Biener Gabriel, Malla Tek Narsingh, Schwander Peter, Schmidt Marius
Physics Department, University of Wisconsin-Milwaukee, Milwaukee, WI 53211, USA.
IUCrJ. 2024 May 1;11(Pt 3):405-422. doi: 10.1107/S2052252524002392.
Here, a machine-learning method based on a kinetically informed neural network (NN) is introduced. The proposed method is designed to analyze a time series of difference electron-density maps from a time-resolved X-ray crystallographic experiment. The method is named KINNTREX (kinetics-informed NN for time-resolved X-ray crystallography). To validate KINNTREX, multiple realistic scenarios were simulated with increasing levels of complexity. For the simulations, time-resolved X-ray data were generated that mimic data collected from the photocycle of the photoactive yellow protein. KINNTREX only requires the number of intermediates and approximate relaxation times (both obtained from a singular valued decomposition) and does not require an assumption of a candidate mechanism. It successfully predicts a consistent chemical kinetic mechanism, together with difference electron-density maps of the intermediates that appear during the reaction. These features make KINNTREX attractive for tackling a wide range of biomolecular questions. In addition, the versatility of KINNTREX can inspire more NN-based applications to time-resolved data from biological macromolecules obtained by other methods.
在此,介绍一种基于动力学信息神经网络(NN)的机器学习方法。所提出的方法旨在分析时间分辨X射线晶体学实验中差分电子密度图的时间序列。该方法被命名为KINNTREX(用于时间分辨X射线晶体学的动力学信息NN)。为了验证KINNTREX,模拟了多个复杂度不断增加的现实场景。对于这些模拟,生成了模仿从光活性黄色蛋白光循环收集的数据的时间分辨X射线数据。KINNTREX仅需要中间体的数量和近似弛豫时间(均从奇异值分解获得),并且不需要假设候选机制。它成功地预测了一致的化学动力学机制,以及反应过程中出现的中间体的差分电子密度图。这些特性使KINNTREX在解决广泛的生物分子问题方面具有吸引力。此外,KINNTREX的通用性可以激发更多基于NN的应用来处理通过其他方法获得的生物大分子的时间分辨数据。