Novel criteria to classify ARDS severity using a machine
learning approach
by Mohammed Sayed, David Riaño and Jesús Villar
Critical Care volume 25,
Article number: 150 (2021)
Background
Usually, arterial oxygenation in patients with the acute
respiratory distress syndrome (ARDS) improves substantially by increasing the
level of positive end-expiratory pressure (PEEP). Herein, we are proposing a
novel variable [PaO2/(FiO2xPEEP) or P/FPE] for PEEP ≥ 5 to address Berlin’s
definition gap for ARDS severity by using machine learning (ML) approaches.
Methods
We examined P/FPE values delimiting the boundaries of
mild, moderate, and severe ARDS. We applied ML to predict ARDS severity after
onset over time by comparing current Berlin PaO2/FiO2 criteria with P/FPE under
three different scenarios. We extracted clinical data from the first 3 ICU days
after ARDS onset (N = 2738, 1519, and 1341 patients, respectively) from
MIMIC-III database according to Berlin criteria for severity. Then, we used the
multicenter database eICU (2014–2015) and extracted data from the first 3 ICU
days after ARDS onset (N = 5153, 2981, and 2326 patients, respectively).
Disease progression in each database was tracked along those 3 ICU days to
assess ARDS severity. Three robust ML classification techniques were
implemented using Python 3.7 (LightGBM, RF, and XGBoost) for predicting ARDS
severity over time.
Results
P/FPE ratio outperformed PaO2/FiO2 ratio in all ML
models for predicting ARDS severity after onset over time (MIMIC-III: AUC
0.711–0.788 and CORR 0.376–0.566; eICU: AUC 0.734–0.873 and CORR 0.511–0.745).
Conclusions
The novel P/FPE ratio to assess ARDS severity after
onset over time is markedly better than current PaO2/FiO2 criteria. The
use of P/FPE could help to manage ARDS patients with a more precise
therapeutic regimen for each ARDS category of severity.
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