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Erschienen in: Aesthetic Plastic Surgery 4/2023

05.06.2023 | Review

Applications of Machine Learning in Facial Cosmetic Surgeries: A Scoping Review

verfasst von: Nima Ahmadi, Maral Niazmand, Ali Ghasemi, Sadra Mohaghegh, Saeed Reza Motamedian

Erschienen in: Aesthetic Plastic Surgery | Ausgabe 4/2023

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Abstract

Objective

To review the application of machine learning (ML) in the facial cosmetic surgeries and procedures

Methods and materials

Electronic search was conducted in PubMed, Scopus, Embase, Web of Science, ArXiv and Cochrane databases for the studies published until August 2022. Studies that reported the application of ML in various fields of facial cosmetic surgeries were included. The studies’ risk of bias (ROB) was assessed using the QUADAS-2 tool and NIH tool for before and after studies.

Results

From 848 studies, a total of 29 studies were included and categorized in five groups based on the aim of the studies: outcome evaluation (n = 8), face recognition (n = 7), outcome prediction (n = 7), patient concern evaluation (n = 4) and diagnosis (n = 3). Total of 16 studies used public data sets. ROB assessment using QUADAS-2 tool revealed that six studies were at low ROB, five studies were at high ROB, and others had moderate ROB. All studies assessed with NIH tool showed fair quality. In general, all studies showed that using ML in the facial cosmetic surgeries is accurate enough to benefit both surgeons and patients.

Conclusion

Using ML in the field of facial cosmetic surgery is a novel method and needs further studies, especially in the fields of diagnosis and treatment planning. Due to the small number of articles and the qualitative analysis conducted, we cannot draw a general conclusion about the impact of ML in the sphere of facial cosmetic surgery.

Level of Evidence IV

This journal requires that authors assign a level of evidence to each article. For a full description of these Evidence-Based Medicine ratings, please refer to the Table of Contents or the online Instructions to Authors www.​springer.​com/​00266.
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Metadaten
Titel
Applications of Machine Learning in Facial Cosmetic Surgeries: A Scoping Review
verfasst von
Nima Ahmadi
Maral Niazmand
Ali Ghasemi
Sadra Mohaghegh
Saeed Reza Motamedian
Publikationsdatum
05.06.2023
Verlag
Springer US
Erschienen in
Aesthetic Plastic Surgery / Ausgabe 4/2023
Print ISSN: 0364-216X
Elektronische ISSN: 1432-5241
DOI
https://doi.org/10.1007/s00266-023-03379-y

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