2019
DOI: 10.1016/j.omtm.2019.09.008
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Machine Learning Enables Accurate Prediction of Asparagine Deamidation Probability and Rate

Abstract: The spontaneous conversion of asparagine residues to aspartic acid or iso-aspartic acid, via deamidation, is a major pathway of protein degradation and is often seriously disruptive to biological systems. Deamidation has been shown to negatively affect both in vitro stability and in vivo biological function of diverse classes of proteins. During protein therapeutics development, deamidation liabilities that are overlooked necessitate expensive and time-consuming remediation strategies, sometimes leading to ter… Show more

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Cited by 38 publications
(34 citation statements)
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“…25,[101][102][103][104][105][106][107][108][109][110][111] One of the most common degradation events is the chemical modification of Asn and Asp residues, which share a degradation pathway. 25 Many of the methods to predict such degradation are statisticalbased methods, and experimental data to derive such prediction models are either from in-house experiments 101,103,107,108,110 or from literature. 104,106,111 For example, to understand origins of Asn deamidation and Asp isomerization, Sydow et al 101 used mass spectrometry to experimentally characterize 37 antibodies that were subjected to forced degradation.…”
Section: Prediction Of Chemical Stabilitymentioning
confidence: 99%
See 1 more Smart Citation
“…25,[101][102][103][104][105][106][107][108][109][110][111] One of the most common degradation events is the chemical modification of Asn and Asp residues, which share a degradation pathway. 25 Many of the methods to predict such degradation are statisticalbased methods, and experimental data to derive such prediction models are either from in-house experiments 101,103,107,108,110 or from literature. 104,106,111 For example, to understand origins of Asn deamidation and Asp isomerization, Sydow et al 101 used mass spectrometry to experimentally characterize 37 antibodies that were subjected to forced degradation.…”
Section: Prediction Of Chemical Stabilitymentioning
confidence: 99%
“…In another study, Yan et al 107 used 10 antibodies under both normal and stressed conditions, and experimentally characterized the Asn deamidation, leading to a decision tree model to predict the Asn deamidation probability from antibody structures. More recently, based on in-house LC-MS/MS experiments and literature information, Delmar et al 108 used machine learning to predict Asn deamidation probability and rate. The training set consisted of 776 Asn residues from 67 antibodies.…”
Section: Prediction Of Chemical Stabilitymentioning
confidence: 99%
“…In their studies, mAb structure-based features, sequence-based features and dynamic-based features were extracted as input data, and mAb peptide mapping results on oxidation were extracted as output data for model training. Similar machine learning algorithms were also developed recently for mAb deamidation risks prediction (Delmar, Wang, Choi, Martins, & Mikhail, 2019;Jia & Sun, 2017). The success of machine learning in predicting the mAb biophysical and biochemical stabilities provides the possibilities of applying machine learning algorithm to predict mAb disulfide bond reduction risks.…”
Section: Identifying Disulfide Bond Reduction Risks Using Machine Learning Algorithmsmentioning
confidence: 99%
“…Therefore, a conformational study is essential to highlight the residues liable to the chemical change. Chemical stability is generally based on statistical analysis derived from experiments or databases available in the literature, although some computational methods are being used [96,[102][103][104][105][106][107][108]. Statistics-based methods depend on data from previous experiments and provide valuable information about the behavior of proteins, being excellent guides during the development of new antibodies.…”
Section: Analyses Of Mabs' Properties (Solubility Stability Aggregamentioning
confidence: 99%