Department of Biomedical Engineering, University of Colorado, Boulder Colorado 80309, United States.
Department of Electrical, Computer, and Energy Engineering, University of Colorado, Boulder Colorado 80309, United States.
ACS Synth Biol. 2024 Sep 20;13(9):2742-2752. doi: 10.1021/acssynbio.3c00708. Epub 2024 Sep 12.
The design-build-test-learn workflow is pivotal in synthetic biology as it seeks to broaden access to diverse levels of expertise and enhance circuit complexity through recent advancements in automation. The design of complex circuits depends on developing precise models and parameter values for predicting the circuit performance and noise resilience. However, obtaining characterized parameters under diverse experimental conditions is a significant challenge, often requiring substantial time, funding, and expertise. This work compares five computational models of three different genetic circuit implementations of the same logic function to evaluate their relative predictive capabilities. The primary focus is on determining whether simpler models can yield conclusions similar to those of more complex ones and whether certain models offer greater analytical benefits. These models explore the influence of noise, parametrization, and model complexity on predictions of synthetic circuit performance through simulation. The findings suggest that when developing a new circuit without characterized parts or an existing design, any model can effectively predict the optimal implementation by facilitating qualitative comparison of designs' failure probabilities (e.g., higher or lower). However, when characterized parts are available and accurate quantitative differences in failure probabilities are desired, employing a more precise model with characterized parts becomes necessary, albeit requiring additional effort.
设计-构建-测试-学习工作流程在合成生物学中至关重要,因为它试图通过自动化的最新进展,扩大对不同层次专业知识的访问,并提高电路复杂性。复杂电路的设计取决于为预测电路性能和噪声弹性开发精确的模型和参数值。然而,在不同的实验条件下获得特征化的参数是一个重大挑战,通常需要大量的时间、资金和专业知识。这项工作比较了三种不同遗传电路实现相同逻辑功能的五个计算模型,以评估它们的相对预测能力。主要重点是确定简单模型是否可以得出与复杂模型相似的结论,以及某些模型是否提供更大的分析优势。这些模型通过模拟研究了噪声、参数化和模型复杂性对合成电路性能预测的影响。研究结果表明,在开发没有特征部分的新电路或现有设计时,任何模型都可以通过促进设计失败概率的定性比较(例如,更高或更低)来有效地预测最佳实现。然而,当有特征部分并且需要准确的失败概率定量差异时,使用具有特征部分的更精确模型变得必要,尽管需要额外的努力。