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MLATE:用于预测心脏组织工程支架上细胞行为的机器学习

MLATE: Machine learning for predicting cell behavior on cardiac tissue engineering scaffolds.

作者信息

Rafieyan Saeed, Vasheghani-Farahani Ebrahim, Baheiraei Nafiseh, Keshavarz Hamidreza

机构信息

Biomedical Engineering Division, Faculty of Chemical Engineering, Tarbiat Modares University, P.O. Box 14115-143, Tehran, Iran.

Biomedical Engineering Division, Faculty of Chemical Engineering, Tarbiat Modares University, P.O. Box 14115-143, Tehran, Iran.

出版信息

Comput Biol Med. 2023 May;158:106804. doi: 10.1016/j.compbiomed.2023.106804. Epub 2023 Mar 21.

Abstract

Cardiovascular disease is one of the leading causes of mortality worldwide and is responsible for millions of deaths annually. One of the most promising approaches to deal with this problem, which has spread recently, is cardiac tissue engineering (CTE). Many researchers have tried developing scaffolds with different materials, cell lines, and fabrication methods to help regenerate heart tissue. Machine learning (ML) is one of the hottest topics in science and technology, revolutionizing many fields and changing our perspective on solving problems. As a result of using ML, some scientific issues have been resolved, including protein-folding, a challenging problem in biology that remained unsolved for 50 years. However, it is not well addressed in tissue engineering. An AI-based software was developed by our group called MLATE (Machine Learning Applications in Tissue Engineering) to tackle tissue engineering challenges, which highly depend on conducting costly and time-consuming experiments. For the first time, to the best of our knowledge, a CTE scaffold dataset was created by collecting specifications from the literature, including different materials, cell lines, and fabrication methods commonly used in CTE scaffold development. These specifications were used as variables in the study. Then, the CTE scaffolds were rated based on cell behaviors such as cell viability, growth, proliferation, and differentiation on the scaffold on a scale of 0-3. These ratings were considered a function of the variables in the gathered dataset. It should be stated that this study was merely based on information available in the literature. Then, twenty-eight ML algorithms were applied to determine the most effective one for predicting cell behavior on CTE scaffolds fabricated by different materials, compositions, and methods. The results indicated the high performance of XGBoost with an accuracy of 87%. Also, by implementing ensemble learning algorithms and using five algorithms with the best performance, an accuracy of 93% with the AdaBoost Classifier and Voting Classifier was achieved. Finally, the open-source software developed in this study was made available for everyone by publishing the best model along with a step-by-step guide to using it online at: https://github.com/saeedrafieyan/MLATE.

摘要

心血管疾病是全球主要死因之一,每年导致数百万人死亡。近年来兴起的最有前景的应对这一问题的方法之一是心脏组织工程(CTE)。许多研究人员尝试用不同材料、细胞系和制造方法开发支架,以帮助再生心脏组织。机器学习(ML)是科技领域最热门的话题之一,它正在革新许多领域,并改变我们解决问题的视角。由于使用了ML,一些科学问题得到了解决,包括蛋白质折叠问题,这一生物学上具有挑战性的问题50年来一直未得到解决。然而,在组织工程中它并未得到很好的解决。我们团队开发了一个名为MLATE(机器学习在组织工程中的应用)的基于人工智能的软件,以应对组织工程挑战,这些挑战高度依赖于进行成本高昂且耗时的实验。据我们所知,首次通过从文献中收集规格信息创建了一个CTE支架数据集,包括CTE支架开发中常用的不同材料、细胞系和制造方法。这些规格信息在研究中用作变量。然后,根据细胞在支架上的行为,如细胞活力、生长、增殖和分化,对CTE支架进行0至3级评分。这些评分被视为所收集数据集中变量的函数。应该指出的是,本研究仅基于文献中的可用信息。然后,应用了28种ML算法来确定预测不同材料、成分和方法制造的CTE支架上细胞行为的最有效算法。结果表明,XGBoost的性能很高,准确率为87%。此外,通过实施集成学习算法并使用性能最佳的五种算法,AdaBoost分类器和投票分类器的准确率达到了93%。最后,通过在https://github.com/saeedrafieyan/MLATE上发布最佳模型以及在线使用它的分步指南,将本研究中开发的开源软件提供给了所有人。

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