Literature DB >> 28303547

Persistent lymphopenia is a risk factor for ICU-acquired infections and for death in ICU patients with sustained hypotension at admission.

Christophe Adrie1,2, Maxime Lugosi3, Romain Sonneville4, Bertrand Souweine5, Stéphane Ruckly6, Jean-Charles Cartier3, Maité Garrouste-Orgeas7, Carole Schwebel3, Jean-François Timsit4,6.   

Abstract

BACKGROUND: Severely ill patients might develop an alteration of their immune system called post-aggressive immunosuppression. We sought to assess the risk of ICU-acquired infection and of mortality according to the absolute lymphocyte count at ICU admission and its changes over 3 days.
METHODS: Adults in ICU for at least 3 days with a shock or persistent low blood pressure were extracted from a French ICU database and included. We evaluated the impact of the absolute lymphocyte count at baseline and its change at day 3 on the incidence of ICU-acquired infection and on the 28-day mortality rate. We categorized lymphocytes in 4 groups: above 1.5 × 103 cells/µL; between 1 and 1.5 × 103 cells/µL; between 0.5 and 1 × 103 cells/µL; and below 0.5 × 103 cells/µL.
RESULTS: A total of 753 patients were included. The median lymphocyte count was 0.8 × 103 cells/µL [0.51-1.29]. A total of 174 (23%) patients developed infections; the 28-day mortality rate was 21% (161/753). Lymphopenia at admission was associated with ICU-acquired infection (p < 0.001) but not with 28-day mortality. Independently of baseline lymphocyte count, the absence of lymphocyte count increase at day 3 was associated with ICU-acquired infection (sub-distribution hazard ratio sHR: 1.37 [1.12-1.67], p = 0.002) and with 28-day mortality (sHR: 1.67 [1.37-2.03], p < 0.0001).
CONCLUSION: Lymphopenia at ICU admission and its persistence at day 3 were associated with an increased risk of ICU-acquired infection, while only persisting lymphopenia predicted increased 28-day mortality. The lymphocyte count at ICU admission and at day 3 could be used as a simple and reproductive marker of post-aggressive immunosuppression.

Entities:  

Keywords:  Absolute lymphocyte count; ICU; Immunosuppression; Infection; Nosocomial; Shock; Survival

Year:  2017        PMID: 28303547      PMCID: PMC5355405          DOI: 10.1186/s13613-017-0242-0

Source DB:  PubMed          Journal:  Ann Intensive Care        ISSN: 2110-5820            Impact factor:   6.925


Background

Lymphopenia is defined as a decrease below normal value (often 1.5 × 103 cells/µL) of the blood circulating lymphocyte count; it reflects an impairment of the adaptive immune system. Several diseases can cause lymphopenia; they are associated with a higher risk of infection and adverse outcome [1, 2]. In critically ill patients, especially those with septic shock, after an initial phase of immune system hyperstimulation, dysfunction could appear secondarily. This is often called post-aggressive immunosuppression or compensatory anti-inflammatory response syndrome (CARS). It affects the innate and adaptive immune system [3, 4]. There is an increase in the level of anti-inflammatory cytokines, e.g., interleukin (IL)-10, in contrast to the decrease in pro-inflammatory cytokines levels, such as IL-6 or TNF-α. Immune cells are altered in both dimensions, qualitatively, and also quantitatively, as demonstrated with cells of innate immunity [5-7]. Persistence of CARS is associated with the risk of ICU-acquired infections and adverse outcome [7, 8]. Studies have shown the impact of critical illness on lymphocyte apoptosis and anergy [9-12]; however, there are few reports about the prognostic value in ICU of total lymphocyte count at admission and its evolution. These studies often evaluated the association between adverse outcome and other biomarkers of lymphocyte dysfunction than the lymphocyte count. However, the lymphocyte count would be a simple and reproducible marker of CARS. It was shown that low absolute lymphocyte counts are predictive of postoperative sepsis and a better predictor of bacteremia than conventional markers in patients admitted in emergency care units [13, 14]. Furthermore, a very recent study showed that persistent lymphopenia on the fourth day after bacteremia diagnosis predicts early and late mortality in those patients, including in the subgroup of patients with sepsis [15]. The main objective of this study was to evaluate the risk of development of an ICU-acquired infection according to the absolute lymphocyte blood count at admission and its evolution at day 3. The second objective was to evaluate how these parameters impact the 28-day mortality.

Methods

We performed a retrospective study on data prospectively collected within the cohort study conducted with centers participating to the OUTCOMEREA database (OutcomeRea®).

Ethical issues

This study was approved by our institutional review board (CECIC Clermont-Ferrand—IRB n°5891; Ref: 2007–2016), which waived the need for signed informed consent of the participants, in accordance with French legislation on non-interventional studies. However, the patients and their next of kin were asked whether they were willing to participate in the database, and none declined participation.

Data collection

Data were prospectively collected daily by senior physicians in the participating ICUs. For each patient, the data were entered into electronic case report forms using VIGIREA® and RHEA® data capture software, and all case report forms were then entered into the OutcomeRea® data warehouse. All codes and definitions were established prior to study initiation. For each patient, age, sex, and McCabe score were recorded. Severity of illness was evaluated on the first ICU day using the Simplified Acute Physiology Score (SAPS II), Sequential Organ Failure Assessment (SOFA) score, and Glasgow Coma Scale (GCS) score, and Knaus’ scale definitions were used to record preexisting chronic organ failures including respiratory, cardiac, hepatic, renal, and immune system failures. Admission category (medical, scheduled surgery, or unscheduled surgery), admission diagnosis (cardiac, respiratory, or neurological failure, infection, and other), invasive procedures (arterial or venous central catheter, Swan-Ganz catheter, or endotracheal intubation), and treatment of organ failures (inotropic support, hemodialysis, and mechanical ventilation) and the use of corticosteroids, gastro-protective drugs, and antibiotics were also recorded. Daily lymphocyte counts were retrospectively collected from four ICUs participating to OUTCOMEREA database between July 2006 and May 2012. All patients with a lymphocyte count in the first day of admission were included in the study. In order to avoid confusion bias, we excluded patients with chronic lymphocytic leukemia (CLL), infection with the human immunodeficiency virus (HIV) or aplasia at admission. We also excluded patients with limitation of life-sustaining therapy in the four first days after admission. Patients with shock or persistent low blood pressure below 90 mmHg of systolic blood pressure in the first day of admission were included. Study variables were the first lymphocyte count on the first day of admission and its evolution at day 3 after admission. The lymphocyte count at admission was categorized in four predefined classes: normal (>1.5 × 103 cells/µL); subnormal (1 × 103 cells/µL < lymphocytes ≤1.5 × 103 cells/µL); low (0.5 × 103 cells/µL < lymphocytes ≤1 × 103 cells/µL); very low (≤0.5 × 103 cells/µL). The evolution of lymphocyte count at day 3 versus baseline was defined as a binary variable: normal count (≥1.5 × 103 cells/µL) or relevant increase (more than 0.2 × 103 cells/µL) and decrease or no relevant increase (≤0.2 × 103 cells/µL). We handled missing values at day 3 (n = 166, 22.1%) by taking the value one day before or after. Nosocomial infection was defined as bacteremia, pneumonia, or catheter-related infection occurring after 72 h from admission. Definition of nosocomial infection provided from the HELICS (Hospital in Europe Link for Infection Control through Surveillance) project [16]. Bacteraemia was defined as the presence of pathogenic bacteria in blood culture. Pneumonia was defined as a chest X-ray with suggestive image of pneumonia with clinical and biological signs of pulmonary infection associated with a positive quantitative bacteriological culture from a respiratory sample: a broncho-alveolar lavage [BAL ≥104 colony-forming unit (CFU)/ml]; a protected specimen brush (≥103 CFU/ml); a blind protected bronchial sampling (≥103 CFU/ml); a tracheal aspiration (≥105 CFU/ml). Catheter infection was defined as positive quantitative catheter culture (≥103 CFU/ml) treated by physicians in charge. Only the first event was considered for analysis.

Statistical analysis

Characteristics of patients were described as count (percent) or median [interquartile range, IQR] for qualitative and quantitative variables, respectively, and were compared between groups using Chi-square or Mann–Whitney tests, as appropriate. In order to decrease the risk of confusion bias between lymphopenia and acquired-ICU infection, we developed a propensity score aimed to predict the probability to have a nosocomial infection conditionally on variables recorded in the first 2 days of admission [17]. A logistic regression was used to construct the propensity score including variables on clinical relevance or statistic comparison on univariate analysis. Linearity of the logit of continuous covariates was checked. The following clinically relevant variables were entered in the model: age, gender, admission category, center, Knaus definitions, McCabe score, main reason for ICU admission (multi-organ failure, cardiogenic shock, septic shock, coma, acute respiratory deficiency), diabetes with complications (binary variable), severity illness related to specific organ assessed by the sequential SOFA score categorized in 2 classes, lower or equal to two or higher (cardiovascular, neurological, hepatic, renal, coagulation failures), acute respiratory distress syndrome, mechanical ventilation, central venous catheter, arterial catheter or arterial pulmonary catheter, temperature, use of gastro-protective drugs, antibiotics, or corticosteroids. Then, an inverse probability of treatment weighted (IPTW) [18] based on the propensity score was computed to create a pseudo-population in which the probability to develop or not an ICU-acquired infection was equal. We performed a model with covariates using for the construction of the propensity score weighted by the IPTW including the explicative variables, baseline lymphocyte count, and evolution at the third day [19]. We took the 5–95th percentiles of IPTW to create a new pseudo-population to assess the robustness of the model. Sub-distribution hazard ratios (sHRs) were developed to assess the independent effects of lymphocyte count at admission and the evolution at day 3 on subsequent risk of ICU-acquired infection. Discharge alive from ICU was treated as competing events. Data were censored at 28 days since the fourth day after admission. For the secondary objective, risk of death related to initial lymphocyte count and its evolution at day 3, the same protocol was used. We developed a specific propensity score aiming to predict the probability to die in ICU within 28 days of inclusion conditionally on variables recorded within the first 2 days of admission. The following clinically relevant variables were entered in the model: age, gender, admission category, center, Knaus definitions, cardiogenic shock as symptom at admission, continuous monitoring as reason of admission, complicated diabetes, severity illness related to specific organ assessed by the SOFA score categorized in two classes, lower, or equal to 2 or higher (cardiovascular, neurological, hepatic, renal, coagulation failure), respiratory failure severity reflected by acute respiratory distress syndrome, requiring invasive mechanical ventilation, central venous catheter, arterial catheter or arterial pulmonary catheter, temperature, use of corticosteroids. Sub-distribution hazard ratios (sHRs) were developed with covariates using for the construction of the propensity score weighted by the IPTW. Discharge alive from ICU was treated as competing events. For all analyses, p < .05 was considered to statistically significant. All analyses were performed using SAS, version 9.3 (SAS Institute, Cary, NC, USA).

Results

Population description

Of the 2402 patients recorded within the 4 participating ICUs (Fig. 1), 753 patients were included. The mean age was 68 [56; 78] years, 467 patients (62%) were males, and the median SOFA score at admission was 8 [5, 11]. Medical admission represented the most frequent cases [596 patients (79%)], and septic shock was the first diagnosis at admission in 154 patients (21%). Mechanical ventilation was required for 559 patients (74%) and vasoactive agents at day 1 or 2 for 480 patients (63.8%). The median length of stay in ICU was 9 days [6-18]. A total of 174 (23%) patients had ICU-acquired infection and 161 (21%) patients died in ICU during the study period (Table 1).
Fig. 1

Flowchart

Table 1

Patients’ characteristics at admission

VariablePopulationN = 753No ICU-acquired infection (N = 579)With ICU-acquired infection (N = 174)P valueAlive(N = 592)Dead(N = 161)P value
Age68 [56–78]67.6 [56–78]69 [55–77]0.410666.5 [55–77]71.5 [59–79]0.02
Men467 (62)342 (59)125 (72)0.0023359 (61)108 (67)0.13
Length of stay (days)9 [6–18]7 [5–13]23 [14–37]<.00019 [5–19]10 [7–17]0.18
Center
 A501 (66.5)402 (69)99 (57)0.0030406 (69)95 (59.0)0.002
 B105 (14)80 (14)25 (14)86 (14)19 (12)
 C35 (4.6)21 (3.6)14 (8.0)27 (4.6)8 (5.0)
 D112 (15)76 (13)36 (21)73 (12)39 (24)
Admission category0.74000.003
 Medical596 (79)457 (19)139 (80)454 (77)142 (88)
 Unscheduled surgery104 (14)79 (14)25 (14)94 (16)10 (6)
 Scheduled surgery53 (7)43 (7)10 (6)44 (7)9 (6)
Co-morbidities (Knaus definitions)
 Chronic hepatic failure45 (6.0)41 (7)4 (2.3)0.019630 (5)15 (9)0.044
 Chronic cardiovascular failure101 (13.4)70 (12)31 (18)0.051970 (12)31 (19)0.014
 Chronic respiratory failure157 (20.8)120 (21)37 (21)0.8780126 (21)31 (19)0.57
 Chronic renal failure61 (8.1)47 (8.1)14 (8.0)0.975844 (7.4)17 (10.6)0.19
 Immunosuppression69 (9.2)54 (9.3)15 (8.6)0.777259 (10.0)10 (6.2)0.14
Long-term corticosteroids use24 (3.2)19 (3.3)5 (2.9)0.788220 (3.4)4 (2.5)0.57
History of chemotherapy40 (5.3)31 (5)9 (5.2)0.925431 (5)9 (5)0.86
Main reason of admission
 Coma106 (14)81 (14)25 (14)0.899981 (14)25 (15)0.55
 Acute respiratory failure211 (28.0)150 (26)61 (35)0.0184164 (27.7)47 (29)0.71
 Septic shock154 (20.4)123 (21)31 (18)0.3257121 (20)33 (20)0.99
 Cardiogenic shock39 (5)14 (4)15 (8)0.019522 (4)17 (11)0.0005
 Hemorrhage shock50 (6.6)40 (7)10 (6)0.589543 (7)7 (4)0.19
 Multi-organ failure21 (3)11 (2)10 (6)0.006914 (2)7 (4)0.17
 Shock (other)27 (3.6)23 (4)4 (2)0.297821 (3.5)6 (4)0.91
 Other145 (19)127 (22)18 (10)0.0007126 (21)19 (12)0.007
SAPS II score49 [37–60]48 [3–59]51 [40–62]0.037447 [36–57]57 [46–66]<0.0001
SOFA score8 [5–11]8 [5–11]10 [7–12]<.00017.5 [5–11]10 [7–12]<0.0001
Cardiovascular SOFA score (>2)462 (61)333 (57)129 (74)<.0001333 (56)129 (80)<0.0001
Mechanical ventilation559 (74)411 (71)148 (85)0.0002422 (71)137 (85)0.0004
Antibiotic day 1 or 2581 (77)448 (77)133 (76)0.80455 (78)126 (78)0.71

Data are expressed as number (%) or median [interquartile]. ICU: intensive care unit; SAPS II: Simplified Acute Physiology Score; SOFA: Sequential Organ Failure Assessment. Of note, in some cases, septic shock was not the cause of admission in ICU, but developed within the first hours of ICU admission

Flowchart Patients’ characteristics at admission Data are expressed as number (%) or median [interquartile]. ICU: intensive care unit; SAPS II: Simplified Acute Physiology Score; SOFA: Sequential Organ Failure Assessment. Of note, in some cases, septic shock was not the cause of admission in ICU, but developed within the first hours of ICU admission The median number of lymphocyte counts measurements was 6 [4-13]. The percentage of day with a lymphocyte count by patient during ICU stay was 75%, and the median range between two blood samples with lymphocyte count was 1 day. The median of the lymphocyte count at admission was 0.80 [0.51–1.29] × 103 cells/µL. The distribution in 4 classes was as follows: 149 patients (20%) had a normal lymphocyte count with a median of 1.97 [1.70–2.80] × 103 cells/µL; 141 patients (19%) had a lymphocyte count ranging between 1 and 1.5 × 103 cells/µL with a median of 1.19 [1.10–1.30] × 103 cells/µL; 278 patients (37%) had a lymphocyte count ranging between 0.5 and 1 × 103 cells/µL with a median of 0.72 [0.61–0.84] × 103 cells/µL; 185 patients (24%) had a lymphocyte count lower than 0.5 × 103 cells/µL with a median of 0.34 [0.24–0.43] × 103 cells/µL. Among the total of 174 (24%) ICU-acquired infections, pneumonia was diagnosed in 113 (64.9%) patients, bacteremia in 37 (21.3%) and catheter-associated infection in 36 (20.7%). In 13 patients, 2 sites of infection were diagnosed the same day. Enterobacteriaceae bacteria were the most frequent pathogens isolated, followed by Pseudomonas spp. and Staphylococcus aureus (Tables 2, 3).
Table 2

Description of ICU-acquired infection related to site of infection and time to event

No (%)Time to event (median [IQ]) or days of event
Total1748
Pneumonia113 (64.9)10 [6–15]
Bacteremia37 (21.3)8 [6–13]
Catheter-associated infection36 (20.7)8 [5–13]
Pneumonia with bacteremia6 (3.4)11.5 [7–23]
Catheter infection with bacteremia3 (1.7)13 [7–22]
Pneumonia with catheter-associated infection3 (1.7)13 [4–14]

Data are expressed as number (%) or median [interquartile]

Table 3

Description of ICU-acquired infection related to site of infection and microorganism (percentage of the total of pathogens isolated in a site)

PathogensPneumonia(n = 113)Bacteremia(n = 37)Catheter infection(n = 36)
Staphylococcus aureus 21 (18.6)6 (16.2)3 (8.3)
Coagulase-negative Staphylococci8 (7.1)5 (13.5)9 (25.0)
Other GPB16 (14.2)9 (24.3)8 (22.2)
Fermenting GNP46 (40.7)13 (35.1)14 (38.9)
Non-fermenting GNP40 (35.4)6 (16.2)7 (19.4)
Anaerobes1 (0.9)1 (2.7)0
Fungi5 (4.4)5 (13.5)1 (2.8)
Polymicrobial21 (18.6)8 (21.6)5 (13.9)
MDR pathogens47 (45.6)10 (27.0)9 (25.0)

Data are expressed as number (%) or median [interquartile]. MDR: multi-drug-resistant, including methicillin-resistant Staphylococcus aureus, Enterobacteriaceae resistant to third-generation cephalosporins, Pseudomonas aeruginosa resistant to ticarcillin and/or imipenem and/or ceftazidime, Stenotrophomonas maltophilia, Burkholderia cepacia, and Acinetobacter baumannii. GPB; Gram-positive bacteria, GNB; Gram-negative Bacteria; non-fermenting GNB (Pseudomonas spp., Acinetobacter baumannii, Stenotrophomonas maltophilia, Burkholderia cepacia)

Description of ICU-acquired infection related to site of infection and time to event Data are expressed as number (%) or median [interquartile] Description of ICU-acquired infection related to site of infection and microorganism (percentage of the total of pathogens isolated in a site) Data are expressed as number (%) or median [interquartile]. MDR: multi-drug-resistant, including methicillin-resistant Staphylococcus aureus, Enterobacteriaceae resistant to third-generation cephalosporins, Pseudomonas aeruginosa resistant to ticarcillin and/or imipenem and/or ceftazidime, Stenotrophomonas maltophilia, Burkholderia cepacia, and Acinetobacter baumannii. GPB; Gram-positive bacteria, GNB; Gram-negative Bacteria; non-fermenting GNB (Pseudomonas spp., Acinetobacter baumannii, Stenotrophomonas maltophilia, Burkholderia cepacia) There were no relationships between the lymphocyte count and the SOFA score, and between the delta of the SOFA score and the variations in the lymphocyte counts. This result is consistent with our results about the independent role of immune paralysis and organ failures.

Risk of ICU-acquired infection

Comparisons between patients with ICU-acquired infection and the others are shown in Table 1. The final logistic model used to calculate propensity score is given in Additional file 1: Table E1. The cumulative incidence curve of ICU-acquired infection is shown in Fig. 2a.
Fig. 2

Cumulative incidence curves of ICU-acquired infection a according to baseline lymphocyte count categorized in 4 classes; cumulative incidence curve of ICU-acquired infection (b) and incidence curve of death (c) according to the increase from baseline of the lymphocyte count at day 3 (increase in lymphocyte count was considered significant if greater than 0.2 × 103 cells/µL). Numbers below each figure represent the number of patients still at risk of event at a particular time point. No patient were lost to follow-up at day 28

Cumulative incidence curves of ICU-acquired infection a according to baseline lymphocyte count categorized in 4 classes; cumulative incidence curve of ICU-acquired infection (b) and incidence curve of death (c) according to the increase from baseline of the lymphocyte count at day 3 (increase in lymphocyte count was considered significant if greater than 0.2 × 103 cells/µL). Numbers below each figure represent the number of patients still at risk of event at a particular time point. No patient were lost to follow-up at day 28 Sub-distribution hazard ratios (sHRs) of ICU-acquired infection were significant for abnormal values at admission (Table 4), with no difference between subnormal and very low lymphocyte counts. The absence of relevant increase in the lymphocyte count at day 3 was associated with an increased risk of developing an infection (sHR of 1.37 [1.12–1.67], p = 0.002) (Fig. 2b). The interaction term between baseline lymphocyte count and lymphocyte increase at day 3 was not significant. Importantly, the onset of ICU-acquired infection was associated with an increased day-28 mortality (p < 0.001).
Table 4

Results of the sub-distribution Hazard ratio (sHR) of baseline lymphocyte count and its evolution at day 3 for the risk of ICU-acquired infection (adjusted with the covariates used in the propensity score of acquiring a nosocomial infection before day 28 using an IPTW estimator; see Additional file 2)

VariablessHRIC-95p value
Baseline lymphocyte count categorized in 4 classes0.001
 Normal value ≥1.5 × 103 cells/µLReference
 Subnormal class (<1.5 and ≥ 1 × 103 cells/µL)1.601.242.080.0004
 Low class (<1 × 103 cells/µL and ≥0.5 × 103 cells/µL)1.431.121.850.004
 Very low class (<0.5 × 103 cells/µL)1.631.232.150.0006
 Non-significant increase (below 0.2 × 103 cells/µL) at day 3 and abnormal value1.371.121.670.002
Results of the sub-distribution Hazard ratio (sHR) of baseline lymphocyte count and its evolution at day 3 for the risk of ICU-acquired infection (adjusted with the covariates used in the propensity score of acquiring a nosocomial infection before day 28 using an IPTW estimator; see Additional file 2)

Risk of 28-day mortality

Comparisons between patients’ dead in ICU and others are shown in Table 1, using the final logistic model used to calculate propensity score (Additional file 1: Table E2). The incidences of 28-day mortality according to baseline lymphocyte count and its evolution at day 3 are shown in Table 5. The baseline count of lymphocyte had no impact on the 28-day mortality in ICU. However, the decrease or the non-significant increase on day 3 was significantly associated with the death in ICU [sHR of 1.67 [1.37–2.03], p < 0.0001 (Table 5)]. The cumulative incidence curve of death according to the evolution of lymphocyte count is represented in Fig. 2c.
Table 5

Results of the sub-distribution Hazard ratio (sHR) of baseline lymphocyte count and its evolution at day 3 for the risk of 28-day ICU mortality (adjusted with the covariates used in the propensity score of dying before day 28 using an IPTW estimator; see Additional file 2)

VariablessHRIC-95p value
Baseline lymphocyte count categorized in 4 classes0.15
 Normal value ≥1.5 × 103 cells/µLReference
 Subnormal class (<1.5 and ≥ 1 × 103 cells/µL)0.840.6581.080.176
 Low class (<1 × 103 cells/µL and ≥0.5 × 103 cells/µL)1.090.8911.360.377
 Very low class (<0.5 × 103 cells/µL)0.990.7731.280.969
 Non-significant increase (below 0.2 × 103 cells/µL) at day 3 and abnormal value1.671.372.03<0.0001
Results of the sub-distribution Hazard ratio (sHR) of baseline lymphocyte count and its evolution at day 3 for the risk of 28-day ICU mortality (adjusted with the covariates used in the propensity score of dying before day 28 using an IPTW estimator; see Additional file 2)

Discussion

To our knowledge, our study is the first large cohort study which evaluated the relation between the baseline lymphocyte count and its evolution at day 3, and the risk of ICU-acquired infection and death in patients admitted in ICU with sustained hypotension. We demonstrated the significant independent prognostic impact of a low lymphocyte count at baseline on the risk to develop an ICU-acquired infection. A persisting lymphopenia or a non-significant increase at day 3 is associated with a risk to develop a nosocomial infection and with increased 28-day mortality (Additional file 1). Acute critical ill patients, particularly in case of sepsis, often present signs of systemic inflammatory response syndrome (SIRS) which could be related to pro-inflammatory response. Beside this pro-inflammatory response, an anti-inflammatory response occurs. In these patients, several studies showed increased secretion of anti-inflammatory cytokines, e.g., IL-10, and decreased activation of immunity cells, e.g., monocytes [20, 21]. Thus, the immune response can display various profiles: combined anti- and pro-inflammatory response; anti-inflammatory response; or global immune depression. This syndrome of acquired deficiency of immune system is called the post-aggressive immunosuppression or compensatory anti-inflammatory response syndrome (CARS) [3, 4]. This secondarily impaired immunity has been described for decades [9]; several studies correlated it with poor outcome [5–7, 22]. This could explain the onset of nosocomial infections with opportunistic microorganism in septic patients, e.g., viral reactivation or fungal infection [23-25]. CARS involves both the innate and adaptive parts of immune system. It affects different cells involved in the innate immune system, such as polymorphonuclear neutrophils, dendritic cells, and monocytes. The link with a poor outcome was demonstrated in several studies [4, 26]. Monocytes dysfunction is now evaluated by a clinically validated surrogate marker: mHLA-DR expression [4, 27]. While biological testing of mHLA-DR expression is standardized [10] and then could offer a well-recognized biological test to select patients who would benefit of immune-adjuvant therapy, this test is not yet generalized in clinical practice. The acquired immunity cells such as lymphocytes are also affected. Lymphocytes, particularly T-cells subset, are a cornerstone of the adaptive response to aggressions. An acquired or congenital lymphocyte deficiency increases the risk of infection and of death. CARS is correlated with lymphocyte function alteration, which has been described for 30 years. Function alteration is reflected by a decreased production of pro-inflammatory cytokines, such as IL-2, an increased production of anti-inflammatory cytokines, such as IL-10, an increased expression on cells membrane of inhibitory receptor such as programmed cell death-1, and a decreased expression of T-cell receptor repertoire diversity [27-31]. While our understanding of the mechanism of lymphocyte alteration during sepsis progresses, the link with patient’s prognosis is not always established. An increased apoptosis was described in patients [12, 22]. Various pathways seem to be involved in the lymphocyte apoptosis in case of sepsis: an extrinsic pathway, mediated by the caspase-8, and an intrinsic pathway, mediated by the caspase-9 [10, 22]. In the study of Le Tulzo et al. [22], the magnitude of apoptosis was correlated with the persistence of multi-organ dysfunctions, duration of mechanical ventilation, and death. The correlation between the quantitative alteration of lymphocyte and a poor outcome was shown in two studies involving children [12, 32, 33]. In 21 adult patients with septic shock, Venet et al. [12] also described a median lymphocyte count within the first 24 h following admission for septic shock close to our results (0.5–0.7 × 103 cells/µL). Altered lymphocyte function with recombinant human IL-7 or anti-programmed cell death-1 antibody may be promising targets for future clinical studies [27]. In a retrospective study of bacteremic patients, an association was observed between persistent lymphopenia (defined as below of 0.6 × 103 cells/µLon the fourth day) with the 28-day mortality (primary endpoint), 1-year mortality, and subsequent hospital infection [15]. However, the low baseline total lymphocyte count (≤0.6 × 103 cells/µL) was not associated with any of them, conversely to what we observed in our study. This difference may be due to the lymphopenia threshold definitions, and also to the case mix, as we included all patients with sustained hypotension, whether or not they had sepsis and/or bacteremia. As a matter of fact, we included all patients with an unstable hemodynamic status, in order to take into account the severity of patient as a promoter of CARS. Indeed, dysfunction of immune system was observed not only in septic patients, but also in post-traumatic or severely burned patients [34-37]. Although our study did not provide information on the link between the lymphocyte count and the qualitative alteration of lymphocyte function, it is the first one that demonstrated in a large cohort of patients, the impact of a low lymphocyte count at ICU admission and of its persistence on the risk to develop an ICU-acquired infection and of increased mortality. The interaction between the lymphocyte count at baseline and its evolution found in our study could reflect the persistent status of post-aggressive immunosuppression. Of course, our study did not preclude the absence of added prognostic value of the lymphocyte subsets, which has already been reported in the literature [22, 28, 38]; however, it highlights that the routinely measured total lymphocyte count may be taken into account. Indeed, the total lymphocyte count is simple to evaluate, without any special skill or laboratory equipment. However, further studies are warranted to figure out whether or not functional new markers would add more information that plain absolute lymphocyte counts. Case mix varied between centers, which may explain significant differences between numbers of exams performed and mean lymphocyte counts between centers. However, we did not unmask heterogeneity between prognostic impacts of lymphocyte alterations between centers. We cannot make any causative relationship between mortality and ICU-acquired infection with low lymphocyte count, as they may all be related to the disease severity. Also, we do have any data on the immunoresponse and the anergy–apoptosis of this lymphocyte in general and lymphopenia in particular, as it could be expected from a retrospective study that requires a prospective confirmation using the functional activities of the different lymphocytes involved in the inflammation processes.

Conclusion

A large cohort of ICU patients with shock at admission, we demonstrated the independent impact of a low baseline lymphocyte count and its non-relevant increase at day 3 with the risk of ICU-acquired infection and, for persistent lymphopenia, its impact on 28-day mortality. Total lymphocyte count appears as a simple and routine marker of immune dysfunction, and might be useful for selecting patients that could benefit of potential immune-adjuvant therapies [27].
  38 in total

1.  Sepsis-induced apoptosis causes progressive profound depletion of B and CD4+ T lymphocytes in humans.

Authors:  R S Hotchkiss; K W Tinsley; P E Swanson; R E Schmieg; J J Hui; K C Chang; D F Osborne; B D Freeman; J P Cobb; T G Buchman; I E Karl
Journal:  J Immunol       Date:  2001-06-01       Impact factor: 5.422

2.  HELICS: a European project to standardise the surveillance of hospital acquired infection, 1994-1995.

Authors:  R Mertens; J.M.J Van Den Berg; J Fabry; O.B Jepsen
Journal:  Euro Surveill       Date:  1996-04

3.  Early assessment of leukocyte alterations at diagnosis of septic shock.

Authors:  Fabienne Venet; Fanny Davin; Caroline Guignant; Audrey Larue; Marie-Angélique Cazalis; Romain Darbon; Caroline Allombert; Bruno Mougin; Christophe Malcus; Françoise Poitevin-Later; Alain Lepape; Guillaume Monneret
Journal:  Shock       Date:  2010-10       Impact factor: 3.454

4.  Relationships between T lymphocyte apoptosis and anergy following trauma.

Authors:  J D Pellegrini; A K De; K Kodys; J C Puyana; R K Furse; C Miller-Graziano
Journal:  J Surg Res       Date:  2000-02       Impact factor: 2.192

5.  Anti-inflammatory cytokine profile and mortality in febrile patients.

Authors:  J T van Dissel; P van Langevelde; R G Westendorp; K Kwappenberg; M Frölich
Journal:  Lancet       Date:  1998-03-28       Impact factor: 79.321

6.  Monocytic HLA-DR expression in intensive care patients: interest for prognosis and secondary infection prediction.

Authors:  Anne-Claire Lukaszewicz; Marion Grienay; Matthieu Resche-Rigon; Romain Pirracchio; Valérie Faivre; Bernadette Boval; Didier Payen
Journal:  Crit Care Med       Date:  2009-10       Impact factor: 7.598

7.  Immunoparalysis as a cause for invasive aspergillosis?

Authors:  Koen J Hartemink; Marinus A Paul; Jan Jaap Spijkstra; Armand R J Girbes; Kees H Polderman
Journal:  Intensive Care Med       Date:  2003-05-24       Impact factor: 17.440

8.  Downregulation of CD40 ligand response in monocytes from sepsis patients.

Authors:  Anna Sinistro; Cristiana Almerighi; Chiara Ciaprini; Silvia Natoli; Emanuele Sussarello; Sara Di Fino; Francesca Calò-Carducci; Giovanni Rocchi; Alberto Bergamini
Journal:  Clin Vaccine Immunol       Date:  2008-10-22

Review 9.  Monitoring the immune response in sepsis: a rational approach to administration of immunoadjuvant therapies.

Authors:  Fabienne Venet; Anne-Claire Lukaszewicz; Didier Payen; Richard Hotchkiss; Guillaume Monneret
Journal:  Curr Opin Immunol       Date:  2013-05-28       Impact factor: 7.486

10.  A prospective analysis of lymphocyte phenotype and function over the course of acute sepsis.

Authors:  Jonathan S Boomer; Jennifer Shuherk-Shaffer; Richard S Hotchkiss; Jonathan M Green
Journal:  Crit Care       Date:  2012-06-28       Impact factor: 9.097

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  23 in total

1.  On the verge of using an immune toolbox in the intensive care unit?

Authors:  Frédéric Pène; Jean-Louis Vincent; Ignacio Martin-Loeches
Journal:  Intensive Care Med       Date:  2017-05-11       Impact factor: 17.440

2.  Impact of bronchial colonization with Candida spp. on the risk of bacterial ventilator-associated pneumonia in the ICU: the FUNGIBACT prospective cohort study.

Authors:  Jean-Francois Timsit; Carole Schwebel; Lenka Styfalova; Muriel Cornet; Philippe Poirier; Christiane Forrestier; Stéphane Ruckly; Marie-Christine Jacob; Bertrand Souweine
Journal:  Intensive Care Med       Date:  2019-04-24       Impact factor: 17.440

Review 3.  Advances in the understanding and treatment of sepsis-induced immunosuppression.

Authors:  Fabienne Venet; Guillaume Monneret
Journal:  Nat Rev Nephrol       Date:  2017-12-11       Impact factor: 28.314

Review 4.  T cell dysregulation in inflammatory diseases in ICU.

Authors:  Marta Luperto; Lara Zafrani
Journal:  Intensive Care Med Exp       Date:  2022-10-24

5.  Cell-surface signatures of immune dysfunction risk-stratify critically ill patients: INFECT study.

Authors:  Andrew Conway Morris; Deepankar Datta; Manu Shankar-Hari; Jacqueline Stephen; Christopher J Weir; Jillian Rennie; Jean Antonelli; Anthony Bateman; Noel Warner; Kevin Judge; Jim Keenan; Alice Wang; Tony Burpee; K Alun Brown; Sion M Lewis; Tracey Mare; Alistair I Roy; Gillian Hulme; Ian Dimmick; Adriano G Rossi; A John Simpson; Timothy S Walsh
Journal:  Intensive Care Med       Date:  2018-06-07       Impact factor: 17.440

6.  Immune Alterations in a Patient with SARS-CoV-2-Related Acute Respiratory Distress Syndrome.

Authors:  Lila Bouadma; Aurélie Wiedemann; Juliette Patrier; Mathieu Surénaud; Paul-Henri Wicky; Emile Foucat; Jean-Luc Diehl; Boris P Hejblum; Fabrice Sinnah; Etienne de Montmollin; Christine Lacabaratz; Rodolphe Thiébaut; J F Timsit; Yves Lévy
Journal:  J Clin Immunol       Date:  2020-08-22       Impact factor: 8.317

7.  Sepsis induces long-lasting impairments in CD4+ T-cell responses despite rapid numerical recovery of T-lymphocyte populations.

Authors:  Christoph Ammer-Herrmenau; Upasana Kulkarni; Nico Andreas; Martin Ungelenk; Sarina Ravens; Christian Hübner; Angela Kather; Ingo Kurth; Michael Bauer; Thomas Kamradt
Journal:  PLoS One       Date:  2019-02-07       Impact factor: 3.240

8.  Early and dynamic alterations of Th2/Th1 in previously immunocompetent patients with community-acquired severe sepsis: a prospective observational study.

Authors:  Ming Xue; Jianfeng Xie; Ling Liu; Yingzi Huang; Fengmei Guo; Jingyuan Xu; Yi Yang; Haibo Qiu
Journal:  J Transl Med       Date:  2019-02-27       Impact factor: 5.531

9.  Alpinetin Attenuates Persistent Inflammation, Immune Suppression, and Catabolism Syndrome in a Septic Mouse Model.

Authors:  Yukun Liu; Kang Wang; Qaunrui Feng; Yongsheng Zhang; Chuntao Wang; Qinxin Liu; Xinghua Liu; Xiang Wang; Wei Gao; Xiangjun Bai; Zhanfei Li; Yuchang Wang
Journal:  J Immunol Res       Date:  2021-07-05       Impact factor: 4.818

10.  Lymphopenia and risk of infection and infection-related death in 98,344 individuals from a prospective Danish population-based study.

Authors:  Marie Warny; Jens Helby; Børge Grønne Nordestgaard; Henrik Birgens; Stig Egil Bojesen
Journal:  PLoS Med       Date:  2018-11-01       Impact factor: 11.069

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