Cargando…

Field validation of deep learning based Point-of-Care device for early detection of oral malignant and potentially malignant disorders

Early detection of oral cancer in low-resource settings necessitates a Point-of-Care screening tool that empowers Frontline-Health-Workers (FHW). This study was conducted to validate the accuracy of Convolutional-Neural-Network (CNN) enabled m(mobile)-Health device deployed with FHWs for delineation...

Descripción completa

Detalles Bibliográficos
Autores principales: Birur N., Praveen, Song, Bofan, Sunny, Sumsum P., G., Keerthi, Mendonca, Pramila, Mukhia, Nirza, Li, Shaobai, Patrick, Sanjana, G., Shubha, A.R., Subhashini, Imchen, Tsusennaro, Leivon, Shirley T., Kolur, Trupti, Shetty, Vivek, R., Vidya Bhushan, Vaibhavi, Daksha, Rajeev, Surya, Pednekar, Sneha, Banik, Ankita Dutta, Ramesh, Rohan Michael, Pillai, Vijay, O.S., Kathryn, Smith, Petra Wilder, Sigamani, Alben, Suresh, Amritha, Liang, Rongguang, Kuriakose, Moni A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9395355/
https://www.ncbi.nlm.nih.gov/pubmed/35995987
http://dx.doi.org/10.1038/s41598-022-18249-x
_version_ 1784771673457688576
author Birur N., Praveen
Song, Bofan
Sunny, Sumsum P.
G., Keerthi
Mendonca, Pramila
Mukhia, Nirza
Li, Shaobai
Patrick, Sanjana
G., Shubha
A.R., Subhashini
Imchen, Tsusennaro
Leivon, Shirley T.
Kolur, Trupti
Shetty, Vivek
R., Vidya Bhushan
Vaibhavi, Daksha
Rajeev, Surya
Pednekar, Sneha
Banik, Ankita Dutta
Ramesh, Rohan Michael
Pillai, Vijay
O.S., Kathryn
Smith, Petra Wilder
Sigamani, Alben
Suresh, Amritha
Liang, Rongguang
Kuriakose, Moni A.
author_facet Birur N., Praveen
Song, Bofan
Sunny, Sumsum P.
G., Keerthi
Mendonca, Pramila
Mukhia, Nirza
Li, Shaobai
Patrick, Sanjana
G., Shubha
A.R., Subhashini
Imchen, Tsusennaro
Leivon, Shirley T.
Kolur, Trupti
Shetty, Vivek
R., Vidya Bhushan
Vaibhavi, Daksha
Rajeev, Surya
Pednekar, Sneha
Banik, Ankita Dutta
Ramesh, Rohan Michael
Pillai, Vijay
O.S., Kathryn
Smith, Petra Wilder
Sigamani, Alben
Suresh, Amritha
Liang, Rongguang
Kuriakose, Moni A.
author_sort Birur N., Praveen
collection PubMed
description Early detection of oral cancer in low-resource settings necessitates a Point-of-Care screening tool that empowers Frontline-Health-Workers (FHW). This study was conducted to validate the accuracy of Convolutional-Neural-Network (CNN) enabled m(mobile)-Health device deployed with FHWs for delineation of suspicious oral lesions (malignant/potentially-malignant disorders). The effectiveness of the device was tested in tertiary-care hospitals and low-resource settings in India. The subjects were screened independently, either by FHWs alone or along with specialists. All the subjects were also remotely evaluated by oral cancer specialist/s. The program screened 5025 subjects (Images: 32,128) with 95% (n = 4728) having telediagnosis. Among the 16% (n = 752) assessed by onsite specialists, 20% (n = 102) underwent biopsy. Simple and complex CNN were integrated into the mobile phone and cloud respectively. The onsite specialist diagnosis showed a high sensitivity (94%), when compared to histology, while telediagnosis showed high accuracy in comparison with onsite specialists (sensitivity: 95%; specificity: 84%). FHWs, however, when compared with telediagnosis, identified suspicious lesions with less sensitivity (60%). Phone integrated, CNN (MobileNet) accurately delineated lesions (n = 1416; sensitivity: 82%) and Cloud-based CNN (VGG19) had higher accuracy (sensitivity: 87%) with tele-diagnosis as reference standard. The results of the study suggest that an automated mHealth-enabled, dual-image system is a useful triaging tool and empowers FHWs for oral cancer screening in low-resource settings.
format Online
Article
Text
id pubmed-9395355
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Nature Publishing Group UK
record_format MEDLINE/PubMed
spelling pubmed-93953552022-08-24 Field validation of deep learning based Point-of-Care device for early detection of oral malignant and potentially malignant disorders Birur N., Praveen Song, Bofan Sunny, Sumsum P. G., Keerthi Mendonca, Pramila Mukhia, Nirza Li, Shaobai Patrick, Sanjana G., Shubha A.R., Subhashini Imchen, Tsusennaro Leivon, Shirley T. Kolur, Trupti Shetty, Vivek R., Vidya Bhushan Vaibhavi, Daksha Rajeev, Surya Pednekar, Sneha Banik, Ankita Dutta Ramesh, Rohan Michael Pillai, Vijay O.S., Kathryn Smith, Petra Wilder Sigamani, Alben Suresh, Amritha Liang, Rongguang Kuriakose, Moni A. Sci Rep Article Early detection of oral cancer in low-resource settings necessitates a Point-of-Care screening tool that empowers Frontline-Health-Workers (FHW). This study was conducted to validate the accuracy of Convolutional-Neural-Network (CNN) enabled m(mobile)-Health device deployed with FHWs for delineation of suspicious oral lesions (malignant/potentially-malignant disorders). The effectiveness of the device was tested in tertiary-care hospitals and low-resource settings in India. The subjects were screened independently, either by FHWs alone or along with specialists. All the subjects were also remotely evaluated by oral cancer specialist/s. The program screened 5025 subjects (Images: 32,128) with 95% (n = 4728) having telediagnosis. Among the 16% (n = 752) assessed by onsite specialists, 20% (n = 102) underwent biopsy. Simple and complex CNN were integrated into the mobile phone and cloud respectively. The onsite specialist diagnosis showed a high sensitivity (94%), when compared to histology, while telediagnosis showed high accuracy in comparison with onsite specialists (sensitivity: 95%; specificity: 84%). FHWs, however, when compared with telediagnosis, identified suspicious lesions with less sensitivity (60%). Phone integrated, CNN (MobileNet) accurately delineated lesions (n = 1416; sensitivity: 82%) and Cloud-based CNN (VGG19) had higher accuracy (sensitivity: 87%) with tele-diagnosis as reference standard. The results of the study suggest that an automated mHealth-enabled, dual-image system is a useful triaging tool and empowers FHWs for oral cancer screening in low-resource settings. Nature Publishing Group UK 2022-08-22 /pmc/articles/PMC9395355/ /pubmed/35995987 http://dx.doi.org/10.1038/s41598-022-18249-x Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
Birur N., Praveen
Song, Bofan
Sunny, Sumsum P.
G., Keerthi
Mendonca, Pramila
Mukhia, Nirza
Li, Shaobai
Patrick, Sanjana
G., Shubha
A.R., Subhashini
Imchen, Tsusennaro
Leivon, Shirley T.
Kolur, Trupti
Shetty, Vivek
R., Vidya Bhushan
Vaibhavi, Daksha
Rajeev, Surya
Pednekar, Sneha
Banik, Ankita Dutta
Ramesh, Rohan Michael
Pillai, Vijay
O.S., Kathryn
Smith, Petra Wilder
Sigamani, Alben
Suresh, Amritha
Liang, Rongguang
Kuriakose, Moni A.
Field validation of deep learning based Point-of-Care device for early detection of oral malignant and potentially malignant disorders
title Field validation of deep learning based Point-of-Care device for early detection of oral malignant and potentially malignant disorders
title_full Field validation of deep learning based Point-of-Care device for early detection of oral malignant and potentially malignant disorders
title_fullStr Field validation of deep learning based Point-of-Care device for early detection of oral malignant and potentially malignant disorders
title_full_unstemmed Field validation of deep learning based Point-of-Care device for early detection of oral malignant and potentially malignant disorders
title_short Field validation of deep learning based Point-of-Care device for early detection of oral malignant and potentially malignant disorders
title_sort field validation of deep learning based point-of-care device for early detection of oral malignant and potentially malignant disorders
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9395355/
https://www.ncbi.nlm.nih.gov/pubmed/35995987
http://dx.doi.org/10.1038/s41598-022-18249-x
work_keys_str_mv AT birurnpraveen fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT songbofan fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT sunnysumsump fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT gkeerthi fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT mendoncapramila fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT mukhianirza fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT lishaobai fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT patricksanjana fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT gshubha fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT arsubhashini fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT imchentsusennaro fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT leivonshirleyt fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT kolurtrupti fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT shettyvivek fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT rvidyabhushan fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT vaibhavidaksha fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT rajeevsurya fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT pednekarsneha fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT banikankitadutta fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT rameshrohanmichael fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT pillaivijay fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT oskathryn fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT smithpetrawilder fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT sigamanialben fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT sureshamritha fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT liangrongguang fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders
AT kuriakosemonia fieldvalidationofdeeplearningbasedpointofcaredeviceforearlydetectionoforalmalignantandpotentiallymalignantdisorders