Machine learning for the discovery of molecular recognition based on single-walled carbon nanotube corona-phases
Author(s)
Gong, Xun; Renegar, Nicholas; Levi, Retsef; Strano, Michael S
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<jats:title>Abstract</jats:title><jats:p>Nanoparticle corona phase (CP) design offers a unique approach toward molecular recognition (MR) for sensing applications. Single-walled carbon nanotube (SWCNT) CPs can additionally transduce MR through its band-gap photoluminescence (PL). While DNA oligonucleotides have been used as SWCNT CPs, no generalized scheme exists for MR prediction de novo due to their sequence-dependent three-dimensional complexity. This work generated the largest DNA-SWCNT PL response library of 1408 elements and leveraged machine learning (ML) techniques to understand MR and DNA sequence dependence through local (LFs) and high-level features (HLFs). Out-of-sample analysis of our ML model showed significant correlations between model predictions and actual sensor responses for 6 out of 8 experimental conditions. Different HLF combinations were found to be uniquely correlated with different analytes. Furthermore, models utilizing both LFs and HLFs show improvement over that with HLFs alone, demonstrating that DNA-SWCNT CP engineering is more complex than simply specifying molecular properties.</jats:p>
Date issued
2022-12Department
Massachusetts Institute of Technology. Department of Chemical Engineering; Massachusetts Institute of Technology. Operations Research Center; Sloan School of ManagementJournal
npj Computational Materials
Publisher
Springer Science and Business Media LLC
Citation
Gong, Xun, Renegar, Nicholas, Levi, Retsef and Strano, Michael S. 2022. "Machine learning for the discovery of molecular recognition based on single-walled carbon nanotube corona-phases." npj Computational Materials, 8 (1).
Version: Final published version