2023
DOI: 10.3389/fped.2023.1159473
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Identification of a pediatric acute hypoxemic respiratory failure signature in peripheral blood leukocytes at 24 hours post-ICU admission with machine learning

Abstract: BackgroundThere is no generalizable transcriptomics signature of pediatric acute respiratory distress syndrome. Our goal was to identify a whole blood differential gene expression signature for pediatric acute hypoxemic respiratory failure (AHRF) using transcriptomic microarrays within twenty-four hours of diagnosis. We used publicly available human whole-blood gene expression arrays of a Berlin-defined pediatric acute respiratory distress syndrome (GSE147902) cohort and a sepsis-triggered AHRF (GSE66099) coho… Show more

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“…For example, leveraging electronic health records (EHRs) or continuous vital sign data to capture nuanced ventilator or physiologic data can aid in identifying patients for targeted approaches. Machine learning algorithms can also analyze EHRs to identify complex patterns that may predict or subclassify BPD or provide prognostic measures for long-term respiratory outcomes [e.g., need for home oxygen, tracheostomy ( 25 28 )]. Beyond EHRs, mobile health and clinical decision support systems are additional clinical informatics tools that can benefit neonates with BPD.…”
Section: Incidence/prevalence Of Bpd and Why It Is A Priority For Imp...mentioning
confidence: 99%
“…For example, leveraging electronic health records (EHRs) or continuous vital sign data to capture nuanced ventilator or physiologic data can aid in identifying patients for targeted approaches. Machine learning algorithms can also analyze EHRs to identify complex patterns that may predict or subclassify BPD or provide prognostic measures for long-term respiratory outcomes [e.g., need for home oxygen, tracheostomy ( 25 28 )]. Beyond EHRs, mobile health and clinical decision support systems are additional clinical informatics tools that can benefit neonates with BPD.…”
Section: Incidence/prevalence Of Bpd and Why It Is A Priority For Imp...mentioning
confidence: 99%