Litcius/Paper detail

Accurate Machine Learning Prediction of Protein Circular Dichroism Spectra with Embedded Density Descriptors

Luyuan Zhao, Jinxiao Zhang, Yaolong Zhang, Sheng Ye, Guozhen Zhang, Xin Chen, Bin Jiang, Jun Jiang

2021JACS Au40 citationsDOIOpen Access PDF

Abstract

A data-driven approach to simulate circular dichroism (CD) spectra is appealing for fast protein secondary structure determination, yet the challenge of predicting electric and magnetic transition dipole moments poses a substantial barrier for the goal. To address this problem, we designed a new machine learning (ML) protocol in which ordinary pure geometry-based descriptors are replaced with alternative embedded density descriptors and electric and magnetic transition dipole moments are successfully predicted with an accuracy comparable to first-principle calculation. The ML model is able to not only simulate protein CD spectra nearly 4 orders of magnitude faster than conventional first-principle simulation but also obtain CD spectra in good agreement with experiments. Finally, we predicted a series of CD spectra of the Trp-cage protein associated with continuous changes of protein configuration along its folding path, showing the potential of our ML model for supporting real-time CD spectroscopy study of protein dynamics.

Topics & Concepts

Circular dichroismDipoleSpectral lineMagnetic dipoleVibrational circular dichroismMolecular dynamicsChemistrySpectroscopyMolecular physicsStatistical physicsComputational physicsBiological systemNuclear magnetic resonancePhysicsComputational chemistryCrystallographyQuantum mechanicsOrganic chemistryBiologyProtein Structure and DynamicsMolecular spectroscopy and chiralityMass Spectrometry Techniques and Applications