
Faculty, Staff and Student Publications
Publication Date
4-1-2025
Journal
Cancer Prevention Research
Abstract
Oral cancer is a major global health problem. It is commonly diagnosed at an advanced stage, although often preceded by clinically visible oral mucosal lesions, termed oral potentially malignant disorders, which are associated with an increased risk of oral cancer development. There is an unmet clinical need for effective screening tools to assist front-line healthcare providers to determine which patients should be referred to an oral cancer specialist for evaluation. This study reports the development and evaluation of the mobile detection of oral cancer (mDOC) imaging system and an automated algorithm that generates a referral recommendation from mDOC images. mDOC is a smartphone-based autofluorescence and white light imaging tool that captures images of the oral cavity. Data were collected using mDOC from a total of 332 oral sites in a study of 29 healthy volunteers and 120 patients seeking care for an oral mucosal lesion. A multimodal image classification algorithm was developed to generate a recommendation of "refer" or "do not refer" from mDOC images using expert clinical referral decision as the ground truth label. A referral algorithm was developed using cross-validation methods on 80% of the dataset and then retrained and evaluated on a separate holdout test set. Referral decisions generated in the holdout test set had a sensitivity of 93.9% and a specificity of 79.3% with respect to expert clinical referral decisions. The mDOC system has the potential to be utilized in community physicians' and dentists' offices to help identify patients who need further evaluation by an oral cancer specialist. Prevention Relevance: Our research focuses on improving the early detection of oral precancers/cancers in primary dental care settings with a novel mobile platform that can be used by front-line providers to aid in assessing whether a patient has an oral mucosal condition that requires further follow-up with an oral cancer specialist.
Keywords
Humans, Mouth Neoplasms, Female, Male, Mouth Mucosa, Algorithms, Middle Aged, Adult, Early Detection of Cancer, Aged, Mobile Applications, Smartphone, Optical Imaging, Referral and Consultation
DOI
10.1158/1940-6207.CAPR-24-0253
PMID
39817650
PMCID
PMC11959271
PubMedCentral® Posted Date
4-1-2025
PubMedCentral® Full Text Version
Post-print
Recommended Citation
Mitbander, Ruchika; Brenes, David; Coole, Jackson B; Kortum, Alex; Vohra, Imran S; Carns, Jennifer; Schwarz, Richard A; Varghese, Ida; Durab, Safia; Anderson, Sean; Bass, Nancy E; Clayton, Ashlee D; Badaoui, Hawraa; Anandasivam, Loganayaki; Giese, Rachel A; Gillenwater, Ann M; Vigneswaran, Nadarajah; and Richards-Kortum, Rebecca, "Development and Evaluation of an Automated Multimodal Mobile Detection of Oral Cancer Imaging System to Aid in Risk-Based Management of Oral Mucosal Lesions" (2025). Faculty, Staff and Student Publications. 92.
https://digitalcommons.library.tmc.edu/uthdb_docs/92
Published Open-Access
yes