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Model Reconstruction from Small-Angle X-Ray Scattering Data Using Deep Learning Methods

机译:使用深度学习方法从小角度X射线散射数据重建模型

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摘要

Small-angle X-ray scattering (SAXS) method is widely used in investigating protein structures in solution, but high-quality 3D model reconstructions are challenging. We present a new algorithm based on a deep learning method for model reconstruction from SAXS data. An auto-encoder for protein 3D models was trained to compress 3D shape information into vectors of a 200-dimensional latent space, and the vectors are optimized using genetic algorithms to build 3D models that are consistent with the scattering data. The program has been tested with experimental SAXS data, demonstrating the capacity and robustness of accurate model reconstruction. Furthermore, the model size information can be optimized using this algorithm, enhancing the automation in model reconstruction directly from SAXS data. The program was implemented using Python with the TensorFlow framework, with source code and webserver available from .
机译:小角度X射线散射(SAXS)方法被广泛用于研究溶液中的蛋白质结构,但是高质量3D模型的重建具有挑战性。我们提出了一种基于深度学习方法的新算法,用于从SAXS数据重建模型。训练了用于蛋白质3D模型的自动编码器,将3D形状信息压缩为200维潜在空间的向量,并使用遗传算法对向量进行了优化,以构建与散射数据一致的3D模型。该程序已经通过实验性SAXS数据进行了测试,证明了精确模型重建的能力和鲁棒性。此外,可以使用此算法优化模型大小信息,从而直接从SAXS数据增强模型重建的自动化。该程序是使用Python和TensorFlow框架实现的,源代码和网络服务器可从下载。

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