Literature DB >> 32949845

AI-based detection of erythema migrans and disambiguation against other skin lesions.

Philippe M Burlina1, Neil J Joshi2, Phil A Mathew2, William Paul2, Alison W Rebman3, John N Aucott3.   

Abstract

This study examines the use of AI methods and deep learning (DL) for prescreening skin lesions and detecting the characteristic erythema migrans rash of acute Lyme disease. Accurate identification of erythema migrans allows for early diagnosis and treatment, which avoids the potential for later neurologic, rheumatologic, and cardiac complications of Lyme disease. We develop and test several deep learning models for detecting erythema migrans versus several other clinically relevant skin conditions, including cellulitis, tinea corporis, herpes zoster, erythema multiforme, lesions due to tick bites and insect bites, as well as non-pathogenic normal skin. We consider a set of clinically-relevant binary and multiclass classification problems of increasing complexity. We train the DL models on a combination of publicly available images and test on public images as well as images obtained in the clinical setting. We report performance metrics that measure agreement with a gold standard, as well as a receiver operating characteristic curve and associated area under the curve. On public images, we find that the DL system has an accuracy ranging from 71.58% (and 95% error margin equal to 3.77%) for an 8-class problem of EM versus 7 other classes including other skin pathologies, insect bites and normal skin, to 94.23% (3.66%) for a binary problem of EM vs. non-pathological skin. On clinical images of affected individuals, the DL system has a sensitivity of 88.55% (2.39%). These results suggest that a DL system can help in prescreening and referring individuals to physicians for earlier diagnosis and treatment, in the presence of clinically relevant confusers, thereby reducing further complications and morbidity.
Copyright © 2020 The Authors. Published by Elsevier Ltd.. All rights reserved.

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Year:  2020        PMID: 32949845     DOI: 10.1016/j.compbiomed.2020.103977

Source DB:  PubMed          Journal:  Comput Biol Med        ISSN: 0010-4825            Impact factor:   4.589


  2 in total

Review 1.  Recent Progress in Lyme Disease and Remaining Challenges.

Authors:  Jason R Bobe; Brandon L Jutras; Elizabeth J Horn; Monica E Embers; Allison Bailey; Robert L Moritz; Ying Zhang; Mark J Soloski; Richard S Ostfeld; Richard T Marconi; John Aucott; Avi Ma'ayan; Felicia Keesing; Kim Lewis; Choukri Ben Mamoun; Alison W Rebman; Mecaila E McClune; Edward B Breitschwerdt; Panga Jaipal Reddy; Ricardo Maggi; Frank Yang; Bennett Nemser; Aydogan Ozcan; Omai Garner; Dino Di Carlo; Zachary Ballard; Hyou-Arm Joung; Albert Garcia-Romeu; Roland R Griffiths; Nicole Baumgarth; Brian A Fallon
Journal:  Front Med (Lausanne)       Date:  2021-08-18

2.  Identification of public submitted tick images: A neural network approach.

Authors:  Lennart Justen; Duncan Carlsmith; Susan M Paskewitz; Lyric C Bartholomay; Gebbiena M Bron
Journal:  PLoS One       Date:  2021-12-02       Impact factor: 3.240

  2 in total

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