Skin cancer detection by deep learning and sound analysis algorithms: A prospective clinical study of an elementary dermoscopeResearch in context

Background: Skin cancer (SC), especially melanoma, is a growing public health burden. Experimental studies have indicated a potential diagnostic role for deep learning (DL) algorithms in identifying SC at varying sensitivities. Previously, it was demonstrated that diagnostics by dermoscopy are impro...

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Main Authors: A. Dascalu, E.O. David
Format: Article
Language:English
Published: Elsevier 2019-05-01
Series:EBioMedicine
Online Access:http://www.sciencedirect.com/science/article/pii/S2352396419302944
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spelling doaj-ee249e1460e249f2965a73b06db9683a2020-11-25T00:10:07ZengElsevierEBioMedicine2352-39642019-05-0143107113Skin cancer detection by deep learning and sound analysis algorithms: A prospective clinical study of an elementary dermoscopeResearch in contextA. Dascalu0E.O. David1Department of Physiology and Pharmacology, Sackler School of Medicine, Tel Aviv University, Tel Aviv, Israel; Corresponding author at: 6 Matmon Cohen Street, Tel Aviv 6209406, Israel.Department of Computer Science, Bar-Ilan University, Ramat-Gan, IsraelBackground: Skin cancer (SC), especially melanoma, is a growing public health burden. Experimental studies have indicated a potential diagnostic role for deep learning (DL) algorithms in identifying SC at varying sensitivities. Previously, it was demonstrated that diagnostics by dermoscopy are improved by applying an additional sonification (data to sound waves conversion) layer on DL algorithms. The aim of the study was to determine the impact of image quality on accuracy of diagnosis by sonification employing a rudimentary skin magnifier with polarized light (SMP). Methods: Dermoscopy images acquired by SMP were processed by a first deep learning algorithm and sonified. Audio output was further analyzed by a different secondary DL. Study criteria outcomes of SMP were specificity and sensitivity, which were further processed by a F2-score, i.e. applying a twice extra weight to sensitivity over positive predictive values. Findings: Patients (n = 73) fulfilling inclusion criteria were referred to biopsy. SMP analysis metrics resulted in a receiver operator characteristic curve AUC's of 0.814 (95% CI, 0.798–0.831). SMP achieved a F2-score sensitivity of 91.7%, specificity of 41.8% and positive predictive value of 57.3%. Diagnosing the same set of patients' lesions by an advanced dermoscope resulted in a F2-score sensitivity of 89.5%, specificity of 57.8% and a positive predictive value of 59.9% (P=NS). Interpretation: DL processing of dermoscopic images followed by sonification results in an accurate diagnostic output for SMP, implying that the quality of the dermoscope is not the major factor influencing DL diagnosis of skin cancer. Present system might assist all healthcare providers as a feasible computer-assisted detection system. Fund: Bostel Technologies.Trial Registration clinicaltrials.gov Identifier: NCT03362138 Keywords: Skin cancer, Deep learning, Dermoscopy, Sonification, Melanoma, Telemedicine, Artificial intelligencehttp://www.sciencedirect.com/science/article/pii/S2352396419302944
collection DOAJ
language English
format Article
sources DOAJ
author A. Dascalu
E.O. David
spellingShingle A. Dascalu
E.O. David
Skin cancer detection by deep learning and sound analysis algorithms: A prospective clinical study of an elementary dermoscopeResearch in context
EBioMedicine
author_facet A. Dascalu
E.O. David
author_sort A. Dascalu
title Skin cancer detection by deep learning and sound analysis algorithms: A prospective clinical study of an elementary dermoscopeResearch in context
title_short Skin cancer detection by deep learning and sound analysis algorithms: A prospective clinical study of an elementary dermoscopeResearch in context
title_full Skin cancer detection by deep learning and sound analysis algorithms: A prospective clinical study of an elementary dermoscopeResearch in context
title_fullStr Skin cancer detection by deep learning and sound analysis algorithms: A prospective clinical study of an elementary dermoscopeResearch in context
title_full_unstemmed Skin cancer detection by deep learning and sound analysis algorithms: A prospective clinical study of an elementary dermoscopeResearch in context
title_sort skin cancer detection by deep learning and sound analysis algorithms: a prospective clinical study of an elementary dermoscoperesearch in context
publisher Elsevier
series EBioMedicine
issn 2352-3964
publishDate 2019-05-01
description Background: Skin cancer (SC), especially melanoma, is a growing public health burden. Experimental studies have indicated a potential diagnostic role for deep learning (DL) algorithms in identifying SC at varying sensitivities. Previously, it was demonstrated that diagnostics by dermoscopy are improved by applying an additional sonification (data to sound waves conversion) layer on DL algorithms. The aim of the study was to determine the impact of image quality on accuracy of diagnosis by sonification employing a rudimentary skin magnifier with polarized light (SMP). Methods: Dermoscopy images acquired by SMP were processed by a first deep learning algorithm and sonified. Audio output was further analyzed by a different secondary DL. Study criteria outcomes of SMP were specificity and sensitivity, which were further processed by a F2-score, i.e. applying a twice extra weight to sensitivity over positive predictive values. Findings: Patients (n = 73) fulfilling inclusion criteria were referred to biopsy. SMP analysis metrics resulted in a receiver operator characteristic curve AUC's of 0.814 (95% CI, 0.798–0.831). SMP achieved a F2-score sensitivity of 91.7%, specificity of 41.8% and positive predictive value of 57.3%. Diagnosing the same set of patients' lesions by an advanced dermoscope resulted in a F2-score sensitivity of 89.5%, specificity of 57.8% and a positive predictive value of 59.9% (P=NS). Interpretation: DL processing of dermoscopic images followed by sonification results in an accurate diagnostic output for SMP, implying that the quality of the dermoscope is not the major factor influencing DL diagnosis of skin cancer. Present system might assist all healthcare providers as a feasible computer-assisted detection system. Fund: Bostel Technologies.Trial Registration clinicaltrials.gov Identifier: NCT03362138 Keywords: Skin cancer, Deep learning, Dermoscopy, Sonification, Melanoma, Telemedicine, Artificial intelligence
url http://www.sciencedirect.com/science/article/pii/S2352396419302944
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