Gastric Cancer Detection with Ensemble Learning on Digital Pathology: Use Case of Gastric Cancer on GasHisSDB Dataset

被引:1
作者
Mudavadkar, Govind Rajesh [1 ]
Deng, Mo [1 ]
Al-Heejawi, Salah Mohammed Awad [1 ]
Arora, Isha Hemant [2 ]
Breggia, Anne [3 ]
Ahmad, Bilal [4 ]
Christman, Robert [4 ]
Ryan, Stephen T. [4 ]
Amal, Saeed [5 ]
机构
[1] Northeastern Univ, Coll Engn, Boston, MA 02115 USA
[2] Northeastern Univ, Khoury Coll Comp Sci, Boston, MA 02115 USA
[3] MaineHealth Inst Res, Scarborough, ME 04074 USA
[4] Maine Med Ctr, Portland, ME 04102 USA
[5] Northeastern Univ, Roux Inst, Coll Engn, Dept Bioengn, Boston, MA 02115 USA
关键词
cancer detection; machine learning; gastrointestinal cancer; deep learning; histopathology; GASTROINTESTINAL POLYP; CLASSIFICATION;
D O I
10.3390/diagnostics14161746
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Simple Summary Gastric cancer is a major worldwide health concern, underscoring the importance of early detection to enhance patient outcomes. Traditional histological analysis, while considered the gold standard, is labour intensive and manual. Deep learning (DL) is a potential approach, but existing models fail to extract all of the visual data required for successful categorization. This work overcomes these constraints by using ensemble models that mix different deep-learning architectures to improve classification performance for stomach cancer diagnosis. Using the Gastric Histopathology Sub-Size Images Database, the ensemble models obtained an average accuracy of more than 99% at various resolutions. ResNet50, VGGNet, and ResNet34 performed better than EfficientNet and VitNet, with the ensemble model continuously delivering higher accuracy. These findings show that ensemble models may accurately detect important characteristics from smaller picture patches, allowing pathologists to diagnose stomach cancer early and increasing patient survival rates.Abstract Gastric cancer has become a serious worldwide health concern, emphasizing the crucial importance of early diagnosis measures to improve patient outcomes. While traditional histological image analysis is regarded as the clinical gold standard, it is labour intensive and manual. In recognition of this problem, there has been a rise in interest in the use of computer-aided diagnostic tools to help pathologists with their diagnostic efforts. In particular, deep learning (DL) has emerged as a promising solution in this sector. However, current DL models are still restricted in their ability to extract extensive visual characteristics for correct categorization. To address this limitation, this study proposes the use of ensemble models, which incorporate the capabilities of several deep-learning architectures and use aggregate knowledge of many models to improve classification performance, allowing for more accurate and efficient gastric cancer detection. To determine how well these proposed models performed, this study compared them with other works, all of which were based on the Gastric Histopathology Sub-Size Images Database, a publicly available dataset for gastric cancer. This research demonstrates that the ensemble models achieved a high detection accuracy across all sub-databases, with an average accuracy exceeding 99%. Specifically, ResNet50, VGGNet, and ResNet34 performed better than EfficientNet and VitNet. For the 80 x 80-pixel sub-database, ResNet34 exhibited an accuracy of approximately 93%, VGGNet achieved 94%, and the ensemble model excelled with 99%. In the 120 x 120-pixel sub-database, the ensemble model showed 99% accuracy, VGGNet 97%, and ResNet50 approximately 97%. For the 160 x 160-pixel sub-database, the ensemble model again achieved 99% accuracy, VGGNet 98%, ResNet50 98%, and EfficientNet 92%, highlighting the ensemble model's superior performance across all resolutions. Overall, the ensemble model consistently provided an accuracy of 99% across the three sub-pixel categories. These findings show that ensemble models may successfully detect critical characteristics from smaller patches and achieve high performance. The findings will help pathologists diagnose gastric cancer using histopathological images, leading to earlier identification and higher patient survival rates.
引用
收藏
页数:17
相关论文
共 50 条
  • [41] Early gastric cancer detection and lesion segmentation based on deep learning and gastroscopic images
    Zhang, Kezhi
    Wang, Haibao
    Cheng, Yaru
    Liu, Hongyan
    Gong, Qi
    Zeng, Qian
    Zhang, Tao
    Wei, Guoqiang
    Wei, Zhi
    Chen, Dong
    [J]. SCIENTIFIC REPORTS, 2024, 14 (01):
  • [42] Clinically applicable histopathological diagnosis system for gastric cancer detection using deep learning
    Song, Zhigang
    Zou, Shuangmei
    Zhou, Weixun
    Huang, Yong
    Shao, Liwei
    Yuan, Jing
    Gou, Xiangnan
    Jin, Wei
    Wang, Zhanbo
    Chen, Xin
    Ding, Xiaohui
    Liu, Jinhong
    Yu, Chunkai
    Ku, Calvin
    Liu, Cancheng
    Sun, Zhuo
    Xu, Gang
    Wang, Yuefeng
    Zhang, Xiaoqing
    Wang, Dandan
    Wang, Shuhao
    Xu, Wei
    Davis, Richard C.
    Shi, Huaiyin
    [J]. NATURE COMMUNICATIONS, 2020, 11 (01)
  • [43] Lung cancer detection from thoracic CT scans using an ensemble of deep learning models
    Gautam, Nandita
    Basu, Abhishek
    Sarkar, Ram
    [J]. NEURAL COMPUTING & APPLICATIONS, 2024, 36 (05) : 2459 - 2477
  • [44] Integrating transcriptomic data and digital pathology for NRG-based prediction of prognosis and therapy response in gastric cancer
    Sun, Qiuyan
    Li, Tan
    Wei, Zheng
    Ye, Zhiyi
    Zhao, Xu
    Jing, Jingjing
    [J]. ANNALS OF MEDICINE, 2024, 56 (01)
  • [45] Tridirectional Transfer Learning for Predicting Gastric Cancer Morbidity
    Song, Qin
    Zheng, Yu-Jun
    Sheng, Wei-Guo
    Yang, Jun
    [J]. IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2021, 32 (02) : 561 - 574
  • [46] Detection of microsatellite instability in gastric cancer and dysplasia tissues
    Li, Bing
    Liu, Hong-Yi
    Guo, Shao-Hua
    Sun, Peng
    Gong, Fang-Ming
    Jia, Bao-Qing
    [J]. INTERNATIONAL JOURNAL OF CLINICAL AND EXPERIMENTAL MEDICINE, 2015, 8 (11): : 21442 - 21447
  • [47] An ensemble of deep CNNs for automatic grading of breast cancer in digital pathology images
    Sharma, Shallu
    Kumar, Sumit
    Sharma, Manoj
    Kalkal, Ashish
    [J]. NEURAL COMPUTING & APPLICATIONS, 2024, 36 (11) : 5673 - 5693
  • [48] On Breast Cancer Detection: An Application of Machine Learning Algorithms on the Wisconsin Diagnostic Dataset
    Agarap, Abien Fred M.
    [J]. 2ND INTERNATIONAL CONFERENCE ON MACHINE LEARNING AND SOFT COMPUTING (ICMLSC 2018), 2015, : 5 - 9
  • [49] A large histological images dataset of gastric cancer with tumour microenvironment annotation for AI
    Lou, Shenghan
    Ji, Jianxin
    Li, Huiying
    Zhang, Xuan
    Jiang, Yang
    Hua, Menglei
    Chen, Kexin
    Ge, Kaiyuan
    Zhang, Qi
    Wang, Liuying
    Han, Peng
    Cao, Lei
    [J]. SCIENTIFIC DATA, 2025, 12 (01)
  • [50] A Transfer Learning Radiomics Nomogram for Preoperative Prediction of Borrmann Type IV Gastric Cancer From Primary Gastric Lymphoma
    Feng, Bao
    Huang, Liebin
    Liu, Yu
    Chen, Yehang
    Zhou, Haoyang
    Yu, Tianyou
    Xue, Huimin
    Chen, Qinxian
    Zhou, Tao
    Kuang, Qionglian
    Yang, Zhiqi
    Chen, Xiangguang
    Chen, Xiaofeng
    Peng, Zhenpeng
    Long, Wansheng
    [J]. FRONTIERS IN ONCOLOGY, 2022, 11