A key challenge in automated chemical compound space explorations is ensuring veracity in minimum energy geometries-to preserve intended bonding connectivities. We discuss an iterative high-throughput workflow for connectivity preserving geometry optimizations exploiting the nearness between quantum mechanical models. The methodology is benchmarked on the QM9 dataset comprising DFT-level properties of 133â885 small molecules, wherein 3054 have questionable geometric stability. Of these, we successfully troubleshoot 2988 molecules while maintaining a bijective mapping with the Lewis formulae. Our workflow, based on DFT and post-DFT methods, identifies 66 molecules as unstable; 52 contain -NNO-, and the rest are strained due to pyramidal sp(2) C. In the curated dataset, we inspect molecules with long C-C bonds and identify ultralong candidates (r > 1.70 Ã ) supported by topological analysis of electron density. The proposed strategy can aid in minimizing unintended structural rearrangements during quantum chemistry big data generation.
Troubleshooting unstable molecules in chemical space.
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作者:Senthil Salini, Chakraborty Sabyasachi, Ramakrishnan Raghunathan
| 期刊: | Chemical Science | 影响因子: | 7.400 |
| 时间: | 2021 | 起止号: | 2021 Mar 2; 12(15):5566-5573 |
| doi: | 10.1039/d0sc05591c | ||
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