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Mobile-based oral cancer classification for point-of-care screening.

Authors :
Song, Bofan
Song, Bofan
Sunny, Sumsum
Li, Shaobai
Gurushanth, Keerthi
Mendonca, Pramila
Mukhia, Nirza
Patrick, Sanjana
Gurudath, Shubha
Raghavan, Subhashini
Imchen, Tsusennaro
Leivon, Shirley
Kolur, Trupti
Shetty, Vivek
Bushan, Vidya
Ramesh, Rohan
Lima, Natzem
Pillai, Vijay
Wilder-Smith, Petra
Sigamani, Alben
Suresh, Amritha
Kuriakose, Moni
Birur, Praveen
Liang, Rongguang
Song, Bofan
Song, Bofan
Sunny, Sumsum
Li, Shaobai
Gurushanth, Keerthi
Mendonca, Pramila
Mukhia, Nirza
Patrick, Sanjana
Gurudath, Shubha
Raghavan, Subhashini
Imchen, Tsusennaro
Leivon, Shirley
Kolur, Trupti
Shetty, Vivek
Bushan, Vidya
Ramesh, Rohan
Lima, Natzem
Pillai, Vijay
Wilder-Smith, Petra
Sigamani, Alben
Suresh, Amritha
Kuriakose, Moni
Birur, Praveen
Liang, Rongguang
Source :
Journal of biomedical optics; vol 26, iss 6; 1083-3668
Publication Year :
2021

Abstract

SignificanceOral cancer is among the most common cancers globally, especially in low- and middle-income countries. Early detection is the most effective way to reduce the mortality rate. Deep learning-based cancer image classification models usually need to be hosted on a computing server. However, internet connection is unreliable for screening in low-resource settings.AimTo develop a mobile-based dual-mode image classification method and customized Android application for point-of-care oral cancer detection.ApproachThe dataset used in our study was captured among 5025 patients with our customized dual-modality mobile oral screening devices. We trained an efficient network MobileNet with focal loss and converted the model into TensorFlow Lite format. The finalized lite format model is ∼16.3 MB and ideal for smartphone platform operation. We have developed an Android smartphone application in an easy-to-use format that implements the mobile-based dual-modality image classification approach to distinguish oral potentially malignant and malignant images from normal/benign images.ResultsWe investigated the accuracy and running speed on a cost-effective smartphone computing platform. It takes ∼300 ms to process one image pair with the Moto G5 Android smartphone. We tested the proposed method on a standalone dataset and achieved 81% accuracy for distinguishing normal/benign lesions from clinically suspicious lesions, using a gold standard of clinical impression based on the review of images by oral specialists.ConclusionsOur study demonstrates the effectiveness of a mobile-based approach for oral cancer screening in low-resource settings.

Details

Database :
OAIster
Journal :
Journal of biomedical optics; vol 26, iss 6; 1083-3668
Notes :
application/pdf, Journal of biomedical optics vol 26, iss 6 1083-3668
Publication Type :
Electronic Resource
Accession number :
edsoai.on1287312490
Document Type :
Electronic Resource