Shapira Gilad, Marcus-Kalish Mira, Amsalem Oren, Van Geit Werner, Segev Idan, Steinberg David M
Department of Statistics and Operations Research, Tel Aviv University, Tel Aviv, Israel.
Division of Endocrinology, Beth Israel Deaconess Medical Center, Harvard Medical School, Harvard University, Boston, MA, United States.
Front Big Data. 2022 Mar 25;5:789962. doi: 10.3389/fdata.2022.789962. eCollection 2022.
Many scientific systems are studied using computer codes that simulate the phenomena of interest. Computer simulation enables scientists to study a broad range of possible conditions, generating large quantities of data at a faster rate than the laboratory. Computer models are widespread in neuroscience, where they are used to mimic brain function at different levels. These models offer a variety of new possibilities for the neuroscientist, but also numerous challenges, such as: where to sample the input space for the simulator, how to make sense of the data that is generated, and how to estimate unknown parameters in the model. Statistical emulation can be a valuable complement to simulator-based research. Emulators are able to mimic the simulator, often with a much smaller computational burden and they are especially valuable for parameter estimation, which may require many simulator evaluations. This work compares different statistical models that address these challenges, and applies them to simulations of neocortical L2/3 large basket cells, created and run with the NEURON simulator in the context of the European Human Brain Project. The novelty of our approach is the use of fast empirical emulators, which have the ability to accelerate the optimization process for the simulator and to identify which inputs (in this case, different membrane ion channels) are most influential in affecting simulated features. These contributions are complementary, as knowledge of the important features can further improve the optimization process. Subsequent research, conducted after the process is completed, will gain efficiency by focusing on these inputs.
许多科学系统是通过计算机代码来研究的,这些代码模拟感兴趣的现象。计算机模拟使科学家能够研究广泛的可能条件,比实验室更快地生成大量数据。计算机模型在神经科学中广泛应用,用于在不同层面模拟大脑功能。这些模型为神经科学家提供了各种新的可能性,但也带来了许多挑战,例如:模拟器的输入空间在哪里采样,如何理解生成的数据,以及如何估计模型中的未知参数。统计仿真可以成为基于模拟器研究的有价值补充。仿真器能够模拟模拟器,通常计算负担要小得多,并且对于可能需要多次模拟器评估的参数估计尤其有价值。这项工作比较了应对这些挑战的不同统计模型,并将它们应用于新皮质L2/3大篮状细胞的模拟,这些模拟是在欧洲人类大脑计划的背景下使用NEURON模拟器创建和运行的。我们方法的新颖之处在于使用快速经验仿真器,它能够加速模拟器的优化过程,并确定哪些输入(在这种情况下,不同的膜离子通道)对影响模拟特征最具影响力。这些贡献是互补的,因为对重要特征的了解可以进一步改进优化过程。在过程完成后进行的后续研究,通过关注这些输入将提高效率。