Machine learning approaches overcome imbalanced clinical data for intraoral free flap monitoring.

Scientific reports 2025 Vol.15(1) p. 34849

Kim H, Kim D, Bai J

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Abstract

Free flap reconstruction is essential for treating intraoral defects; however, failure can lead to complex and prolonged complications. While various monitoring methods have been employed to prevent such situations, they are qualitative and sometimes unfamiliar to novices. The purpose of this study was to develop a user-friendly model using artificial intelligence that quantitatively represents flap status. We analyzed 1877 images from 131 patients who underwent free flap reconstruction for intraoral defects between June 2021 and March 2024. Since patients with vascular damage were very few in number, class weighting and focal loss techniques were used to address this imbalance. The proposed model achieved high overall accuracy and F1 scores of 0.9867 and 0.9863, respectively. This study introduces the first deep learning model for intraoral flaps and demonstrates the possibility of quantitative measurement of flap changes. This tool can assist surgeons in making timely decisions regarding salvage procedures and facilitate easier monitoring for resident care-givers.

추출된 의학 개체 (NER)

유형영어 표현한국어 / 풀이UMLS CUI출처등장
시술 free flap 피판재건술 dict 3
시술 flap 피판재건술 dict 2
해부 intraoral scispacy 1
합병증 intraoral scispacy 1
합병증 intraoral flaps scispacy 1
질환 vascular damage scispacy 1
기타 patients scispacy 1
기타 vascular scispacy 1
기타 class scispacy 1

MeSH Terms

Humans; Free Tissue Flaps; Machine Learning; Male; Female; Plastic Surgery Procedures; Middle Aged; Aged; Adult; Deep Learning

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