TY - JOUR
T1 - Protein Structure Prediction and Design in a Biologically Realistic Implicit Membrane
AU - Alford, Rebecca F.
AU - Fleming, Patrick J.
AU - Fleming, Karen G.
AU - Gray, Jeffrey J.
N1 - Funding Information:
The authors thank Sergey Lyskov, Vikram Mulligan, and Julia Koehler for code reviews. We thank Sai Pooja Mahajan for critical reading of the manuscript. We also thank Michael Feig and Bercem Dutagaci for providing a high-resolution decoy set. R.F.A. was supported by a Hertz Foundation Fellowship and a National Science Foundation Graduate Research Fellowship. This work was also supported by National Institute of Health grants GM-078221 (R.F.A. and J.J.G.) and GM-079440 (P.J.F. and K.G.F.). Computations were performed using the Maryland Advanced Research Computing Center and the National Science Foundation Extreme Science and Engineering Discovery Environment grant TG-MCB180056.
Funding Information:
R.F.A. was supported by a Hertz Foundation Fellowship and a National Science Foundation Graduate Research Fellowship . This work was also supported by National Institute of Health grants GM-078221 (R.F.A. and J.J.G.) and GM-079440 (P.J.F. and K.G.F.). Computations were performed using the Maryland Advanced Research Computing Center and the National Science Foundation Extreme Science and Engineering Discovery Environment grant TG-MCB180056 .
Publisher Copyright:
© 2020 Biophysical Society
PY - 2020/4/21
Y1 - 2020/4/21
N2 - Protein design is a powerful tool for elucidating mechanisms of function and engineering new therapeutics and nanotechnologies. Although soluble protein design has advanced, membrane protein design remains challenging because of difficulties in modeling the lipid bilayer. In this work, we developed an implicit approach that captures the anisotropic structure, shape of water-filled pores, and nanoscale dimensions of membranes with different lipid compositions. The model improves performance in computational benchmarks against experimental targets, including prediction of protein orientations in the bilayer, ΔΔG calculations, native structure discrimination, and native sequence recovery. When applied to de novo protein design, this approach designs sequences with an amino acid distribution near the native amino acid distribution in membrane proteins, overcoming a critical flaw in previous membrane models that were prone to generating leucine-rich designs. Furthermore, the proteins designed in the new membrane model exhibit native-like features including interfacial aromatic side chains, hydrophobic lengths compatible with bilayer thickness, and polar pores. Our method advances high-resolution membrane protein structure prediction and design toward tackling key biological questions and engineering challenges.
AB - Protein design is a powerful tool for elucidating mechanisms of function and engineering new therapeutics and nanotechnologies. Although soluble protein design has advanced, membrane protein design remains challenging because of difficulties in modeling the lipid bilayer. In this work, we developed an implicit approach that captures the anisotropic structure, shape of water-filled pores, and nanoscale dimensions of membranes with different lipid compositions. The model improves performance in computational benchmarks against experimental targets, including prediction of protein orientations in the bilayer, ΔΔG calculations, native structure discrimination, and native sequence recovery. When applied to de novo protein design, this approach designs sequences with an amino acid distribution near the native amino acid distribution in membrane proteins, overcoming a critical flaw in previous membrane models that were prone to generating leucine-rich designs. Furthermore, the proteins designed in the new membrane model exhibit native-like features including interfacial aromatic side chains, hydrophobic lengths compatible with bilayer thickness, and polar pores. Our method advances high-resolution membrane protein structure prediction and design toward tackling key biological questions and engineering challenges.
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U2 - 10.1016/j.bpj.2020.03.006
DO - 10.1016/j.bpj.2020.03.006
M3 - Article
C2 - 32224301
AN - SCOPUS:85082485317
SN - 0006-3495
VL - 118
SP - 2042
EP - 2055
JO - Biophysical journal
JF - Biophysical journal
IS - 8
ER -