Literature DB >> 31920297

Peripheral Blood Eosinophil as a Biomarker in Outcomes of Acute Exacerbation of Chronic Obstructive Pulmonary Disease.

Hong-Xia Wu1, Kai-Quan Zhuo2, De-Yun Cheng1.   

Abstract

Purpose: Mounting evidence suggests that eosinophil levels correlate with the effects of therapy and phenotype for chronic obstructive pulmonary disease (COPD). This study aimed to clarify the relationship between eosinophil levels and clinical outcomes in patients with acute exacerbation of COPD (AECOPD).
Methods: A prospective, multicenter, observational cohort study was performed in three teaching hospitals. Patients were grouped by quartile percentage (0, 0.7, 2.55) and absolute blood eosinophils count (0, 0.05×109/L, 0.17×109/L) and divided into four numbered groups ranked from low to high.
Results: The study included 493 AECOPD patients. In the percentile-ranked groups, patients in Group 1 experienced significantly longer hospital stays, higher rates of both noninvasive mechanical ventilation (NIMV), and heart failure than those in Group 4 (12 days vs 10 days, p = 0.005; 29.5% vs 23.6%, p = 0.007; 48.4% vs 28.5%, p = 0.001). Group 1 also had higher frequencies of respiratory failure and pulmonary heart disease compared to Groups 3 and 4 (54.8% vs 34.8%, p = 0.002; 54.8% vs 35%, p = 0.003). In the absolute count-ranked groups, patients in Group 1 had significantly higher rates of NIMV than those in Group 3 (41.1% vs 21.7%, p = 0.001), had higher rates of heart failure, respiratory failure, and pulmonary heart disease than those in Group 3 and 4 (48.1% vs 30.2%, p = 0.003; 48.1% vs 30.4%, p = 0.005; 50.8% vs 32.2%, p = 0.004; 50.8% vs 34.1%, p = 0.008; 51.9% vs 34.1%, p = 0.004; 51.9% vs 33%, p = 0.003). There were outcome differences among the admitting hospital of stays in the absolute count groups (p = 0.002), but the differences were not significant in a pairwise comparison. The proportion of ICU admissions and mortality was different in two cohorts with no difference in a pairwise comparison.
Conclusion: Patients with lower eosinophil counts experienced poorer clinical outcomes. Eosinophil levels may be a helpful marker to predict outcomes in AECOPD.
© 2019 Wu et al.

Entities:  

Keywords:  biomarkers; chronic obstructive pulmonary disease; eosinophils; exacerbation; mortality

Mesh:

Substances:

Year:  2019        PMID: 31920297      PMCID: PMC6935282          DOI: 10.2147/COPD.S226783

Source DB:  PubMed          Journal:  Int J Chron Obstruct Pulmon Dis        ISSN: 1176-9106


Introduction

Chronic obstructive pulmonary disease (COPD) is a fatal disease that is projected to be the third most common cause of death worldwide within the next three years.1 COPD is a heterogeneous disease that exhibits complex pathological features. Exacerbations of COPD are defined as an acute worsening of respiratory symptoms resulting in a need for additional therapy.2,3 Aside from neutrophilic inflammation, eosinophilic inflammation is a new area of research. The latest studies demonstrated that eosinophilic inflammation exists in both stable and acute exacerbations of COPD (AECOPD).4,5 Mounting evidence suggests that eosinophil levels may be related to the effects of therapy and outcomes, even in the absence of asthma.6–9 Blood eosinophils are usually used as a biomarker for response to inhaled steroids (ICS) and exacerbation risk in stable COPD.10–16 Bafadhel et al found that eosinophil count (100/µL and 300/µL) predicted the risk of exacerbations and the response to treatment with ICS in patients with COPD.17 Blood eosinophil counts are recommended by the Global Initiative for Chronic Obstructive Lung Disease (GOLD) as a biomarker to guide ICS therapy in clinical practice.1 However, the effect of blood eosinophil in stable and acute cases may be different. Saltürk et al reported that patients with eosinophil levels less than 2% experienced shorter intensive care unit (ICU) stays and lower mortality rates.18 Similarly, Kang suggested better pulmonary function, lower admissions to the ICU, and mortality in a group with eosinophil levels less than 2%.19 Duman et al reported that shorter hospital stays and lower readmission rates were found in the group with eosinophilia, but no differences were found in six-month mortality.20 Patients with AECOPD, and low (< 50/µL) eosinophil were strongly associated with longer median hospital stay (7 vs 4 days, P < 0.001), and lower 12-month survival (82.4% vs 90.7%, P < 0.028) than patients with high (> 150/µL) eosinophil counts.21 An eosinophil value of < 0.144×109/L (or less than 2%) on admission was associated with a longer hospital stay for AECOPD.22 However, the effect of blood eosinophil in AECOPD outcomes remains controversial. Two studies found longer hospitalization,23,24 a greater need for mechanical ventilation,23 and increased mortality23,24 in the group with eosinophilia. Further, a higher frequency of readmission for AECOPD25 and a higher rate of exacerbations26 have been found in those with eosinophilia. This study aimed to investigate the effect of peripheral blood eosinophil in patients who experienced AECOPD.

Methods

This prospective, multicenter study was conducted in three university-affiliated hospitals in China. Patients who were hospitalized for AECOPD between September 2018 and February 2019 were enrolled. The study was approved by the local ethics committee (Biomedical Ethics Committee of West China Hospital of Sichuan University) and complied with the Declaration of Helsinki. All patients provided written informed consent. The study was registered in the Chinese Clinical Trial Registry (ChiCTR1900024210). All data were collected from questionnaire surveys and hospital databases.

Subject

The definitions of COPD were based on the GOLD criteria. Spirometry is required to diagnose COPD. The presence of a post-bronchodilator FEV1/FVC ratio < 0.70 confirms the presence of persistent airflow limitation and, thus, COPD in patients with appropriate symptoms and significant exposures to noxious stimuli.1 COPD exacerbations are defined as an acute worsening of respiratory symptoms that result in additional therapy.1 Inclusion criteria were as follows: ≥ 40 years of age with AECOPD; routine baseline peripheral blood test was performed before receiving any antibiotic or systemic corticosteroid therapy (prednisone > 0.5 mg/kg or equivalent doses). Patients admitted due to other medical problems, those with a history of asthma, active pulmonary tuberculosis, interstitial pulmonary disease or lung cancer, those undergoing chronic oral steroid therapy, those with other diseases that could influence eosinophil count (allergic diseases, parasitic infections, eosinophilic pneumonia), and individuals with severe dysfunction of other organs or systems or malignant tumors were excluded.

Measurements

Patient baseline characteristics, including age, sex, body mass index, allergy history, smoking history, duration of disease, long-term home oxygen therapy, regular medications, heart and respiratory rate on admission, comorbidities (hypertension, diabetes mellitus, arrhythmia, chronic ischemic heart disease, congestive heart failure, peripheral vascular disease, bronchiectasis, respiratory failure, and pulmonary heart disease), manner of hospital admission, the number of hospital or emergency admissions in the previous year, laboratory data (routine blood test and arterial blood gas analysis), admission to the ICU, length of hospital stay, rate, and duration of noninvasive mechanical ventilation (NIMV), and hospital medical treatment and mortality, were recorded. A COPD assessment test (CAT), modified British Medical Research Council (mMRC), and the refined ABCD assessment were also evaluated using questionnaires. The primary outcome measure was the length of the hospital stay. Secondary outcome measures included ICU admission rate, and duration of noninvasive ventilation, comorbidities, and mortality.

Analysis

Clinical outcomes were compared among patients grouped according to quartile-percent and absolute count of peripheral blood eosinophils (From low to high: Groups 1, 2, 3, 4). Pearson’s chi-squared test or Fisher’s exact was used to compare discrete variables. The Kruskal–Wallis test was used for pairwise comparisons if differences were revealed using the chi-squared test. Analysis of variance and nonparametric tests were used to compare continuous variables. Kaplan-Meier analysis was performed to identify the associated factors and hospital length of stay. The receiver operating characteristic (ROC) curve with the calculation of the area under the curve (AUC) was used to identify the cutoff values of eosinophils associated with longer hospital lengths of stay. A two-sided P ≤ 0.05 was statistically significant. One-sixth of the P-value ≤ 0.05 was statistically significant in the Kruskal–Wallis test. All statistical analyses were performed using SPSS version 25.0 (IBM Corporation, Armonk, NY, USA).

Results

Overall, 1099 COPD patients who experienced acute exacerbations were admitted during the study period, of whom 493 were analyzed (Figure 1). Medians of percentage and absolute count of peripheral blood eosinophils were 0.7% (interquartile range [IQR] 0–2.55) and 0.05 ×109/L (IQR 0–0.17) in total. Patients were classified according to percentage of eosinophil quartile as follows: Group 1 (n = 124), Group 2 (n = 131), Group 3 (n = 115), and Group 4 (n = 123). Similarly, patients were classified according to eosinophil count quartile as follows: Group 1 (n = 129), Group 2 (n = 120), Group 3 (n = 129) and Group 4 (n = 115). The proportion of males in the present study was 69.2%. The median (IQR) age, BMI, course of disease, and length of hospital stay were 76 (68–83) years, 21.224 (18.5–24.315) kg/m2, 10 (5–20) days and 11(9–14) days, respectively. The clinical characteristics and laboratory findings on admission of the patients are summarized in Tables 1–4. AECOPD was treated with oxygen therapy, atomization, antibiotics, or systemic steroids. Antibiotics and systemic steroids were prescribed at the discretion of the attending physician.
Figure 1

Flow chart of subjects.

Table 1

Patients’ Characteristics on Admission of Quartile-Percentage of Eosinophil Cohorts

VariablesPercentage of Peripheral Blood Eosinophila
GroupsOverall1234
Participants, n493124131115123
Gender, n (%)Female149(30.2)38(30.6)39(29.8)37(32.2)35(28.5)
Male344(69.8)86(69.4)92(70.2)78(67.8)88(71.5)
Year, median (IQR)76(68–83)76(69–83)75(66–81)77(67–83)77(69–82)

BMI, median (IQR)

21.224(18.5–24.315)21.1(17.8–24.22)21.09(18.75–23.88)20.98(18.83–24.86)21.71(18.59–24.73)

Course of disease, year, median (IQR)

10(5–20)10(5–29)10(5–20)10(5–15)10(5–10)

Allergic history, n (%)

15(3)3(2.4)9(6.9)1(0.9)2(1.6)

Smoking history, n (%)

Current smoking40(8.1)15(12.1)11(8.4)8(7)6(4.9)
Ex-smoking273(55.4)67(54)69(52.7)68(59.1)69(56.1)
No-smoking180(36.5)42(33.9)51(38.9)39(33.9)48(39)
Smoking index, median600(400–900)600(300–800)600(400–1000)600(300–1000)600(300–900)
HR, median (IQR)88(78–96.5)90(80–98.75)89(80–96)86(77–97)82(76–93)
RR, median (IQR)20(20–21)20(20–22)20(20–21)20(20–21)20(20–21)
LTOT, n (%)246(49.9)70(56.5)71(54.2)53(46.1)52(42.3)

Daily treatment

ICS, n (%)176(35.7)48(38.7)50(38.2)36(31.3)42(34.1)
LABA, n (%)176(35.7)48(38.7)50(38.2)36(31.3)42(34.1)
LAMA, n (%)106(21.5)32(25.8)24(18.3)21(18.3)29(23.6)
CAT, median (IQR)18(14–26)19.5(14.25–27)18(14–26)19(14–26)18(13–26)
mMRC, median (IQR)2(1–3)2(1–3)2(1–3)2(1–3)2(1–3)

Moderate or severe exacerbation history in previous year, median (IQR)

1(0–2)1(0–2)2(1–3)2(0–3)1(0–2)

Exacerbations leading to hospital or emergency admission in previous year, median (IQR)

1(0–2)1(0–2)1(0–3)1(0–3)1(0–2)
ABCD assessment, n (%)A124(25.2)1(0.8)39(31.5)2(1.6)82(66.1)
B131(26.6)2(1.5)29(22.1)2(1.5)98(74.8)
C115(23.3)2(1.7)34(29.6)1(0.9)78(67.8)
D123(24.9)2(1.6)36(29.3)1(0.8)84(68.3)
Pattern of admission, n (%)

Outpatient service

286(58)69(55.6)58(44.3)78(67.8)81(65.9)
Emergency207(42)55(44.4)73(55.7)37(32.2)42(34.1)

Notes: aPatients were grouped by quartile percentage (0, 0.7, 2.55) of blood eosinophils and divided into group 1, 2, 3 and 4 (from low to high).

Abbreviations: IQR, interquartile range: 25%–75%; n, number; BMI, body mass index; ICS, inhaled corticosteroids; LAMA, long-acting muscarinic antagonist; LABA, long-acting beta agonist; HR, heart rate; RR, respiratory rate; LTOT, long-term oxygen therapy; CAT, COPD assessment test; mMRC, modified British medical research council.

Table 4

Patients’ Laboratory Findings on Admission of Quartile-Count of Eosinophil Cohorts

VariablesOverallAbsolute Count of Peripheral Blood Eosinophild
Groups1234P value
Arterial blood gas analysisPH7.416(7.3835–7.447)7.411(7.367–7.45)7.421(7.387–7.456)7.412(7.385–7.439)7.417(0.045)*0.421
PaO2, mmHg82(66.85–104)85(64.95–102)88.5(67.925–107.3)80(64.9–105)78(68–102)0.365
PaCO2, mmHg41.2(36.5–50.55)43.3(37.85–57)40.3(34.75–51.175)41.2(36.6–47.6)40.6(36.5–46.5)0.079
SaO2%96.2(93–98.1)96(92–98)97(94–98.65)96(92–98)96.6(94–98)0.125
FiO20.29(0.29–0.33)0.29(0.29–0.33)0.29(0.29–0.33)0.29(0.29–0.315)0.29(0.29–0.33)0.286
PaO2/FiO2286.207(234.483–347.414)279.31(234.483–336.207)296.552(241.413–357.537)280.952(234.483–359.785)278.276(227.879–344.276)0.338
PaO2/SaO20.854(0.712–1.058)0.88(0.707–1.046)0.904(0.72–1.097)0.833(0.699–1.071)0.813(0.736–1.041)0.455
Blood routineLeukocyte count, 109/L7.31(5.54–10.125)7.79(5.85–10.95)8.49(5.913–11.398)6.64(5.09–9.015)6.84(5.55–8.5)0.001
Neutrophil count, 109/L5.43(3.75–8.305)6.56(4.72–9.51)6.71(4.2875–9.508)4.63(3.475–6.92)4.43(3.35–6.09)0.000
Lymphocyte count, 109/L1.06(0.7–1.51)0.69(0.46–1.115)1.05(0.703–1.05)1.21(0.87–1.665)1.18(0.95–1.79)0.000
Monocyte count, 109/L0.5(0.36–0.69)0.41(0.24–0.585)0.525(0.4–0.725)0.52(0.385–0.685)0.54(0.39–0.69)0.000
Eosinophil count, 109/L0.05(0–0.17)0(0)0.02(0.01–0.04)0.1(0.08–0.14)0.27(0.21–0.41)0.000
Basophil count, 109/L0.02(0.01–0.03)0.01(0.01–0.02)0.01(0.01–0.02)0.02(0.01–0.04)0.03(0.02–0.04)0.000
Neutrophil, %76.1(66.4–83.9)83.667(7.299)*79.65(72.225–5.6)70.3(63.5–77.25)64.6(59.5–74.7)0.000
Lymphocyte, %14.7(9.3–21.05)10.4(6–14.6)12.45(8.5–17.475)18.3(12.3–26.95)19.7(13.1–26.2)0.000
Monocyte, %6.9(5–8.8)5.1(3.1–6.55)6.5(4.725–8.7)7.7(5.95–9.3)8.073(2.453)*0.000
Eosinophil, %0.7(0–2.55)0(0)0.3(0.1–0.4)1.5(1–2.35)4.4(3.3–5.6)0.000
Basophil, %0.2(0.1–0.4)0.1(0.1–0.2)0.2(0.1–0.2)0.3(0.2–0.6)0.4(0.2–0.6)0.000

Notes: dPatients were grouped by quartile absolute count (0, 0.05×109/L, 0.17×109/L) of blood eosinophils and divided into group 1, 2, 3 and 4 (from low to high). *Mean (SD, standard deviation).

Abbreviations: IQR, interquartile range: 25%–75%; E%, percent of blood eosinophil in white blood cell; E, absolute count of peripheral blood eosinophil.

Patients’ Characteristics on Admission of Quartile-Percentage of Eosinophil Cohorts BMI, median (IQR) Course of disease, year, median (IQR) Allergic history, n (%) Smoking history, n (%) Daily treatment Moderate or severe exacerbation history in previous year, median (IQR) Exacerbations leading to hospital or emergency admission in previous year, median (IQR) Outpatient service Notes: aPatients were grouped by quartile percentage (0, 0.7, 2.55) of blood eosinophils and divided into group 1, 2, 3 and 4 (from low to high). Abbreviations: IQR, interquartile range: 25%–75%; n, number; BMI, body mass index; ICS, inhaled corticosteroids; LAMA, long-acting muscarinic antagonist; LABA, long-acting beta agonist; HR, heart rate; RR, respiratory rate; LTOT, long-term oxygen therapy; CAT, COPD assessment test; mMRC, modified British medical research council. Patients’ Characteristics on Admission of Quartile-Count of Eosinophil Cohorts Notes: bPatients were grouped by quartile absolute count (0, 0.05×109/L, 0.17×109/L) of blood eosinophils and divided into group 1, 2, 3 and 4 (from low to high). *Mean (SD, standard deviation). Abbreviations: IQR, interquartile range: 25%–75%; n, number; BMI, body mass index; ICS, inhaled corticosteroids; LAMA, long-acting muscarinic antagonist; LABA, long-acting beta agonist; HR, heart rate; RR, respiratory rate; LTOT, long-term oxygen therapy; CAT, COPD assessment test; mMRC, modified British medical research council. Patients’ Laboratory Findings on Admission of Quartile-Percentage of Eosinophil Cohorts Notes: cPatients were grouped by quartile percentage (0, 0.7, 2.55) of blood eosinophils and divided into group 1, 2, 3 and 4 (from low to high). *Mean (SD, standard deviation). Abbreviations: IQR, interquartile range: 25%–75%; E%, percent of blood eosinophil in white blood cell; E, absolute count of peripheral blood eosinophil. Patients’ Laboratory Findings on Admission of Quartile-Count of Eosinophil Cohorts Notes: dPatients were grouped by quartile absolute count (0, 0.05×109/L, 0.17×109/L) of blood eosinophils and divided into group 1, 2, 3 and 4 (from low to high). *Mean (SD, standard deviation). Abbreviations: IQR, interquartile range: 25%–75%; E%, percent of blood eosinophil in white blood cell; E, absolute count of peripheral blood eosinophil. Flow chart of subjects. The primary outcome measure was the length of the hospital stay. The length of hospital stays was found to be different in the two types of groups (p = 0.01, p = 0.002) (Tables 5 and 6). In pairwise comparison, a significantly longer hospital stay was found in Group 1 than in Group 4 in the quartile-percentage eosinophil cohorts (12 vs 10 days; p = 0.005).
Table 5

Comparison of Clinical Outcomes of Quartile-Percentage of Eosinophil Cohorts

VariablesSumPercentage of Peripheral Blood EosinophileP value
Groups1234
Participants, n493124131115123493
Stay of hospital, median (IQR)11(9–14)12(9.25–14)11(8–14)11(9–14)10 (9–13) *0.01
ICU admission, n (%)6(1.2)5(1)0(0)0(0)1(0.2)0.009*
Mortality, n (%)5(1)0(0)4(0.8)1(0.2)0(0)0.05*
Comorbidity, n (%)Cardiovascular disease371(75.3)101(81.5)99(75.6)85(73.9)86(69.9)0.207
Ischemic heart disease73(14.8)15(12.1)21(16)19(16.5)18(14.6)0.775
Heart failure188(38.1)60(48.4)56(42.7)37(32.2)35(28.5)0.004
Hypertension207(42)51(41.1)56(42.7)53(46.1)47(38.2)0.67
Peripheral vascular disease63(12.8)18(14.5)13(9.9)15(13)17(13.8)0.714
Arrhythmia78(15.8)25(20.2)16(12.2)19(16.5)18(14.6)0.365
Diabetes81(16.4)19(15.3)28(21.4)19(16.5)15(12.2)0.258
Bronchiectasis87(17.6)21(16.9)27(20.6)19(16.5)20(17.3)0.776
Respiratory failure215(43.6)68(54.8)64(48.9)40(34.8)43(35)0.002
Pulmonary heart disease203(41.2)63(50.8)61(46.6)37(32.2)42(34.1)0.005
Mechanical ventilation, n (%)NIMV147(29.8)49(29.5)43(32.8)26(22.6)29(23.6)0.011
IMV4(0.8)2(0.4)1(0.2)0(0)1(0.2)0.757*
Duration of NIMV238(139.75–309.75)235 (124.5–305.5)274.47 (139.482) **282.5 (193.5–339)214.29 (103.241)0.381

Notes: ePatients were grouped by quartile percentage (0, 0.7, 2.55) of blood eosinophils and divided into group 1, 2, 3 and 4 (from low to high). *Fisher’s exact probability method; **Mean (SD, standard deviation).

Abbreviations: IQR, interquartile range: 25%–75%; N, number; E%, percent of blood eosinophil in white blood cell; E, absolute count of peripheral blood eosinophil; ICU, intensive care unit; NIMV, noninvasive mechanical ventilation; IMV, invasive mechanical ventilation.

Table 6

Comparison of Clinical Outcomes of Quartile-Count of Eosinophil Cohorts

VariablesOverallAbsolute Count of Peripheral Blood Eosinophilf
Groups1234P value
Participants, n493129120129115
Stay of hospital, median (IQR)11(9–14)12(10–14)10(8–14)11(8–13)10(9–13)0.002
ICU admission, n (%)6(1.2)5(1)0(0)0(0)1(0.2)0.01
Mortality, n (%)5(1)1(0.2)3(0.6)1(0.2)0(0)0.283*
Comorbidity, n (%)Cardiovascular disease371(75.3)103(79.8)91(75.8)97(75.2)80(69.6)0.325
Ischemic heart disease73(14.8)15(11.6)20(16.7)19(14.7)19(16.5)0.663
Heart failure188(38.1)62(48.1)52(43.3)39(30.2)35(30.4)0.005
Hypertension207(42)50(38.8)52(43.3)57(44.2)48(41.7)0.824
Peripheral vascular disease63(12.8)18(14)11 (9.2)18 (14)16(13.9)0.613
Arrhythmia78(15.8)24(18.6)18(15)20(15.5)16(13.9)0.767
Diabetes81(16.4)20(15.5)25(20.8)21(16.3)15 (13)0.433
Bronchiectasis87(17.6)22(17.1)24(20)21(16.3)20(17.4)0.884
Respiratory failure215(43.6)72(55.8)52(43.3)48(37.2)43(37.4)0.008
Pulmonary heart disease203(41.2)67(51.9)54(45)44(34.1)38(33)0.005
Mechanical ventilation, n (%)NIMV147(29.8)53(41.1)37(30.8)28(21.7)29(25.2)0.005
IMV4(0.8)2(0.4)1(0.2)0(0)1(0.2)0.657*
Duration of NIMV238(139.75–309.75)237(138.5–320)242.49(148.295)**242.71(116.665)**241(164.25–304.25)0.994

Notes: fPatients were grouped by quartile absolute count (0, 0.05×109/L, 0.17×109/L) of blood eosinophils and divided into group 1, 2, 3 and 4 (from low to high).IQR, interquartile range: 25%–75%; *Fisher’s exact probability method; **Mean (SD, standard deviation).

Abbreviations: N, number; E%, percent of blood eosinophil in white blood cell; E, absolute count of peripheral blood eosinophil; ICU, intensive care unit; NIMV, noninvasive mechanical ventilation; IMV, invasive mechanical ventilation.

Comparison of Clinical Outcomes of Quartile-Percentage of Eosinophil Cohorts Notes: ePatients were grouped by quartile percentage (0, 0.7, 2.55) of blood eosinophils and divided into group 1, 2, 3 and 4 (from low to high). *Fisher’s exact probability method; **Mean (SD, standard deviation). Abbreviations: IQR, interquartile range: 25%–75%; N, number; E%, percent of blood eosinophil in white blood cell; E, absolute count of peripheral blood eosinophil; ICU, intensive care unit; NIMV, noninvasive mechanical ventilation; IMV, invasive mechanical ventilation. Comparison of Clinical Outcomes of Quartile-Count of Eosinophil Cohorts Notes: fPatients were grouped by quartile absolute count (0, 0.05×109/L, 0.17×109/L) of blood eosinophils and divided into group 1, 2, 3 and 4 (from low to high).IQR, interquartile range: 25%–75%; *Fisher’s exact probability method; **Mean (SD, standard deviation). Abbreviations: N, number; E%, percent of blood eosinophil in white blood cell; E, absolute count of peripheral blood eosinophil; ICU, intensive care unit; NIMV, noninvasive mechanical ventilation; IMV, invasive mechanical ventilation. The secondary outcomes were the rate and duration of NIMV, comorbidities, mortality, and ICU admission. The frequencies of heart failure, respiratory failure, and pulmonary heart disease were found to be different between the two classified cohorts (p = 0.004, p = 0.005; p = 0.002, p = 0.008; p = 0.005, p = 0.005, respectively) (Tables 5 and 6). In the quartile-percentage eosinophil cohorts, patients in Group 1 experienced significantly higher rates of heart failure than those in Group 4 (48.4% vs 28.5%, p = 0.001), had higher frequencies of respiratory failure and pulmonary heart disease compared with those in Groups 3 and 4 in a pairwise comparison (54.8% vs 34.8%, p = 0.002; 54.8% vs 35%, p = 0.003; 50.8% vs 32.2%, p = 0.004; 50.8% vs 34.1%, p = 0.008). In the eosinophil count cohorts, patients in Group 1 had significantly higher rates of heart failure, respiratory failure, and pulmonary heart disease than those in Groups 3 and 4 in a pairwise comparison (48.1% vs 30.2%, p = 0.003; 48.1% vs 30.4%, p = 0.005; 55.8% vs 37.2%, p=0.003; 55.8% vs 37.4%, p=0.004; 51.9% vs 34.1%, p = 0.004; 51.9% vs 33%, p = 0.003). Except for the duration of NIMV, the proportion of ICU admission, NIMV, and mortality were found to vary among groups (p = 0.009, p = 0.01; p = 0.011, p = 0.005; p = 0.05, p = 0.283) (Tables 5 and 6). There was a significantly higher rate of NIMV in Group 1 than in Group 4 in the percentage of eosinophil cohorts (29.5% vs 23.6%, p = 0.007). Comparable results were found in Group 1 compared to Group 3 in the eosinophil count cohorts (41.1% vs 21.7%, p = 0.001). No difference was found in mortality or ICU admission in a pairwise comparison (p>0.008). Kaplan-Meier analyses identified a significant difference between eosinophil groups in length of hospital stay in both quartile-percentage and absolute count of eosinophil groups (P < 0.023; P < 0.035) ( and , –). The median hospital stays were both 11 days for the absolute count and quartile-percentage eosinophil groups. Using the median hospital stay (11 days) as the cutoff value, ROC analysis of the cutoff values of blood eosinophil for longer hospital stay at ≥ 11 days were as follows: percentage of eosinophil < 0.45 was associated with a longer hospital stay (AUC: 0.585, sensitivity: 0.534, specificity: 0.613, P = 0.001), while an eosinophil count of < 0.025×109/L (AUC: 0.579, sensitivity: 0.336, specificity: 0.805, P = 0.003) was associated with a longer hospital stay. Details are shown in and . A sensitivity analysis was performed to address potential bias from analytical methods. Associations between eosinophil classification and clinical outcomes were further surveyed using different cutoffs to define eosinophilia. Alternative cutoffs of 2%, 100/µL, and 300/µL were used to verify the difference in the hospital stay length, ICU admission, rate, and duration of noninvasive ventilation, comorbidities, and mortality. Analysis of the 2% cutoff showed there are 151 patients (30.63%) with eosinophil ≥ 2%. Patients with eosinophil < 2% experience longer hospital stays and more respiratory failures (). There are 177 patients (35.9%) with eosinophil ≥ 100/µL. Patients with eosinophil counts < 100/µL were associated with longer hospital stays and higher proportions of NIMV, respiratory failure, heart failure, and pulmonary heart disease (). Only 43 patients (8.7%) had eosinophil ≥ 300/µL. Patients with eosinophil counts < 300/µL were associated with longer durations of NIMV, and higher proportions of heart failure and pulmonary heart disease (). Different ways of grouping showed comparable results; patients with lower eosinophil experience poorer clinical outcomes in patients with AECOPD.

Discussion

We analyzed the clinical characteristics and outcomes of AECOPD patients according to the percent and absolute count of eosinophils based on routine blood counts. We found that patients with higher eosinophil levels experienced better clinical outcomes. A significantly higher proportion of COPD patients with lower eosinophil counts required a longer hospital stay, NIMV, and experienced more complications. Patients with lower eosinophilic COPD exhibited a higher rate of heart failure, respiratory failure, and pulmonary heart disease than those in the higher eosinophilic COPD group. There are several explanations for why COPD patients with lower eosinophil counts experienced poorer outcomes. First, lower eosinophilic COPD patients had higher neutrophil counts in our analysis. Neutrophilia is known to be a marker of bacterial infection, which is a common cause of exacerbation. COPD exacerbations caused by bacterial infection are also associated with longer hospital stays.4,24,27 Collinearity diagnosis was performed on the logistic regression model to verify the correlation between eosinophil and neutrophil. There was no collinearity between the eosinophil count, neutrophil count, percentage of eosinophil, and neutrophil variation (). Therefore, we believe that neutrophil and eosinophil are independent factors. Second, an appropriate treatment with antibiotics and systemic corticosteroids can shorten recovery time and hospital stay. The decision for antibiotics and systemic corticosteroids used in our study was based on white blood cell counts, neutrophil levels, inflammatory biomarkers, patient signs and symptoms, chest imaging, and general clinical practice, without controlled peripheral eosinophils. Most patients in our study were prescribed antibiotics. However, lower eosinophilic COPD patients had a significantly higher frequency of systemic corticosteroid treatment. It has been reported that exacerbations associated with an increase in sputum or blood eosinophil levels may be more responsive to systemic steroids.28 Additionally, two recent studies reported that glucocorticoids might be less effective in AECOPD patients with lower levels of blood eosinophils.4,29 In this study, higher eosinophilic COPD patients may have benefitted from receiving more systemic steroids. More prospective trials are needed to verify this assertion. Although the proportion of ICU admissions and mortality were different among the groups, no difference was found in the pairwise comparison. The number of ICU admissions and mortalities in our study was only 6 and 5, respectively. Moreover, there were no participants in some groups. As such, the validity and reliability of these two analyses are limited. Thus, a study with larger sample size is needed. In an analysis of the SubPopulations and InteRmediate Outcome Measures In COPD Study (SPIROMICS), significant differences were found in age, sex, BMI, percentage, predicted forced expiratory volume in one second (ppFEV1), FEV1/FVC ratio and smoking. However, there is no evidence of a GOLD stage between lower eosinophil (< 200/μL) and higher eosinophil (≥ 200/μL) groups.14 SPIROMICS was a retrospective observational cohort study that enrolled patients with a smoking history of at least 20 packs of cigarettes per year. Patients exhibited symptoms, exacerbations, activity limitations, and radiological evidence of airway disease. However, preserved lung functions not meeting the criteria for COPD diagnosis were included. These early COPD participants may have influenced the results. In a retrospective, observational study conducted in the ICU, patients with non-eosinophilic COPD had a higher rate of NIMV on admission, NIMV failure, ICU mortality, arrhythmia, and a longer ICU stay than those with eosinophilic COPD.18 In this study, COPD patients were classified according to eosinophil levels (eosinophilic > 2% or non-eosinophilic ≤ 2%). However, some patients were treated with antibiotics or steroids before ICU admission, which may have affected the results. Singh et al5 reported on COPD subjects with eosinophils ≥ 2%, who were characterized by older age, a higher proportion of males, higher ppFEV1, fewer current smokers, better scores on the St. George’s Respiratory Questionnaire (SGRQ) and mMRC than non-eosinophil COPD and healthy control groups. Data from this analysis were from the Evaluation of COPD Longitudinally to Identify Predictive Surrogate Endpoints (ECLIPSE) study, which enrolled GOLD stage II–IV COPD patients with a smoking history ≥ 10 pack of cigarettes per year. The ECLIPSE study was a 3-year investigation, involving subjects > 75 years old with severe complications, who might not complete the study and were excluded. Data from those with mild COPD, older age, and those with severe complications were absent in this study. However, Couillard et al30 reported that there was no significant difference in sex, age, smoking, home oxygen use, comorbidity, lung function, GOLD stage, and hospitalization for COPD in the previous year between the two COPD phenotypes. Moreover, there was no difference in length of hospital stay. That was a retrospective observational study that enrolled patients who were hospitalized for AECOPD. Eosinophils ≥ 200/μL or ≥ 2% was considered as the cutoff for group allocation. Participants with a history of asthma and bronchiectasis, admission for pneumonia, therapy for systemic corticosteroids between 1 hr and 48 hrs before admission were excluded. However, the use of antibiotics was not detailed. Although the use of antibiotics would not directly affect the absolute eosinophil count, it would influence the eosinophil percentage of total white blood cells. Recently, Ko et al found that an eosinophil value of < 0.144×109/L or < 2% on admission was associated with longer hospital stays for AECOPD independent of age, lung function and previous hospital admissions.22 The median of the absolute eosinophil count, percent eosinophil, and hospital stay were 0.11×109/L, 1% and 5 days, respectively. That was a single-center study, and not all subjects had eosinophil count data, but the results were similar to our research. MacDonald et al21 found no significant difference in baseline characteristics between patients with low (< 50/mL), normal (50–150/mL), or high (> 150/mL) blood eosinophils in two cohorts. Patients with low eosinophil counts were associated with infection (91% vs 51.9%, P < 0.001), longer hospital stay(7 vs 4 days, P < 0.001), and lower 12-month survival (82.4% vs 90.7%, P < 0.028) than those in high eosinophil counts group. Our study had some limitations. First, for low eosinophil levels in our study, we did not group patients according to 2% blood eosinophils as in previous investigations. Grouping according to the 2% cutoff could have led to several differences in the number of participants and induced an imbalance in the results. However, we found comparable results in a sensitivity analysis using the 2% cutoff. Second, the use of steroids was not according to eosinophil levels but determined by the physician according to patient signs and symptoms. The rate of steroid use was different among the groups. Third, the diagnosis of COPD was based on medical history records of spirometry; patients with asthma were excluded. Spirometry results were not recorded on admission because some patients were not able to take the test. Fourth, most patients enrolled in our study had poor symptom scores and were in stage B or D of the refined ABCD assessment. As such, our results cannot be applied to all stages of COPD. Finally, this was a prospective observational study of patients with AECOPD, and we used the data to assess the effect of peripheral blood eosinophil on their hospital stays during acute admissions. Our study also had several advantages. First, it was a prospective multicenter study, with a large sample of AECOPD patients recruited from three teaching hospitals. Second, our research excluded patients with histories of steroid use. Corticosteroids affect eosinophil levels and induce eosinopenia. Thus, we excluded patients who possibly had taken steroids before enrollment. Third, although several comparative studies investigating eosinophilic COPD have been published, all have been retrospective analyses18,20,31,32 and included patients taking steroids before enrollment. Fourth, we did sensitivity analysis using alternativity cutoffs at 2%, 100/µL, and 300/µL to avoid bias. Finally, our results suggest that lower peripheral eosinophil levels are associated with poor clinical outcomes. This information will aid clinicians who must evaluate and predict the clinical course of patients hospitalized for AECOPD.

Conclusion

Identifying biomarkers of AECOPD could be useful in classifying exacerbation phenotypes. Lower-eosinophilic COPD inpatients can be more severely ill, experience longer hospital stays, a higher rate of NIMV, and more complications. A lower eosinophilic state can be a helpful indicator to predict outcomes of COPD and may be useful for the management of patients who experience AECOPD. More studies are needed to evaluate if peripheral blood eosinophil can guide the use of antibiotics and corticosteroids.
Table 2

Patients’ Characteristics on Admission of Quartile-Count of Eosinophil Cohorts

VariablesAbsolute Count of Peripheral Blood Eosinophilb
GroupsOverall1234
Participants, n493129120129115
Gender, n (%)Female149(30.2)41(31.8)33(27.5)44(34.1)31(27)
Male344(69.8)88(68.2)87(72.5)85(65.9)84(73)
Year,median (IQR)76(68–83)76(69–83)74.62(9.879)*74.26(9.494)*77(68–83)
BMI, median (IQR)21.224(18.5–24.315)20.96(17.78–22.22)20.92(18.82–23.49)21.41(18.79–24.92)21.93(21.93–24.73)
Course of disease, year, median (IQR)10(5–20)10(5–20)10(5.25–20)10(3.5–10)10(5–20)
Allergic history, n (%)15(3)3(2.3)7(5.8)3(2.3)2(1.7)
Smoking history, n (%)Current smoking40(8.1)17(13.2)9(7.5)9(7)5(4.3)
Ex-smoking273(55.4)70(54.3)64(53.3)71(55)68(59.1)
No-smoking180(36.5)42(32.6)47(39.2)49(38)42(36.5)
Smoking index, median600(400–900)600(300–800)600(400–1000)600(400–1000)600(300–1000)
HR, median (IQR)88(78–96.5)89(80–98.5)89(78–98)84(76–95)85(78–96)
RR, median (IQR)20(20–21)20(20–22)20(20–21.75)20(20–21)20(20–21)
LTOT, n (%)246(49.9)75(58.1)65(54.2)55(42.6)51(44.3)
Daily treatmentICS, n (%)176(35.7)52(40.3)42(35)38(29.5)44(38.3)
LABA, n (%)176(35.7)52(40.3)42(35)38(29.5)44(38.3)
LAMA, n (%)106(21.5)34(26.4)22(18.3)21(16.3)29(25.2)
CAT, median (IQR)18(14–26)20(15–27.5)18(14–26)17(13–25)19(14–26)
mMRC, median (IQR)2(1–3)2(1–3)2(1–3)2(1–3)2(1–3)
Moderate or severe exacerbation history in previous year, median (IQR)1(0–2)1(0–2)1.5(0.25–3)1(0–3)1(0–3)
Exacerbations leading to hospital or emergency admission in previous year, median (IQR)1(0–2)1(0–2)1(0.25–3)1(0–2)1(0–2)
ABCD assessment, n (%)A129(26.2)1(0.8)40(31)2(1.6)86(66.7)
B120(24.3)1(0.8)29(24.2)2(1.7)88(73.3)
C129(26.2)3(2.3)36(27.9)2(1.6)88(68.2)
D115(23.3)2(1.7)33(28.7)0(0)80(69.6)
Pattern of admission, n (%)Outpatient service286(58)70(54.3)55(45.8)91(70.5)70(60.9)
Emergency207(42)59(45.7)65(54.2)38(29.5)45(39.1)

Notes: bPatients were grouped by quartile absolute count (0, 0.05×109/L, 0.17×109/L) of blood eosinophils and divided into group 1, 2, 3 and 4 (from low to high). *Mean (SD, standard deviation).

Abbreviations: IQR, interquartile range: 25%–75%; n, number; BMI, body mass index; ICS, inhaled corticosteroids; LAMA, long-acting muscarinic antagonist; LABA, long-acting beta agonist; HR, heart rate; RR, respiratory rate; LTOT, long-term oxygen therapy; CAT, COPD assessment test; mMRC, modified British medical research council.

Table 3

Patients’ Laboratory Findings on Admission of Quartile-Percentage of Eosinophil Cohorts

VariablesPercentage of Peripheral Blood Eosinophilc
GroupsOverall1234P value
Arterial blood gas analysisPH7.416(7.3835–7.447)7.411(7.370–7.449)7.414(0.06)*7.416(7.388–7.444)7.417(0.041)*0.783
PaO2, mmHg82(66.85–104)87.05(66.85–103.75)82.7(67–104)83(64.9–108.7)79.2(68–102)0.972
PaCO2,mmHg41.2(36.5–50.55)43.25(37.9–56.275)41.2(34.8–53.7)40.8(36.8–46)40.9(36.4–47.1)0.122
SaO2%96.2(93–98.1)96(92.2–98)96.3(93.3–98.3)96(92–98)96.6(94–98.1)0.530
FiO20.29(0.29–0.33)0.29(0.29–0.33)0.29(0.29–0.33)0.29(0.29–0.30)0.29(0.29–0.33)0.104
PaO2/FiO2286.207(234.483–347.414)286.078(237.972–338.054)290(231.034–351.515)295.238(243.81–359.31)278.276(227.586–344.828)0.710
PaO2/SaO20.854(0.712–1.058)0.904(0.722–1.07)0.856(0.713–1.054)0.856(0.7–1.102)0.821(0.723–7.041)0.963
Blood routineLeukocyte count, 109/L7.31(5.54–10.125)8.33(6.268–11.898)8.59(6.47–11.41)7.22(5.54–9.05)6.12(4.9–7.62)0.000
Neutrophil count, 109/L5.43(3.75–8.305)7.32(5.113–9.928)6.79(4.64–9.51)4.9(3.66–7.12)3.91(2.97–5.16)0.000
Lymphocyte count, 109/L1.06(0.7–1.51)0.71(0.46–1.153)1.03(0.7–1.49)1.19(0.88–1.6)1.18(0.89–1.76)0.000
Monocyte count, 109/L0.5(0.36–0.69)0.43(0.2425–0.598)0.55(0.38–0.76)0.54(0.43–0.67)0.48(0.37–0.66)0.000
Eosinophil count, 109/L0.05(0–0.17)0(0)0.02(0.01–0.03)0.1(0.08–0.14)0.26(0.2–0.4)0.000
Basophil count, 109/L0.02(0.01–0.03)0.01(0.01–0.02)0.01(0.01–0.03)0.02(0.01–0.04)0.03(0.02–0.04)0.000
Neutrophil, %76.1(66.4–83.9)84.45(81.025–89.55)79.3(74.1–85.1)71.1(65.4–78.5)64.1(57.6–71.4)0.000
Lymphocyte, %14.7(9.3–21.05)9.9(5.725–14.3)13(8.5–18.3)17.7(12–17.7)20.3(15.2–27.1)0.000
Monocyte, %6.9(5–8.8)4.8(3.1–6.45)6.5(4.9–8.5)7.6(5.9–9.5)0(6.5–8)0.000
Eosinophil, %0.7(0–2.55)0(0)0.3(0.1–0.4)1.4(1–2)4.2(3.3–5.5)0.000
Basophil, %0.2(0.1–0.4)0.1(0.1–0.2)0.2(0.1–0.3)0.3(0.1–0.5)0.5(0.2–0.7)0.000

Notes: cPatients were grouped by quartile percentage (0, 0.7, 2.55) of blood eosinophils and divided into group 1, 2, 3 and 4 (from low to high). *Mean (SD, standard deviation).

Abbreviations: IQR, interquartile range: 25%–75%; E%, percent of blood eosinophil in white blood cell; E, absolute count of peripheral blood eosinophil.

  30 in total

1.  Blood eosinophils as a marker of response to inhaled corticosteroids in COPD.

Authors:  Neil C Barnes; Raj Sharma; Sally Lettis; Peter M A Calverley
Journal:  Eur Respir J       Date:  2016-02-25       Impact factor: 16.671

2.  Prevalence of blood eosinophilia in hospitalized patients with acute exacerbation of COPD.

Authors:  Kohei Hasegawa; Carlos A Camargo
Journal:  Respirology       Date:  2015-12-23       Impact factor: 6.424

3.  Susceptibility to exacerbation in chronic obstructive pulmonary disease.

Authors:  John R Hurst; Jørgen Vestbo; Antonio Anzueto; Nicholas Locantore; Hana Müllerova; Ruth Tal-Singer; Bruce Miller; David A Lomas; Alvar Agusti; William Macnee; Peter Calverley; Stephen Rennard; Emiel F M Wouters; Jadwiga A Wedzicha
Journal:  N Engl J Med       Date:  2010-09-16       Impact factor: 91.245

4.  Blood eosinophil count and exacerbations in severe chronic obstructive pulmonary disease after withdrawal of inhaled corticosteroids: a post-hoc analysis of the WISDOM trial.

Authors:  Henrik Watz; Kay Tetzlaff; Emiel F M Wouters; Anne Kirsten; Helgo Magnussen; Roberto Rodriguez-Roisin; Claus Vogelmeier; Leonardo M Fabbri; Pascal Chanez; Ronald Dahl; Bernd Disse; Helen Finnigan; Peter M A Calverley
Journal:  Lancet Respir Med       Date:  2016-04-07       Impact factor: 30.700

5.  Blood eosinophil count as a predictor of hospital length of stay in COPD exacerbations.

Authors:  Fanny W S Ko; Ka Pang Chan; Jenny Ngai; So-Shan Ng; Wing Ho Yip; April Ip; Tat-On Chan; David S C Hui
Journal:  Respirology       Date:  2019-08-06       Impact factor: 6.424

6.  Acute exacerbations of chronic obstructive pulmonary disease: identification of biologic clusters and their biomarkers.

Authors:  Mona Bafadhel; Susan McKenna; Sarah Terry; Vijay Mistry; Carlene Reid; Pranabashis Haldar; Margaret McCormick; Koirobi Haldar; Tatiana Kebadze; Annelyse Duvoix; Kerstin Lindblad; Hemu Patel; Paul Rugman; Paul Dodson; Martin Jenkins; Michael Saunders; Paul Newbold; Ruth H Green; Per Venge; David A Lomas; Michael R Barer; Sebastian L Johnston; Ian D Pavord; Christopher E Brightling
Journal:  Am J Respir Crit Care Med       Date:  2011-09-15       Impact factor: 21.405

7.  Association of sputum and blood eosinophil concentrations with clinical measures of COPD severity: an analysis of the SPIROMICS cohort.

Authors:  Annette T Hastie; Fernando J Martinez; Jeffrey L Curtis; Claire M Doerschuk; Nadia N Hansel; Stephanie Christenson; Nirupama Putcha; Victor E Ortega; Xingnan Li; R Graham Barr; Elizabeth E Carretta; David J Couper; Christopher B Cooper; Eric A Hoffman; Richard E Kanner; Eric Kleerup; Wanda K O'Neal; Richard Paine; Stephen P Peters; Neil E Alexis; Prescott G Woodruff; MeiLan K Han; Deborah A Meyers; Eugene R Bleecker
Journal:  Lancet Respir Med       Date:  2017-11-13       Impact factor: 30.700

8.  The utility of inflammatory markers to predict readmissions and mortality in COPD cases with or without eosinophilia.

Authors:  Dildar Duman; Emine Aksoy; Meltem Coban Agca; Nagihan Durmus Kocak; Ipek Ozmen; Ulku Aka Akturk; Sinem Gungor; Fatma Merve Tepetam; Selma Aydogan Eroglu; Selahattin Oztas; Zuhal Karakurt
Journal:  Int J Chron Obstruct Pulmon Dis       Date:  2015-11-11

9.  Comparison of the clinical characteristics and treatment outcomes of patients requiring hospital admission to treat eosinophilic and neutrophilic exacerbations of COPD.

Authors:  Hye Seon Kang; Chin Kook Rhee; Sung Kyoung Kim; Jin Woo Kim; Sang Haak Lee; Hyung Kyu Yoon; Joong Hyun Ahn; Yong Hyun Kim
Journal:  Int J Chron Obstruct Pulmon Dis       Date:  2016-10-03

Review 10.  COPD exacerbations: defining their cause and prevention.

Authors:  Jadwiga A Wedzicha; Terence A R Seemungal
Journal:  Lancet       Date:  2007-09-01       Impact factor: 79.321

View more
  12 in total

1.  Blood eosinophils and mortality in patients with acute respiratory distress syndrome: A propensity score matching analysis.

Authors:  Hao-Tian Chen; Jian-Feng Xu; Xiao-Xia Huang; Ni-Ya Zhou; Yong-Kui Wang; Yue Mao
Journal:  World J Emerg Med       Date:  2021

2.  Practical parameters that can be used for nutritional assessment in patients hospitalized in the intensive care unit with the diagnosis of chronic obstructive pulmonary disease: Prognostic nutritional index, neutrophil-to-lymphocyte, platelet-to-lymphocyte, and lymphocyte-to-monocyte ratio.

Authors:  Ramazan Baldemir; Mustafa Özgür Cirik
Journal:  Medicine (Baltimore)       Date:  2022-06-17       Impact factor: 1.817

Review 3.  Senescence in Pulmonary Fibrosis: Between Aging and Exposure.

Authors:  Alessandro Venosa
Journal:  Front Med (Lausanne)       Date:  2020-11-12

4.  Clinical Differences between Eosinophilic and Noneosinophilic Acute Exacerbation of Chronic Obstructive Pulmonary Disease: A Multicenter Cross-Sectional Study.

Authors:  Guangming Dai; Yajuan Ran; Jiajia Wang; Xingru Chen; Junnan Peng; Xinglong Li; Huojin Deng; Min Xiao; Tao Zhu
Journal:  Mediators Inflamm       Date:  2020-11-12       Impact factor: 4.711

5.  Induced sputum metabolomic profiles and oxidative stress are associated with chronic obstructive pulmonary disease (COPD) severity: potential use for predictive, preventive, and personalized medicine.

Authors:  Tao Zhu; Shanqun Li; Jiajia Wang; Chunfang Liu; Lei Gao; Yuzhen Zeng; Ruolin Mao; Bo Cui; Hong Ji; Zhihong Chen
Journal:  EPMA J       Date:  2020-11-04       Impact factor: 6.543

6.  The Value of FENO Measurement for Predicting Treatment Response in Patients with Acute Exacerbation of Chronic Obstructive Pulmonary Disease.

Authors:  Aiyuan Zhou; Zijing Zhou; Dingding Deng; Yiyang Zhao; Jiaxi Duan; Wei Cheng; Cong Liu; Ping Chen
Journal:  Int J Chron Obstruct Pulmon Dis       Date:  2020-09-24

7.  The lower the eosinophils, the stronger the inflammatory response? The relationship of different levels of eosinophils with the degree of inflammation in acute exacerbation chronic obstructive pulmonary disease (AECOPD).

Authors:  Mei-Yu Lv; Li-Xia Qiang; Zhi-Heng Li; Shou-De Jin
Journal:  J Thorac Dis       Date:  2021-01       Impact factor: 2.895

8.  Association Between Blood Eosinophils and Mortality in Critically Ill Patients with Acute Exacerbation of Chronic Obstructive Pulmonary Disease: A Retrospective Cohort Study.

Authors:  Jia Yang; Junchao Yang
Journal:  Int J Chron Obstruct Pulmon Dis       Date:  2021-02-11

9.  Neutrophil-to-Lymphocyte Ratio Predicts Clinical Outcome of Severe Acute Exacerbation of COPD in Frequent Exacerbators.

Authors:  Fang-Ying Lu; Rong Chen; Ning Li; Xian-Wen Sun; Min Zhou; Qing-Yun Li; Yi Guo
Journal:  Int J Chron Obstruct Pulmon Dis       Date:  2021-02-17

10.  Blood Eosinophils and Clinical Outcomes in Patients With Acute Exacerbation of Chronic Obstructive Pulmonary Disease: A Propensity Score Matching Analysis of Real-World Data in China.

Authors:  Yanan Cui; Zijie Zhan; Zihang Zeng; Ke Huang; Chen Liang; Xihua Mao; Yaowen Zhang; Xiaoxia Ren; Ting Yang; Yan Chen
Journal:  Front Med (Lausanne)       Date:  2021-06-09
View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.