Investigating chiral morphogenesis of gold using generative cellular automata.
Sang Won ImDongsu ZhangJeong Hyun HanRyeong Myeong KimChangwoon ChoiYoung Min KimKi Tae NamPublished in: Nature materials (2024)
Homochirality is an important feature in biological systems and occurs even in inorganic nanoparticles. However, the mechanism of chirality formation and the key steps during growth are not fully understood. Here we identify two distinguishable pathways from achiral to chiral morphologies in gold nanoparticles by training an artificial neural network of cellular automata according to experimental results. We find that the chirality is initially determined by the nature of the asymmetric growth along the boundaries of enantiomeric high-index planes. The deep learning-based interpretation of chiral morphogenesis provides a theoretical understanding but also allows us to predict an unprecedented crossover pathway and the resulting morphology.