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Trial registered on ANZCTR
Registration number
ACTRN12622000197730
Ethics application status
Approved
Date submitted
10/12/2021
Date registered
4/02/2022
Date last updated
4/02/2022
Date data sharing statement initially provided
4/02/2022
Type of registration
Prospectively registered
Titles & IDs
Public title
Detecting serious infections early in the Emergency Department using data analytics
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Scientific title
Early identification of sepsis in the Emergency Department using data analytics
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Secondary ID [1]
306016
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Nil known
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Universal Trial Number (UTN)
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Trial acronym
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Linked study record
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Health condition
Health condition(s) or problem(s) studied:
Sepsis
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Condition category
Condition code
Emergency medicine
322102
322102
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0
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Other emergency care
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Infection
322103
322103
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0
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Studies of infection and infectious agents
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Intervention/exposure
Study type
Observational
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Patient registry
False
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Target follow-up duration
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Target follow-up type
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Description of intervention(s) / exposure
Patients with presenting to Emergency Department from 1 July 2016 - 30 June 2021.
Information will be obtained from administrative datasets : Emergency Department Information System (EDIS) dataset and the Hospital Admission and Morbidity Datasets will be both used.
The triage free text information will be searched for key words to identify likelihood of admission to hospital with sepsis.
Variables being observed in patients are : description of presenting complaint, Emergency Department diagnosis, hospital admission diagnosis.
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Intervention code [1]
322419
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Early Detection / Screening
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Comparator / control treatment
Patients without sepsis presenting to Emergency Department during the time period 1 July 2016 - 30 June 2021. Data source will be the Emergency Department Information System (EDIS)
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Control group
Active
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Outcomes
Primary outcome [1]
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The proportion of patient with an admission diagnosis of sepsis (Hospital admission diagnosis coding at time of hospital discharge), compared to emergency department presentation diagnosis.
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Assessment method [1]
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Timepoint [1]
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At time of hospital discharge, an admission diagnosis of sepsis
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Secondary outcome [1]
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Admission to intensive care using hospital admission dataset.
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Assessment method [1]
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Timepoint [1]
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During index hospital admission
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Secondary outcome [2]
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Diagnosis of sepsis at time of emergency department presentation using Emergency Department Information System.
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Assessment method [2]
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Timepoint [2]
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At emergency department presentation
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Secondary outcome [3]
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Rapid response team activation during hospital admission, using linkage to medical recrods.
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Assessment method [3]
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Timepoint [3]
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During hospital admission
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Eligibility
Key inclusion criteria
All patients who present to Sir Charles Gairdner Hospital Emergency Department from July 2016- June 2021 will be included for review
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Minimum age
16
Years
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Maximum age
No limit
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Sex
Both males and females
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Can healthy volunteers participate?
No
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Key exclusion criteria
None
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Study design
Purpose
Screening
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Duration
Cross-sectional
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Selection
Convenience sample
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Timing
Retrospective
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Statistical methods / analysis
The Emergency Department Information System (EDIS) dataset and the Hospital Admission and Morbidity Datasets will be both used.
Patients presenting to the Emergency Department from July 2016-2021 will be included.
The free text field from the EDIS dataset will be interrogated to determine if there are word/terminology that increases the likelihood of the subsequent hospital admission diagnosis being related to sepsis.
Sepsis definitions will be coded according to ICD-10AM definitions from Australian Commission on Safety and Quality in Health Care definitions of sepsis and infection (https://www.safetyandquality.gov.au/sites/default/files/2020-05/epidemiology_of_sepsis_-_february_2020_002.pdf)
Patients will be randomly allocated to fixed train (60%) , validate (20%) and test (20%) data sets. Building will be based on the paper by Horng et al (DOI: 10.1371/journal.pone.0174708).
Primary models will be constructed using machine learning and a linear support vector machine (SVM), to optimize the area under the ROC curve. The open source SVMperf software package will allow us to use a learning algorithm automatically controls for class imbalance by directly optimizing a lower bound on the AUC, rather than focusing on classification accuracy. For comparison purposes, we will create models using L2-regularized logistic regression, naïve Bayes, and random forests, using the open-source Scikit-Learn software. For all learning algorithms, model derivation will be first performed on the train data set. The validate data set will be used to optimize over model parameters. The test data set, a holdout sample, will be then used to test the internal generalizability of the model with the highest AUC on the validate data set. When we report train and validate results, we will also report them for the model with the highest AUC on the validate data set.
Data analysis:
Means with 95% confidence intervals will be reported for age. For a subset of patient admitted to ICU from Emergency Department, we will take the ANZICS physiological data: , temperature, heart rate, systolic blood pressure, and diastolic blood pressure, APACHE, lactate. . Medians with interquartile ranges will be reported for hospital and ICU admission days, and ICU days. Significance testing will performed using T-tests for parametric data, Wilcoxon rank sum for non-parametric data, and Fisher’s Exact test for proportions.
The area under the ROC curve (AUC) will be calculated for each of the four models to measure discriminatory power. We will report positive predictive value (PPV), sensitivity, and specificity at the optimal cutoff point that balances the tradeoff between sensitivity and specificity. This optimal cutoff point is defined as the threshold which maximizes Youden’s J statistic (Sensitivity + Specificity—1).
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Recruitment
Recruitment status
Not yet recruiting
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Date of first participant enrolment
Anticipated
7/02/2022
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Actual
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Date of last participant enrolment
Anticipated
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Actual
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Date of last data collection
Anticipated
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Actual
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Sample size
Target
5000
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Accrual to date
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Final
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Recruitment in Australia
Recruitment state(s)
WA
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Recruitment hospital [1]
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Sir Charles Gairdner Hospital - Nedlands
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Recruitment postcode(s) [1]
36327
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6009 - Nedlands
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Funding & Sponsors
Funding source category [1]
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Hospital
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Name [1]
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Sir Charles Gairdner Hospital
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Address [1]
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Hospital Avenue
Nedlands, WA, 6009
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Country [1]
310358
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Australia
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Primary sponsor type
Hospital
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Name
Sir Charles Gairdner Hospital
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Address
Hospital Avenue
Nedlands, WA, 6009
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Country
Australia
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Secondary sponsor category [1]
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None
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Name [1]
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Address [1]
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Country [1]
311495
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Ethics approval
Ethics application status
Approved
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Ethics committee name [1]
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Sir Charles Gairdner and Osborne Park Hospital Ethics Committee
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Ethics committee address [1]
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2nd Floor A Block Hospital Avenue, Nedlands WA 6009
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Ethics committee country [1]
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Australia
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Date submitted for ethics approval [1]
310012
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Approval date [1]
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29/10/2021
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Ethics approval number [1]
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RGS0000005033
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Summary
Brief summary
Triage in the Emergency Department (ED) is an opportunity for a time critical point of identification of evolving severe sepsis. Current identification rates at triage are reported in the realm of 50-60% in the literature. Tromp et al undertook an education programme to improve identification of sepsis at triage, and their detection rates were 65%. Techniques to identify sepsis earlier may reduce the time to administration of antibiotics, source control and other resuscitative measures to improve patient outcomes. However, often the triage nurse is working under time pressures, and has limited information available to them to assist with their decision making. Hypothesis: Data analytic techniques may reveal early prompts to identify and place patients on sepsis pathways. Combining the demographic data and triage free text information inputted by the triage nurse could create prompts for the triage nurse to consider “is it sepsis?" earlier. AIMS: To create a predictive likelihood of sepsis from key words in inserted text. In future, develop as decision aid within EDIS (Emergency Department Information System) or separate triage tool. Methods: We will combine two large datasets - an Emergency Department dataset as well as the hospital admission dataset to create a way of determining whether information at the point of Emergency Department triage, may help predict the likelihood of subsequent diagnosis of a serious infection in a patient. "Big data" analytics tools will be used, and the datasets will be split into train, validate and tes components.
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Trial website
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Trial related presentations / publications
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Public notes
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Contacts
Principal investigator
Name
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A/Prof Matthew Anstey
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Address
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Intensive Care Department
Sir Charles Gairdner Hospital
Hospital Avenue, Nedlands 6009, Western Australia
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Country
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Australia
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Phone
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+61 864571010
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Fax
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Email
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[email protected]
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Contact person for public queries
Name
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Matthew Anstey
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Address
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Intensive Care Department
Sir Charles Gairdner Hospital
Hospital Avenue, Nedlands 6009, Western Australia
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Country
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Australia
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Phone
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+61 864571010
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Fax
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Email
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[email protected]
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Contact person for scientific queries
Name
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Matthew Anstey
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Address
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Intensive Care Department
Sir Charles Gairdner Hospital
Hospital Avenue, Nedlands 6009, Western Australia
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Country
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Australia
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Phone
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+61 864571010
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Fax
116184
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Email
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[email protected]
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Data sharing statement
Will individual participant data (IPD) for this trial be available (including data dictionaries)?
No
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No/undecided IPD sharing reason/comment
Data availability will be at the discretion of the approving HREC and the coordinating PI, and would need to be provided in a de-identified manner. Current approvals would not allow for data sharing.
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What supporting documents are/will be available?
No Supporting Document Provided
Results publications and other study-related documents
Documents added manually
No documents have been uploaded by study researchers.
Documents added automatically
No additional documents have been identified.
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