Dataset for Machine Learning-Based Prediction and Optimization of As-Extruded Viability in Extrusion-Based 3D Bioprinting
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下载链接:
https://zenodo.org/record/11545356
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资源简介:
The dataset supports the findings presented in the paper "Machine learning-based prediction and optimization framework for as-extruded cell viability in extrusion-based 3D bioprinting."
Sodium alginate viscosity data: "alg_i1g_viscosity_data.zip"
Cross Power Law parameter fitting results: "alg_i1g_viscosity_fittings.zip"
Rheological stability measurement: "alg_i1g_contact_angle_data.zip"
OpenFOAM simulation results: "alg_i1g_simulation_data.zip"
Post-extrusion cell viability results: "cell_viability_data.zip"
Keywords: 3D bioprinting; cell viability; shear stress; numerical analysis; machine learning; alginate
Code availability statementThe scripts used for data analysis, machine learning models, and numerical simulations in this study are available on GitHub at: https://github.com/KORINZ/in-silico-bioink-viability-prediction
创建时间:
2024-09-11



