posted on 2023-08-24, 12:39authored byAbbigayle
E. Cuomo, Sebastian Ibarraran, Sanil Sreekumar, Haote Li, Jungmin Eun, Jan Paul Menzel, Pengpeng Zhang, Frederic Buono, Jinhua J. Song, Robert H. Crabtree, Victor S. Batista, Timothy R. Newhouse
Density functional theory (DFT) is a powerful tool to
model transition
state (TS) energies to predict selectivity in chemical synthesis.
However, a successful multistep synthesis campaign must navigate energetically
narrow differences in pathways that create some limits to rapid and
unambiguous application of DFT to these problems. While powerful data
science techniques may provide a complementary approach to overcome
this problem, doing so with the relatively small data sets that are
widespread in organic synthesis presents a significant challenge.
Herein, we show that a small data set can be labeled with features
from DFT TS calculations to train a feed-forward neural network for
predicting enantioselectivity of a Negishi cross-coupling reaction
with P-chiral hindered phosphines. This approach
to modeling enantioselectivity is compared with conventional approaches,
including exclusive use of DFT energies and data science approaches,
using features from ligands or ground states with neural network architectures.