A Diagnostic Model for Sepsis-induced Acute Lung Injury Using a Consensus Machine Learning Approach
Yongxin Zheng,
Jinping Wang,
Zhaoyi Ling
et al.
Abstract:Background Sepsis-induced acute lung injury (ALI) is a heterogenous syndrome with high incidence and mortality. The diagnosis is often delayed which requires a chest imaging. Identifying diagnostic biomarkers may improve screening to identify septic patients at high risk of ALI earlier and provide the potential effective therapeutic drugs. Gene signatures obtained from peripheral blood have been shown to be dysregulated in sepsis and sepsis-induced ALI, which could provide additional noninvasive means for diag… Show more
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