Predicting the evolution of clinical skin aging in a multi‐ethnic population: Developing causal Bayesian networks using dermatological expertise

Author:

Jouni Hussein1,Jouffe Lionel2,Tancrede‐Bohin Emmanuelle13,André Pierre4,Benamor Soraya5,Cabotin Pierre‐Patrice6,Chen Jin7,Chen Zekai8,Conceiçao Katleen9,Dlova Ncoza10,Figoni‐Laugel Catherine11,Han Xianwei12,Li Dongni13,Pansé Isabelle14,Pavlovic‐Ganascia Mira3,Harvey Valerie15,Ly Fatimata16,Niverd‐Rondelé Sylvie17,Khoza Nokubonga18,Petit Antoine19,Roux Marie‐Estelle5,Shi Yu20,Tardy‐Bastide Isabelle21,Vashi Neelam22,Wang Shanqing23,Wang Youli24,Wu Jun25,Xu Nan26,Yan Yuehua27,Gomes Charles1,Raynaud Edouard128ORCID

Affiliation:

1. L'Oreal Research and Innovation Clichy France

2. Bayesia S.A.S. Change France

3. Dermatology Department St Louis Hospital APHP Paris France

4. Paris‐Université Laser Skin Clinic Paris France

5. Dermatologist Private Practice Paris France

6. Dermatologist Private Practice Clichy France

7. The First Affiliated Hospital of Chongqing Medical University Chongqing China

8. Huizhou First Maternal and Child Health Hospital Huizhou China

9. Black Skin Dermatology Paula Bellotti Group Rio de Janeiro Brazil

10. Dermatology Department Nelson R Mandela School of Medicine University of KwaZulu‐Natal Durban South Africa

11. Dermatologist Private Practice Boulogne‐Billancourt France

12. Shenyang Seventh People's Hospital Shanghai China

13. Guangdong Second People's Hospital Guangdong China

14. Dermatologist Private Practice Chatou France

15. Hampton Roads Center for Dermatology Newport News Virginia Skin of Color Research Institute Hampton University Hampton Virginia USA

16. Dermatology and Venerology Cheikh Anta Diop University Dakar Senegal

17. Dermatologist Private Practice Corbeil‐Essone France

18. Dermatologist Private Practice Durban South Africa

19. Dermatology and Venereology Department Saint‐Louis Hospital Paris Cité University Paris France

20. Shanghai Dermatology Hospital Shanghai China

21. Dermatologist Private Practice Levallois‐Perret France

22. Dermatology Department Boston University Chobanian & Avedisian School of Medicine Boston USA

23. Dermatology Department Ruijin Hospital Shanghai Jiao Tong University School of Medicine Shanghai China

24. Zhuji Traditional Chinese Medicine Hospital Zhejiang China

25. L'Oréal Research and Innovation Shanghai China

26. Shanghai Oriental Hospital Shanghai China

27. Fudan University Pudong Hospital Shanghai China

28. CRB St Louis Hospital Paris France

Abstract

AbstractIntroductionSoftware to predict the impact of aging on physical appearance is increasingly popular. But it does not consider the complex interplay of factors that contribute to skin aging.ObjectivesTo predict the +15‐year progression of clinical signs of skin aging by developing Causal Bayesian Belief Networks (CBBNs) using expert knowledge from dermatologists.Material and methodsStructures and conditional probability distributions were elicited worldwide from dermatologists with experience of at least 15 years in aesthetics. CBBN models were built for all phototypes and for ages ranging from 18 to 65 years, focusing on wrinkles, pigmentary heterogeneity and facial ptosis. Models were also evaluated by a group of independent dermatologists ensuring the quality of prediction of the cumulative effects of extrinsic and intrinsic skin aging factors, especially the distribution of scores for clinical signs 15 years after the initial assessment.ResultsFor easiness, only models on African skins are presented in this paper. The forehead wrinkle evolution model has been detailed. Specific atlas and extrinsic factors of facial aging were used for this skin type. But the prediction method has been validated for all phototypes, and for all clinical signs of facial aging.ConclusionThis method proposes a skin aging model that predicts the aging process for each clinical sign, considering endogenous and exogenous factors. It simulates aging curves according to lifestyle. It can be used as a preventive tool and could be coupled with a generative AI algorithm to visualize aging and, potentially, other skin conditions, using appropriate images.

Publisher

Wiley

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