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Control over Conformational Landscapes of Polypeptoids by Monomer Sequence Patterning

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DataONE2024-03-06 更新2024-06-08 收录
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This dataset accompanies the article \"Control Over Conformational Landscapes of Polypeptoids by Monomer Sequence Patterning\" by Audra J. DeStefano, Shawn D. Mengel, Morgan W. Bates, Sally Jiao, M. Scott Shell, Songi Han, and Rachel A. Segalman in Macromolecules in 2024. The article demonstrates how patterning of hydrophobic residues along a polymer backbone can tune the distribution of end-to-end distances and that these effects can be predicted by a simple bead-spring simulation. This dataset contains the necessary experimental data to reproduce the main text and supporting figures. High performance liquid chromatographs, mass spectra, double electron-electron resonance time domain signals, and simulated end-to-end distance distributions are included., Please refer to the methods section of the published main text for details on dataset collection and processing., , This README.txt file was generated on 20230601 by Audra DeStefano and Shawn Mengel ### GENERAL INFORMATION 1. Title of Dataset: Control Over Conformational Landscapes of Polypeptoids by Monomer Sequence Patterning 2. Author Information A. Principal Investigator Contact Information Name: Rachel A. Segalman Institution: University of California Santa Barbara Address: Department of Chemical Engineering, University of California, Santa Barbara, 93106 Email: B. Associate or Co-investigator Contact Information Name: Audra J. DeStefano Institution: University of California Santa Barbara Address: Department of Chemical Engineering, University of California, Santa Barbara, 93106 Email: C. Associate or Co-investigator Contact Information Name: Shawn D. Mengel Institution: University of California Santa Barbara Address: Department of Chemical Engineering, University of California, Santa Barbara, 93106 Email: D. Associate or...
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2025-07-28
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