Oncu Emir, Usta Ayanoglu Kadriye Yasemin, Ciftci Fatih
Faculty of Engineering, Department of Biomedical Engineering, Fatih Sultan Mehmet Vakıf University, Istanbul, Turkey; BioriginAI Research Group, Department of Biomedical Engineering, Fatih Sultan Mehmet Vakif University, Istanbul, 34015, Turkey.
Department of Tropiko Software and Consultancy, Istanbul, Turkey.
Comput Biol Med. 2025 Jun;192(Pt A):110281. doi: 10.1016/j.compbiomed.2025.110281. Epub 2025 Apr 29.
Bioprinting enables the creation of complex tissue scaffolds, which are vital for tissue engineering. However, predicting scaffold biocompatibility before fabrication remains a critical challenge, potentially leading to inefficiencies and resource wastage. Artificial Intelligence (AI) models, particularly Artificial Neural Networks (ANNs) and Convolutional Neural Networks (CNNs), offer promising predictive capabilities to address this issue. This study aims to compare the performance of ANN and CNN models to identify the most suitable approach for predicting scaffold biocompatibility using PrusaSlicer-generated designs.
Fifteen key design parameters influencing scaffold biocompatibility were modelled using ANN, while scaffold images were analyzed using CNN. PrusaSlicer was employed in designing scaffolds, with parameters influencing biocompatibility predictions. ANN models analyzed these parameters, while CNN models processed scaffold images. Data was standardized, and models were trained on an 80/20 split dataset. Performance evaluation metrics included accuracy, precision, recall, F1-Scores, and confusion matrices. Experimental validation involved biocompatibility tests on five scaffolds.
ANN model with 20 neurons and 100 epochs earned perfect (1.0) scores in F1-Score, Precision, and Recall, indicating the best possible model performance. A batch size of 56 for the Convolutional Neural Network model demonstrated balance in F1-Score (0.87), Precision (0.88), and Recall (0.9). Five scaffold tissues were tested for biocompatibility using these two models. ANN model predicted 5 scaffold tissues' biocompatibilities correctly. While the ANN model accurately predicted biocompatibilities for all five scaffold samples, the CNN model misclassified one sample.
This study demonstrates that ANN models are superior to CNN models in predicting scaffold biocompatibility from numerical design parameters. The findings underscore the value of ANNs for structured data in bioprinting, enhancing prediction accuracy and efficiency. These insights can accelerate advancements in tissue engineering and personalized medicine by reducing costs and improving success rates in bioprinting applications. Future work will focus on addressing overfitting challenges and optimizing the models to further enhance their robustness and predictive capabilities.
生物打印能够创建复杂的组织支架,这对组织工程至关重要。然而,在制造前预测支架的生物相容性仍然是一项关键挑战,可能导致效率低下和资源浪费。人工智能(AI)模型,特别是人工神经网络(ANN)和卷积神经网络(CNN),具有很有前景的预测能力来解决这个问题。本研究旨在比较ANN和CNN模型的性能,以确定使用PrusaSlicer生成的设计来预测支架生物相容性的最合适方法。
使用ANN对影响支架生物相容性的15个关键设计参数进行建模,同时使用CNN分析支架图像。在设计支架时采用了PrusaSlicer,其参数会影响生物相容性预测。ANN模型分析这些参数,而CNN模型处理支架图像。数据进行了标准化处理,模型在80/20分割数据集上进行训练。性能评估指标包括准确率、精确率、召回率、F1分数和混淆矩阵。实验验证包括对五个支架进行生物相容性测试。
具有20个神经元和100个轮次的ANN模型在F1分数、精确率和召回率方面获得了完美(1.0)分数,表明模型性能最佳。卷积神经网络模型的批量大小为56时,F1分数(0.87)、精确率(0.88)和召回率(0.9)表现出平衡。使用这两个模型对五个支架组织进行了生物相容性测试。ANN模型正确预测了5个支架组织的生物相容性。虽然ANN模型准确预测了所有五个支架样本的生物相容性,但CNN模型将一个样本误分类。
本研究表明,在从数值设计参数预测支架生物相容性方面,ANN模型优于CNN模型。研究结果强调了人工神经网络在生物打印中处理结构化数据的价值,提高了预测准确性和效率。这些见解可以通过降低生物打印应用中的成本和提高成功率,加速组织工程和个性化医学的进展。未来的工作将专注于解决过拟合挑战并优化模型,以进一步提高其稳健性和预测能力。