Gosset, Christian ; Université de Liège - ULiège > Département des sciences biomédicales et précliniques > Biologie de la coagulation et de l'hémostase
FOGUENNE, Jacques ; Centre Hospitalier Universitaire de Liège - CHU > Unilab > Unité de labo - typage hématopoïtique et thérapie cellulaire
SIMUL, Mickael ; Centre Hospitalier Universitaire de Liège - CHU > Unilab > Unité de labo - typage hématopoïtique et thérapie cellulaire
TOMSIN, Olivier ; Centre Hospitalier Universitaire de Liège - CHU > Département de gestion des systèmes d'informations (GSI) > Secteur Appui méthodologique aux Projets GSI et Planif (APP)
AMMAR, Hayet ; Centre Hospitalier Universitaire de Liège - CHU > Autres Services Médicaux > Service des soins intensifs
LAYIOS, Nathalie ; Centre Hospitalier Universitaire de Liège - CHU > Autres Services Médicaux > Service des soins intensifs
MASSION, Paul ; Centre Hospitalier Universitaire de Liège - CHU > Autres Services Médicaux > Service des soins intensifs
DAMAS, Pierre ; Centre Hospitalier Universitaire de Liège - CHU > Autres Services Médicaux > Service des soins intensifs
GOTHOT, André ; Centre Hospitalier Universitaire de Liège - CHU > Unilab > Service d'hématologie biologique et immuno-hématologie
Language :
English
Title :
Machine learning identification of specific changes in myeloid cell phenotype during bloodstream infections
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