Takeda Yoshihiro, Yamaguchi Kanetaka, Takahashi Naoto, Nakanishi Yasuhiro, Ochi Morio
Division of Fixed Prosthodontics and Oral Implantology, Department of Oral Rehabilitation, School of Dentistry, Health Sciences University of Hokkaido, Tobetsu 061-0293, Japan.
Advanced Intelligence Technology Center, Sapporo City University, Sapporo 060-0061, Japan.
Healthcare (Basel). 2025 Apr 18;13(8):936. doi: 10.3390/healthcare13080936.
Oral function assessments in hospitals and nursing facilities are mainly performed by nurses and caregivers but are sometimes not properly assessed. As a result, elderly people are not provided with meals appropriate for their masticatory function, increasing the risk of aspiration and other complications. In the present study, we aimed to examine image analysis conditions in order to create an AI model that can easily and objectively screen masticatory function based on occlusal pressure. Sampling was conducted at the Hokkaido University of Health Sciences (Hokkaido, Japan) and the university's affiliated dental clinic in Hokkaido. We collected 241 waveform images of changes in skin shape during chewing over a 20 s test period from 110 participants. Our study used two approaches for image analysis: convolutional neural networks (CNNs) and transfer learning. In the transfer learning analysis, MobileNetV2 and Xception achieved the highest classification accuracy (validation accuracy: 0.673). Therefore, it was determined that analyses of waveform images of changes in skin shape may contribute to the development of a skin change-based screening model as an alternative to the bite pressure test.
医院和护理机构中的口腔功能评估主要由护士和护理人员进行,但有时评估并不恰当。因此,老年人无法获得适合其咀嚼功能的膳食,增加了误吸和其他并发症的风险。在本研究中,我们旨在研究图像分析条件,以创建一种人工智能模型,该模型能够基于咬合压力轻松、客观地筛查咀嚼功能。样本采集于北海道健康科学大学(日本北海道)及其在北海道的大学附属牙科诊所。我们在20秒的测试期内,从110名参与者那里收集了241张咀嚼过程中皮肤形状变化的波形图像。我们的研究使用了两种图像分析方法:卷积神经网络(CNN)和迁移学习。在迁移学习分析中,MobileNetV2和Xception实现了最高的分类准确率(验证准确率:0.673)。因此,确定对皮肤形状变化的波形图像进行分析可能有助于开发一种基于皮肤变化的筛查模型,作为咬合力测试的替代方法。