通过机器学习绘制生物材料的复杂性。

IF 3.5 3区 医学 Q3 CELL & TISSUE ENGINEERING
Tissue Engineering Part A Pub Date : 2024-10-01 Epub Date: 2024-09-12 DOI:10.1089/ten.TEA.2024.0067
Eman Ahmed, Prajakatta Mulay, Cesar Ramirez, Gabriela Tirado-Mansilla, Eugene Cheong, Adam J Gormley
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引用次数: 0

摘要

生物材料通常具有微妙的特性,这些特性最终会影响其定制性能。鉴于这种细微的结构-功能行为,一次一个实验或实验设计(DOE)方法的标准科学方法在发现复杂生物材料方面效率很低。最近,高通量实验与机器学习方法已经成熟,超出了专家用户的范围,让不同背景的科学家和工程师都能使用这些强大的数据科学工具。因此,我们现在有机会战略性地利用来自高通量实验的所有可用数据来训练有效的模型,并绘制生物材料的结构-功能行为图,从而发现生物材料。在本文中,我们将讨论这一必要的转变,即以数据为驱动确定生物材料的结构-功能特性,并重点介绍如何利用机器学习识别组织工程、基因递送、药物递送、蛋白质稳定和防污材料中生物材料的物理化学线索。我们还讨论了与机器学习相结合的数据挖掘方法,以绘制生物材料功能图,从而减轻实验方法的负担,加快生物材料的发现。最终,利用机器学习的优势将加速最佳生物材料设计的发现和开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mapping Biomaterial Complexity by Machine Learning.

Biomaterials often have subtle properties that ultimately drive their bespoke performance. Given this nuanced structure-function behavior, the standard scientific approach of one experiment at a time or design of experiment methods is largely inefficient for the discovery of complex biomaterials. More recently, high-throughput experimentation coupled with machine learning methods has matured beyond expert users allowing scientists and engineers from diverse backgrounds to access these powerful data science tools. As a result, we now have the opportunity to strategically utilize all available data from high-throughput experiments to train efficacious models and map the structure-function behavior of biomaterials for their discovery. Herein, we discuss this necessary shift to data-driven determination of structure-function properties of biomaterials as we highlight how machine learning is leveraged in identifying physicochemical cues for biomaterials in tissue engineering, gene delivery, drug delivery, protein stabilization, and antifouling materials. We also discuss data-mining approaches that are coupled with machine learning to map biomaterial functions that reduce the load on experimental approaches for faster biomaterial discovery. Ultimately, harnessing the prowess of machine learning will lead to accelerated discovery and development of optimal biomaterial designs.

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来源期刊
Tissue Engineering Part A
Tissue Engineering Part A Chemical Engineering-Bioengineering
CiteScore
9.20
自引率
2.40%
发文量
163
审稿时长
3 months
期刊介绍: Tissue Engineering is the preeminent, biomedical journal advancing the field with cutting-edge research and applications that repair or regenerate portions or whole tissues. This multidisciplinary journal brings together the principles of engineering and life sciences in the creation of artificial tissues and regenerative medicine. Tissue Engineering is divided into three parts, providing a central forum for groundbreaking scientific research and developments of clinical applications from leading experts in the field that will enable the functional replacement of tissues.
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