Annals of
Intensive Care volume 14,
Article number: 134 (2024) Published: 28 August 2024
Background
Multiple organ failure/dysfunction syndrome (MOF/MODS) is a
major cause of mortality and morbidity among severe trauma patients. Current
clinical practices entail monitoring physiological measurements and applying
clinical score systems to diagnose its onset. Instead, we aimed to develop an
early prediction model for MOF outcome evaluated soon after traumatic injury by
performing machine learning analysis of genome-wide transcriptome data from
blood samples drawn within 24 h of traumatic injury. We then compared its
performance to baseline injury severity scores and detection of infections.
Methods
Buffy coat transcriptome and linked clinical datasets from
blunt trauma patients from the Inflammation and the Host Response to Injury
Study (“Glue Grant”) multi-center cohort were used. According to the
inclusion/exclusion criteria, 141 adult (age ≥ 16 years old) blunt trauma patients (excluding penetrating)
with early buffy coat (≤ 24 h since trauma injury) samples were analyzed, with 58
MOF-cases and 83 non-cases. We applied the Least Absolute Shrinkage and
Selection Operator (LASSO) and eXtreme Gradient Boosting (XGBoost) algorithms
to select features and develop models for MOF early outcome prediction.
Results
The LASSO model included 18 transcripts (AUROC [95% CI]:
0.938 [0.890–0.987] (training) and 0.833 [0.699–0.967] (test)), and the XGBoost
model included 41 transcripts (0.999 [0.997–1.000] (training) and 0.907
[0.816–0.998] (test)). There were 16 overlapping transcripts comparing the two
panels (0.935 [0.884–0.985] (training) and 0.836 [0.703–0.968] (test)). The
biomarker models notably outperformed models based on injury severity scores
and sex, which we found to be significantly associated with MOF (APACHEII + sex—0.649 [0.537–0.762] (training) and 0.493 [0.301–0.685] (test); ISS + sex—0.630
[0.516–0.744] (training) and 0.482 [0.293–0.670] (test); NISS + sex—0.651
[0.540–0.763] (training) and 0.525 [0.335–0.714] (test)).
Conclusions
The accurate assessment of MOF from blood samples
immediately after trauma is expected to aid in improving clinical
decision-making and may contribute to reduced morbidity, mortality and
healthcare costs. Moreover, understanding the molecular mechanisms involving
the transcripts identified as important for MOF prediction may eventually aid
in developing novel interventions.
No comments:
Post a Comment