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  1. AU="Katia Imhoff"
  2. AU="Bouet, Pierre-Emmanuel"
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  1. Artikel ; Online: Mortality Prediction in Sepsis With an Immune-Related Transcriptomics Signature

    Louis Kreitmann / Maxime Bodinier / Aurore Fleurie / Katia Imhoff / Marie-Angelique Cazalis / Estelle Peronnet / Elisabeth Cerrato / Claire Tardiveau / Filippo Conti / Jean-François Llitjos / Julien Textoris / Guillaume Monneret / Sophie Blein / Karen Brengel-Pesce

    Frontiers in Medicine, Vol

    A Multi-Cohort Analysis

    2022  Band 9

    Abstract: BackgroundNovel biomarkers are needed to progress toward individualized patient care in sepsis. The immune profiling panel (IPP) prototype has been designed as a fully-automated multiplex tool measuring expression levels of 26 genes in sepsis patients to ...

    Abstract BackgroundNovel biomarkers are needed to progress toward individualized patient care in sepsis. The immune profiling panel (IPP) prototype has been designed as a fully-automated multiplex tool measuring expression levels of 26 genes in sepsis patients to explore immune functions, determine sepsis endotypes and guide personalized clinical management. The performance of the IPP gene set to predict 30-day mortality has not been extensively characterized in heterogeneous cohorts of sepsis patients.MethodsPublicly available microarray data of sepsis patients with widely variable demographics, clinical characteristics and ethnical background were co-normalized, and the performance of the IPP gene set to predict 30-day mortality was assessed using a combination of machine learning algorithms.ResultsWe collected data from 1,801 arrays sampled on sepsis patients and 598 sampled on controls in 17 studies. When gene expression was assayed at day 1 following admission (1,437 arrays sampled on sepsis patients, of whom 1,161 were alive and 276 (19.2%) were dead at day 30), the IPP gene set showed good performance to predict 30-day mortality, with an area under the receiving operating characteristics curve (AUROC) of 0.710 (CI 0.652–0.768). Importantly, there was no statistically significant improvement in predictive performance when training the same models with all genes common to the 17 microarray studies (n = 7,122 genes), with an AUROC = 0.755 (CI 0.697–0.813, p = 0.286). In patients with gene expression data sampled at day 3 following admission or later, the IPP gene set had higher performance, with an AUROC = 0.804 (CI 0.643–0.964), while the total gene pool had an AUROC = 0.787 (CI 0.610–0.965, p = 0.811).ConclusionUsing pooled publicly-available gene expression data from multiple cohorts, we showed that the IPP gene set, an immune-related transcriptomics signature conveys relevant information to predict 30-day mortality when sampled at day 1 following admission. Our data also suggests that higher predictive ...
    Schlagwörter sepsis ; transcriptomics ; predictive modeling ; gene expression analysis ; mortality ; biomarker discovery ; Medicine (General) ; R5-920
    Thema/Rubrik (Code) 610
    Sprache Englisch
    Erscheinungsdatum 2022-06-01T00:00:00Z
    Verlag Frontiers Media S.A.
    Dokumenttyp Artikel ; Online
    Datenquelle BASE - Bielefeld Academic Search Engine (Lebenswissenschaftliche Auswahl)

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  2. Artikel ; Online: A 9-mRNA signature measured from whole blood by a prototype PCR panel predicts 28-day mortality upon admission of critically ill COVID-19 patients

    Claire Tardiveau / Guillaume Monneret / Anne-Claire Lukaszewicz / Valérie Cheynet / Elisabeth Cerrato / Katia Imhoff / Estelle Peronnet / Maxime Bodinier / Louis Kreitmann / Sophie Blein / Jean-François Llitjos / Filippo Conti / Morgane Gossez / Marielle Buisson / Hodane Yonis / Martin Cour / Laurent Argaud / Marie-Charlotte Delignette / Florent Wallet /
    Frederic Dailler / Céline Monard / Karen Brengel-Pesce / Fabienne Venet / the RICO study group

    Frontiers in Immunology, Vol

    2022  Band 13

    Abstract: Immune responses affiliated with COVID-19 severity have been characterized and associated with deleterious outcomes. These approaches were mainly based on research tools not usable in routine clinical practice at the bedside. We observed that a multiplex ...

    Abstract Immune responses affiliated with COVID-19 severity have been characterized and associated with deleterious outcomes. These approaches were mainly based on research tools not usable in routine clinical practice at the bedside. We observed that a multiplex transcriptomic panel prototype termed Immune Profiling Panel (IPP) could capture the dysregulation of immune responses of ICU COVID-19 patients at admission. Nine transcripts were associated with mortality in univariate analysis and this 9-mRNA signature remained significantly associated with mortality in a multivariate analysis that included age, SOFA and Charlson scores. Using a machine learning model with these 9 mRNA, we could predict the 28-day survival status with an Area Under the Receiver Operating Curve (AUROC) of 0.764. Interestingly, adding patients’ age to the model resulted in increased performance to predict the 28-day mortality (AUROC reaching 0.839). This prototype IPP demonstrated that such a tool, upon clinical/analytical validation and clearance by regulatory agencies could be used in clinical routine settings to quickly identify patients with higher risk of death requiring thus early aggressive intensive care.
    Schlagwörter transcriptomic multiplex tool ; SARS-CoV-2 infection ; immune response ; 28-day mortality prediction ; personalized medicine ; Immunologic diseases. Allergy ; RC581-607
    Thema/Rubrik (Code) 610
    Sprache Englisch
    Erscheinungsdatum 2022-11-01T00:00:00Z
    Verlag Frontiers Media S.A.
    Dokumenttyp Artikel ; Online
    Datenquelle BASE - Bielefeld Academic Search Engine (Lebenswissenschaftliche Auswahl)

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