2017
DOI: 10.1002/bit.26236
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QSAR models for prediction of chromatographic behavior of homologous Fab variants

Abstract: While quantitative structure activity relationship (QSAR) models have been employed successfully for the prediction of small model protein chromatographic behavior, there have been few reports to date on the use of this methodology for larger, more complex proteins. Recently our group generated focused libraries of antibody Fab fragment variants with different combinations of surface hydrophobicities and electrostatic potentials, and demonstrated that the unique selectivities of multimodal resins can be exploi… Show more

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Cited by 36 publications
(31 citation statements)
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“…Consistent with recent work, 16 mutating CDR residues responsible for large hydrophobic patches proved successful for reducing HIC RT, and double mutants of these residues further reduced HIC RT. For the three residues primarily responsible for large CDR hydrophobic patches, W100, Y101, and Y102, 46 of 52 (88%) of their mutants eluted from the column.…”
Section: Discussionsupporting
confidence: 86%
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“…Consistent with recent work, 16 mutating CDR residues responsible for large hydrophobic patches proved successful for reducing HIC RT, and double mutants of these residues further reduced HIC RT. For the three residues primarily responsible for large CDR hydrophobic patches, W100, Y101, and Y102, 46 of 52 (88%) of their mutants eluted from the column.…”
Section: Discussionsupporting
confidence: 86%
“…1517 The earlier work of building single-parameter hydrophobic patch predictors was validated appropriately using experimental data for fewer than twenty sequences. 8,12 For the multi-parameter models that are being constructed and applied to experimental antibody property prediction, 10,15,16 large sets of sequences and experimental data are required for model building and validation. Ideally, such datasets would include negative data in order to robustly train predictive models and advance the field in the direction of data driven computational predictions, e.g., available protein thermostability benchmark datasets have allowed machine learning to be applied, resulting in accurate thermostability predictions.…”
Section: Introductionmentioning
confidence: 99%
“…Descriptors that have been highlighted by the various datasets revolve around hydrophobicity and charge‐based properties, which is reflected by the regression vectors of the descriptors selected. This is in consensus with previously shown experimental as well as QSAR‐based studies . Primary descriptors‐based multivariate models have been previously described for biophysical properties of mAbs wherein the electrostatic interactions and charge asymmetry of VH and VL regions play an important role in viscosity, hydrophobicity and charge for in vivo clearance …”
Section: Discussionsupporting
confidence: 85%
“…The number of samples for IgG2, IgG4, and IgG1 are 7, 13, and 46 samples, respectively, and this would influence the spread as sample descriptor spaces are sparsely and varyingly populated based on species. Based on the above results, IgG1‐κ‐humanized mAbs were chosen for further model development ( n = 46) such that the QSAR model developed is for a homologous set of mAbs, which has been seen in previous studies as well . The details of the mAbs chosen are shown in Table S2, Supporting Information SF1.…”
Section: Resultsmentioning
confidence: 99%
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