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基于学习的按需细胞喷射控制用于精确按需细胞打印。

Learning-Based Cell Injection Control for Precise Drop-on-Demand Cell Printing.

机构信息

School of Mechanical Engineering and Automation, Northeastern University, Shenyang, Liaoning, China.

Department of Mechanical Engineering, National University of Singapore, 9 Engineering Drive 1, Singapore, 1197576, Singapore.

出版信息

Ann Biomed Eng. 2018 Sep;46(9):1267-1279. doi: 10.1007/s10439-018-2054-2. Epub 2018 Jun 5.

Abstract

Drop-on-demand (DOD) printing is widely used in bioprinting for tissue engineering because of little damage to cell viability and cost-effectiveness. However, satellite droplets may be generated during printing, deviating cells from the desired position and affecting printing position accuracy. Current control on cell injection in DOD printing is primarily based on trial-and-error process, which is time-consuming and inflexible. In this paper, a novel machine learning technology based on Learning-based Cell Injection Control (LCIC) approach is demonstrated for effective DOD printing control while eliminating satellite droplets automatically. The LCIC approach includes a specific computational fluid dynamics (CFD) simulation model of piezoelectric DOD print-head considering inverse piezoelectric effect, which is used instead of repetitive experiments to collect data, and a multilayer perceptron (MLP) network trained by simulation data based on artificial neural network algorithm, using the well-known classification performance of MLP to optimize DOD printing parameters automatically. The test accuracy of the LCIC method was 90%. With the validation of LCIC method by experiments, satellite droplets from piezoelectric DOD printing are reduced significantly, improving the printing efficiency drastically to satisfy requirements of manufacturing precision for printing complex artificial tissues. The LCIC method can be further used to optimize the structure of DOD print-head and cell behaviors.

摘要

按需滴注 (DOD) 打印在组织工程的生物打印中被广泛应用,因为它对细胞活力的损害较小且具有成本效益。然而,在打印过程中可能会产生卫星液滴,使细胞偏离预期位置,影响打印位置精度。目前 DOD 打印中对细胞注射的控制主要基于反复试验的过程,既耗时又缺乏灵活性。本文提出了一种基于学习的细胞注射控制 (LCIC) 方法的新型机器学习技术,用于在自动消除卫星液滴的同时实现有效的 DOD 打印控制。LCIC 方法包括一个特定的考虑逆压电效应的压电 DOD 打印头计算流体动力学 (CFD) 仿真模型,该模型可用于代替重复实验来收集数据,以及一个基于人工神经网络算法的基于仿真数据训练的多层感知器 (MLP) 网络,利用 MLP 众所周知的分类性能自动优化 DOD 打印参数。LCIC 方法的测试精度为 90%。通过实验验证了 LCIC 方法,显著减少了压电 DOD 打印中的卫星液滴,极大地提高了打印效率,满足了打印复杂人工组织的制造精度要求。LCIC 方法可进一步用于优化 DOD 打印头的结构和细胞行为。

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