A practical machine learning approach for predicting the quality of 3D (bio)printed scaffolds.

IF 8.2 2区 医学 Q1 ENGINEERING, BIOMEDICAL
Saeed Rafieyan, Elham Ansari, Ebrahim Vasheghani-Farahani
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引用次数: 0

Abstract

3D (Bio)printing is a highly effective method for fabricating tissue engineering scaffolds, renowned for their exceptional precision and control. Artificial intelligence (AI) has become a crucial technology in this field, capable of learning and replicating complex patterns that surpass human capabilities. However, the integration of AI in tissue engineering is often hampered by the lack of comprehensive and reliable data. This study addresses these challenges by providing one of the most extensive datasets on 3D-printed scaffolds. It provides the most comprehensive open-source dataset and employs various AI techniques, from unsupervised to supervised learning. This dataset includes detailed information on 1171 scaffolds, featuring a variety of biomaterials and concentrations-including 60 biomaterials such as natural and synthesized biomaterials, crosslinkers, enzymes, etc.-along with 49 cell lines, cell densities, and different printing conditions. We used over 40 machine learning and deep learning algorithms, tuning their hyperparameters to reveal hidden patterns and predict cell response, printability, and scaffold quality. The clustering analysis using KMeans identified five distinct ones. In classification tasks, algorithms such as XGBoost, Gradient Boosting, Extra Trees Classifier, Random Forest Classifier, and LightGBM demonstrated superior performance, achieving higher accuracy and F1 scores. A fully connected neural network with six hidden layers from scratch was developed, precisely tuning its hyperparameters for accurate predictions. The developed dataset and the associated code are publicly available onhttps://github.com/saeedrafieyan/MLATEto promote future research.

预测三维(生物)打印支架质量的实用机器学习方法。
三维(生物)打印是制造组织工程支架的一种高效方法,以其卓越的精确性和可控性而闻名。人工智能(AI)已成为这一领域的关键技术,它能够学习和复制超越人类能力的复杂模式。然而,由于缺乏全面可靠的数据,人工智能在组织工程中的应用往往受到阻碍。本研究通过提供有关 3D 打印支架的最广泛的数据集之一来应对这些挑战。它提供了最全面的开源数据集,并采用了从无监督学习到有监督学习的各种人工智能技术。该数据集包含 1,171 个支架的详细信息,具有各种生物材料和浓度,包括天然和合成生物材料、交联剂、酶等 60 种生物材料,以及 49 种细胞系、细胞密度和不同的打印条件。我们使用了 40 多种机器学习和深度学习算法,通过调整其超参数来揭示隐藏模式,并预测细胞反应、可印刷性和支架质量。使用 KMeans 进行的聚类分析确定了五种不同的模式。在分类任务中,XGBoost、梯度提升、额外树分类器、随机森林分类器和 LightGBM 等算法表现优异,获得了更高的准确率和 F1 分数。我们从零开始开发了一个有六个隐藏层的全连接神经网络,并对其超参数进行了精确调整,以获得准确的预测结果。为促进未来研究,开发的数据集和相关代码可在 www.github.com/saeedrafieyan/MLATE. 上公开获取。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biofabrication
Biofabrication ENGINEERING, BIOMEDICAL-MATERIALS SCIENCE, BIOMATERIALS
CiteScore
17.40
自引率
3.30%
发文量
118
审稿时长
2 months
期刊介绍: Biofabrication is dedicated to advancing cutting-edge research on the utilization of cells, proteins, biological materials, and biomaterials as fundamental components for the construction of biological systems and/or therapeutic products. Additionally, it proudly serves as the official journal of the International Society for Biofabrication (ISBF).
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