Abstract
BackgroundReactive oxygen species can modify the structure and function of proteins and may also act as important signaling molecules in various cellular processes. Cysteine thiol groups of proteins are particularly susceptible to oxidation. Meanwhile, their reversible oxidation is of critical roles for redox regulation and signaling. Recently, several computational tools have been developed for predicting redox-sensitive cysteines; however, those methods either only focus on catalytic redox-sensitive cysteines in thiol oxidoreductases, or heavily depend on protein structural data, thus cannot be widely used.ResultsIn this study, we analyzed various sequence-based features potentially related to cysteine redox-sensitivity, and identified three types of features for efficient computational prediction of redox-sensitive cysteines. These features are: sequential distance to the nearby cysteines, PSSM profile and predicted secondary structure of flanking residues. After further feature selection using SVM-RFE, we developed Redox-Sensitive Cysteine Predictor (RSCP), a SVM based classifier for redox-sensitive cysteine prediction using primary sequence only. Using 10-fold cross-validation on RSC758 dataset, the accuracy, sensitivity, specificity, MCC and AUC were estimated as 0.679, 0.602, 0.756, 0.362 and 0.727, respectively. When evaluated using 10-fold cross-validation with BALOSCTdb dataset which has structure information, the model achieved performance comparable to current structure-based method. Further validation using an independent dataset indicates it is robust and of relatively better accuracy for predicting redox-sensitive cysteines from non-enzyme proteins.ConclusionsIn this study, we developed a sequence-based classifier for predicting redox-sensitive cysteines. The major advantage of this method is that it does not rely on protein structure data, which ensures more extensive application compared to other current implementations. Accurate prediction of redox-sensitive cysteines not only enhances our understanding about the redox sensitivity of cysteine, it may also complement the proteomics approach and facilitate further experimental investigation of important redox-sensitive cysteines.Electronic supplementary materialThe online version of this article (doi:10.1186/s12859-016-1185-4) contains supplementary material, which is available to authorized users.
Highlights
Reactive oxygen species can modify the structure and function of proteins and may act as important signaling molecules in various cellular processes
Performance using different combinations of features on RSC758 dataset Using the RSC758 dataset, we first optimized the parameters for feature extraction, including: 1) the number of nearby cysteines for which the sequential distance is considered; 2) the window size for Position-Specific Scoring Matrix profile (PSSM), predicted secondary structure (SS), predicted solvent accessibility (SA) and physical-chemical property (PCP)
The performance for different classifiers was compared according to the ACC, Matthews correlation coefficient (MCC) and area under the ROC curve (AUC) values from using 10-fold crossvalidation (Fig. 1a)
Summary
Reactive oxygen species can modify the structure and function of proteins and may act as important signaling molecules in various cellular processes. Cysteine thiol groups of proteins are susceptible to oxidation Their reversible oxidation is of critical roles for redox regulation and signaling. Accumulation of ROS may result in the damage of different cellular components including proteins, nucleic acids, lipids and metal cofactors. Cysteine residues bear a thiol group that represents the most reduced state of sulfur in proteins. These thiol groups can be oxidized to disulfide (S-S), sulfenic acid (S-OH), sulfinic acid (SO2H), sulfonic acid (SO3H), Snitrosothiol (S-NO) or S-glutathione (S-SG). Redox-sensitive cysteines undergo reversible thiol modifications in response to ROS or RNS, thereby modulate protein function, activity or localization, and serve as a regulatory switch for proteins in response to cellular redox state [2, 15,16,17]
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