TY - JOUR
T1 - PhAI
T2 - A deep-learning approach to solve the crystallographic phase problem
AU - Larsen, Anders S.
AU - Rekis, Toms
AU - Madsen, Anders
PY - 2024
Y1 - 2024
N2 - X-ray crystallography provides a distinctive view on the three-dimensional structure of crystals. To reconstruct the electron density map, the complex structure factors [Formula: see text] of a sufficiently large number of diffracted reflections must be known. In a conventional experiment, only the amplitudes [Formula: see text] are obtained, and the phases ϕ are lost. This is the crystallographic phase problem. In this work, we show that a neural network, trained on millions of artificial structure data, can solve the phase problem at a resolution of only 2 angstroms, using only 10 to 20% of the data needed for direct methods. The network works in common space groups and for modest unit-cell dimensions and suggests that neural networks could be used to solve the phase problem in the general case for weakly scattering crystals.
AB - X-ray crystallography provides a distinctive view on the three-dimensional structure of crystals. To reconstruct the electron density map, the complex structure factors [Formula: see text] of a sufficiently large number of diffracted reflections must be known. In a conventional experiment, only the amplitudes [Formula: see text] are obtained, and the phases ϕ are lost. This is the crystallographic phase problem. In this work, we show that a neural network, trained on millions of artificial structure data, can solve the phase problem at a resolution of only 2 angstroms, using only 10 to 20% of the data needed for direct methods. The network works in common space groups and for modest unit-cell dimensions and suggests that neural networks could be used to solve the phase problem in the general case for weakly scattering crystals.
U2 - 10.1126/science.adn2777
DO - 10.1126/science.adn2777
M3 - Journal article
C2 - 39088613
AN - SCOPUS:85200426136
SN - 0036-8075
VL - 385
SP - 522
EP - 528
JO - Science (New York, N.Y.)
JF - Science (New York, N.Y.)
IS - 6708
ER -