| Literature DB >> 27302760 |
Yuan Li1, Benjamin J Metcalf2, Sopio Chochua2, Zhongya Li2, Robert E Gertz2, Hollis Walker2, Paulina A Hawkins2, Theresa Tran2, Cynthia G Whitney2, Lesley McGee2, Bernard W Beall2.
Abstract
UNLABELLED: β-Lactam antibiotics are the drugs of choice to treat pneumococcal infections. The spread of β-lactam-resistant pneumococci is a major concern in choosing an effective therapy for patients. Systematically tracking β-lactam resistance could benefit disease surveillance. Here we developed a classification system in which a pneumococcal isolate is assigned to a "PBP type" based on sequence signatures in the transpeptidase domains (TPDs) of the three critical penicillin-binding proteins (PBPs), PBP1a, PBP2b, and PBP2x. We identified 307 unique PBP types from 2,528 invasive pneumococcal isolates, which had known MICs to six β-lactams based on broth microdilution. We found that increased β-lactam MICs strongly correlated with PBP types containing divergent TPD sequences. The PBP type explained 94 to 99% of variation in MICs both before and after accounting for genomic backgrounds defined by multilocus sequence typing, indicating that genomic backgrounds made little independent contribution to β-lactam MICs at the population level. We further developed and evaluated predictive models of MICs based on PBP type. Compared to microdilution MICs, MICs predicted by PBP type showed essential agreement (MICs agree within 1 dilution) of >98%, category agreement (interpretive results agree) of >94%, a major discrepancy (sensitive isolate predicted as resistant) rate of <3%, and a very major discrepancy (resistant isolate predicted as sensitive) rate of <2% for all six β-lactams. Thus, the PBP transpeptidase signatures are robust indicators of MICs to different β-lactam antibiotics in clinical pneumococcal isolates and serve as an accurate alternative to phenotypic susceptibility testing. IMPORTANCE: The human pathogen Streptococcus pneumoniae is a leading cause of morbidity and mortality worldwide. β-Lactam antibiotics such as penicillin and ceftriaxone are the drugs of choice to treat pneumococcal infections. Some pneumococcal strains have developed β-lactam resistance through altering their penicillin-binding proteins (PBPs) and have become a major concern in choosing effective patient therapy. To systematically track and predict β-lactam resistance, we obtained the sequence signatures of PBPs from a large collection of clinical pneumococcal isolates using whole-genome sequencing data and found that these "PBP types" were predictive of resistance levels. Our findings can benefit the current era of strain surveillance when whole-genome sequencing data often lacks detailed resistance information. Using PBP positions that we found are always substituted within highly resistant strains may lead to further refinements. Sequence-based predictions are accurate and may lead to the ability to extract critical resistance information from nonculturable clinical specimens.Entities:
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Year: 2016 PMID: 27302760 PMCID: PMC4916381 DOI: 10.1128/mBio.00756-16
Source DB: PubMed Journal: mBio Impact factor: 7.867
Distribution of β-lactam MICs in the study sample according to broth microdilution testing
| Antibiotic | Parameter | Value for parameter | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| PEN | MIC (µg/ml) | ≤0.03 | 0.06 | 0.12 | 0.25 | 0.5 | 1 | 2 | 4 | 8 | 16 | NA |
| No. of isolates | 1,702 | 93 | 110 | 121 | 61 | 61 | 140 | 178 | 60 | 1 | 1 | |
| AMO | MIC (µg/ml) | ≤0.03 | 0.06 | 0.12 | 0.25 | 0.5 | 1 | 2 | 4 | 8 | >8 | NA |
| No. of isolates | 1,745 | 171 | 84 | 31 | 50 | 67 | 105 | 83 | 155 | 22 | 15 | |
| MER | MIC (µg/ml) | ≤0.06 | 0.12 | 0.25 | 0.5 | 1 | >1 | NA | ||||
| No. of isolates | 1,942 | 67 | 46 | 129 | 232 | 28 | 84 | |||||
| TAX | MIC (µg/ml) | ≤0.06 | 0.12 | 0.25 | 0.5 | 1 | 2 | 4 | 8 | 16 | NA | |
| No. of isolates | 1,840 | 120 | 64 | 67 | 180 | 148 | 16 | 26 | 3 | 64 | ||
| CFT | MIC (µg/ml) | ≤0.5 | 1 | 2 | 4 | 8 | NA | |||||
| No. of isolates | 1618 | 141 | 86 | 17 | 6 | 660 | ||||||
| CFX | MIC (µg/ml) | ≤0.5 | 1 | 2 | >2 | NA | ||||||
| No. of isolates | 2,040 | 24 | 40 | 417 | 7 | |||||||
Abbreviations: PEN, penicillin; AMO, amoxicillin; MER, meropenem; TAX, cefotaxime; CFT, ceftriaxone; CFX, cefuroxime.
The MIC and the number of isolates with the indicated MIC for each antibiotic are shown.
NA, no MIC data available.
FIG 1 Amino acid changes in penicillin-binding protein (PBP) transpeptidase domains (TPDs) associated with increased MICs. (A) Each row is a unique PBP type, and a black bar indicates that the aligned amino acid differed from the amino acid in the reference PBP type 2-0-2. The width of the row is proportional to the number of isolates. Rows were sorted from top to bottom by decreasing order of median penicillin (PEN) MICs (in micrograms per milliliter) and then by increasing order of number of isolates. The PBP type 2-0-2 row also shows the start and end amino acid position of each TPD. There were 27 TPD sites in which an amino acid differed from that in PBP type 2-0-2 in all isolates with PEN MICs of ≥4 µg/ml (open triangles at the top of the figure); we define these 27 TPD sites as resistance-associated TPD sites. (B) Boxplot of PEN MICs among isolates containing 0, 1, 2, or 3 divergent TPDs. A divergent TPD showed less than 90% amino acid sequence identity with the corresponding TPD in PBP type 2-0-2. Whiskers indicate the farthest value that is within 1.5 interquartile range (IQR) of the hinges. (C) Resistance-associated TPD sites were more frequently found among amino acid sites that are close to an active site (<20 amino acids [AAs]). The three TPD domains contain a total of 914 amino acid sites, which were classified into two groups according to whether the distance to an active site is less than 20 AAs (n = 319) or more than 20 AAs (n = 595). The frequency of resistance-associated TPD sites in each group is shown. Error bars are 95% CIs.
FIG 2 Distribution of PEN MICs across MLSTs within nine representative PBP types; in most PBP types, the MICs cluster around ±1 dilution. Divergent TPDs, which showed less than 90% amino acid sequence identity with the corresponding TPD in PBP type 2-0-2, are indicated with an asterisk (e.g., 0-1*-1).
Analysis of variation in log2 (MIC) incorporating random effects for the PBP type and the MLST for the three models evaluated
| Antibiotic | Variation | |||||
|---|---|---|---|---|---|---|
| Model 1 (MLST only) | Model 2 (PBP type only) | Model 3 | ||||
| MLST | PBP type | Model 3 vs model 1 | Model 3 vs model 2 | |||
| PEN | 91.3 | 97.9 | 0.06 | 97.8 | <2 × 10−16 | 0.10 |
| AMO | 91.0 | 98.7 | 0.02 | 98.6 | <2 × 10−16 | 0.32 |
| MER | 90.4 | 97.5 | 0.24 | 97.3 | <2 × 10−16 | 1 × 10−8 |
| TAX | 89.1 | 97.9 | 0.09 | 97.9 | <2 × 10−16 | 0.005 |
| CFT | 73.3 | 94.2 | 0.00 | 94.2 | <2 × 10−16 | 1 |
| CFX | 90.6 | 98.1 | 0.95 | 97.3 | <2 × 10−16 | 4 × 10−14 |
Models were constructed with the log2-transformed MIC as the dependent variable. Model 1 included only multilocus sequence type (MLST) as the covariate. Model 2 included only PBP type as the covariate. Model 3 used both PBP type and MLST as covariates. These models incorporated random effect(s) for all covariate(s). The only fixed-effect term was the intercept.
Abbreviations: PEN, penicillin; AMO, amoxicillin; MER, meropenem; TAX, cefotaxime; CFT, ceftriaxone; CFX, cefuroxime.
Percentage of variance that is attributed to the indicated model covariate(s).
The P value of the likelihood ratio test.
FIG 3 Agreement between the predicted MIC and the microdilution MIC among isolates of trained PBP types. The mode MIC (MM) model assigned the most frequently seen MIC of a trained PBP type to a test isolate of the same PBP type. The random forest (RF) and elastic net (EN) models were designed to quantify the contribution of each individual TPD position from the training data set and combine these contributions to make a prediction. See Materials and Methods for detailed model description. The percent essential agreement (A), category agreement (B), major discrepancy (C), and very major discrepancy (D) were calculated for six antibiotics. Error bars are 95% CIs.
FIG 4 Agreement between the predicted MIC and the microdilution MIC among isolates of nontrained PBP types. The mode MIC (MM) model approximated a nontrained PBP type by the most closely related trained PBP type and assigned the most frequently seen MIC of the trained PBP type to the test isolate. For the random forest (RF) and elastic net (EN) models, any amino acid not seen in the training data set was approximated by a corresponding training amino acid with the least BLOSUM62 distance. See Materials ad Methods for detailed model description. (A and B) The rates of essential agreement (A) and category agreement (B) were calculated for the six antibiotics. Error bars are 95% CIs. (C) Relationship between the number of amino acid (AA) differences and outcome of EA for PEN MIC (in micrograms per milliliter) predicted by the MM method.
FIG 5 Regression line showing the effect of time between the training and testing data sets on percent essential agreement (EA). Isolates in one of the surveillance years 1998, 1999, 2009, 2012, and 2013 were used as the training data set for the MM model to predict PEN MIC for isolates in subsequent years with trained PBP types. The inset table shows percent EA (number of isolates used to calculate EA) in the indicated testing data set. Based on data in the table, the year-specific percent EA was plotted against separation time between the training and testing data sets (open circles). A fitted linear regression line is shown (solid line).