Department of Computer and Electronics Convergence Engineering, Sun Moon University, Asan 31460, Korea.
Genome-Based BioIT Convergence Institute, Sun Moon University, Asan 31460, Korea.
Int J Environ Res Public Health. 2022 Sep 1;19(17):10928. doi: 10.3390/ijerph191710928.
In recent years, healthcare has gained unprecedented attention from researchers in the field of Human health science and technology. Oral health, a subdomain of healthcare described as being very complex, is threatened by diseases like dental caries, gum disease, oral cancer, etc. The critical point is to propose an identification mechanism to prevent the population from being affected by these diseases. The large amount of online data allows scholars to perform tremendous research on health conditions, specifically oral health. Regardless of the high-performing dental consultation tools available in current healthcare, computer-based technology has shown the ability to complete some tasks in less time and cost less than when using similar healthcare tools to perform the same type of work. Machine learning has displayed a wide variety of advantages in oral healthcare, such as predicting dental caries in the population. Compared to the standard dental caries prediction previously proposed, this work emphasizes the importance of using multiple data sources, referred to as multi-modality, to extract more features and obtain accurate performances. The proposed prediction model constructed using multi-modal data demonstrated promising performances with an accuracy of 90%, F1-score of 89%, a recall of 90%, and a precision of 89%.
近年来,医疗保健在人类健康科学和技术领域引起了研究人员前所未有的关注。口腔健康是医疗保健的一个子领域,被描述为非常复杂,它受到龋齿、牙周病、口腔癌等疾病的威胁。关键是要提出一种识别机制,以防止人们受到这些疾病的影响。大量的在线数据使学者们能够对健康状况,特别是口腔健康进行大量的研究。无论当前医疗保健中提供的牙科咨询工具性能如何,基于计算机的技术已经显示出能够在更短的时间内完成某些任务,并且成本低于使用类似的医疗保健工具来执行相同类型的工作。机器学习在口腔保健中显示出了广泛的优势,例如预测人群中的龋齿。与之前提出的标准龋齿预测方法相比,这项工作强调了使用多种数据源(称为多模态)来提取更多特征并获得准确性能的重要性。使用多模态数据构建的预测模型表现出了有希望的性能,准确率为 90%,F1 得分为 89%,召回率为 90%,精度为 89%。