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Bayesian Multiobjective Optimisation With Mixed Analytical and Black-Box Functions: Application to Tissue Engineering

机译:混合分析和黑匣子函数的贝叶斯多目标优化:在组织工程中的应用

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Tissue engineering and regenerative medicine looks at improving or restoring biological tissue function in humans and animals. We consider optimising neotissue growth in a three-dimensional scaffold during dynamic perfusion bioreactor culture, in the context of bone tissue engineering. The goal is to choose design variables that optimise two conflicting objectives, first, maximising neotissue growth and, second, minimising operating cost. We make novel extensions to Bayesian multiobjective optimisation in the case of one analytical objective function and one black-box, i.e. simulation based and objective function. The analytical objective represents operating cost while the black-box neotissue growth objective comes from simulating a system of partial differential equations. The resulting multiobjective optimisation method determines the tradeoff between neotissue growth and operating cost. Our method exhibits better data efficiency than genetic algorithms, i.e. the most common approach in the literature, on both the tissue engineering example and standard test functions. The multiobjective optimisation method applies to real-world problems combining black-box models with easy-to-quantify objectives such as cost.
机译:组织工程和再生医学着眼于改善或恢复人和动物的生物组织功能。我们考虑在骨组织工程的背景下,在动态灌注生物反应器培养过程中优化三维支架中新组织的生长。目的是选择能够优化两个相互矛盾的目标的设计变量,第一,最大化新组织的生长,第二,最大限度地降低运营成本。在一个分析目标函数和一个黑匣子的情况下,即基于模拟和目标函数的情况下,我们对贝叶斯多目标优化进行了新颖的扩展。分析目标代表运营成本,而黑匣子新组织生长目标来自模拟偏微分方程组。由此产生的多目标优化方法确定了新组织生长和运营成本之间的权衡。在组织工程实例和标准测试功能上,我们的方法比遗传算法(即文献中最常见的方法)表现出更好的数据效率。多目标优化方法适用于将黑匣子模型与易于量化的目标(例如成本)相结合的现实问题。

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