Suwardi Ady, Wang FuKe, Xue Kun, Han Ming-Yong, Teo Peili, Wang Pei, Wang Shijie, Liu Ye, Ye Enyi, Li Zibiao, Loh Xian Jun
Institute of Materials Research and Engineering, A*STAR (Agency for Science, Technology and Research), 2 Fusionopolis Way, Innovis, #08-03, Singapore, 138634, Singapore.
Adv Mater. 2022 Jan;34(1):e2102703. doi: 10.1002/adma.202102703. Epub 2021 Oct 7.
Biomaterials is an exciting and dynamic field, which uses a collection of diverse materials to achieve desired biological responses. While there is constant evolution and innovation in materials with time, biomaterials research has been hampered by the relatively long development period required. In recent years, driven by the need to accelerate materials development, the applications of machine learning in materials science has progressed in leaps and bounds. The combination of machine learning with high-throughput theoretical predictions and high-throughput experiments (HTE) has shifted the traditional Edisonian (trial and error) paradigm to a data-driven paradigm. In this review, each type of biomaterial and their key properties and use cases are systematically discussed, followed by how machine learning can be applied in the development and design process. The discussions are classified according to various types of materials used including polymers, metals, ceramics, and nanomaterials, and implants using additive manufacturing. Last, the current gaps and potential of machine learning to further aid biomaterials discovery and application are also discussed.
生物材料是一个令人兴奋且充满活力的领域,它使用各种不同的材料来实现所需的生物学反应。随着时间的推移,材料不断发展和创新,但生物材料研究一直受到所需相对较长开发周期的阻碍。近年来,在加速材料开发需求的推动下,机器学习在材料科学中的应用取得了飞跃式进展。机器学习与高通量理论预测和高通量实验(HTE)的结合,已将传统的爱迪生式(试错)范式转变为数据驱动范式。在本综述中,系统地讨论了每种类型的生物材料及其关键特性和应用案例,随后阐述了机器学习如何应用于开发和设计过程。讨论内容根据所使用的各种材料类型进行分类,包括聚合物、金属、陶瓷和纳米材料,以及使用增材制造的植入物。最后,还讨论了机器学习在进一步辅助生物材料发现和应用方面当前存在的差距和潜力。