永久歯欠損患者の治療選択を支援するAI研究(AI may help clinicians choose best path for patients missing permanent teeth)

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2026-02-24 バッファロー大学(UB)

米国バッファロー大学(University at Buffalo)のAl-Jewair氏らは、AIを用いて歯科画像から欠損歯を高精度で検出する手法を開発した。機械学習モデルに多数の歯科X線画像を学習させることで、従来は専門医の目視診断に依存していた欠損歯の判定を自動化。診断の迅速化と客観性向上が期待され、矯正治療計画の最適化や医療資源の効率活用に貢献する可能性がある。本研究は歯科医療におけるAI活用の有効性を示す成果となった。

<関連情報>

永久歯のない第二乳臼歯遺残の管理のための人工知能支援臨床意思決定モデル Artificial Intelligence-Assisted Clinical Decision Model for Managing Retained Second Deciduous Molars With No Permanent Successors

Ozge Colak, William Tanberg, Mohammed H. Elnagar, Thikriat Al-Jewair
Orthodontics & Craniofacial Research  Published: 16 January 2026
DOI:https://doi.org/10.1111/ocr.70100

ABSTRACT

Introduction

The aim of this study was to develop and apply an artificial intelligence (AI) algorithm to aid the clinical decision-making process for managing mandibular retained second deciduous molars (SDM) with no permanent successors using machine learning.

Methods

This retrospective study consisted of patients who were diagnosed with at least one congenitally missing (agenic) mandibular permanent second premolar with a retained SDM. Pretreatment clinical records from each patient were collected and three sets of input features (radiographic, photographic and clinical) were used. The sample was divided into three groups, each representing a distinct treatment decision: (1) extraction of the SDM with space closure; (2) extraction of the SDM with space maintenance; and (3) retention of the SDM. The treatment decisions were based on majority treatment determination by three experienced clinicians. Four machine learning models were built and evaluated: Multinomial Logistic Regression, Multilayer Perceptron, Decision Tree and Random Forest classifier.

Results

Random Forest classifier showed the highest accuracy in treatment planning while Decision Tree showed the lowest accuracy. Features such as patient preference for restoration, amount of mandibular arch crowding and ankylosis were the strongest predictors, having the greatest influence on treatment decision accuracy in the Random Forest classifier model.

Conclusions

The Random Forest classifier demonstrated the highest accuracy in aiding the clinical decision-making process for managing retained SDM with no permanent successors. Key factors influencing treatment decision accuracy included patient preference for restoration, mandibular arch crowding and ankylosis.

医療・健康
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