| Literature DB >> 32430795 |
Florian Blanchard1, Judith Charbit2, Guillaume Van der Meersch3, Benjamin Popoff4, Adrien Picod3, Regis Cohen5, Frank Chemouni6, Stephane Gaudry3,7, Helene Bihan2, Yves Cohen3.
Abstract
BACKGROUND: Bacterial infections are frequent triggers for diabetic ketoacidosis. In this context, delayed antibiotic treatment is associated with increased morbidity and mortality. Unnecessary administration of antimicrobial therapy might however, also negatively impact the prognosis. The usefulness of sepsis markers in diabetic ketoacidosis has not been assessed. Thus, we sought to investigate diagnostic performances of clinical and biological sepsis markers during diabetic ketoacidosis.Entities:
Keywords: Bacterial infection; Biomarkers; Diabetic ketoacidosis; Inflammation; Procalcitonin; Sepsis
Year: 2020 PMID: 32430795 PMCID: PMC7237630 DOI: 10.1186/s13613-020-00676-6
Source DB: PubMed Journal: Ann Intensive Care ISSN: 2110-5820 Impact factor: 6.925
Fig. 1Flowchart of study population and sample size. Shown is the recruitment of the cohort
Demographic and clinical baseline characteristics of the episodes
| Variables | All cohort | Episodes with PBI | Episodes without PBI | |
|---|---|---|---|---|
| Age, year, median [IQR] | 47 [29–58] | 56 [48–64] | 41 [28–57] | |
| Males, | 50 (49%) | 9 (45%) | 41 (50%) | |
| Body mass index, kg/m2, median [IQR] | 23.65 [20.97–26.54] | 24.49 [20.89–30.25] | 23.63 [21.05–26.30] | |
| Inaugural diabetes ketoacidosis, | 18 (18%) | 7 (35%) | 11 (13%) | |
| Type 1 diabetes mellitus, | 61 (60%) | 7 (35%) | 54 (66%) | |
| Type 2 diabetes mellitus, | 23 (23%) | 6 (30%) | 17 (21%) | ns |
| Insulin-dependent diabetes mellitus, | 72 (71%) | 9 (45%) | 63 (77%) | |
| Comorbidities | ||||
| Hypertension, | 30 (29%) | 5 (25%) | 25 (31%) | |
| Dyslipidemia, | 19 (19%) | 4 (20%) | 15 (18%) | |
| Ischemic heart disease, | 7 (7%) | 2 (10%) | 5 (6%) | |
| Diabetic retinopathy, | 27 (27%) | 4 (20%) | 23 (28%) | |
| Chronic kidney disease, | 24 (24%) | 5 (25%) | 19 (24%) | |
| Smoking, | 43 (42%) | 5 (25%) | 38 (46%) | ns |
| Alcohol, | 24 (24%) | 4 (20%) | 20 (24%) | |
| Medications | ||||
| Insulin, | 72 (71%) | 9 (45%) | 63 (77%) | |
| Metformin, | 23 (23%) | 6 (30%) | 17 (21%) | ns |
| Sulfonylurea, | 8 (8%) | 3 (15%) | 5 (6%) | ns |
| No antidiabetic, | 18 (18%) | 7 (35%) | 11 (13%) | |
| Triggering factors | ||||
| Poor compliance to antidiabetic treatment, | 51 (50%) | |||
| No triggering factors, | 21 (21%) | |||
| Infection, | 20 (20%) | |||
| Others, | 11 (11%) | |||
| Clinical and biological data | ||||
| pH, median [IQR] | 7.14 [7.05–7.24] | 7.15 [7.02–7.27] | 7.14 [7.05–7.22] | ns |
| Bicarbonate, mmol/L, median [IQR] | 6.00 [3.50–10.40] | 8.00 [4.15–10.55] | 5.90 [3.30–10.30] | ns |
| Glycemia, mmol/L, median [IQR] | 27.5 [26.1–30.6] | 27.5 [25.1–29.0] | 27.5 [26.1–30.9] | |
| Ketonemia, mmol/L, median [IQR] | 6.0 [5.1–6.9] | 5.00 [3.95–5.93] | 6.1 [5.3–7.0] | |
| SAPS II, median [IQR] | 29 [21–40] | 45 [35–58] | 26 [20–36] | |
| Treatments and outcomes | ||||
| Antibiotics treatments, | 45 (44%) | 20 (100%) | 25 (31%) | |
| ICU length of stay, day, median [IQR] | 2 [1–4] | 7 [6–12] | 2 [1–3] | |
| Hospital length of stay, day, median [IQR] | 9 [6–14] | 20 [12–24] | 8 [6–12] | |
| Death, | 2 (2%) | 1 (5%) | 1 (1%) | |
IQR interquartile range 25–75%, ICU intensive care unit, PBI proven bacterial infection, SAPS II Simplified Acute Physiology Score II
aSignificant difference (p < 0.05) between episodes with and without proven bacterial infection are reported in the “p value” column
Association between sepsis markers and presence of proven bacterial infection at admission and day 2
| Variables | Admission | Day 2 | ||||
|---|---|---|---|---|---|---|
| Episodes with PBI | Episodes without PBI | Episodes with PBI | Episodes without PBI | |||
| Temperature, °C, median [IQR] | 36.9 [36.2–38.0] | 36.4 [35.7–36.8] | 38.4 [37.1–39.0] | 37.0 [36.8–37.3] | ||
| Feverb, | 5 (25%) | 3 (4%) | 12 (60%) | 7 (9%) | ||
| Hypothermiac, | 4 (20%) | 26 (32%) | 0.410 | 0 (0%) | 1 (1%) | 1 |
| WBC, G/L, median [IQR] | 16.85 [14.25–22.15] | 15.40 [12.30–22.50] | 0.606 | 13.05 [8.68–18.23] | 8.15 [6.68–10.20] | |
| Leukocyte abnormalitiesd, n (%) | 18 (90%) | 62 (76%) | 0.232 | 11 (55%) | 14 (17%) | |
| Neutrophils count, G/L, median [IQR] | 13.30 [12.01–18.24] | 13.71 [9.69–20.88] | 0.673 | 10.79 [7.39–16.64] | 5.38 [3.60–7.62] | |
| NLCR; median [IQR] | 14.04 [8.79–19.07] | 11.40 [5.78–19.27] | 0.359 | 11.54 [7.63–23.99] | 2.84 [1.56–4.96] | |
| Procalcitonin, ng/mL, median [IQR] | 3.58 [1.87–11.24] | 0.52 [0.19–1.38] | 7.43 [2.63–22.70] | 0.42 [0.14–1.42] | ||
PBI proven bacterial infection, IQR interquartile range 25–75%, WBC white blood cell count, NLCR neutrophils-to-lymphocytes count ratio
aSignificant difference (p < 0.05) between episodes with and without proven bacterial infection are reported in the “p-value” column
bFever: temperature > 38 °C
cHypothermia: temperature < 36 °C
dLeukocyte abnormalities: white blood cell count > 12,000/mm3 or < 4000/mm3
Fig. 2Receiver operating characteristics curve of procalcitonin (PCT) (a) and temperature (b) at admission. For PCT, the area under curve (AUC) was 0.87 with optimal cutoff at 1.44 ng/mL leading to a sensitivity and specificity of 0.90 (IC95 [0.75–1.00]) and 0.76 (IC95 [0.66–0.84]), respectively. Positive and negative likelihood ratios were 3.75 and 0.13, respectively. For temperature, the area under curve (AUC) was 0.66 with optimal cutoff at 36.8 °C leading to a sensitivity and specificity of 0.65 (IC95 [0.45–0.85]) and 0.65 (IC95 [0.56–0.75]), respectively. Positive and negative likelihood ratios were 1.86 and 0.54, respectively
Fig. 3Procalcitonin (PCT) and fever as markers of proven bacterial infection at admission. Results are shown in percent of episode with proven bacterial infection over total episode presenting both (100%), either one (46%) or none (0%) of PCT >1.44 ng/mL and fever. PCT is expressed in ng/mL. Fever is retained in case of temperature > 38 °C