Clinical Phenotyping for Prognosis and Immunotherapy Guidance in Bacterial Sepsis and COVID-19

Author:

Karakike Eleni1,Metallidis Simeon2,Poulakou Garyfallia3,Kosmidou Maria4,Gatselis Nikolaos K.5,Petrakis Vasileios6,Rovina Nikoletta7,Gkeka Eleni8,Sympardi Styliani9,Papanikolaou Ilias10,Koutsodimitropoulos Ioannis11,Tzavara Vasiliki12,Adamis Georgios13,Tsiakos Konstantinos3,Koulouras Vasilios14,Mouloudi Eleni15,Antoniadou Eleni16,Vlachogianni Gykeria17,Anisoglou Souzana18,Markou Nikolaos11,Koutsoukou Antonia7,Panagopoulos Periklis6,Milionis Haralampos4,Dalekos George N.5,Kyprianou Miltiades19,Giamarellos-Bourboulis Evangelos J.119

Affiliation:

1. 4th Department of Internal Medicine, National and Kapodistrian University of Athens, Medical School, Athens, Greece.

2. 1st Department of Internal Medicine, Aristotle University of Thessaloniki, Medical School, Thessaloniki, Greece.

3. 3rd Department of Internal Medicine, National and Kapodistrian University of Athens, Medical School, Athens, Greece.

4. 1st Department of Internal Medicine, University General Hospital of Ioannina, Ioannina, Greece.

5. Department of Internal Medicine, Larissa University General Hospital, University of Thessaly, Larissa, Greece.

6. 2nd Department of Internal Medicine, University General Hospital of Alexandroupolis, Alexandroupolis, Greece.

7. 1st Department of Pulmonary Medicine, National and Kapodistrian University of Athens, Medical School, Athens, Greece.

8. Intensive Care Unit, AHEPA University General Hospital of Thessaloniki, Thessaloniki, Greece.

9. 1st Department of Internal Medicine, Elefsis General Hospital Thriassio, Elefsis, Greece.

10. Department of Pulmonary Medicine, Kerkyra General Hospital, Corfu, Greece.

11. Intensive Care Unit of Latseion Burn Center, Elefsis General Hospital Thriassio, Elefsis, Greece.

12. 1st Department of Internal Medicine, “Korgialeneio-Benakeio” Athens General Hospital, Athens, Greece.

13. 1st Department of Internal Medicine, “G.Gennimatas” Athens General Hospital, Athens, Greece.

14. Department of Critical Care Medicine, University General Hospital of Ioannina, Ioannina, Greece.

15. Intensive Care Unit, “Ippokrateion” General Hospital of Thessaloniki, Thessaloniki, Greece.

16. Intensive Care Unit, “G.Gennimatas” General Hospital of Thessaloniki, Thessaloniki, Greece.

17. Intensive Care Unit, “Aghios Dimitrios” General Hospital of Thessaloniki, Thessaloniki, Greece.

18. Intensive Care Unit, “Theageneion” General Hospital of Thessaloniki, Thessaloniki, Greece.

19. Hellenic Institute for the Study of Sepsis, Athens, Greece.

Abstract

OBJECTIVES: It is suggested that sepsis may be classified into four clinical phenotypes, using an algorithm employing 29 admission parameters. We applied a simplified phenotyping algorithm among patients with bacterial sepsis and severe COVID-19 and assessed characteristics and outcomes of the derived phenotypes. DESIGN: Retrospective analysis of data from prospective clinical studies. SETTING: Greek ICUs and Internal Medicine departments. PATIENTS AND INTERVENTIONS: We analyzed 1498 patients, 620 with bacterial sepsis and 878 with severe COVID-19. We implemented a six-parameter algorithm (creatinine, lactate, aspartate transaminase, bilirubin, C-reactive protein, and international normalized ratio) to classify patients with bacterial sepsis intro previously defined phenotypes. Patients with severe COVID-19, included in two open-label immunotherapy trials were subsequently classified. Heterogeneity of treatment effect of anakinra was assessed. The primary outcome was 28-day mortality. MEASUREMENTS AND MAIN RESULTS: The algorithm validated the presence of the four phenotypes across the cohort of bacterial sepsis and the individual studies included in this cohort. Phenotype α represented younger patients with low risk of death, β was associated with high comorbidity burden, and δ with the highest mortality. Phenotype assignment was independently associated with outcome, even after adjustment for Charlson Comorbidity Index. Phenotype distribution and outcomes in severe COVID-19 followed a similar pattern. CONCLUSIONS: A simplified algorithm successfully identified previously derived phenotypes of bacterial sepsis, which were predictive of outcome. This classification may apply to patients with severe COVID-19 with prognostic implications.

Publisher

Ovid Technologies (Wolters Kluwer Health)

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