The prediction of sagittal chin point relapse following two-jaw surgery using machine learning

Young Ho Kim, Inhwan Kim, Yoon Ji Kim, Minji Ki, Jin Hyoung Cho, Mihee Hong, Kyung Hwa Kang, Sung Hoon Lim, Su Jung Kim, Namkug Kim, Jeong Won Shin, Sang Jin Sung, Seung Hak Baek, Hwa Sung Chae

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4 Scopus citations

Abstract

The study aimed to identify critical factors associated with the surgical stability of pogonion (Pog) by applying machine learning (ML) to predict relapse following two-jaw orthognathic surgery (2 J-OGJ). The sample set comprised 227 patients (110 males and 117 females, 207 training and 20 test sets). Using lateral cephalograms taken at the initial evaluation (T0), pretreatment (T1), after (T2) 2 J-OGS, and post treatment (T3), 55 linear and angular skeletal and dental surgical movements (T2-T1) were measured. Six ML modes were utilized, including classification and regression trees (CART), conditional inference tree (CTREE), and random forest (RF). The training samples were classified into three groups; highly significant (HS) (≥ 4), significant (S) (≥ 2 and < 4), and insignificant (N), depending on Pog relapse. RF indicated that the most important variable that affected relapse rank prediction was ramus inclination (RI), CTREE and CART revealed that a clockwise rotation of more than 3.7 and 1.8 degrees of RI was a risk factor for HS and S groups, respectively. RF, CTREE, and CART were practical tools for predicting surgical stability. More than 1.8 degrees of CW rotation of the ramus during surgery would lead to significant Pog relapse.

Original languageEnglish
Article number17005
JournalScientific Reports
Volume13
Issue number1
DOIs
StatePublished - Dec 2023

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