<p>
In
this original study, we investigate
the performances of machine learning algorithms on a neonatal sepsis
detection task. We
consider this work to be of great interest to both
engineers
and
clinicians,
as it uses
non-invasive, already existing, vital
signs
monitoring
signals in a population
of very low birth weight infants at high risk of sepsis.
Vital
sign variability may indeed represent a general indicator of health
and wellbeing and be helpful in the early detection of systematic
inflammation such
as sepsis.
We
used
state
of the art feature extraction technics and evaluate a large variety
of binary classification models among
which a neural network based
generative model.
The models were
chosen from
two main families: discriminative
and generative. This
enables a comprehensive study of different
kinds of traditional
and advanced binary classification algorithms.</p>
<p>
Our
study reveals that advanced machine learning models are more robust
to changes in the feature extraction pipeline, although linear
classifiers
have a comparable
performance when the feature extraction is tuned. The
advanced model performing the best is a neural network based
generative model which is a hybrid generative and discriminative
model. A
large window length when computing the features is beneficial to
almost all algorithms, indicating the relevance of frequency domain
related features for the neonatal sepsis detection task.</p>
<p>
Overall
we obtain a classification AUROC
above 0.85,
which makes our prediction models potentially
relevant in clinical practice. This
will enable earlier therapeutic interventions and thereby reduce
morbidity and mortality in infants.</p>