Reducing blind spots in esophagogastroduodenoscopy examinations using a novel deep learning model

被引:0
|
作者
Wan, Guangquan [1 ]
Lian, Guanghui [2 ]
Yao, Lan [1 ]
机构
[1] Hunan Univ, Sch Math, Changsha 410082, Peoples R China
[2] Cent South Univ, Xiangya Hosp, Changsha 410083, Peoples R China
关键词
Artificial intelligence; Deep learning; Medical image processing; Esophagogastroduodenoscopy; CLASSIFICATION; NETWORK; CANCER;
D O I
10.1007/s00530-024-01259-2
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The intricate architecture of gastric anatomy coupled with the complexities inherent in esophagogastroduodenoscopy (EGD) procedures can lead to blind spots during examinations. These blind spots refer to anatomical locations not visualized during EGD examinations, potentially impacting timely diagnoses and treatments, and exacerbating patient conditions. Therefore, developing artificial intelligence (AI) for monitoring and reducing blind spots in EGD examinations is crucial. This study introduces MMCNet, a novel deep-learning model for classifying anatomical locations in EGD images. The model-based AI system can promptly alert the physician when it fails to recognize all anatomical locations in real-time EGD examinations, thereby enabling the monitoring and reduction of blind spots. To validate its efficacy, comprehensive experimental assessments compared MMCNet with established deep learning models. The results confirm MMCNet's high accuracy rate of 97.25% in recognizing anatomical locations in EGD images. Moreover, its notably compact memory size of 4.16M contributes to reduced memory requirements. With its accuracy and small model size, the model demonstrates significant potential as an effective tool for computer-assisted blind spot detection. Additionally, this study presents a comprehensive workflow for applying deep learning models to address practical issues, which can be easily adapted for similar tasks.
引用
收藏
页数:14
相关论文
共 50 条
  • [41] A reinforcement learning approach for reducing traffic congestion using deep Q learning
    Swapno, S. M. Masfequier Rahman
    Nobel, S. M. Nuruzzaman
    Meena, Preeti
    Meena, V. P.
    Azar, Ahmad Taher
    Haider, Zeeshan
    Tounsi, Mohamed
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [42] Automated Triage of Screening Breast MRI Examinations in High-Risk Women Using an Ensemble Deep Learning Model
    Bhowmik, Arka
    Monga, Natasha
    Belen, Kristin
    Varela, Keitha
    Sevilimedu, Varadan
    Thakur, Sunitha B.
    Martinez, Danny F.
    Sutton, Elizabeth J.
    Pinker, Katja
    Eskreis-Winkler, Sarah
    INVESTIGATIVE RADIOLOGY, 2023, 58 (10) : 710 - 719
  • [43] Reducing the Impact of DoS Attack on Static and Dynamic SE Using a Deep Learning-Based Model
    Kukadiya, Purna
    Jain, Trapti
    Hubballi, Neminath
    IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2024, 20 (10) : 11644 - 11654
  • [44] SceneRecog: A Deep Learning Scene Recognition Model for Assisting Blind and Visually Impaired Navigate using Smartphones
    Kuriakose, Bineeth
    Shrestha, Raju
    Sandnes, Frode Eika
    2021 IEEE INTERNATIONAL CONFERENCE ON SYSTEMS, MAN, AND CYBERNETICS (SMC), 2021, : 2464 - 2470
  • [45] Reducing model bias in a deep learning classifier using domain adversarial neural networks in the MINERvA experiment
    Perdue, G. N.
    Ghosh, A.
    Wospakrik, M.
    Akbar, F.
    Andrade, D. A.
    Ascencio, M.
    Bellantoni, L.
    Bercellie, A.
    Betancourt, M.
    Caceres Vera, G. F. R.
    Cai, T.
    Carneiro, M. F.
    Chaves, J.
    Coplowe, D.
    da Motta, H.
    Diaz, G. A.
    Felix, J.
    Fields, L.
    Fine, R.
    Gago, A. M.
    Galindo, R.
    Golan, T.
    Gran, R.
    Han, J. Y.
    Harris, D. A.
    Jena, D.
    Kleykamp, J.
    Kordosky, M.
    Lu, X. -G.
    Maher, E.
    Mann, W. A.
    Marshall, C. M.
    McFarland, K. S.
    McGowan, A. M.
    Messerly, B.
    Miller, J.
    Nelson, J. K.
    Nguyen, C.
    Norrick, A.
    Nuruzzaman
    Olivier, A.
    Patton, R.
    Ramirez, M. A.
    Ransome, R. D.
    Ray, H.
    Ren, L.
    Rimal, D.
    Ruterbories, D.
    Schellman, H.
    Solano Salinas, C. J.
    JOURNAL OF INSTRUMENTATION, 2018, 13
  • [46] Reducing flow fluctuation using deep reinforcement learning with a CNN-based flow feature model
    Ye, Shuran
    Zhang, Zhen
    Wang, Yiwei
    Huang, Chenguang
    OCEAN ENGINEERING, 2024, 306
  • [47] A novel deep learning by combining discriminative model with generative model
    Kim, Sangwook
    Lee, Minho
    Shen, Jixiang
    2015 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2015,
  • [48] Using Transfer Learning for a Deep Learning Model Observer
    Murphy, W.
    Elangovan, P.
    Halling-Brown, M.
    Lewis, E.
    Young, K. C.
    Dance, D. R.
    Wells, K.
    MEDICAL IMAGING 2019: IMAGE PERCEPTION, OBSERVER PERFORMANCE, AND TECHNOLOGY ASSESSMENT, 2019, 10952
  • [49] Spectrum sensing and modulation recognition using a novel CNN Deep Learning model and Learning transfer technique
    Mahieddine, Mohamed Ben Mohammed
    Bassou, Abdesselam
    Chouakri, Sid Ahmed
    Mellah, Nesrine
    Khelifi, Mustapha
    PRZEGLAD ELEKTROTECHNICZNY, 2023, 99 (05): : 93 - 97
  • [50] Constructing a Model for Estimating Learners’ Mental States Using Biometric Information and Reducing Labeling Costs Using Deep Learning
    Furusawa, Yoshihisa
    Tawatsuji, Yoshimasa
    Matsui, Tatsunori
    Transactions of the Japanese Society for Artificial Intelligence, 2022, 37 (02):