Suresh Ramya, Yadalam Pradeep Kumar, Ramadoss Ramya, Ramalingam Karthikeyan
Oral Biology, Saveetha Dental College and Hospitals, Saveetha Institute of Medical and Technical Sciences, Saveetha University, Chennai, IND.
Periodontics, Saveetha Institute of Medical and Technical Sciences, Chennai, IND.
Cureus. 2024 Apr 24;16(4):e58934. doi: 10.7759/cureus.58934. eCollection 2024 Apr.
Background and aim Orofacial neuropathic pain is a medical condition caused by a lesion or dysfunction of the nervous system and is one of the most challenging for dental clinicians to diagnose. Anticonvulsants, antidepressants, analgesics, nonsteroidal anti-inflammatory drugs, and other classes of medications are frequently used to treat this condition. Our study aimed to build a machine learning-based classifier to predict the need for anticonvulsant drugs in patients with orofacial neuropathic pain. Materials and methods A machine learning tool that was trained and tested on patients for predicting and detecting algorithms, which would in turn predict the need for anticonvulsants in the treatment of orofacial neuropathic pain, was employed in this study. Results Three machine learning algorithms successfully detected and predicted the need for anticonvulsants to treat patients with orofacial neuropathic pain. All three models showed a high accuracy, that is, 97%, 94%, and 89%, in predicting the need for anticonvulsants. Conclusion Machine learning algorithms can accurately predict the need for anticonvulsant drugs for treating orofacial neuropathic pain. Further research is needed to validate these findings using larger sample sizes and imaging modalities.
背景与目的 口面部神经性疼痛是一种由神经系统病变或功能障碍引起的病症,也是牙科临床医生最难诊断的病症之一。抗惊厥药、抗抑郁药、镇痛药、非甾体抗炎药及其他各类药物常被用于治疗这种病症。我们的研究旨在构建一个基于机器学习的分类器,以预测口面部神经性疼痛患者对抗惊厥药物的需求。材料与方法 本研究采用一种机器学习工具,该工具在患者身上进行了训练和测试,用于预测和检测算法,进而预测口面部神经性疼痛治疗中对抗惊厥药物的需求。结果 三种机器学习算法成功检测并预测了口面部神经性疼痛患者对抗惊厥药物的需求。在预测对抗惊厥药物的需求方面,所有三种模型都显示出较高的准确率,即97%、94%和89%。结论 机器学习算法能够准确预测治疗口面部神经性疼痛对抗惊厥药物的需求。需要进一步开展研究,使用更大样本量和成像方式来验证这些发现。