Literature DB >> 19325277

Detection of skin erythema in darkly pigmented skin using multispectral images.

Stephen Sprigle1, Liwei Zhang, Mark Duckworth.   

Abstract

OBJECTIVE: To develop a technique using a fixed, discrete set of wavelengths that can detect erythema in persons with darkly pigmented skin. The resulting erythema detection approach will then be incorporated into a handheld, point-of-care device that is clinically viable and affordable.
DESIGN: A multispectral imaging system was used to acquire spectral images of induced erythema. Individual images were combined into a single image using different fusion algorithms. Image fusion algorithms based on published literature and using linear and nonlinear color space transformation were tested to optimize the contrast between erythematic and uninvolved skin.
SETTING: A research laboratory at Georgia Institute of Technology, Atlanta, Georgia. PARTICIPANTS: Fifty-six subjects, of whom 28 had darkly pigmented skin, were recruited from a pool of students, faculty, and staff. MAIN OUTCOME MEASURES: The ability of detection algorithms to detect erythema was measured using Weber contrast. A simple threshold classifier determined accuracy, sensitivity, and specificity for each algorithm. MAIN
RESULTS: Four algorithms enhanced contrast of erythema by an order of magnitude over that of a digital photograph. The accuracy of the detection algorithms ranged from 66% to 95%. Sensitivity and specificity ranged from 0% to 100%. One fusion algorithm exhibited an accuracy of more than 90% and sensitivity and specificity of more than 90%.
CONCLUSION: The results indicate that erythema in different skin tones can be identified using 2 to 3 filters. Increasing accuracy and discrimination will be targeted via use of filters with narrower half-wave bandwidths, more consistent camera lighting, and improved machine vision techniques.

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Year:  2009        PMID: 19325277     DOI: 10.1097/01.ASW.0000305465.17553.1c

Source DB:  PubMed          Journal:  Adv Skin Wound Care        ISSN: 1527-7941            Impact factor:   2.347


  6 in total

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2.  Hyperspectral imaging in wound care: A systematic review.

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Journal:  J Med Syst       Date:  2010-05-09       Impact factor: 4.460

4.  Characterisation of impaired wound healing in a preclinical model of induced diabetes using wide-field imaging and conventional immunohistochemistry assays.

Authors:  Mayer Saidian; Jonathan R T Lakey; Adrien Ponticorvo; Rebecca Rowland; Melissa Baldado; Joshua Williams; Maaikee Pronda; Michael Alexander; Antonio Flores; Li Shiri; Stellar Zhang; Bernard Choi; Roni Kohen; Bruce J Tromberg; Anthony J Durkin
Journal:  Int Wound J       Date:  2018-10-01       Impact factor: 3.315

5.  Point-of-care, multispectral, smartphone-based dermascopes for dermal lesion screening and erythema monitoring.

Authors:  Ross Uthoff; Bofan Song; Melody Maarouf; Vivian Shi; Rongguang Liang
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6.  Contrast-Enhancing Snapshot Narrow-Band Imaging Method for Real-Time Computer-Aided Cervical Cancer Screening.

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  6 in total

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