Literature DB >> 31971257

A new procedure, free from human assessment, that automatically grades some facial skin signs in men from selfie pictures. Application to changes induced by a severe aerial chronic urban pollution.

Y Zhang1, R Jiang1, I Kezele1, F Flament2, E Elmozino1, J Zhang1, C Ye3, D Amar3, J Coquide4, S Dwivedi4, L Sarda-Dutilh4, V Arcin4, P Aarabi1.   

Abstract

OBJECTIVE: These were two folds: at first, to develop an automatic grading system specifically dedicated to some facial signs of men, similar to the one previously validated on women of different ethnic ancestry and second, to assess its potential in detecting and grading the possible impacts of a severe aerial urban pollution on some facial signs of Chinese men.
METHODS: In both studies, selfie images were obtained from differently aged men. Nine facial signs were automatically graded through a specific A.I-based algorithm and clinically assessed by a panel of experts and dermatologists. Selfie pictures were taken from individual smartphones of variable optical properties. The first study, designed for developing an automatic grading system, involved three comparable cohorts of men from three different regional ancestries (African, Asian, Caucasian, 110 each) the selfie images of which were acquired under four different lighting conditions. As a second use case study, the facial signs of two cohorts of Chinese men (101 and 100, each), differently aged, regularly exposed to very different aerial urban pollution conditions (UP) were analysed by the same algorithm, selfies being taken under only one lighting condition.
RESULTS: -The new automatic grading system of facial signs suits well to men, showing comparable results than that the one dedicated to women and provides data in close agreement with experts' assessments. -In both cases (expert's or automatic methodology), the accuracy of the scores appeared ethnic-dependent. -The applied case confirmed previous results obtained clinically, that is, that many facial signs were found of an increased severity among men exposed to a severe urban pollution, as compared to those living in a less polluted city. -In both studies, statistical agreements between the automatic grading system and expert's assessments were reached. In some facial signs, the automatic grading system seems offering a slightly better accuracy than the assessments made by the experts.
CONCLUSION: Apart from some minor limitations, this A.I-based automatic grading system, free from human intervention, performed as well as the one previously developed in women, in close agreement with expert's assessments. In epidemiological studies, this system offers an easy, fast, affordable and confidential approach in the detection and quantification of male facial signs.
© 2020 Society of Cosmetic Scientists and the Société Française de Cosmétologie.

Entities:  

Keywords:  artificial intelligence; automatic grading system; chronic pollution exposures; clinical research; men facial signs

Mesh:

Substances:

Year:  2020        PMID: 31971257     DOI: 10.1111/ics.12602

Source DB:  PubMed          Journal:  Int J Cosmet Sci        ISSN: 0142-5463            Impact factor:   2.970


  4 in total

1.  A Genome-Wide Association Study and Machine-Learning Algorithm Analysis on the Prediction of Facial Phenotypes by Genotypes in Korean Women.

Authors:  Hye-Young Yoo; Ki-Chan Lee; Ji-Eun Woo; Sung-Ha Park; Sunghoon Lee; Joungsu Joo; Jin-Sik Bae; Hyuk-Jung Kwon; Byoung-Jun Park
Journal:  Clin Cosmet Investig Dermatol       Date:  2022-03-11

2.  A preliminary study to understand the effects of mask on tinted face cosmetics.

Authors:  Emilie Yokoyama; Kumiko Udodaira; Alexandre Nicolas; Eri Yamashita; Aurelie Maudet; Frederic Flament; Damien Velleman
Journal:  Skin Res Technol       Date:  2021-03-02       Impact factor: 2.240

3.  Selfie-driven thyroid disease leads: A study on a unique sign and its utility in clinical practice.

Authors:  Ramakanth Bhargav Panchangam; Sunil Kumar Kota; Sabaretnam Mayilvaganan
Journal:  Ann Afr Med       Date:  2021 Oct-Dec

Review 4.  Artificial intelligence in clinical and translational science: Successes, challenges and opportunities.

Authors:  Elmer V Bernstam; Paula K Shireman; Funda Meric-Bernstam; Meredith N Zozus; Xiaoqian Jiang; Bradley B Brimhall; Ashley K Windham; Susanne Schmidt; Shyam Visweswaran; Ye Ye; Heath Goodrum; Yaobin Ling; Seemran Barapatre; Michael J Becich
Journal:  Clin Transl Sci       Date:  2021-10-30       Impact factor: 4.689

  4 in total

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