Deep fusion of gray level co-occurrence matrices for lung nodule classification

被引:6
|
作者
Saihood, Ahmed [1 ,2 ]
Karshenas, Hossein [1 ]
Nilchi, Ahmad Reza Naghsh [1 ]
机构
[1] Univ Isfahan, Fac Comp Engn, Dept Artificial Intelligence, Esfahan, Iran
[2] Univ Thi Qar, Fac Comp Sci & Math, Nasiriyah, Thi Qar, Iraq
来源
PLOS ONE | 2022年 / 17卷 / 09期
关键词
NEURAL-NETWORK; COMPUTERIZED DETECTION; PULMONARY NODULES; CANCER; SHAPE; SEGMENTATION; TEXTURE;
D O I
10.1371/journal.pone.0274516
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Lung cancer is a serious threat to human health, with millions dying because of its late diagnosis. The computerized tomography (CT) scan of the chest is an efficient method for early detection and classification of lung nodules. The requirement for high accuracy in analyzing CT scan images is a significant challenge in detecting and classifying lung cancer. In this paper, a new deep fusion structure based on the long short-term memory (LSTM) has been introduced, which is applied to the texture features computed from lung nodules through new volumetric grey-level-co-occurrence-matrices (GLCMs), classifying the nodules into benign, malignant, and ambiguous. Also, an improved Otsu segmentation method combined with the water strider optimization algorithm (WSA) is proposed to detect the lung nodules. WSA-Otsu thresholding can overcome the fixed thresholds and time requirement restrictions in previous thresholding methods. Extended experiments are used to assess this fusion structure by considering 2D-GLCM based on 2D-slices and approximating the proposed 3D-GLCM computations based on volumetric 2.5D-GLCMs. The proposed methods are trained and assessed through the LIDC-IDRI dataset. The accuracy, sensitivity, and specificity obtained for 2D-GLCM fusion are 94.4%, 91.6%, and 95.8%, respectively. For 2.5D-GLCM fusion, the accuracy, sensitivity, and specificity are 97.33%, 96%, and 98%, respectively. For 3D-GLCM, the accuracy, sensitivity, and specificity of the proposed fusion structure reached 98.7%, 98%, and 99%, respectively, outperforming most state-of-the-art counterparts. The results and analysis also indicate that the WSA-Otsu method requires a shorter execution time and yields a more accurate thresholding process.
引用
收藏
页数:26
相关论文
共 50 条
  • [31] Prediction of Malignancy in Lung Nodules Using Combination of Deep, Fractal, and Gray-Level Co-occurrence Matrix Features
    Naik, Amrita
    Edla, Damodar Reddy
    Dharavath, Ramesh
    BIG DATA, 2021, 9 (06) : 480 - 498
  • [32] One-dimensional Grey-level Co-occurrence Matrices for Texture Classification
    Tou, Jing Yi
    Tay, Yong Haur
    Lau, Phooi Yee
    INTERNATIONAL SYMPOSIUM OF INFORMATION TECHNOLOGY 2008, VOLS 1-4, PROCEEDINGS: COGNITIVE INFORMATICS: BRIDGING NATURAL AND ARTIFICIAL KNOWLEDGE, 2008, : 1592 - 1597
  • [33] Research on Skin Texture Classification by Gray Level Co-occurrence Matrix and the BP Neural Network
    Liu, Qiaohua
    Chen, Tianhua
    Wang, Xiaoyi
    Xu, Jiping
    Wang, Li
    Dong, Yinmao
    Meng, Hong
    PROCEEDINGS OF THE 2015 INTERNATIONAL CONFERENCE ON TEST, MEASUREMENT AND COMPUTATIONAL METHODS (TMCM 2015), 2015, 26 : 26 - 29
  • [34] SAR image classification based on gray-level co-occurrence matrix with adaptive windows
    Gao, Yanjun
    Xu, Huaping
    Yi Qi Yi Biao Xue Bao/Chinese Journal of Scientific Instrument, 2008, 29 (SUPPL. 2): : 434 - 437
  • [35] Hyperspectral Image Classification Based on Gray Level Co-occurrence Matrix and Local Mean Decomposition
    Li, Changli
    Zuo, Hang
    Fan, Tanghuai
    2017 4TH INTERNATIONAL CONFERENCE ON SYSTEMS AND INFORMATICS (ICSAI), 2017, : 1219 - 1223
  • [36] An Efficient Deep Learning Framework for Malware Image Classification Using Gray-Level Co-Occurrence Matrix and Sparse Convolution
    Priya, V.
    Sofia, A. Sathya
    IRANIAN JOURNAL OF SCIENCE AND TECHNOLOGY-TRANSACTIONS OF ELECTRICAL ENGINEERING, 2024, : 65 - 88
  • [37] A Method of Thai Main Dish and Soup Classification by Gray Level Co-occurrence Matrix algorithm
    Neampradit, Poomiphat
    Charoenpong, Theekapun
    Sueaseenak, Direk
    Sukjamsri, Chamaiporn
    2018 6TH INTERNATIONAL ELECTRICAL ENGINEERING CONGRESS (IEECON), 2018,
  • [38] Cattle Race Classification Using Gray Level Co-occurrence Matrix Convolutional Neural Networks
    Santoni, Mayanda Mega
    Sensuse, Dana Indra
    Arymurthy, Aniati Murni
    Fanany, Mohamad Ivan
    INTERNATIONAL CONFERENCE ON COMPUTER SCIENCE AND COMPUTATIONAL INTELLIGENCE (ICCSCI 2015), 2015, 59 : 493 - 502
  • [39] Research on Characteristic Properties of Gray Level Co-occurrence Matrix
    Chen, Ying
    Yang, Fengyu
    PROGRESS IN INDUSTRIAL AND CIVIL ENGINEERING, PTS. 1-5, 2012, 204-208 : 4755 - 4759
  • [40] Co-Occurrence Matrices for 3D Shape Classification
    Braile Przewodowski Filho, Carlos Andre
    Osorio, Fernando Santos
    2017 LATIN AMERICAN ROBOTICS SYMPOSIUM (LARS) AND 2017 BRAZILIAN SYMPOSIUM ON ROBOTICS (SBR), 2017,