| Literature DB >> 35313569 |
Shokoufeh Khanzadeh1, Brandon Lucke-Wold2, Fatemeh Eshghyar3, Katayoun Rezaei4, Alec Clark5.
Abstract
Ischemic and hemorrhagic strokes have multiple downstream consequences for patients. One of the most critical is poststroke infection (PSI). The goal of this systematic review and meta-analysis was to critically evaluate the literature regarding the use of the neutrophil to lymphocyte ratio (NLR) as a reliable means to detect early PSI development, particularly poststroke pneumonia (PSP) development to help clinicians institute early interventions and improve outcomes. The following were the inclusion criteria: (1) cross-sectional, case-control, and cohort studies; (2) studies comparing NLR data from PSI or PSP patients to controls; and (3) studies with a control group of stroke patients without infection. There was not any language or publication preference. The Newcastle-Ottawa Scale was used by two writers to assess the quality of the included studies. We assessed the certainty of the associations with GRADE methods. Web of Science, PubMed, and Scopus were searched, and 25 studies were included in the qualitative review. Among them, 15 studies were included in the meta-analysis. Standardized mean difference (SMD) was reported with a 95% confidence interval (CI) for the NLR levels. Patients with PSI had significantly higher NLR levels than stroke patients without infection (SMD = 1.08; CI 95% = 0.78-1.39, P value < 0.001). In addition, the NLR levels of the stroke patients with pneumonia were significantly higher than those without pneumonia (SMD = 0.98; CI 95% = 0.81-1.14, P value < 0.001). However, data extracted from the qualitative review suggested that NLR could not predict urinary tract infection, sepsis, or ventriculitis in stroke patients. Our study indicated that NLR could be recommended as an inexpensive biomarker for predicting infection, particularly pneumonia, in stroke patients. It can help clinicians institute early interventions that can reduce PSI and improve outcomes.Entities:
Mesh:
Year: 2022 PMID: 35313569 PMCID: PMC8934208 DOI: 10.1155/2022/1983455
Source DB: PubMed Journal: Dis Markers ISSN: 0278-0240 Impact factor: 3.434
Figure 1Flow chart of search and study selection.
General characteristics of included studies in meta-analysis.
| First author | Year of publication | Location | Design | Type of stroke | Mean age | Male (%) | Time of blood test | Time of monitoring presence of infection | NLR in PSI | NLR in PSP | NOS score | ||||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| PSI group | NPSI group | PSP group | NPSP group | ||||||||||||||||||
| Sample size | Mean | SD | Sample size | Mean | SD | Sample size | Mean | SD | Sample size | Mean | SD | ||||||||||
| Freng, H. | 2018 | East Asia | P | Ischemic | 69.32 | 60.52 | Within 24 h of admission | Not declared | — | — | — | — | — | — | 50 | 6.30 | 2.37 | 254 | 4.60 | 1.96 | 7 |
| Nam, K.W. | 2018 | East Asia | R | Ischemic | 67.00 | 60.00 | Within 24 h of admission | Within 7 days of admission | — | — | — | — | — | — | 112 | 4.20 | 3.43 | 1205 | 2.58 | 1.64 | 8 |
| Deng, Q.W. | 2020 | East Asia | P | Ischemic | 72.33 | 63.10 | Within 24 h of admission | Within 7 days of admission | 219 | 10.16 | 7.26 | 114 | 6.72 | 3.88 | — | — | — | — | — | — | 7 |
| Gemmeren, T.V. | 2020 | Europe | P | Ischemic | 74.33 | 60.00 | Within 24 h of admission | Within 7 days of admission | — | — | — | — | — | — | 27 | 6.11 | 4.77 | 68 | 3.48 | 0.87 | 9 |
| He, L. | 2020 | East Asia | P | Ischemic | 66.72 | 48.84 | Within 24 h of admission | Within 7 days of admission | 194 | 6.74 | 2.52 | 412 | 4.54 | 2.62 | — | — | — | — | — | — | 8 |
| Lan, Y. | 2020 | East Asia | R | Ischemic | 59.34 | 73.55 | Within 24 h of admission | Within 7 days of admission | 59 | 3.99 | 2.24 | 198 | 2.49 | 1.20 | — | — | — | — | — | — | 8 |
| Wang, L. | 2020 | East Asia | P | Ischemic | 66.94 | 48.37 | At 36 hours after | Within hospitalization | 299 | 8.65 | 5.34 | 499 | 3.49 | 2.37 | — | — | — | — | — | — | 7 |
| Zhu, Y. | 2020 | East Asia | R | Ischemic | 62.00 | 67.90 | Not declared | Within 7 days of admission | — | — | — | — | — | — | 31 | 16.33 | 13.83 | 81 | 6.23 | 4.22 | 7 |
| Cheng, W. | 2021 | East Asia | R | Ischemic | 63.94 | 47.94 | Within 24 h of admission | Within 7 days of admission | — | — | — | — | — | — | 52 | 3.83 | 2.84 | 682 | 2.20 | 1.07 | 7 |
| Gens, R. | 2021 | Europe | R | Ischemic | 75.03 | 53.89 | Within 24 h of admission | Within 7 days of admission | — | — | — | — | — | — | 79 | 4.10 | 2.10 | 435 | 2.80 | 1.90 | 6 |
| Kashiwasaki, D. | 2021 | East Asia | R | Hemorrhagic | 68.10 | 54.50 | Within 8 h of admission | Within hospitalization | 54 | 6.21 | 1.37 | 89 | 4.51 | 0.77 | — | — | — | — | — | — | 7 |
| Wang, Q. | 2021 | East Asia | R | Both types | 67.05 | 73.50 | Within 24 h of admission | Within 7 days of admission | — | — | — | — | — | — | 64 | 7.32 | 4.59 | 264 | 3.55 | 3.53 | 7 |
| Xia, G.H. | 2021 | East Asia | P | Ischemic | 60.07 | 70.48 | At admission | Within 7 days of admission | — | — | — | — | — | — | 80 | 6.05 | 4.30 | 252 | 2.79 | 1.49 | 8 |
| Zhang, H. | 2021 | East Asia | R | Ischemic | 68.00 | 64.00 | Within 24 h of admission | Within 7 days of admission | 51 | 4.28 | 2.46 | 328 | 2.64 | 1.13 | — | — | — | — | — | — | 6 |
| Zhang, B. | 2021 | East Asia | R | Ischemic | 63.33 | 65.50 | Within 24 h of admission | Within 7 days of admission | — | — | — | — | — | — | 120 | 10.50 | 6.90 | 138 | 6.53 | 3.82 | 6 |
P: prospective; R: retrospective; NLR: neutrophil to lymphocyte ratio; PSI: poststroke infection; NPSI: nonpoststroke infection; PSP: poststroke pneumonia; NPSP: nonpoststroke pneumonia; SD: standard deviation; h: hours.
General characteristic of studies included only in qualitative review.
| First author | Year of publication | Location | Design | Type of stroke | Mean age | Male (%) | Time of blood test | Time of monitoring presence of infection | Main findings | NOS score |
|---|---|---|---|---|---|---|---|---|---|---|
| Giede-Jeppe, A. | 2017 | Europe | P | Hemorrhagic | 70.74 | 46.54 | At admission | Within 7 days of admission | The NLR > 4.6 is a good predictor of PSP ( | 8 |
| Duan, Zh. | 2018 | East Asia | R | Ischemic | 65.66 | 39.45 | Within 4.5 h of admission | Not declared | The NLR > 7.0 is a good predictor of PSP ( | 9 |
| Almufti, F. | 2019 | USA | P | Hemorrhagic | – | 31 | Within 24 h of admission | Not declared | The NLR ≥ 5.9 is a good predictor of PSP ( | 7 |
| Giede-Jeppe, A. | 2019 | Europe | P | Hemorrhagic | 53 | 30.73 | At admission | Within 7 days of admission | The NLR ≥ 7.05 is a good predictor of PSP ( | 7 |
| Giede-Jeppe, A. | 2019 | Europe | P | Ischemic | 72.66 | 52.8 | At admission | Within hospitalization | NLR is independently associated with PSP (risk ratio [95% CI]: 1.083[1.019–1.151] per 1 point increment; | 5 |
| Guo, R. | 2019 | East Asia | R | Hemorrhagic | 46.09 | 57.93 | Within 24 h of admission | Within 7 days of admission | The NLR ≥ 8.25 is a good predictor of PSP ( | 6 |
| Kakhki, R.D. | 2020 | Iran | P | Both types | 66.96 | 47.77 | At admission | Not declared | The NLR > 5.0 is a good predictor of PSI in patients with ischemic ( | 5 |
| Gusdon, A. | 2021 | USA | P | Hemorrhagic | 54 | 35 | Within 5 days of admission | Not declared | The NLR ≥ 8.25 is a good predictor of PSI ( | 6 |
| Hou, D. | 2021 | East Asia | P | Both types | 81.29 | 51.79 | At admission | Within hospitalization | The NLR > 5.0 is a good predictor of PSP ( | 6 |
| Kim, T.J. | 2021 | East Asia | R | Ischemic | 97.7 | 59.7 | At admission | Within hospitalization | The NLR is a good predictor of PSP ( | 5 |
P: prospective; R: retrospective; NLR: neutrophil to lymphocyte ratio; PSI: poststroke infection; PSP: poststroke pneumonia; UTI: urinary tract infection.
GRADE evidence profile for cohort studies of the neutrophil to lymphocyte ratio in poststroke infection.
| Certainty assessment | No. of patients | Certainty7 | Importance | |||||||
|---|---|---|---|---|---|---|---|---|---|---|
| No. of studies | Study design | Risk of bias2 | Inconsistency3 | Indirectness | Imprecision5 | Publication bias6 | Participants, | Cases, | ||
| Poststroke infection | ||||||||||
| 6 | Observational studies | Not serious | Very serious | Not serious | Not serious | None | 2416 | 876 | ⨁◯◯◯ | Critical |
| Poststroke pneumonia | ||||||||||
| 9 | Observational studies | Not serious | Serious | Not serious | Not serious | None | 3994 | 615 | ⨁◯◯◯ | Critical |
1Grading of Recommendations Assessment, Development and Evaluation. 2Risk of bias based on Newcastle-Ottawa Scale. 3When I2 was <30% inconsistency considered as not serious limitation, >50 considered as serious, and more than 75% considered as very serious limitation. 5Serious limitations when there was fewer than 4000 participants for each outcome and very serious limitations when there was fewer than 300 participants for each outcome. 6Funnel plot revealed no asymmetry; neither test of publication bias approached P < 0.10. 7Data from cohort studies begin with a grade of “low.” Downgraded for very serious inconsistency. 8Data from cohort studies begin with a grade of “low.” Downgraded for serious inconsistency.
Figure 2Meta-analysis of differences in NLR level between PSI and NPSI patients.
Figure 3Subgroup analysis of differences in NLR level between PSI and NPSI according to study design.
Figure 4Meta-analysis of differences in NLR level between PSP and NPSP patients.
Figure 5Subgroup analysis of differences in NLR level between PSP and NPSP according to study design.
Figure 6Subgroup analysis of differences in NLR level between PSP and NPSP according to study location.
Figure 7(a) Publication bias assessment based on Funnel plot and Egger's test in data of PSI. (b) Publication bias in data of PSP.