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Trial registered on ANZCTR
Registration number
ACTRN12622001326785
Ethics application status
Approved
Date submitted
20/09/2022
Date registered
12/10/2022
Date last updated
12/10/2022
Date data sharing statement initially provided
12/10/2022
Type of registration
Prospectively registered
Titles & IDs
Public title
Clinical validation of circulating cell free DNA [ccfDNA] as a biomarker of metabolic health
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Scientific title
Clinical validation of circulating cell free DNA [ccfDNA] as a biomarker of metabolic health
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Secondary ID [1]
307996
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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:
Metabolic Health
327667
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Obesity
327873
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Condition category
Condition code
Metabolic and Endocrine
324751
324751
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0
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Metabolic disorders
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Diet and Nutrition
324954
324954
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0
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Obesity
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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
This trial comprises a dual site, non-intervention cross-sectional observational study. The study population will comprise of up to 100 obese individuals of unknown metabolic health. The primary objective is to validate a cell free DNA based blood assay for its ability to identify individuals of poor metabolic health. Participants will undergo a single face-to-face assessment at CSIRO's Adelaide (SAHMRI) and Westmead trial facilities of approximately 1 hour duration with no further visits required. Before attending, subjects will complete a screening questionnaire to ensure suitability, which will be verified by the clinic team on arrival. Screening and anthropomorphic measurements will be performed by the clinical trial coordinator, all blood collections will be made by a trained Registered Nurse and/or phlebotomist. Participants will be classified as metabolically healthy or metabolically abnormal obese. Groups will be further assessed for indicators of liver health (fibrosis and fatty liver). Health status will be assessed using the below set of biomarkers:
o Blood Pressure (mmHg)
o Blood Glucose concentration
o Blood HbA1c concentration
o Blood Platelet Count
o Serum Triglycerides
o Serum HDL-Cholesterol
o Serum LDL-Cholesterol
o Serum total Cholesterol
o Serum Insulin concentration
o Serum hsCRP concentration
o Serum AST concentration
o Serum ALT concentration
o Serum GGT concentration
o Serum albumin concentration
o Waist circumference (cm)
o Hip circumference (cm)
o BMI (kg/m2), Weight (kg), Height (cm)
A further blood sample will be provided for the purpose of epigenetic analysis of the cell free DNA. Cell free DNA concentrations will be compared to metabolic and liver health biomarkers above to assess the clinical validity of a novel blood test for metabolic health.
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Intervention code [1]
324452
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Diagnosis / Prognosis
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Comparator / control treatment
Participants to be separated into two groups based on metabolic biomarkers (Metabolically Healthy Obese and Metabolically Abnormal Obese). Comparison in cell free DNA concentrations originating from the Liver and the Subcutaneous Adipose tissues will be compared between groups.
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Control group
Active
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Outcomes
Primary outcome [1]
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Sensitivity of ccfDNA concentration as measured by our assay to detect metabolically abnormal obesity among a blind testing population comprised of both metabolically healthy and abnormal obese participants. The true positive rate for metabolic abnormality will be assessed for the cell free DNA concentration levels from blood samples using a novel droplet digital PCR assay, compared to the published standards (criteria for metabolically healthy obese individuals as defined in the literature [Aguilar-Salinas et al 2008, ATP III 2001, Karelis et al 2004, Lynch et al 2009, Meigs et al 2006, Wildman et al 2008 and Zembic et al 2021])."
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Assessment method [1]
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Timepoint [1]
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This is a single time point study with only one clinical visit in which all metabolic and liver profiling will be performed.
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Primary outcome [2]
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Specificity in detecting metabolically abnormal obese individuals amongst the blind testing population comprised of participants who are either metabolically healthy obese and those who are metabolically abnormal. The true negative rate for metabolic abnormality will be assessed for the cell free DNA concentration levels from blood samples using a novel droplet digital PCR assay, compared to the published standards (criteria for metabolically healthy obese individuals as defined in the literature [Aguilar-Salinas et al 2008, ATP III 2001, Karelis et al 2004, Lynch et al 2009, Meigs et al 2006, Wildman et al 2008 and Zembic et al 2021]).
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Assessment method [2]
332758
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Timepoint [2]
332758
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This is a single time point study with only one clinical visit in which all metabolic and liver profiling will be performed.
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Secondary outcome [1]
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The secondary outcome will be to identify any correlation between the concentration of cell free DNA (using the above described ccfDNA ddPCR assay) and estimated levels of liver fibrosis. This outcome will be used to establish the role of this assay in future studies for liver health. Liver fibrosis levels will be estimated using the below set of scores using the following inputs:
NAFLD Fibrosis Score (NFS) inputs:
Age in years, BMI, diabetes diagnosis, Blood Aspartate Aminotransferase (AST) concentration, Blood Alanine Aminotransferase (ALT) concentration, platelet count, serum albumin concentration
FIBrosis-4 (FIB-4) inputs:
Age in years, AST concentration, ALT concentration, platelet count
AST to Platelet Ratio Index (APRI) inputs:
AST concentration, platelet count
The concentration of cell free DNA will be used to establish a relationship between liver health and cfDNA released into the bloodstream to support further studies.
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Assessment method [1]
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Timepoint [1]
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This is a single time point study with only one clinical visit in which all metabolic and liver profiling will be performed.
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Secondary outcome [2]
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A further secondary outcome will be to identify any correlation between the concentration of cell free DNA (using the above described ccfDNA ddPCR assay) and estimated severity of fatty liver. This outcome will be used to establish the role of this assay in future studies for liver health. Fatty liver severity will be estimated using the Fatty Liver Index (FLI) using the following inputs:
Blood triglyceride concentrations
BMI
Blood Gamma Glutamyl Transferase (GGT) concentration
Waist circumference (cm)
The concentration of cell free DNA will be used to establish a relationship between liver health and cfDNA released into the bloodstream to support further studies.
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Assessment method [2]
414644
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Timepoint [2]
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This is a single time point study with only one clinical visit in which all metabolic and liver profiling will be performed.
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Eligibility
Key inclusion criteria
1. Willing to provide written Informed Consent
2. Aged from >=18 to <56 years of age at clinic visit
3. BMI >=30 and <=35 kg/m2 confirmed at visit
4. Willing to fast at least 10 hours before attending clinic visit
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Minimum age
18
Years
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Maximum age
55
Years
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Sex
Both males and females
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Can healthy volunteers participate?
Yes
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Key exclusion criteria
1. Currently pregnant and/or nursing (lactating)
2. Diagnosis of insulin resistance, diabetes (Type I, Type II and/or Gestational Diabetes), cancer including skin cancer, and immunological disease
3. Current or prior chemotherapy/radiotherapy treatment
4. Current use or use of the following medications in the last 84 days prior to clinic visit:
• Metformin
• Fortamet
• Glucophage
• Glucophage XR
• Glumetza
• Riomet
• N,N-dimethylbiguanide
5. Experienced physical injury 14 days prior to clinic visit that meets any of the following:
• Required medical assessment and/or treatment
• Resulted in pain, bruising and/or sensitivity lasting longer than 14 days or is currently being experienced.
• Resulted in limited movement and mobility
6. Average Systolic BP >=180mmHg or Diastolic BP >= 110mmHg
7. In the opinion of the Principal Investigator, unable to comply and/or experience distress with study procedures.
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Study design
Purpose
Screening
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Duration
Cross-sectional
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Selection
Defined population
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Timing
Prospective
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Statistical methods / analysis
Sample Size Calculation
Analysis of our droplet digital PCR (ddPCR) assay in an existing cohort demonstrated an effect size (Cohen’s d) of 0.7 between the Metabolically Healthy Obese (MHO) and Metabolically Abnormal Obese (MAO) groups. To achieve a study with 80% power and an alpha of 0.05 the effect size of our assay suggests we require no less than 31 participants in each of the MHO and MAO groups. Incidence of MHO varies significantly across the published definitions and between studies, occurring with much lower incidence when compared to MAO. Exploring datasets from previous clinical trials in our Research Clinic indicated that MHO individuals made up between 12-30% of the obese population and that relying on a random collection strategy would likely require at least 200 participants which is not feasible (cost and time). Within a restricted cohort defined as having a BMI between 30-35 and aged < 55 years the prevalence of MHO is much higher, between 18-50%. With this restriction a much smaller cohort may be collected to achieve statistical power. Therefore, using these BMI and age criteria, to guarantee a population of at least 31 in each group we estimated that we need to recruit >86 participants with 100 budgeted.
Analysis of liver health outcomes in this study is a discovery aim. This work will generate new data that will be used to establish effect size and statistical associations between liver health scores and the output of the ccfDNA ddPCR assay. As such, statistical power calculations cannot be performed for liver outcomes.
Statistical Analysis Plan
Statistical analysis will be performed on the de-identified dataset by the CSIRO Sydney Team. Sydney team members will be blinded to Metabolic health status (as defined by the comprehensive metabolic profiling data). To achieve blinding, metabolic profiling data will be withheld from the Sydney Statistical team during the initial ddPCR analysis and only released after the ccfDNA experiments have been completed (i.e., after MHO/MAO ccfDNA predictions have been made). Patients will be classified using a simple threshold count value from the ddPCR data. The biomarker targets in the ddPCR assay will be analysed individually and as a mean to establish the relationship between ccfDNA and metabolic health status. Additionally, a logistic regression model will be trained on the existing EpiSCOPE cohort data and applied to this study. Accuracy of model calls will be assessed against metabolic health status after unblinding. After unblinding further exploratory analysis will be performed to identify correlations between ddPCR, metabolic health status and other clinical factors reported in the participants medical history (e.g., use of prescribed drugs such as statins) This analysis will be performed using common statistical programming languages including R and python.
Assessment of liver outcomes is an exploratory component of this study with the aim to discover new underlying associations between our biomarkers and progression of metabolic disease(s). Following classification of the cohort by ddPCR analysis and MHO/MAO assessment, NFS, FIB-4, FLI and APRI indexes will be calculated and the presence of fatty liver and fibrosis determined using published cut-offs. Liver and Visceral Adipose ddPCR count data will be correlated with scores individually and as a mean. Further, ‘positive’ and ‘negative’ populations (using ddPCR analysis above) will be assessed for enrichment of fibrosis/fatty liver in each group Fisher Exact tests will be used for pairwise comparisons between groups.
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Recruitment
Recruitment status
Not yet recruiting
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Date of first participant enrolment
Anticipated
31/10/2022
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Actual
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Date of last participant enrolment
Anticipated
31/10/2023
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Actual
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Date of last data collection
Anticipated
31/10/2023
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Actual
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Sample size
Target
100
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Accrual to date
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Final
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Recruitment in Australia
Recruitment state(s)
NSW,SA
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Funding & Sponsors
Funding source category [1]
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Government body
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Name [1]
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Commonwealth Scientific and Industrial Research Organisation
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Address [1]
312262
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Building 101
2 - 40 Clunies Ross Street
Acton ACT 2601
Australia
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Country [1]
312262
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Australia
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Primary sponsor type
Government body
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Name
Commonwealth Scientific and Industrial Research Organisation
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Address
Building 101
2 - 40 Clunies Ross Street
Acton ACT 2601
Australia
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Country
Australia
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Secondary sponsor category [1]
313802
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None
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Name [1]
313802
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Address [1]
313802
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Country [1]
313802
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Ethics approval
Ethics application status
Approved
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Ethics committee name [1]
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CSIRO Health and Medical Human Research Ethics Committee
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Ethics committee address [1]
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CSIRO Health and Medical Human Research Ethics Committee Ecosciences Precinct, Dutton Park QLD 4102 GPO BOX 2583, Brisbane QLD 4001
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Ethics committee country [1]
311635
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Australia
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Date submitted for ethics approval [1]
311635
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25/01/2022
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Approval date [1]
311635
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21/07/2022
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Ethics approval number [1]
311635
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2022_006_HREC
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Summary
Brief summary
Obesity and its associated diseases have rapidly risen to become a significant burden on health systems across the world. Australia is not immune to this upheaval, with nearly 2 in 3 adults in this country classified as overweight or obese. In line with rising obesity, rates of diabetes have also risen dramatically. In the 2017-2018 Australian Bureau of Statistics Health Survey, 4.9% of respondents reported a diagnosis of diabetes. Furthermore, it is estimated that diabetes was an associated or underlying cause for 11% of deaths in the year 2018. Even without progression to diabetes, obese individuals are at risk of a host of other health issues such as the development of Nonalcoholic fatty liver disease (NAFLD). There is an urgent need for new ways to manage the metabolic diseases of obesity. However, there is a lack of diagnostic tests that can accurately predict diabetes before to the appearance of the symptoms that indicate that the first steps into full disease have already occurred. New evidence shows that inflammation of the deep fat stores that surround our organs plays a key role in health and obesity. It is now known that fat tissue is not just a passive storage site for excess energy but rather a complex organ that can disrupt the healthy hormonal and metabolic profile of obese patients. This inflammatory process occurs very early on in the development of disease, before the onset of diabetes and pre-diabetes symptoms. Ongoing inflammation of organ fat results in high rates of cell death in this tissue and the release of unwanted cell free DNA into the surrounding tissues and blood circulation. This free DNA can actually increase the level of inflammation via a negative feedback loop that serves to strengthen this unwanted response. At CSIRO, we have developed a new blood test that can measure the amount of DNA being released by these fat cells. This new test may provide a window into health for obese patients that can help doctors predict and monitor long-term health well before a diabetes diagnosis could be determined using current measures. This study will test the validity or our new blood test, in a group of patients who will be profiled for a well defined set of biomarkers that measure metabolic and liver health. This study is funded by CSIRO.
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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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Dr Warwick Locke
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Address
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CSIRO Molecular Diagnostics
Level 3, Innovation Quarter
160 Hawksbury Road
Westmead, NSW, 2145
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Country
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Australia
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Phone
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+61 294908676
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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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Warwick Locke
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Address
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CSIRO Molecular Diagnostics
Level 3, Innovation Quarter
160 Hawksbury Road
Westmead, NSW, 2145
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Country
121799
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Australia
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Phone
121799
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+61 294908676
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Fax
121799
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Email
121799
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[email protected]
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Contact person for scientific queries
Name
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Warwick Locke
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Address
121800
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CSIRO Molecular Diagnostics
Level 3, Innovation Quarter
160 Hawksbury Road
Westmead, NSW, 2145
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Country
121800
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Australia
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Phone
121800
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+61 294908676
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Fax
121800
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Email
121800
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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)?
Yes
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What data in particular will be shared?
Individual participant data required to support research claims and/or intellectual property claims may be published in a de-identified, fully anonymised format as part of a peer reviewed research article and/or patent. Items shared will be limited to that which is required to support the claims made.
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When will data be available (start and end dates)?
De-identified data would be available indefinitely immediately upon publication of any scientific findings in a high impact, peer reviewed journal.
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Available to whom?
Data would be available to anyone who wishes to access it as part of a scientific journal article (via the publisher) or patent.
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Available for what types of analyses?
Data will be available for free use. Data is shared primarily to demonstrate the validity of our claims and findings or to support replication by independent researchers.
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How or where can data be obtained?
Upon study completion it is anticipated that, intellectual property considerations notwithstanding, a de-identified dataset will be stored on CSIRO’s Data Access Portal (DAP) at https://data.csiro.au/ to enable future discovery and sharing of de-identified data. Data will also be shared as supplementary materials in a high-impact, peer-reviewed scientific journal.
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What supporting documents are/will be available?
No Supporting Document Provided
Doc. No.
Type
Citation
Link
Email
Other Details
Attachment
17147
Study protocol
[email protected]
17148
Informed consent form
[email protected]
17155
Ethical approval
[email protected]
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.
Download to PDF