Department of Materials Science and Engineering, University of Washington, United States.
Department of Materials Science and Engineering, University of Washington, United States; Department of Restorative Dentistry, School of Dentistry, University of Washington, United States; Department of Oral Health Sciences, School of Dentistry, University of Washington, United States.
Dent Mater. 2021 Dec;37(12):1761-1771. doi: 10.1016/j.dental.2021.09.006. Epub 2021 Oct 6.
Understanding aging of tooth tissues is critical to the development of patient-centric oral healthcare. Yet, the traditional methods for analyzing the composition-structure-property relationships of hard tissues have limitations when considering aging and other factors.
To apply unsupervised machine learning tools to pursue an understanding of relationships between the composition and mechanical behavior of aging enamel.
Molar teeth were collected from primary (age ≤ 8), young adult (24 ≤ age ≤ 46) and old adult (55 ≤ age) donors. The hardness and elastic modulus were quantified using nanoindentation as a function of distance from the Dentin Enamel Junction (DEJ) within the cervical, cuspal and inter-cuspal regions of the enamel crown. Similarly, a co-located analysis of the chemical composition and structure was performed using Raman spectroscopy. A Self-Organizing Maps (SOMs) algorithm was implemented to identify multi-dimensional composition-property relationships.
The hardness and elastic modulus are positively correlated to crystallinity and negatively correlated with carbonate substitution. Furthermore, the effects from fluoridation on the age-dependent properties of enamel is non-linear and depends on its location. The contributions of fluoridation to the enamel properties are different in the cervical and non-cervical regions and appear to be unique within primary and senior adult teeth.
Based on the findings, unsupervised learning methods can reveal complicated non-linear structure-property relationships in tooth tissues and help to understand the materials science of aging and its consequences.
理解牙齿组织的衰老对于开发以患者为中心的口腔保健至关重要。然而,传统的分析硬组织组成-结构-性能关系的方法在考虑衰老和其他因素时存在局限性。
应用无监督机器学习工具来了解衰老釉质的组成与机械性能之间的关系。
从初级(年龄≤8 岁)、年轻成人(24≤年龄≤46 岁)和老年成人(55≤年龄)供体中收集磨牙。使用纳米压痕法在釉质牙本质交界处(DEJ)附近的牙颈部、牙尖和牙尖间区域内定量测量硬度和弹性模量,作为距离的函数。同样,对化学成分和结构进行共定位分析,使用拉曼光谱法。实施自组织映射(SOM)算法来识别多维组成-性能关系。
硬度和弹性模量与结晶度呈正相关,与碳酸盐取代呈负相关。此外,氟化物对釉质年龄相关性能的影响是非线性的,并且取决于其位置。氟化物对釉质性能的贡献在牙颈部和非牙颈部区域不同,并且在初级和成人牙齿中似乎是独特的。
根据研究结果,无监督学习方法可以揭示牙齿组织中复杂的非线性结构-性能关系,并有助于理解衰老及其后果的材料科学。