| Literature DB >> 25152108 |
Matthew D Huff1, David Weisman, John Adams, Song Li, Jessica Green, Leslie L Malone, Scott Clemmons.
Abstract
BACKGROUND: The Center for Disease Control and Prevention (CDC) indicates that one of the largest problems threatening healthcare includes antibiotic resistance. Tetracycline, an effective antibiotic that has been in use for many years, is becoming less successful in treating certain pathogens. To better understand the temporal patterns in the growth of antibiotic resistance, patient diagnostic test records can be analyzed.Entities:
Mesh:
Substances:
Year: 2014 PMID: 25152108 PMCID: PMC4156627 DOI: 10.1186/1471-2334-14-460
Source DB: PubMed Journal: BMC Infect Dis ISSN: 1471-2334 Impact factor: 3.090
Frequent item sets
| Item sets | Support count | Support |
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| {CoxEchovirus1} | 5,027 | 10.09% |
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| {Rhinovirus} | 4,151 | 8.33% |
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| {Parainfluenza} | 3,027 | 6.07% |
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| { | 2,160 | 4.33% |
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| {Human Metapneumovirus} | 1,955 | 3.92% |
| { | 1,801 | 3.61% |
The first 25 frequent items with the highest support and support count are listed. The boldface rows indicate items that contain relationships between 1 or more of the pathogens or TRGs in this study.
Association rules
| Association rules | Support count | Support | Confidence | Lift |
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| { | 1,518 | 3.05% | 70.28% | 1.73 |
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| { | 957 | 1.92% | 53.14% | 1.31 |
| {CoxEchovirus1, | 888 | 1.78% | 55.64% | 1.37 |
| {CoxEchovirus1, | 888 | 1.78% | 55.88% | 1.54 |
| { | 812 | 1.63% | 55.43% | 1.36 |
| {PVLgene}= > {MRSA} | 805 | 1.62% | 93.71% | 7.56 |
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| { | 689 | 1.38% | 71.84% | 1.77 |
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| {CoxEchovirus1, | 646 | 1.30% | 52.48% | 1.29 |
| {CoxEchovirus1, | 634 | 1.27% | 51.50% | 1.42 |
| {CoxEchovirus1, | 627 | 1.26% | 50.64% | 1.39 |
| {Rhinovirus, | 594 | 1.19% | 51.65% | 1.27 |
| {Rhinovirus, Tetracycline}= > { | 594 | 1.19% | 53.66% | 1.48 |
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| {PVLgene}= > {Tetracycline} | 516 | 1.04% | 60.00% | 1.48 |
The first 25 association rules with the highest support and support count are listed. Other calculations include confidence and lift which have measurements over 52.8% and 1.3, respectively for all boldfaced rows.
Figure 1The frequency of TRGs Detected with Respiratory Pathogens Increased from 2009–2013. The scatterplot shows the rise in co-detection between TRGs and respiratory pathogens in recent years. The data is aggregated by week. Loess smoothing curves pass through the data points and are shaded by a 95% confidence interval.
Figure 2The Frequency of TRGs Detected with Respiratory Pathogens Increased in Each Age Group over Time. Each graph displays the co-detection frequency for each age group and pathogen. The data is aggregated by month. A loess smoothing line passes through data points and are shaded by 95% confidence intervals.
Figure 3Heatmap Displaying the Longitudinal Effect of TRG Co-detection across the United States. The heat map is ordered by state on the bottom where the eastern states are on the right and the western states are on the left side of the map. The circles which are most red are the states that have the highest levels of tetracycline resistance co-detection regarding each pathogen, while states that are the most blue have the lowest rates. Size of the circles correspond to sample size of the data.