首页> 外文期刊>Frontiers in Bioengineering and Biotechnology >Engineering Tissue Fabrication With Machine Intelligence: Generating a Blueprint for Regeneration
【24h】

Engineering Tissue Fabrication With Machine Intelligence: Generating a Blueprint for Regeneration

机译:用机器智能制造工程组织制造:为再生产生蓝图

获取原文
           

摘要

Regenerating lost or damaged tissue is the primary goal of Tissue Engineering. 3D bioprinting technologies have been widely applied in many research areas of tissue regeneration and disease modeling with unprecedented spatial resolution and tissue-like complexity. However, the extraction of tissue architecture and the generation of high-resolution blueprints are challenging tasks for tissue regeneration. Traditionally, such spatial information is obtained from a collection of microscopic images and then combined together to visualize regions of interest. To fabricate such engineered tissues, rendered microscopic images are transformed to code to inform a 3D bioprinting process. If this process is augmented with data-driven approaches and streamlined with machine intelligence, identification of an optimal blueprint can become an achievable task for functional tissue regeneration. In this review, our perspective is guided by an emerging paradigm to generate a blueprint for regeneration with machine intelligence. First, we reviewed recent articles with respect to our perspective for machine intelligence-driven information retrieval and fabrication. After briefly introducing recent trends in information retrieval methods from publicly available data, our discussion is focused on recent works that use machine intelligence to discover tissue architectures from imaging and spectral data. Then, our focus is on utilizing optimization approaches to increase print fidelity and enhance biomimicry with machine learning (ML) strategies to acquire a blueprint ready for 3D bioprinting.
机译:再生丢失或受损的组织是组织工程的主要目标。 3D BioPlint Technologies已广泛应用于组织再生和疾病建模的许多研究领域,以前所未有的空间分辨率和组织状复杂性。然而,组织架构的提取和高分辨率蓝图的产生是对组织再生的具有挑战性任务。传统上,这种空间信息是从微观图像的集合获得的,然后组合在一起以可视化感兴趣的区域。为了制造这种工程化组织,将呈现的微观图像变换为代码以通知3D生物监测过程。如果此过程以数据驱动的方法增强并用机器智能流线型,则识别最佳蓝图可以成为功能组织再生的可实现任务。在本次审查中,我们的观点是由新兴范式引导的,以产生具有机器智能的再生的蓝图。首先,我们回顾了最近关于我们对机器智能驱动信息检索和制造的角度的看法。在公开可用数据中简要介绍了信息检索方法中的最新趋势之后,我们的讨论将集中在最近的作品中,这些作品使用机器智能从成像和光谱数据发现组织架构。然后,我们的重点是利用优化方法来提高印刷保真度,并通过机器学习(ML)策略来增强生物机制,以获得为3D生物印刷的蓝图准备。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号