KINNTREX: a neural network to unveil protein mechanisms from time-resolved X-ray crystallography

IF 2.9 2区 材料科学 Q2 CHEMISTRY, MULTIDISCIPLINARY
IUCrJ Pub Date : 2024-05-01 DOI:10.1107/S2052252524002392
Gabriel Biener , Tek Narsingh Malla , Peter Schwander , Marius Schmidt , T. Ishikawa (Editor)
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引用次数: 0

Abstract

A kinetics-informed neural-network method (KINNTREX) is designed to analyze a time series of difference maps from a time-resolved X-ray crystallographic experiment.

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.

KINNTREX:从时间分辨 X 射线晶体学揭示蛋白质机制的神经网络。
本文介绍了一种基于动力学神经网络(NN)的机器学习方法。该方法旨在分析时间分辨 X 射线晶体学实验中的差分电子密度图时间序列。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神经网络)。为了验证 KINNTREX,我们模拟了多种复杂程度不断提高的实际情况。在模拟过程中,生成了时间分辨 X 射线数据,这些数据是模拟从光活性黄色蛋白质的光周期中收集的。KINNTREX 只需要中间产物的数量和近似弛豫时间(二者均从奇异值分解中获得),而不需要假设候选机制。它能成功预测出一致的化学动力学机制,以及反应过程中出现的中间产物的差异电子密度图。这些特点使得 KINNTREX 在解决广泛的生物分子问题方面具有吸引力。此外,KINNTREX 的多功能性还能激发更多基于 NN 的应用,将其他方法获得的生物大分子时间分辨数据应用到 KINNTREX 中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IUCrJ
IUCrJ CHEMISTRY, MULTIDISCIPLINARYCRYSTALLOGRAPH-CRYSTALLOGRAPHY
CiteScore
7.50
自引率
5.10%
发文量
95
审稿时长
10 weeks
期刊介绍: IUCrJ is a new fully open-access peer-reviewed journal from the International Union of Crystallography (IUCr). The journal will publish high-profile articles on all aspects of the sciences and technologies supported by the IUCr via its commissions, including emerging fields where structural results underpin the science reported in the article. Our aim is to make IUCrJ the natural home for high-quality structural science results. Chemists, biologists, physicists and material scientists will be actively encouraged to report their structural studies in IUCrJ.
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