Multi-Objective Optimization Design through Machine Learning for Drop-on-Demand Bioprinting

Drop-on-demand (DOD) bioprinting has been widely used in tissue engineering due to its high-throughput efficiency and cost effectiveness. However, this type of bioprinting involves challenges such as satellite generation, too-large droplet generation, and too-low droplet speed. These challenges redu...

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Main Authors: Jia Shi, Jinchun Song, Bin Song, Wen F. Lu
Format: Article
Language:English
Published: Elsevier 2019-06-01
Series:Engineering
Online Access:http://www.sciencedirect.com/science/article/pii/S2095809918310105
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spelling doaj-6a32d0c57bf8492d804bd0eb7236f3d72020-11-24T23:52:09ZengElsevierEngineering2095-80992019-06-0153586593Multi-Objective Optimization Design through Machine Learning for Drop-on-Demand BioprintingJia Shi0Jinchun Song1Bin Song2Wen F. Lu3School of Mechanical Engineering and Automation, Northeastern University, Shenyang 110819, China; Department of Mechanical Engineering, National University of Singapore, Singapore 119077, SingaporeSchool of Mechanical Engineering and Automation, Northeastern University, Shenyang 110819, ChinaSingapore Institute of Manufacturing Technology, Singapore 637662, SingaporeDepartment of Mechanical Engineering, National University of Singapore, Singapore 119077, Singapore; Corresponding author.Drop-on-demand (DOD) bioprinting has been widely used in tissue engineering due to its high-throughput efficiency and cost effectiveness. However, this type of bioprinting involves challenges such as satellite generation, too-large droplet generation, and too-low droplet speed. These challenges reduce the stability and precision of DOD printing, disorder cell arrays, and hence generate further structural errors. In this paper, a multi-objective optimization (MOO) design method for DOD printing parameters through fully connected neural networks (FCNNs) is proposed in order to solve these challenges. The MOO problem comprises two objective functions: to develop the satellite formation model with FCNNs; and to decrease droplet diameter and increase droplet speed. A hybrid multi-subgradient descent bundle method with an adaptive learning rate algorithm (HMSGDBA), which combines the multi-subgradient descent bundle (MSGDB) method with Adam algorithm, is introduced in order to search for the Pareto-optimal set for the MOO problem. The superiority of HMSGDBA is demonstrated through comparative studies with the MSGDB method. The experimental results show that a single droplet can be printed stably and the droplet speed can be increased from 0.88 to 2.08 m·s−1 after optimization with the proposed method. The proposed method can improve both printing precision and stability, and is useful in realizing precise cell arrays and complex biological functions. Furthermore, it can be used to obtain guidelines for the setup of cell-printing experimental platforms. Keywords: Drop-on-demand printing, Inkjet printing, Gradient descent multi-objective optimization, Fully connected neural networkshttp://www.sciencedirect.com/science/article/pii/S2095809918310105
collection DOAJ
language English
format Article
sources DOAJ
author Jia Shi
Jinchun Song
Bin Song
Wen F. Lu
spellingShingle Jia Shi
Jinchun Song
Bin Song
Wen F. Lu
Multi-Objective Optimization Design through Machine Learning for Drop-on-Demand Bioprinting
Engineering
author_facet Jia Shi
Jinchun Song
Bin Song
Wen F. Lu
author_sort Jia Shi
title Multi-Objective Optimization Design through Machine Learning for Drop-on-Demand Bioprinting
title_short Multi-Objective Optimization Design through Machine Learning for Drop-on-Demand Bioprinting
title_full Multi-Objective Optimization Design through Machine Learning for Drop-on-Demand Bioprinting
title_fullStr Multi-Objective Optimization Design through Machine Learning for Drop-on-Demand Bioprinting
title_full_unstemmed Multi-Objective Optimization Design through Machine Learning for Drop-on-Demand Bioprinting
title_sort multi-objective optimization design through machine learning for drop-on-demand bioprinting
publisher Elsevier
series Engineering
issn 2095-8099
publishDate 2019-06-01
description Drop-on-demand (DOD) bioprinting has been widely used in tissue engineering due to its high-throughput efficiency and cost effectiveness. However, this type of bioprinting involves challenges such as satellite generation, too-large droplet generation, and too-low droplet speed. These challenges reduce the stability and precision of DOD printing, disorder cell arrays, and hence generate further structural errors. In this paper, a multi-objective optimization (MOO) design method for DOD printing parameters through fully connected neural networks (FCNNs) is proposed in order to solve these challenges. The MOO problem comprises two objective functions: to develop the satellite formation model with FCNNs; and to decrease droplet diameter and increase droplet speed. A hybrid multi-subgradient descent bundle method with an adaptive learning rate algorithm (HMSGDBA), which combines the multi-subgradient descent bundle (MSGDB) method with Adam algorithm, is introduced in order to search for the Pareto-optimal set for the MOO problem. The superiority of HMSGDBA is demonstrated through comparative studies with the MSGDB method. The experimental results show that a single droplet can be printed stably and the droplet speed can be increased from 0.88 to 2.08 m·s−1 after optimization with the proposed method. The proposed method can improve both printing precision and stability, and is useful in realizing precise cell arrays and complex biological functions. Furthermore, it can be used to obtain guidelines for the setup of cell-printing experimental platforms. Keywords: Drop-on-demand printing, Inkjet printing, Gradient descent multi-objective optimization, Fully connected neural networks
url http://www.sciencedirect.com/science/article/pii/S2095809918310105
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AT jinchunsong multiobjectiveoptimizationdesignthroughmachinelearningfordropondemandbioprinting
AT binsong multiobjectiveoptimizationdesignthroughmachinelearningfordropondemandbioprinting
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