| Literature DB >> 34079942 |
Anuradha Ramoji1, Daniel Thomas-Rüddel1,2, Oleg Ryabchykov3,4, Michael Bauer1,2, Natalie Arend1,3, Evangelos J Giamarellos-Bourboulis5, Jesper Eugen-Olsen6, Michael Kiehntopf1,7, Thomas Bocklitz3,4, Jürgen Popp1,3,4, Frank Bloos1,2, Ute Neugebauer1.
Abstract
OBJECTIVES: Leukocytes are first responders to infection. Their activation state can reveal information about specific host immune response and identify dysregulation in sepsis. This study aims to use the Raman spectroscopic fingerprints of blood-derived leukocytes to differentiate inflammation, infection, and sepsis in hospitalized patients. Diagnostic sensitivity and specificity shall demonstrate the added value of the direct characterization of leukocyte's phenotype.Entities:
Keywords: Raman spectroscopy; biomarker; immune response; infection and inflammation; leukocytes activation; sepsis diagnosis
Year: 2021 PMID: 34079942 PMCID: PMC8162546 DOI: 10.1097/CCE.0000000000000394
Source DB: PubMed Journal: Crit Care Explor ISSN: 2639-8028
Clinical Characterization of the HemoSpec Patients
| Characteristics | Inflammation | Infection | Sepsisa |
|---|---|---|---|
| Number of patients | 24 | 19 | 18 |
| Sex, male, | 15 (63) | 13 (68) | 15 (83) |
| Age, median (interquartile range) | 70 (63–77) | 73 (70–83) | 64 (59–75) |
| SIRS after cardiac surgery, | 22 (92) | ||
| SIRS after traumatic brain injury, | 1 (4) | ||
| SIRS after liver resection, | 1 (4) | ||
| Infection microbiologically proven, | 9 (47) | 13 (72) | |
| Respiratory tract infection, | 13 (68) | 6 (33) | |
| Urinary tract infection, | 3 (16) | 2 (11) | |
| Abdominal infection, | 4 (22) | ||
| Wounds or soft-tissue infection, | 4 (22) | ||
| Other or unknown infection focus, | 3 (16) | 2 (11) | |
| Hypo- or hyperthermia, | 5 (21) | 5 (26) | 7 (39) |
| Tachycardia, | 10 (42) | 10 (53) | 17 (94) |
| Tachypnea or ventilation, | 22 (92) | 6 (32) | 17 (94) |
| Leukocytosis, leukopenia, or left shift, | 10 (42) | 9 (47) | 15 (83) |
| Acute Physiology And Chronic Health Evaluation II, median (interquartile range) | 21 (11–23) | 16 (15–23)11,b | 21 (16–32) |
| Sequential Organ Failure Assessment, median (interquartile range) | 7 (4–8) | 6 (3–9)11,b | 8 (7–12) |
| C-reactive protein, mg/L, median (interquartile range) | 3.9 (2–10) | 156 (92–187) | 216 (85–327) |
| Interleukin-6, pg/mL, median (interquartile range) | 228 (143–450) | 43 (16–92) | 617 (148–3,000) |
| Procalcitonin in ng/mL, median (interquartile range) | 0.1 (0.1–0.2) | 0.4 (0.16–1.8) | 3.4 (1.2–13.5) |
| Soluble urokinase-type plasminogen activator receptor, ng/mL, median (interquartile range) | 2.5 (1.8–2.9)7 | 4.4 (3.0–8.8) | 10.3 (6.1–14.7)2 |
| Leukocytes Giga particles per litre, median (interquartile range) | 10 (8.9–14.5) | 10.5 (6.9–12.0)1 | 18.5 (9.6–23.0) |
| Relative neutrophil count, %, median (interquartile range) | 82 (76–83)5 | 80 (73–87)2 | 86 (83–88)2 |
| Relative lymphocyte count, %, median (interquartile range) | 13 (10–17)5 | 9 (6–14)2 | 5 (2–9)2 |
| Relative monocyte count, %, median (interquartile range) | 6 (5–8)5 | 8 (7–9)2 | 6 (5–7)2 |
SIRS = systemic inflammatory response syndrome.
aSepsis: sepsis or septic shock according to Sepsis-3 definition.
bScores are missing for 11 ward patients never treated in the ICU in the infection group.
n indicates the number of missing values in each group.
Figure 3.Added value of Raman leukocyte analysis to detect infections (A) and to identify sepsis (B). Receiver operating characteristic (ROC) curves obtained from canonical-powered partial least squares (CPPLS) analysis. All models were validated using leave-one-patient-out cross-validation. Predictions using Raman spectroscopic data were obtained on a single-cell level and were aggregated to obtain a single value (median of all leukocytes) per patient (orange curves). A, ROC curves for infection detection (against sterile inflammation) using predictions based on Raman spectroscopic data (orange curve), biomarker scores (C-reactive protein, procalcitonin, and interleukin-6, blue curve), and on a combined model using Raman scores and biomarkers scores (green curve). B, ROC curves for sepsis detection (against sterile inflammation and infection without organ failure) using predictions from Raman spectroscopic data (orange curve), from biomarkers (blue curve) and using a combined CPPLS models using Raman scores and biomarker values (green curve). Scatterplots of the data used for sepsis detection based on Raman spectroscopic scores and biomarkers are shown in Figure S6 (http://links.lww.com/CCX/A583); the model loadings and the fitted model in Figure S7 (http://links.lww.com/CCX/A583). The combined models (green curves in A and B) show superior diagnostic power. Please note that balanced accuracies (acc) can be different from 1, also if area under the curve (AUC) is 1, as there is only a small margin between the patient groups. Thus, when a patient is excluded from the training data within the cross-validation loop, the model and the estimation of the optimal threshold change slightly. This might lead to a misprediction of some patients when the threshold is set for the prediction within the cross-validation loop, even if the cross-validated predicted values perfectly separate the groups.
Figure 4.Canonical-powered partial least squares coefficients for the first two latent variables in the Raman models for the detection of (A) infection and (B) sepsis. Respective scatter plots are depicted in Figure S5 (http://links.lww.com/CCX/A583).