Clinical Adverse Events (CAEs) occurred during the
patient’s stay in the ICU, it is possible to predict the
failure of each organ for the day following the last
day of collected data (time series). A total of 72
models were created using a data set created from
the EURICUS II study made in 42 ICUs on 9 UE
countries, between 1997 and 1999
(http://www.frice.nl). The results showed the
effectiveness of the proposed approach. Five of the
clusters presented maximum values (100%)
simultaneously for the accuracy, specificity and
sensitivity. In these kinds of patients the doctors will
get very useful support to their decisions.
The paper is organized as follows: after this
introductory considerations, the second and third
sections present the clinical data and some
definitions about events and critical events; the
fourth and fifth sections introduce the process of
data preparation, transformation and model
generation; the last two sections, preceding the
eighth one that concludes the article, are dedicated to
the results (presenting the achieved accuracies) and
to the contributions (the framework to organize the
models).
2 CLINICAL DATA
In this study a database was created based on
EURICUS II, a study made in 42 ICUs on 9 UE
countries, between 1997 and 1999. For a period of
10 months every admission to the ICU was included.
This database integrates the features related to the
case-mix (Fetter et al, 1980), namely the Age, the
Type of Admission (unscheduled surgery, scheduled
surgery and medical), the Admission Source
(Operating Bloc, Recovery Room, Emergency
Room, Infirmary, other ICU, other Hospital, other
sources), Diagnosis, Gravity Index defined by
SAPSII (Le Gall et al, 1993), SOFA of each Organ
System (Respiratory, Coagulation, Liver,
Cardiovascular, Central Nervous and Renal),
Mortality in the ICU and in the Hospital; Number of
CAEs for each of the parameters monitored
continuously, Length of Stay and Admission Day.
By definition, an organ is considered to fail when
its SOFA score is higher or equal than 3 in a 0 to 4
scale.
In this study, from the 5355 patients admitted to
the ICUs only 4425 (82.63%) stayed for two or more
days, 3105 (57.98%) stayed three or more days and
2329 (43.49%) four days or over. For the data
concerning the fifth day of stay, only 1845 (34.35%)
patients were considered.
3 CLINICAL ADVERSE EVENTS
Events (Ev) or Critical Events (CrEv) are the
occurrences of values out of the established limits
for the four physiologic variables that are monitored
continuously. These variables are the Heart Rate
(HR), the Systolic Blood Pressure (BP), the Oxygen
Saturation (SaO2) and the Urine Output (Diur). A
group of clinical specialists determined the intervals
considered normal for each one of these parameters.
Adverse events were defined as binary variables,
whose values correspond to one of two situations, in
that the variable is within or not of the established
limits (if yes, by how long). We considered as an
Event when the value of the analyzed parameter
maintains out of the limits, for a period equal or
superior to a continuous period of 10 min. (1 h. in
the case of Diur) and less than 60 min. (2 h in the
case of Diur).
It is still considered an Event when, in a
discontinuous way, values are verified out of the
limits, but that are inferior to 10 min. and in a period
of time of 30 min. maximum, since the sum of those
is greater or equal to 10 min.
The definition of Critical Event is similar to the
Event, but with different values. The times of 10
min. referred in the definition of Events, should be
replaced by 1 hour, the 30 min. for 2 hours and when
we refer to Diur, we consider 2 hours instead of 1
respectively.
A Critical Event can also be defined in some
special situations, i.e., when the value of the
analyzed parameter places among certain values.
We only can consider a new event, after a
recovery period of 30 min. or more for BP, SaO2
and HR, and of 2 hours or more for Diur, with
values inside of the intervals. In Critical Events, it
should be considered a period greater than 2 hours
for Diur and greater than 60 minutes for the
remaining ones.
4 DATA PREPARATION
A data preparation phase has been necessary to treat
the wrong or omitted data. Besides, not all the
variables were considered to generate the prediction
models, as it is the case of the age, once it is already
considered within SAPSII score.
Table 1 shows the variables that were considered
in this study and their description. For modelling
purposes, six new binary variables were created,
based in the six SOFA values, according to the
expression:
0 , if SOFA
Org
< 3 (false, no organ failure)
1 , else (true, organ dysfunction)
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