A lightweight intelligent laryngeal cancer detection system for rural areas.

Am J Otolaryngol

Department of Otolaryngology-Head and Neck Surgery, Tongji Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan 430030, China. Electronic address:

Published: December 2024

AI Article Synopsis

  • Early diagnosis of laryngeal cancer (LC) is vital, especially in rural regions, leading to the development of the intelligent laryngeal cancer detection system (ILCDS) designed for effective screening in areas with limited resources.
  • A dataset of 2023 laryngoscopic images was used, and eight different deep learning models were evaluated for LC detection, with VGG, DenseNet, and MobileNet achieving over 95% accuracy on the test set.
  • The ILCDS shows high accuracy in detecting LC while requiring minimal computational resources, making it a potential solution to improve screening practices and reduce the burden on medical professionals in rural settings.

Article Abstract

Objective: Early diagnosis of laryngeal cancer (LC) is crucial, particularly in rural areas. Despite existing studies on deep learning models for LC identification, challenges remain in selecting suitable models for rural areas with shortages of laryngologists and limited computer resources. We present the intelligent laryngeal cancer detection system (ILCDS), a deep learning-based solution tailored for effective LC screening in resource-constrained rural areas.

Methods: We compiled a dataset comprised of 2023 laryngoscopic images and applied data augmentation techniques for dataset expansion. Subsequently, we utilized eight deep learning models-AlexNet, VGG, ResNet, DenseNet, MobileNet, ShuffleNet, Vision Transformer, and Swin Transformer-for LC identification. A comprehensive evaluation of their performances and efficiencies was conducted, and the most suitable model was selected to assemble the ILCDS.

Results: Regarding performance, all models attained an average accuracy exceeding 90 % on the test set. Particularly noteworthy are VGG, DenseNet, and MobileNet, which exceeded an accuracy of 95 %, with scores of 95.32 %, 95.75 %, and 95.99 %, respectively. Regarding efficiency, MobileNet excels owing to its compact size and fast inference speed, making it an ideal model for integration into ILCDS.

Conclusion: The ILCDS demonstrated promising accuracy in LC detection while maintaining modest computational resource requirements, indicating its potential to enhance LC screening accuracy and alleviate the workload on otolaryngologists in rural areas.

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Source
http://dx.doi.org/10.1016/j.amjoto.2024.104474DOI Listing

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