Enhancing Colorectal Cancer Diagnosis With Feature Fusion and Convolutional Neural Networks

被引:1
作者
Narasimha Raju, Akella S. [1 ]
Rajababu, M. [2 ]
Acharya, Ashish [3 ]
Suneel, Sajja [1 ]
机构
[1] Inst Aeronaut Engn, Dept Comp Sci & Engn Data Sci, Hyderabad 500043, Telangana, India
[2] Aditya Engn Coll, Dept Informat Technol, Surampalem 533437, Andhra Pradesh, India
[3] Univ Wolverhampton, Herald Coll, Dept Comp, Khatmandu, Nepal
关键词
colorectal cancer; convolutional neural networks; feature fusion; semantic segmentation; COLONOSCOPY;
D O I
10.1155/2024/9916843
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
TumorDiagX is a cutting-edge framework that combines deep learning and computer vision to accurately identify and classify cancers. Our collection of colonoscopies 1518 images is meticulously pre-processed, including greyscale conversion and local binary pattern (LBP) extraction, before being securely stored on the Google Cloud platform. In the second phase, we fully assess three different convolutional neural networks (CNNs): residual network with 50 layers (ResNet-50), DenseNet-201 and visual geometry group with 16 layers (VGG-16). Stage three introduces four integrated CNNs (ResNet-50+DenseNet-201 (RD-22), DenseNet-201+VGG-16 (DV-22), ResNet-50+VGG-16 (RV-22), and ResNet-50+DenseNet-201=VGG-16 (RDV-22)) to improve cancer detection by combining the capabilities of several networks. Comprehensive analysis and training on the datasets provide significant insights into CNN's performance. The fourth step involves an extensive comparison, integrating and comparing all three data sets using individual and integrated CNNs to determine the best effective models for cancer diagnosis. In this final step, image segmentation leverages an encoder-decoder network, namely a Universal Network (U-Net) CNN, to aid in the visual detection of malignant cancer lesions. The results highlight the effectiveness of TumorDiagX, with the feature fusion CNN using DenseNet-201 attaining training and testing accuracies of 97.27% and 97.35%. Notably, CNN (feature fusion) in combination with RDV-22 performs better, with training and testing accuracy of 98.47% and 97.93%, respectively, and a dice coefficient of 0.92. The information is privately maintained in the cloud and acts as an essential asset for healthcare practitioners, allowing for specific cancer prediction and prompt detection. Our method, with its meticulous performance metrics and multifaceted approach, has the potential to advance early cancer identification and treatment.
引用
收藏
页数:37
相关论文
共 50 条
  • [41] Improved Accuracy in Optical Diagnosis of Colorectal Polyps Using Convolutional Neural Networks with Visual Explanations
    Jin, Eun Hyo
    Lee, Dongheon
    Bae, Jung Ho
    Kang, Hae Yeon
    Kwak, Min-Sun
    Seo, Ji Yeon
    Yang, Jong In
    Yang, Sun Young
    Lim, Seon Hee
    Yim, Jeong Yoon
    Lim, Joo Hyun
    Chung, Goh Eun
    Chung, Su Jin
    Choi, Ji Min
    Han, Yoo Min
    Kang, Seung Joo
    Lee, Jooyoung
    Kim, Hee Chan
    Kim, Joo Sung
    GASTROENTEROLOGY, 2020, 158 (08) : 2169 - +
  • [42] Infrared and visible image fusion with convolutional neural networks
    Liu, Yu
    Chen, Xun
    Cheng, Juan
    Peng, Hu
    Wang, Zengfu
    INTERNATIONAL JOURNAL OF WAVELETS MULTIRESOLUTION AND INFORMATION PROCESSING, 2018, 16 (03)
  • [43] Multigranularity Feature Fusion Convolutional Neural Network for Seismic Data Denoising
    Feng, Jun
    Li, Xiaoqin
    Liu, Xi
    Chen, Chaoxian
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2022, 60
  • [44] Feature Correlation Loss in Convolutional Neural Networks for Image Classification
    Zhou, Jiahuan
    Xiao, Di
    Zhang, Mengyi
    PROCEEDINGS OF 2019 IEEE 3RD INFORMATION TECHNOLOGY, NETWORKING, ELECTRONIC AND AUTOMATION CONTROL CONFERENCE (ITNEC 2019), 2019, : 219 - 223
  • [45] Two Stage Shot Boundary Detection via Feature Fusion and Spatial-Temporal Convolutional Neural Networks
    Wu, Lifang
    Zhang, Shuai
    Jian, Meng
    Lu, Zhe
    Wang, Dong
    IEEE ACCESS, 2019, 7 : 77268 - 77276
  • [46] Vehicle-Rear: A New Dataset to Explore Feature Fusion for Vehicle Identification Using Convolutional Neural Networks
    De Oliveira, Icaro O.
    Laroca, Rayson
    Menotti, David
    Fonseca, Keiko Veronica Ono
    Minetto, Rodrigo
    IEEE ACCESS, 2021, 9 : 101065 - 101077
  • [47] Joint Supervision for Discriminative Feature Learning in Convolutional Neural Networks
    Guo, Jianyuan
    Yuan, Yuhui
    Zhang, Chao
    COMPUTER VISION, PT II, 2017, 772 : 509 - 520
  • [48] Research on adaptive local feature enhancement in convolutional neural networks
    Sun, Tongfeng
    Shao, Changlong
    Liao, Hongmei
    Ding, Shifei
    Xu, Xinzheng
    IET IMAGE PROCESSING, 2020, 14 (16) : 4306 - 4315
  • [49] Wavelet Based Edge Feature Enhancement for Convolutional Neural Networks
    De Silva, D. D. N.
    Fernando, S.
    Piyatilake, I. T. S.
    Karunarathne, A. V. S.
    ELEVENTH INTERNATIONAL CONFERENCE ON MACHINE VISION (ICMV 2018), 2019, 11041
  • [50] Feature-Flow Interpretation of Deep Convolutional Neural Networks
    Cui, Xinrui
    Wang, Dan
    Wang, Z. Jane
    IEEE TRANSACTIONS ON MULTIMEDIA, 2020, 22 (07) : 1847 - 1861