Machine Learning in Predicting Printable Biomaterial Formulations for Direct Ink Writing

Author:

Chen Hongyi12ORCID,Liu Yuanchang1,Balabani Stavroula13,Hirayama Ryuji2,Huang Jie1ORCID

Affiliation:

1. Department of Mechanical Engineering, University College London, London, UK.

2. Department of Computer Science, University College London, London, UK.

3. Wellcome-EPSRC Centre for Interventional Surgical Sciences (WEISS), University College London, London, UK.

Abstract

Three-dimensional (3D) printing is emerging as a transformative technology for biomedical engineering. The 3D printed product can be patient-specific by allowing customizability and direct control of the architecture. The trial-and-error approach currently used for developing the composition of printable inks is time- and resource-consuming due to the increasing number of variables requiring expert knowledge. Artificial intelligence has the potential to reshape the ink development process by forming a predictive model for printability from experimental data. In this paper, we constructed machine learning (ML) algorithms including decision tree, random forest (RF), and deep learning (DL) to predict the printability of biomaterials. A total of 210 formulations including 16 different bioactive and smart materials and 4 solvents were 3D printed, and their printability was assessed. All ML methods were able to learn and predict the printability of a variety of inks based on their biomaterial formulations. In particular, the RF algorithm has achieved the highest accuracy (88.1%), precision (90.6%), and F1 score (87.0%), indicating the best overall performance out of the 3 algorithms, while DL has the highest recall (87.3%). Furthermore, the ML algorithms have predicted the printability window of biomaterials to guide the ink development. The printability map generated with DL has finer granularity than other algorithms. ML has proven to be an effective and novel strategy for developing biomaterial formulations with desired 3D printability for biomedical engineering applications.

Publisher

American Association for the Advancement of Science (AAAS)

Subject

Multidisciplinary

Reference72 articles.

1. 3D printing in biomedical engineering: Processes, materials, and applications;Lai J;Appl Phys Rev,2021

2. 3D bioprinting of tissues and organs

3. The global rise of 3D printing during the COVID-19 pandemic;Choong YYC;Nat Rev Mater,2020

4. Jariwala SH, Lewis GS, Bushman ZJ, Adair JH, Donahue HJ. 3D printing of personalized artificial bone scaffolds, 3D Print Addit Manuf. 2015;2(2):56–64.

5. Direct ink writing technology (3D printing) of graphene-based ceramic nanocomposites: A review;Pinargote N;Nano,2020

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