| Literature DB >> 35563346 |
Eloi Parladé1,2, Eric Voltà-Durán1,2,3, Olivia Cano-Garrido4, Julieta M Sánchez1,2,3,5,6, Ugutz Unzueta1,3,7, Hèctor López-Laguna1,2,3, Naroa Serna4, Montserrat Cano4, Manuel Rodríguez-Mariscal4, Esther Vazquez1,2,3, Antonio Villaverde1,2,3.
Abstract
Under the need for new functional and biocompatible materials for biomedical applications, protein engineering allows the design of assemblable polypeptides, which, as convenient building blocks of supramolecular complexes, can be produced in recombinant cells by simple and scalable methodologies. However, the stability of such materials is often overlooked or disregarded, becoming a potential bottleneck in the development and viability of novel products. In this context, we propose a design strategy based on in silico tools to detect instability areas in protein materials and to facilitate the decision making in the rational mutagenesis aimed to increase their stability and solubility. As a case study, we demonstrate the potential of this methodology to improve the stability of a humanized scaffold protein (a domain of the human nidogen), with the ability to oligomerize into regular nanoparticles usable to deliver payload drugs to tumor cells. Several nidogen mutants suggested by the method showed important and measurable improvements in their structural stability while retaining the functionalities and production yields of the original protein. Then, we propose the procedure developed here as a cost-effective routine tool in the design and optimization of multimeric protein materials prior to any experimental testing.Entities:
Keywords: mutagenesis; nanomaterials; nanomedicine; protein stability
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Year: 2022 PMID: 35563346 PMCID: PMC9099527 DOI: 10.3390/ijms23094958
Source DB: PubMed Journal: Int J Mol Sci ISSN: 1422-0067 Impact factor: 6.208
Figure 1(A) Amino acid sequence of the construct T22−HSNBT1−H6. Residues mutated at some point are highlighted in bold and blue; numeration starts at Met0. (B) Visualization of B-factor (dotted line) and aggregation (continuous line) predictors for each residue in T22-HSNBT1-H6. Positive aggregation values indicate tendency to aggregate and are highlighted in red. Preselected residues are marked with blue dots. (C) Stacked aggregation (Aggrescan3D), B-factor (ResQ), and mutation probability (STRUM) prediction scores of the preselected residues. (D) Scores of STRUM (light gray) and DeepDDG (dark gray) predictors for each possible substitution in the four selected residues. Hydrophobic residues are filled in a diagonal hatch pattern, and arrows indicate the chosen substitution for each amino acid. (E) Three-dimensional representation of T22-HSNBT1-H6, with the atoms of the selected residues for mutation displayed in blue. (F) Surface lipophilicity potential map. Insets on the right side highlight the predicted lipophilicity of the selected residues before and after substitution. Coloring ranges from dark cyan (most hydrophilic) to white to dark gold (most lipophilic).
Figure 2Modular design of the proteins derived from T22-HSNBT1-H6. Inverted black triangles indicate the approximate location of each chosen mutation in the core module of the scaffold protein. The precise position and nature of each mutation are indicated next to the modular construct, providing the original residue, its position in the sequence, and the new residue.
Figure 3(A). Distribution of the zeta potential values measured for the studied proteins. (B) Tm of the studied proteins obtained from CSM curves. (C) Precipitated portion of each of the protein mutants after the conjugation with the drug MMAE. (D) Size-volume profile (left) and size data (right) of selected candidates measured by DLS before and after nanoparticle formation induced with ZnCl2. Significance indicated as: * p ≤ 0.05, *** p ≤ 0.001.