Department of Diagnostic Imaging, Jagiellonian University Medical College, 19 Kopernika Street, 31-501, Cracow, Poland.
Institute of Informatics, Faculty of Automata Control, Electronics, and Computer Science, Silesian University of Technology, Akademicka 16, 44-100, Gliwice, Poland.
Oral Radiol. 2020 Jul;36(3):275-287. doi: 10.1007/s11282-018-0354-8. Epub 2018 Nov 9.
Dental caries are caused by tooth demineralization due to bacterial plaque formation. However, the resulting lesions are often discrete and thus barely recognizable in intraoral radiography images. Therefore, more advanced detection techniques are in great demand among dentists and radiographers. This study was performed to evaluate the performance of texture feature maps in the recognition of discrete demineralization related to caries plaque formation.
Digital intraoral radiology image analysis protocols incorporating first-order features (FOF), co-occurrence matrices, gray tone difference matrices, run-length matrices (RLM), local binary patterns (LBP), and k-means clustering (CLU) were used to transform the digital intraoral radiology images of 10 patients with confirmed caries, which were retrospectively reviewed in a dental clinic. The performance of the resulting texture feature maps was compared with that of radiographic images by radiologists and dental specialists.
Significantly improved detection of caries spots was achieved by employing the CLU and FOF texture feature maps. The caries-affected area with sharp margins was well defined using the CLU approach. A pseudo-three-dimensional effect was observed in outlining the demineralization zones inside the cavity with the FOF 5 protocol. In contrast, the LBP and RLM techniques produced less satisfactory results with unsharp edges and less detailed depiction of the lesions.
This study illustrated the applicability of texture feature maps to the recognition of demineralized spots on the tooth surface debilitated by caries and identified the best performing techniques.
龋齿是由细菌斑块形成导致的牙齿脱矿引起的。然而,由此产生的病变通常是离散的,因此在口腔内放射线照相图像中几乎无法识别。因此,牙医和放射线技师对更先进的检测技术有很大的需求。本研究旨在评估纹理特征图在识别与龋齿斑块形成相关的离散脱矿方面的性能。
使用包含一阶特征 (FOF)、共生矩阵、灰度差矩阵、行程长度矩阵 (RLM)、局部二值模式 (LBP) 和 K-均值聚类 (CLU) 的数字口腔放射学图像分析协议来转换 10 名经确认患有龋齿的患者的数字口腔放射学图像,这些图像在牙科诊所中进行了回顾性审查。然后由放射线医师和口腔专家比较纹理特征图的性能与放射线图像的性能。
通过采用 CLU 和 FOF 纹理特征图,可以显著提高龋齿斑的检测效果。CLU 方法可以很好地定义具有锐利边缘的龋齿影响区域。FOF5 协议可以在腔内描绘脱矿区时产生伪三维效果。相比之下,LBP 和 RLM 技术的边缘不清晰,病变的描述不够详细,效果不太令人满意。
本研究说明了纹理特征图在识别受龋齿削弱的牙齿表面脱矿斑点方面的适用性,并确定了表现最佳的技术。