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Multimedia Technology and Enhanced Learning. 5th EAI International Conference, ICMTEL 2023, Leicester, UK, April 28-29, 2023, Proceedings, Part IV

Research Article

Research on Application of Deep Learning in Esophageal Cancer Pathological Detection

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BibTeX Plain Text
  • @INPROCEEDINGS{10.1007/978-3-031-50580-5_9,
        author={Xiang Lin and Zhang Juxiao and Yin Lu and Ji Wenpei},
        title={Research on Application of Deep Learning in Esophageal Cancer Pathological Detection},
        proceedings={Multimedia Technology and Enhanced Learning. 5th EAI International Conference, ICMTEL 2023, Leicester, UK, April 28-29, 2023, Proceedings, Part IV},
        proceedings_a={ICMTEL PART 4},
        year={2024},
        month={2},
        keywords={Esophageal Cancer Detection Deep Learning Transfer Learning Data Augment},
        doi={10.1007/978-3-031-50580-5_9}
    }
    
  • Xiang Lin
    Zhang Juxiao
    Yin Lu
    Ji Wenpei
    Year: 2024
    Research on Application of Deep Learning in Esophageal Cancer Pathological Detection
    ICMTEL PART 4
    Springer
    DOI: 10.1007/978-3-031-50580-5_9
Xiang Lin1,*, Zhang Juxiao1, Yin Lu1, Ji Wenpei1
  • 1: Nanjing Normal University of Special Education
*Contact email: lin_xiang@njts.edu.cn

Abstract

As the “gold standard” of tumor diagnosis, pathological diagnosis is more reliable than the analytical diagnosis, ultrasound, CT, nuclear magnetic resonance, etc. Detection of esophageal cancer based on pathological slice images is focused in this paper combining with deep learning to intelligently obtain reliable detection results. A data set is built by collecting and labeling pathological slices of esophageal cancer at varying stages for model training and verification. By comparing the performance of multiple models, ResNet50 is chosen as the network model. The model is pre-trained on ImageNet with a public breast cancer data set and transferred to the task of esophageal cancer detection. The original data set is enlarged by data augmentation to improve the accuracy, effectively avoiding over-fitting. Experimental results show the test accuracy achieves 0.950 which demonstrates the feasibility of deep learning on the esophageal cancer detection with pathological slice images.

Keywords
Esophageal Cancer Detection Deep Learning Transfer Learning Data Augment
Published
2024-02-21
Appears in
SpringerLink
http://dx.doi.org/10.1007/978-3-031-50580-5_9
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