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Computer-Aided Diagnosis of Laryngeal Cancer Based on Deep Learning with Laryngoscopic Images

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Specialty Radiology
Date 2023 Dec 22
PMID 38132254
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Abstract

Laryngeal cancer poses a significant global health burden, with late-stage diagnoses contributing to reduced survival rates. This study explores the application of deep convolutional neural networks (DCNNs), specifically the Densenet201 architecture, in the computer-aided diagnosis of laryngeal cancer using laryngoscopic images. Our dataset comprised images from two medical centers, including benign and malignant cases, and was divided into training, internal validation, and external validation groups. We compared the performance of Densenet201 with other commonly used DCNN models and clinical assessments by experienced clinicians. Densenet201 exhibited outstanding performance, with an accuracy of 98.5% in the training cohort, 92.0% in the internal validation cohort, and 86.3% in the external validation cohort. The area under the curve (AUC) values consistently exceeded 92%, signifying robust discriminatory ability. Remarkably, Densenet201 achieved high sensitivity (98.9%) and specificity (98.2%) in the training cohort, ensuring accurate detection of both positive and negative cases. In contrast, other DCNN models displayed varying degrees of performance degradation in the external validation cohort, indicating the superiority of Densenet201. Moreover, Densenet201's performance was comparable to that of an experienced clinician (Clinician A) and outperformed another clinician (Clinician B), particularly in the external validation cohort. Statistical analysis, including the DeLong test, confirmed the significance of these performance differences. Our study demonstrates that Densenet201 is a highly accurate and reliable tool for the computer-aided diagnosis of laryngeal cancer based on laryngoscopic images. The findings underscore the potential of deep learning as a complementary tool for clinicians and the importance of incorporating advanced technology in improving diagnostic accuracy and patient care in laryngeal cancer diagnosis. Future work will involve expanding the dataset and further optimizing the deep learning model.

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References
1.
Ren J, Jing X, Wang J, Ren X, Xu Y, Yang Q . Automatic Recognition of Laryngoscopic Images Using a Deep-Learning Technique. Laryngoscope. 2020; 130(11):E686-E693. DOI: 10.1002/lary.28539. View

2.
Demler O, Pencina M, DAgostino Sr R . Misuse of DeLong test to compare AUCs for nested models. Stat Med. 2012; 31(23):2577-87. PMC: 3684152. DOI: 10.1002/sim.5328. View

3.
Sung H, Ferlay J, Siegel R, Laversanne M, Soerjomataram I, Jemal A . Global Cancer Statistics 2020: GLOBOCAN Estimates of Incidence and Mortality Worldwide for 36 Cancers in 185 Countries. CA Cancer J Clin. 2021; 71(3):209-249. DOI: 10.3322/caac.21660. View

4.
Hubel D, Wiesel T . Receptive fields, binocular interaction and functional architecture in the cat's visual cortex. J Physiol. 1962; 160:106-54. PMC: 1359523. DOI: 10.1113/jphysiol.1962.sp006837. View

5.
Wang M, Zhu J, Li Y, Tie C, Wang S, Zhang W . [Automatic anatomical site recognition of laryngoscopic images using convolutional neural network]. Lin Chuang Er Bi Yan Hou Tou Jing Wai Ke Za Zhi. 2023; 37(1):6-12. PMC: 10128350. DOI: 10.13201/j.issn.2096-7993.2023.01.002. View