Machine Learning Model Based on Radiomics for Preoperative Differentiation of Jaw Cystic Lesions

Author:

Fang Songling1,Wang Yuepeng1,He Yilin1,Yu Taihui2,Xie Yutong3,Cai Yongkang1,Li Wenhao1,Wang Yan1,Huang Zhiquan1ORCID

Affiliation:

1. Department of Oral and Maxillofacial Surgery Sun Yat‐sen Memorial Hospital Guangdong Guangzhou China

2. Department of Radiology Sun Yat‐sen Memorial Hospital Guangdong Guangzhou China

3. Australian Institute for Machine Learning University of Adelaide Adelaide South Australia Australia

Abstract

AbstractObjectiveThis study aims to use machine learning techniques together with radiomics methods to build a preoperative predictive diagnostic model from spiral computed tomography (CT) images. The model is intended for the differential diagnosis of common jaw cystic lesions.Study DesignRetrospective, case‐control study.SettingThis retrospective study was conducted at Sun Yat‐sen Memorial Hospital of Sun Yat‐sen University (Guangzhou, Guangdong, China). All the data used to build the predictive diagnostic model were collected from 160 patients, who were treated at the Department of Oral and Maxillofacial Surgery at Sun Yat‐sen Memorial Hospital of Sun Yat‐sen University between 2019 and 2023.MethodsWe included a total of 160 patients in this study. We extracted 107 radiomic features from each patient's CT scan images. After a feature selection process, we chose 15 of these radiomic features to construct the predictive diagnostic model.ResultsAmong the preoperative predictive diagnostic models built using 3 different machine learning methods (support vector machine, random forest [RF], and multivariate logistic regression), the RF model showed the best predictive performance. It demonstrated a sensitivity of 0.923, a specificity of 0.643, an accuracy of 0.825, and an area under the receiver operating characteristic curve of 0.810.ConclusionThe preoperative predictive model, based on spiral CT radiomics and machine learning algorithms, shows promising differential diagnostic capabilities. For common jaw cystic lesions, this predictive model has potential clinical application value, providing a scientific reference for treatment decisions.

Publisher

Wiley

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