Singh Virendra, Mathur Priyesh, Thakker Beena, Rao Zeba, Gowdar Inderjit M, Butolia Hemant K, Chouhan Dharamveer S
Department of Dentistry, Government Medical College Dungarpur, Rajasthan, India.
Department of Oral Medicine and Radiology, Rajasthan Dental College and Hospital, Jaipur, Rajasthan, India.
J Pharm Bioallied Sci. 2025 Jun;17(Suppl 2):S1553-S1555. doi: 10.4103/jpbs.jpbs_112_25. Epub 2025 Jun 18.
The application of artificial intelligence (AI) in dentistry has gained significant attention, particularly in diagnosing oral lesions using radiographic imaging.
A total of 150 digital radiographic images of patients with suspected oral lesions were analyzed. The dataset was split into training (70%) and testing (30%) subsets for the AI model. The AI software was trained to identify and classify oral lesions into three categories: benign, malignant, and precancerous. The results were compared with diagnoses made by three experienced oral radiologists, which served as the reference standard. Diagnostic accuracy, sensitivity, specificity, and precision were calculated to evaluate the performance of the AI system.
The AI-driven software demonstrated an accuracy of 92.5%, with a sensitivity of 94% and specificity of 91% in diagnosing oral lesions. Precision values for benign, malignant, and precancerous lesions were 89%, 95%, and 93%, respectively. Interobserver agreement between the AI and human radiologists was found to be substantial (kappa = 0.84). The AI software showed faster diagnostic processing, with an average time of 3 seconds per image compared to 2 minutes by human experts.
AI-driven software exhibits high accuracy and efficiency in diagnosing oral lesions using radiographic imaging, providing a valuable adjunct to traditional diagnostic methods. Its rapid processing capability and consistency in performance make it a promising tool for enhancing diagnostic workflows in dental practice.
人工智能(AI)在牙科领域的应用已受到广泛关注,尤其是在利用放射成像诊断口腔病变方面。
共分析了150例疑似口腔病变患者的数字放射图像。数据集被分为人工智能模型的训练子集(70%)和测试子集(30%)。训练人工智能软件以识别口腔病变并将其分为三类:良性、恶性和癌前病变。将结果与三位经验丰富的口腔放射科医生的诊断结果进行比较,后者作为参考标准。计算诊断准确性、敏感性、特异性和精确性以评估人工智能系统的性能。
人工智能驱动的软件在诊断口腔病变方面显示出92.5%的准确率,敏感性为94%,特异性为91%。良性、恶性和癌前病变的精确值分别为89%、95%和93%。发现人工智能与人类放射科医生之间的观察者间一致性较高(kappa = 0.84)。人工智能软件显示出更快的诊断处理速度,平均每张图像3秒,而人类专家则需要2分钟。
人工智能驱动的软件在利用放射成像诊断口腔病变方面具有较高的准确性和效率,为传统诊断方法提供了有价值的辅助手段。其快速处理能力和性能的一致性使其成为改善牙科实践中诊断工作流程的有前途的工具。