Litcius/Paper detail

A mobile augmented reality application for supporting real-time skin lesion analysis based on deep learning

Rita Francese, Maria Frasca, Michele Risi, Genoveffa Tortora

2021Journal of Real-Time Image Processing28 citationsDOIOpen Access PDF

Abstract

Abstract Melanoma is considered the deadliest skin cancer and when it is in an advanced state it is difficult to treat. Diagnoses are visually performed by dermatologists, by naked-eye observation. This paper proposes an augmented reality smartphone application for supporting the dermatologist in the real-time analysis of a skin lesion. The app augments the camera view with information related to the lesion features generally measured by the dermatologist for formulating the diagnosis. The lesion is also classified by a deep learning approach for identifying melanoma. The real-time process adopted for generating the augmented content is described. The real-time performances are also evaluated and a user study is also conducted. Results revealed that the real-time process may be entirely executed on the Smartphone and that the support provided is well judged by the target users.

Topics & Concepts

Computer scienceAugmented realitySkin lesionLesionMedical diagnosisSkin cancerProcess (computing)Artificial intelligenceMobile deviceHuman–computer interactionMedicineCancerDermatologyRadiologySurgeryWorld Wide WebInternal medicineOperating systemCutaneous Melanoma Detection and ManagementOptical Coherence Tomography ApplicationsAI in cancer detection