Critical Illness Clinical Trial
— SOCCSOfficial title:
Simple Observational Critical Care Studies
NCT number | NCT03553069 |
Other study ID # | 201700651 |
Secondary ID | |
Status | Recruiting |
Phase | |
First received | |
Last updated | |
Start date | July 1, 2018 |
Est. completion date | December 2023 |
Each year approximately 3000 patients are admitted to the intensive care unit (ICU) in the
University Medical Center Groningen (UMCG). In-hospital mortality of patients with emergency
admission approaches 25%. Predicting outcome in the first hours after ICU admission, however,
remains a challenge.
An vast amount of scoring systems has been developed for mortality prediction. Well known
models, such as the LODS, MODS, CCI, SOFA, ODIN and the different generations of the APACHE,
MPM and SAPS, are increasingly compared with new models, such as the SICULA, ICNARC, ANZROD
and SMS-ICU. The predictive value of scoring systems deteriorates over time due to changes in
patient characteristics and treatment, making it crucial to update existing models or develop
new models. Other reasons given for the need of models are the complexity and lack of
availability of variables in some of the existing scoring systems, the better discriminating
value while using simple, standardly measured variables, and the limited generalizability of
some scoring systems in different patient populations. Not only are simple systems (such as
the CIS and SMS-ICU) found to be at least as predictive for mortality as complex models such
as the APACHE IV, but, while using simplified systems, mortality can also be reasonably
predicted within only a few hours after admission. Both simplicity and the potential to
predict mortality shortly after admission increase the usability, and consequently the
reliability, of those prediction models. This increases the potential of those models to be
used in practice.
Most studies however compare only two to four models in their patient population and lack in
their description of the performance of the different models. Parameters necessary to compare
the performance of models are at least calibration, discrimination, negative predicting
value, positive predicting value, sensitivity and specificity. Lacking an adequate
description of the performance of the model limits to what extent the study can be used to
compare models in different populations. Thus, all usable models should be compared with
newly build models, and the performance of the different models should be extensively
described to allow comparison of the models.
Not only models based on simple, readily available variables available within hours after
admission are promising, but also the concept of combining measurements straight after ICU
admission with information on the course of illness. It is likely that the course of a
variable over time is more indicative than a static measurement. This study will provide a
structure in which every patient admitted to the ICU will be investigated and included within
3 hours and after 12 hours after admission, making longitudinal measurements and various
add-on studies possible. Longitudinal measurements are the first example of an add-on study;
another example is the capability of nurses and physicians to predict outcome. Current
evidence suggests that physicians might predict mortality more accurately than scorings
systems. This finding may, however, be highly biased, since at least physicians play a major
role in end-of-life decision making. More recent studies also focus on the accuracy of nurses
in predicting mortality, with diverse outcomes. The role of other health care professionals,
like residents and students, remain to be studied.
Implementing a systematic data collection process is the first step towards making
data-driven research possible, a growing need in medical disciplines such as critical care,
which requires increasingly more accurate prognostic models. Therefore, the aim of this study
is to systematically collect data of all selected variables, thus minimizing incompleteness,
and allowing for the calculation of mortality prediction scores according to currently
available mortality or severity of disease prediction models. Moreover, during investigation
reliability of measurements could be checked for validity. This creates the possibility to
compare the performance of all models in one population and identify models which are useful
to predict severity of disease. A registry will be created with this primary objective which
also provides the opportunity to start multiple ''add-on'' studies for specific research
questions. Examples of add-on studies are 1) the association between time-dependent variables
which are longitudinally measured, and mortality/acute and chronic co-morbidity, 2) the
association between fluid status and acute kidney injury, and 3) not only the capability of
the treating physician to predict mortality, but also the capability of the nurses, residents
and students to do so.
Purpose:
The purpose of this study is to expand the infrastructure for a registry with longitudinal
and repeated measurements, shortly after admittance, which is flexible to incorporate
temporarily added specific research questions on the outcome of critically ill patients.
Status | Recruiting |
Enrollment | 800 |
Est. completion date | December 2023 |
Est. primary completion date | April 2023 |
Accepts healthy volunteers | No |
Gender | All |
Age group | 18 Years and older |
Eligibility |
Inclusion Criteria: - Emergency admission - Expected stay > 24 hours Exclusion Criteria: - Age < 18 years - Planned admission either after surgery or for other reasons - Suicide attempts due to acute psychiatric 'derailment', mental retardation or a language barrier |
Country | Name | City | State |
---|---|---|---|
Netherlands | University Medical Center Groningen | Groningen |
Lead Sponsor | Collaborator |
---|---|
University Medical Center Groningen |
Netherlands,
Type | Measure | Description | Time frame | Safety issue |
---|---|---|---|---|
Primary | To compare the prognostic value of the students' and nurses educated guess with currently available risk scores to predict short term mortality in the ICU. | The nurses and students will be asked to estimate in hospital survival based on gut feeling. Mortality will be recorded. The estimation, the risk assessment using e.g. SAPS and SOFA, and the actual outcome will be measured. We will report the association between these three variables. | 6 months | |
Secondary | The association between simple observational clinical examination, biochemical, and hemodynamic variables, longitudinally measured, with organ failure prediction and mortality | Acute kidney injury (AKI) was established and classified following the kidney disease: improving global outcomes (KDIGO) criteria. Urine output and serum creatinine measurements from the first 72 hours of inclusion were analyzed to establish and classify AKI severity for each patient. Other co-morbidities will be studied according their definition as defined by international guidelines. |
48 hours and 90 days | |
Secondary | To create a research infrastructure allowing collection of variables and efficient screening for eligibility for different studies during evening and night times. | To create a research infrastructure allowing collection of variables and efficient screening for eligibility for different studies during evening and night times. | 2 years | |
Secondary | The long-term mortality outcome | long-term mortality outcome associated with admission to the ICU | 3 years |
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