Abstract

Shiga toxin-producing Escherichia coli (STEC) are important foodborne pathogens and non-O157 serotypes have been gradually increasing in frequency. The non-O157 STEC population is diverse and is often characterized using serotyping and/or multilocus sequence typing (MLST). Although spacers within clustered regularly interspaced repeat (CRISPR) regions were shown to comprise horizontally acquired DNA elements, this region does not actively acquire spacers in STEC. Hence, it is useful for further characterizing non-O157 STEC and examining relationships between strains. Our study goal was to evaluate the genetic relatedness of 41 clinical non-O157 isolates identified in Michigan between 2001 and 2005 while comparing to 114 isolates from Connecticut during an overlapping time period. Whole genome sequencing (WGS) was performed, and sequences were extracted for serotyping, MLST and CRISPR analysis. Phylogenetic analysis of MLST and CRISPR data was performed using the Neighbor joining and unweighted pair group method with arithmetic mean (UPGMA) algorithms, respectively. In all, 29 serogroups were identified; eight were unique to Michigan and 13 to Connecticut. “Big-six” serogroup frequencies were similar by state (Michigan: 73.2%, Connecticut: 81.6%), though STEC O121 was not found in Michigan. The distribution of sequence types (STs) and CRISPR profiles was also similar across states. Interestingly, big-six serogroups such as O103 and O26, grouped into different STs located on distinct branches of the phylogeny, further confirming that serotyping alone is not adequate for evaluating strain relatedness. Comparatively, the CRISPR analysis identified 361 unique spacers that grouped into 80 different CRISPR profiles. CRISPR spacers 231 and 317 were isolated from 79.2% (n = 118) and 59.1% (n = 88) of strains, respectively, regardless of serogroup and ST. Spacer profiles clustered according to the MLST analysis, though some discrepancies were noted. Indeed, use of both MLST and CRISPR typing enhanced the discriminatory power when compared to the use of each tool separately. These data highlight the genetic diversity of clinical STEC from different locations and show that CRISPR profiling can be used alongside MLST to discriminate related strains. Use of targeted sequencing approaches are particularly helpful for sites without WGS capabilities and can help define which strains require additional characterization using more discriminatory methods.

Highlights

  • Shiga toxin-producing Escherichia coli (STEC) is a leading foodborne pathogen in the United States that was estimated to cause 265,000 illnesses and more than 3,600 hospitalizations each year (Scallan et al, 2011)

  • Non-O157 STEC infections have been steadily increasing in the United States since 2000 (Gould et al, 2013; Centers for Disease Control and Prevention, 2017), little is known about the molecular epidemiology and genetic diversity of these pathogens in different geographic locations, for older strain sets

  • We have shown that a wide range of strain types are linked to human infection in two states and that strains representing one of the six (“big-six”) most abundant serogroups predominated in each

Read more

Summary

Introduction

Shiga toxin-producing Escherichia coli (STEC) is a leading foodborne pathogen in the United States that was estimated to cause 265,000 illnesses and more than 3,600 hospitalizations each year (Scallan et al, 2011). The emergence of other serogroups associated with disease has resulted in the classification of the “big-six” serogroups, which represent the predominant non-O157 serogroups and include: O26, O45, O103, O111, O121, and O145 (Brooks et al, 2005). These six serogroups accounted for 83% of non-O157 cases reported to FoodNet from 2000 to 2010 (Gould et al, 2013). A wide range of other serogroups are responsible for the remaining infections, less is known about the epidemiology and genetic diversity of these strains relative to O157 STEC

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call