Jun-Hua Tang1, Dong-Ping Gao2, Peng-Fei Zou3. 1. Department of Respiration, The First People's Hospital of Fuyang Hangzhou, Hangzhou, China. 2. Department of Pharmacy, Hangzhou Cancer Hospital, Hangzhou, China. 3. Department of Infectious Disease, Zhejiang University International Hospital, Hangzhou, China.
Abstract
To avoid the abuse and misuse of antibiotics, procalcitonin (PCT) and C-reactive protein (CRP) have been used as new approaches to identify different types of infection. Multiple databases were adopted to search relevant studies, and the articles that satisfied the inclusion criteria were included. Meta-analyses were conducted with Review Manager 5.0, and to estimate the quality of each article, risk of bias was assessed. Eight articles satisfied the inclusion criteria. The concentrations of both PCT and CRP in patients with bacterial infection were higher than those with non-bacterial infection. Both PCT and CRP levels in patients with G- bacterial infection were higher than in those with G+ bacterial infection and fungus infection. In the G+ bacterial infection group, a higher concentration of CRP was observed compared with fungus infection group, while the difference of PCT between G+ bacterial infection and fungus infection was not significant. Our study suggested that both PCT and CRP are helpful to a certain extent in detecting pneumonia caused by different types of infection.
To avoid the abuse and misuse of antibiotics, procalcitonin (PCT) and C-reactive protein (CRP) have been used as new approaches to identify different types of infection. Multiple databases were adopted to search relevant studies, and the articles that satisfied the inclusion criteria were included. Meta-analyses were conducted with Review Manager 5.0, and to estimate the quality of each article, risk of bias was assessed. Eight articles satisfied the inclusion criteria. The concentrations of both PCT and CRP in patients with bacterial infection were higher than those with non-bacterial infection. Both PCT and CRP levels in patients with G- bacterial infection were higher than in those with G+ bacterial infection and fungus infection. In the G+ bacterial infection group, a higher concentration of CRP was observed compared with fungus infection group, while the difference of PCT between G+ bacterial infection and fungus infection was not significant. Our study suggested that both PCT and CRP are helpful to a certain extent in detecting pneumonia caused by different types of infection.
Pulmonary infection is commonly treated by antibiotic therapy in primary care, and
has high morbidity and mortality (1,2). Excessive use of antibiotics is the main
cause of increased antibiotic resistance. It has been reported that inadequate
antimicrobial treatment affects morbidity and mortality (3
–5).
Therefore, an appropriate disease assessment is a vital early step in the judicious
use of antibiotics and management of patients (6,7). Moreover, a sensitive and
specific marker that could recognize bacterial infections early is needed.The identification of pulmonary infection in adults should be conducted to enable
appropriate investigation and prompt treatment (8,9). Several methods have been
applied to detect pulmonary infection, including clinical symptomatology,
radiological examination, inflammatory markers, blood culture, cytology, and
microbiology (1). Serum biomarkers such as
white cell count, lactate dehydrogenase, leukocyte count, and glucose have also been
shown as effective detection methods (10).
Ideal indices require accurate identification of infectious and non-infectious
disease, and easy and rapid application and detection. As clinical signs and
symptoms of infection and laboratory parameters are often inconclusive and some
serum biomarkers are elevated in non-infective inflammatory processes, procalcitonin
(PCT) and C-reactive protein (CRP) have been studied as novel biomarkers in
infectious and inflammatory diseases (11).PCT and CRP are new approaches used to guide antibiotic therapy and have been
researched as markers of infection in serum and pleural fluid. Normally, the
concentration of serum PCT is negligible or relatively low with a viral infection,
and after a bacterial infection, the levels increase significantly (12). Previous studies have reported that PCT in
pleural fluid have no clinical use in diagnosis or prognosis, while serum PCT may
have a role in differentiating pulmonary infection (13,14). Serum levels of PCT are
increased with a bacterial infection, while levels are unchanged or only moderately
increase in a non-infection condition (5,15). CRP, secreted by the liver
in response to bacterial infections, is another parameter used to diagnose infection
(15). It is synthesized within 4–6 h
after the occurrence of inflammation and could peak after around 36 h (16,17).
This study sought to assess the difference of serum PCT and CRP concentrations in
patients infected by different microorganisms, including G+ bacteria, G− bacteria,
and fungus.
Material and Methods
Search strategy
To search the relevant published citations, multiple electronic databases
including PubMed, Springer, EMBASE, OVID, and China Full-text Journal Database
were used without language restrictions. To maximize the search accuracy, the
following MeSH terms were assembled with the Boolean operator “OR”: 1) pulmonary
infection OR lung infection OR respiratory infection; 2) procalcitonin OR PCT OR
C-reactive protein OR CRP. Related articles with any publication status
(published, unpublished, in press, and in progress) published from January 2000
to January 2016 were systematically searched and reviewed. Two authors (J-H Tang
and D-P Gao) of our team searched the literature independently and examined the
reference lists to obtain additional relevant studies that were not
identified.
Study selection
Two authors (J-H Tang and D-P Gao) selected the citations independently with the
following inclusion criteria: 1) adult patients with pulmonary infection; 2)
sample size more than 50; 3) a randomized control trial or controlled clinical
trial; 4) comparison of PCT or CRP between patients with pulmonary infection and
control; and 5) availability of full text. The exclusion criteria were: 1)
non-randomized studies; 2) studies on other diseases rather than pulmonary
infection; and 3) studies lacking outcome parameters or comparable results. They
screened the titles and abstracts of the articles, and subsequently, the full
text of the studies that potentially met the criteria was obtained. The two
investigators determined the included articles together, and disagreements were
resolved by consultation with a third investigator, if necessary.
Data extraction
After reading the full text of the articles, the characteristics from each study
were extracted using a standard data extraction: the first author's name, year
of publication, year of onset, age range of patients, gender distribution
(male/female), sample size (infection/control), pathogenic microorganism, and
parameters. Pathogenic microorganism in this study included bacteria and fungus,
and in some articles, bacteria were subdivided into G+ and G−. The parameters
included PCT, CRP or both.
Statistical analysis
Meta-analyses were conduct with the software Review Manager 5.0 (Cochrane
Collaboration, 2011) to estimate the serum concentration of PCT and CRP in
patients with or without pulmonary infection among selected articles. For
continuous outcomes, standard mean difference (SMD) with 95% confidence
intervals (CIs) of serum PCT and CRP were calculated. P<0.05 was considered
statistically significant. Heterogeneities in this study were assessed using the
I2 index. We chose the random-effect model when the I2
statistic was >50%, otherwise the fixed-effect model was applied.In addition, the quality of the studies was assessed with sensitivity analysis
and bias analysis. Risk of bias was independently assessed according to the
Cochrane Handbook for Systematic Reviews of Interventions by two members of our
team. In case of disagreement, a third investigator was the adjudicator. To
estimate possible publication bias, funnel plot and Egger's test was conducted
with STATA 10.0 software.
Results
Search results
As shown in the flow diagram of Figure 1,
856 relevant studies were initially found, and 848 articles were excluded for
duplication, irrelevant studies, incomplete data, incomplete comparison, other
diseases, and not a full-text. Finally, 8 articles (18–25) satisfied the
inclusion criteria. Among these, 3 studies assessed only bacterial infection,
and the other 5 included G+ bacteria, G− bacteria, and fungus infection.
Figure 1.
Flow diagram of the study selection process and the reasons for
exclusion.
Characteristics of included studies
Detailed characteristics of the included studies are reported in Table 1. All studies were published from
2011 to 2016. The sample size ranged from 69 to 338. In total, 876 patients with
pulmonary infection and 443 without pulmonary infection were included in the
analyses.
Table 1.
Characteristics of the included studies.
Author
Year
Year of onset
Age range
Gender distribution (male/female)
Sample size (infection/control)
Pathogenic microorganism
Parameters
Chen YJ 18
2016
Apr 2012 to Apr 2015
19–79
57/43
100 (50/50)
G+ bacteria, G− bacteria, Fungus
PCT, CRP
Du HS 19
2011
Jan 2013 to Dec 2013
18–82
105/104
210 (131/79)
G+ bacteria, G− bacteria, Fungus
PCT, CRP
Porfyridis 20
2014
Nov 2010 to Jan 2012
Infection: 79.6 ± 15.4; Control: 79.8 ±
6.3
54/33
87 (58/29)
Bacteria
PCT, CRP
Sun WF 21
2011
Dec 2008 to Dec 2010
13–78
36/33
69 (39/30)
Bacteria
PCT, CRP
Wang XD 22
2016
May 2014 to Dec 2015
37–79
207/131
338 (280/58)
G+ bacteria, G− bacteria, Fungus
PCT
Xiao L 23
2015
Jan 2014 to Jan 2015
17–80
86/74
160 (120/40)
G+ bacteria, G− bacteria, Fungus
PCT, CRP
Yang AL 24
2014
Jun 2011 to Aug 2012
38–69
88/68
156 (78/78)
Bacteria
PCT, CRP
Zhang JY 25
2015
Jul 2013 to Aug 2014
19–78
100/100
200 (120/80)
G+ bacteria, G− bacteria, Fungus
PCT, CRP
PCT: procalcitonin; CRP: C-reactive protein.
PCT: procalcitonin; CRP: C-reactive protein.
Quality assessment
The results for risk of bias are shown in Figure
2.
Figure 2.
Quality assessment of the included studies. Green: low risk of bias;
Blank: unclear risk of bias; Red: high risk of bias.
Meta-analysis of the detection indices
PCT. Forest plots for the concentration of PCT between
different groups are presented in Figures
3 and 4. The meta-analyses
results showed that the concentration of PCT in patients with bacterial
infection was much higher than that of control. When bacterial infection was
subdivided into G+ and G− bacterial infection, the concentration of PCT of these
two group were significantly above the concentration of the control group.
Besides, the concentration of PCT in patients with fungus infection exceeded
that of the control group.
Figure 3.
Forest plot for the concentration of procalcitonin (PCT) between
A) bacterial infection and control group,
B) G+ bacterial infection and control group,
C) G− bacterial infection and control group, and
D) fungus infection and control group.
Figure 4.
Forest plot for the concentration of procalcitonin (PCT) between
A) G+ bacterial infection and G− bacterial
infection group, B) G+ bacterial infection and fungus
infection group, and C) G− bacterial infection and
fungus infection group.
The concentration of PCT in patients with G− bacterial infection was much higher
than that of G+ bacterial infection and fungus infection group, while the
difference between G+ bacterial infection and fungus infection was not
significant.CRP. Figures 5 and 6 show the comparisons of CRP concentrations
between different groups. The result suggested that the concentration of CRP in
patients with bacterial infection was much higher than that of control. Four of
the 8 included studies assessed the concentration of CRP in patients infected by
different pathogenic microorganism. All patients with G+ bacterial, G−
bacterial, and fungus infections had higher concentration compared with the
control group.
Figure 5.
Forest plot for the concentration of CRP between A)
bacterial infection and control group, B) G+ bacterial
infection and control group, C) G− bacterial infection
and control group, and D) fungus infection and control
group.
Figure 6.
Forest plot for the concentration of CRP between A)
G+ bacterial infection and G− bacterial infection group,
B) G+ bacterial infection and fungus infection
group, and C) G− bacterial infection and fungus
infection group.
The concentration of CRP in patients infected by G− bacteria was much higher than
that of G+ bacterial infection and fungus infection groups, and the G+ bacterial
infection also had higher concentrations than the fungus infection group.
Bias analysis
Despite the high heterogeneities of the included studies, we were not concerned
about publication bias as only 8 articles were included (26).
Discussion
The use of PCT and CRP as biomarkers for discriminating bacterial infection has been
discussed in various studies, but this is the first meta-analysis that involved
comparing the difference of PCT and CRP in patients infected by different
pathogens.Decisions about antibiotic treatment for infections are made by physicians based on
detection results (27,28). In recent years, PCT and CRP are the two most common
markers, which are easy to assess and have high sensitivity and specificity (29,30).
It is known that serum PCT levels are higher in bacterial, fungal, and parasitic
infections than in viral infections or non-infectedpatients, which has made PCT a
guide to antibiotic treatment in pneumonia (31,32). The results of this study
showed that serum PCT concentration was significantly higher in patients with
bacterial pneumonia than patients without pneumonia. The level was the highest in
patients infected by G-bacteria, while the concentration in G+ bacterial infection
was as high as that in fungus infection. All these results suggested that PCT levels
could be useful in discriminating between these conditions, could help physicians’
decisions on using antibiotics or not.Previous studies have reported that PCT has a better sensitivity than CRP to
differentiate bacterial infections from non-bacterial infections, and the
reliability of the application of CRP in guiding antibiotic therapy still had
problems (33). Thus, PCT seems more accurate
than CRP. Although the power of CRP is lower, it could also help discriminate
different types of pneumonia infection. The results are promising because CRP was
significantly higher in bacterial infection compared with patients without
infection. Besides, unlike PCT, the concentration of CRP in G+ bacterial infection,
G− bacterial infection, and fungus infection group was different, which means that
physicians could identify the infection by measuring CRP levels.Though the concentrations of PCT and CRP in different infections were different, it
is necessary to establish a cut-off value. Unfortunately, the criteria used for
thresholds establishment in the included studies were heterogeneous, perhaps due to
the different profile of subjects or inclusion and exclusion criteria. Porfyridis et
al. (20) reported that serum PCT levels
<1.1 ng/mL were considered normal. We could not differentiate G+ bacterial
infection from fungus infection using PCT, as the concentrations were similar. From
index comprehensive results, we think that 10 ng/mL could be the cut-off value to
distinguish G− bacterial infection from G+ bacterial infection or fungus infection.
For CRP, if the concentration is <10 mg/L, we could discard bacterial infection
(18,19). As the concentration of CRP in G+ bacterial infection is about 48
mg/L and in G− bacterial infection the value is about two times higher, we think
70∼80 could be the cut-off value to distinguish between them.According to the above results, we suggest that to a certain extent both PCT and CRP
are helpful in differentiating different types of infections, and the levels could
aid clinicians in identifying those patients who do not need antibiotics as a
supplementary means. By reducing the number of less reliable tests such as leukocyte
count and white cell count, and consequently the unnecessary use of antibiotics, the
cost-effectiveness of detection is also increased.Although this study suggested that PCT and CRP could be the markers to diagnose
pulmonary infection, there are some potential biases and limitations in our study.
First, the increase of antibiotic therapy may reduce the levels of PCT and affect
the results. In addition, some studies that were included in our meta-analysis
enrolled patients with high willingness to participate and interested in improving
treatment and physicians with high motivation, which may have caused selection
biases. As high heterogeneities were observed in the meta-analyses, we selected
random effect models. The reasons for high heterogeneity are complex and we believe
that different test technologies and the limited number of included articles may be
the main causes. Thus, in-depth and high-quality research is required to reduce
heterogeneities and potential biases.With the abuse of antibiotics for pulmonary infection, the diagnosis needs to be more
sensitive and specific to help the decision-making process. We suggest that both PCT
and CRP levels may be helpful in diagnosing infections and distinguishing between
different pathogens.
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