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通过蝶鞍和椎体形态改变,CatBoost 分类器在诊断患者不同的牙齿异常方面的成功率如何?

How successful is the CatBoost classifier in diagnosing different dental anomalies in patients via sella turcica and vertebral morphologic alteration?

机构信息

Faculty of Dentistry, Department of Orthodontics, Recep Tayyip Erdoğan University, Rize, Turkey.

Department of Business Administration (Quantitative Methods), Gaziantep University, Gaziantep, Turkey.

出版信息

BMC Med Inform Decis Mak. 2024 Aug 29;24(1):237. doi: 10.1186/s12911-024-02643-8.

Abstract

BACKGROUND

To investigate how successfully the classification of patients with and without dental anomalies was achieved through four experiments involving different dental anomalies.

METHODS

Lateral cephalometric radiographs (LCRs) from 526 individuals aged between 14 and 22 years were included. Four experiments involving different dental anomalies were created. Experiment 1 included the total dental anomaly group and control group (CG). Experiment 2 only had dental agenesis and a CG. Experiment 3 consisted of only palatally impacted canines and the CG. Experiment 4 comprised patients with various dental defects (transposition, hypodontia, agenesis-palatally affected canine, peg-shaped laterally, hyperdontia) and the CG. Twelve sella measurements and assessments of the ponticulus posticus and posterior arch deficiency were given as input. The target was to distinguish between anomalies and controls. The CatBoost algorithm was applied to classify patients with and without dental anomalies.

RESULTS

In order from lowest to highest, the predictive accuracies of the experiments were as follows: experiment 4 < experiment 2 < experiment 3 < experiment 1. The sella area (SA) (mm2) was the most important variable in experiment 1. The most significant variable in prediction model of experiment 2 was sella height posterior (SHP) (mm). Sella area (SA) (mm2) was again the most relevant variable in experiment 3. The most important variable in experiment 4 was sella height median (SHM) (mm).

CONCLUSIONS

Every prediction model from the four experiments prioritized different variables. These findings may suggest that related research should focus on specific traits from a diagnostic perspective.

摘要

背景

通过四个涉及不同牙科异常的实验,研究了成功区分有和无牙科异常患者的情况。

方法

纳入了 526 名年龄在 14 至 22 岁之间的个体的侧位头颅侧位片(LCR)。创建了四个涉及不同牙科异常的实验。实验 1 包括总牙异常组和对照组(CG)。实验 2 仅包括牙缺失和 CG。实验 3 仅包括腭侧阻生的尖牙和 CG。实验 4 包括具有各种牙齿缺陷(错位、缺牙、腭侧受影响的尖牙缺失、钉状、多生牙)和 CG 的患者。作为输入,进行了 12 个蝶鞍测量和后弓缺如的评估。目标是区分异常和对照。应用 CatBoost 算法对有和无牙科异常的患者进行分类。

结果

从低到高,实验的预测准确性如下:实验 4<实验 2<实验 3<实验 1。实验 1 中最相关的变量是蝶鞍面积(SA)(mm2)。实验 2 中预测模型的最重要变量是蝶鞍后高(SHP)(mm)。实验 3 中再次是蝶鞍面积(SA)(mm2)是最相关的变量。实验 4 中最重要的变量是蝶鞍中间高(SHM)(mm)。

结论

四个实验中的每个预测模型都优先考虑不同的变量。这些发现可能表明,相关研究应从诊断角度关注特定特征。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d8ba/11360316/d9215a47d419/12911_2024_2643_Fig1_HTML.jpg

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