views
3
checked on Mar 06, 2026
Downloads
4
checked on Mar 06, 2026
Google Scholar™

OpenAlex FWCI
3.304
Sustainable Development Goals
3
GOOD HEALTH AND WELL-BEING


