Evaluation of the performance of classification algorithms for XFEL single-particle imaging data

IUCrJ. 2019 Feb 28;6(Pt 2):331-340. doi: 10.1107/S2052252519001854. eCollection 2019 Mar 1.

Abstract

Using X-ray free-electron lasers (XFELs), it is possible to determine three-dimensional structures of nanoscale particles using single-particle imaging methods. Classification algorithms are needed to sort out the single-particle diffraction patterns from the large amount of XFEL experimental data. However, different methods often yield inconsistent results. This study compared the performance of three classification algorithms: convolutional neural network, graph cut and diffusion map manifold embedding methods. The identified single-particle diffraction data of the PR772 virus particles were assembled in the three-dimensional Fourier space for real-space model reconstruction. The comparison showed that these three classification methods lead to different datasets and subsequently result in different electron density maps of the reconstructed models. Interestingly, the common dataset selected by these three methods improved the quality of the merged diffraction volume, as well as the resolutions of the reconstructed maps.

Keywords: X-ray free-electron lasers (XFELs); classification algorithms; electron-density map reconstruction; single-particle imaging.

Grants and funding

This work was funded by National Natural Science Foundation of China grants 11575021, U1530401, and U1430237. National Science Foundation grant 1231306. US Department of Energy, Office of Science grants DE-SC002164 and DE-AC02-76SF00515. Russian Science Foundation grant 18-41-06001. Helmholtz Association’s Initiative and Networking Fund grant .