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Profiling the dysregulated immune response in sepsis: overcoming challenges to achieve the goal of precision medicine

Articolo
Data di Pubblicazione:
2024
Citazione:
Profiling the dysregulated immune response in sepsis: overcoming challenges to achieve the goal of precision medicine / Cajander, S; Kox, M; Scicluna, Bp; Weigand, Ma; Mora, Ra; Flohé, Sb; Martin-Loeches, I; Lachmann, G; Girardis, M; Garcia-Salido, A; Brunkhorst, Fm; Bauer, M; Torres, A; Cossarizza, A; Monneret, G; Cavaillon, J-M; Shankar-Hari, M; Giamarellos-Bourboulis, Ej; Winkler, Ms; Skirecki, T; Osuchowski, M; Rubio, I; Bermejo-Martin, Jf; Schefold, Jc; Venet, F.. - In: THE LANCET RESPIRATORY MEDICINE. - ISSN 2213-2600. - 12:4(2024), pp. 305-322. [10.1016/S2213-2600(23)00330-2]
Abstract:
Sepsis is characterised by a dysregulated host immune response to infection. Despite recognition of its significance, immune status monitoring is not implemented in clinical practice due in part to the current absence of direct therapeutic implications. Technological advances in immunological profiling could enhance our understanding of immune dysregulation and facilitate integration into clinical practice. In this Review, we provide an overview of the current state of immune profiling in sepsis, including its use, current challenges, and opportunities for progress. We highlight the important role of immunological biomarkers in facilitating predictive enrichment in current and future treatment scenarios. We propose that multiple immune and non-immune-related parameters, including clinical and microbiological data, be integrated into diagnostic and predictive combitypes, with the aid of machine learning and artificial intelligence techniques. These combitypes could form the basis of workable algorithms to guide clinical decisions that make precision medicine in sepsis a reality and improve patient outcomes.
Tipologia CRIS:
Articolo su rivista
Keywords:
Sepsis; immunity
Elenco autori:
Cajander, S; Kox, M; Scicluna, Bp; Weigand, Ma; Mora, Ra; Flohé, Sb; Martin-Loeches, I; Lachmann, G; Girardis, M; Garcia-Salido, A; Brunkhorst, Fm; Bauer, M; Torres, A; Cossarizza, A; Monneret, G; Cavaillon, J-M; Shankar-Hari, M; Giamarellos-Bourboulis, Ej; Winkler, Ms; Skirecki, T; Osuchowski, M; Rubio, I; Bermejo-Martin, Jf; Schefold, Jc; Venet, F.
Autori di Ateneo:
COSSARIZZA Andrea
GIRARDIS Massimo
Link alla scheda completa:
https://iris.unimore.it/handle/11380/1372386
Link al Full Text:
https://iris.unimore.it//retrieve/handle/11380/1372386/742308/2024%20Lancet%20Resp%20Med%20%20-%20Cajander.pdf
Pubblicato in:
THE LANCET RESPIRATORY MEDICINE
Journal
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