Please note that the copy function is not enabled for this field.
If you wish to
modify
existing outcomes, please copy and paste the current outcome text into the Update field.
LOGIN
CREATE ACCOUNT
LOGIN
CREATE ACCOUNT
MY TRIALS
REGISTER TRIAL
FAQs
HINTS AND TIPS
DEFINITIONS
Trial Review
The ANZCTR website will be unavailable from 1pm until 3pm (AEDT) on Wednesday the 30th of October for website maintenance. Please be sure to log out of the system in order to avoid any loss of data.
The safety and scientific validity of this study is the responsibility of the study sponsor and investigators. Listing a study does not mean it has been endorsed by the ANZCTR. Before participating in a study, talk to your health care provider and refer to this
information for consumers
Download to PDF
Trial registered on ANZCTR
Registration number
ACTRN12619000366156
Ethics application status
Approved
Date submitted
5/03/2019
Date registered
7/03/2019
Date last updated
6/08/2021
Date data sharing statement initially provided
7/03/2019
Type of registration
Prospectively registered
Titles & IDs
Public title
Automated artificial-intelligence based, preliminary cardiac diagnostics decision support tool to the medical practitioner.
Query!
Scientific title
A feasibility study to assess Artificial Intelligence (AI) algorithm performance in identifying heart murmurs in the general echocardiography referred patient’s population.
Query!
Secondary ID [1]
297610
0
None
Query!
Universal Trial Number (UTN)
Query!
Trial acronym
Query!
Linked study record
Query!
Health condition
Health condition(s) or problem(s) studied:
Valvular Heart Disease
311873
0
Query!
Condition category
Condition code
Cardiovascular
310467
310467
0
0
Query!
Other cardiovascular diseases
Query!
Intervention/exposure
Study type
Observational
Query!
Patient registry
False
Query!
Target follow-up duration
Query!
Target follow-up type
Query!
Description of intervention(s) / exposure
Participants will be exposed to auscultation done with a digital stethoscope. The patient's heart sounds audio will be recorded and analysed remotely. An Echocardiography will follow, which is done as a part of the patient's routine investigation.
We estimate that the auscultation will not add to the patient visit at the Echocardiography laboratory more than 5-10 minutes. An Echocardiograph which is done as part of the patient routine investigation and done in accordance to standard of care will follow and is estimated to take approximately 45 minutes. This will conclude the participant involvement in the trial.
The gathered data would be used to train an Artificial-Intelligence system to identify valvular heart diseases based on auscultation.
Query!
Intervention code [1]
313842
0
Diagnosis / Prognosis
Query!
Intervention code [2]
313843
0
Early Detection / Screening
Query!
Comparator / control treatment
No control group
Query!
Control group
Uncontrolled
Query!
Outcomes
Primary outcome [1]
319332
0
The ability of an AI system to identify a valvular heart disease compared with Echocardiography analysed report, will be assessed.
Query!
Assessment method [1]
319332
0
Query!
Timepoint [1]
319332
0
An interim analysis will be conducted after the enrollment of the first 200 patients. Additional analysis would be conducted after 500 patients are enrolled.
Query!
Secondary outcome [1]
367812
0
The ability of an AI system to identify a murmur type compared with Echocardiography analysed report, will be assessed.
Query!
Assessment method [1]
367812
0
Query!
Timepoint [1]
367812
0
An interim analysis will be conducted after the enrollment of the first 200 patients. Additional analysis would be conducted after 500 patients are enrolled.
Query!
Eligibility
Key inclusion criteria
o Patient over the age of 18 years old, who is able to provide written informed consent and verbal consent to participate in this study.
o The patient is referred to perform an Echocardiography.
Query!
Minimum age
18
Years
Query!
Query!
Maximum age
No limit
Query!
Query!
Sex
Both males and females
Query!
Can healthy volunteers participate?
No
Query!
Key exclusion criteria
o A patient who is unable to provide written and verbal informed consent.
o A female patient who is aware she is pregnant.
Query!
Study design
Purpose
Screening
Query!
Duration
Cross-sectional
Query!
Selection
Convenience sample
Query!
Timing
Prospective
Query!
Statistical methods / analysis
Query!
Recruitment
Recruitment status
Recruiting
Query!
Date of first participant enrolment
Anticipated
12/03/2019
Query!
Actual
15/03/2019
Query!
Date of last participant enrolment
Anticipated
12/03/2022
Query!
Actual
Query!
Date of last data collection
Anticipated
13/04/2022
Query!
Actual
Query!
Sample size
Target
500
Query!
Accrual to date
118
Query!
Final
Query!
Recruitment in Australia
Recruitment state(s)
NSW
Query!
Recruitment hospital [1]
13298
0
Royal North Shore Hospital - St Leonards
Query!
Recruitment postcode(s) [1]
25872
0
2065 - St Leonards
Query!
Funding & Sponsors
Funding source category [1]
302153
0
Commercial sector/Industry
Query!
Name [1]
302153
0
Visionware Solutions Pty Ltd
Query!
Address [1]
302153
0
4/8-10 Parraween Street
Cremorne, NSW 2090
Query!
Country [1]
302153
0
Australia
Query!
Funding source category [2]
302155
0
Hospital
Query!
Name [2]
302155
0
Northern Sydney Local Health District
Query!
Address [2]
302155
0
Executive Unit, level 5 Douglas Building, Royal North Shore Hospital, Pacific Highway, St Leonards, NSW, 2065
Query!
Country [2]
302155
0
Australia
Query!
Primary sponsor type
Commercial sector/Industry
Query!
Name
Visionware Solutions Pty Ltd
Query!
Address
4/8-10 Parraween Street
Cremorne, NSW 2090
Query!
Country
Australia
Query!
Secondary sponsor category [1]
301992
0
None
Query!
Name [1]
301992
0
Query!
Address [1]
301992
0
Query!
Country [1]
301992
0
Query!
Other collaborator category [1]
280582
0
Hospital
Query!
Name [1]
280582
0
Northern Sydney Local Health District
Query!
Address [1]
280582
0
Executive Unit, level 5 Douglas Building, Royal North Shore Hospital, Pacific Highway, St Leonards, NSW, 2065
Query!
Country [1]
280582
0
Australia
Query!
Ethics approval
Ethics application status
Approved
Query!
Ethics committee name [1]
302835
0
Northern Sydney Local Health District HREC
Query!
Ethics committee address [1]
302835
0
Research Office Kolling Building, Level 13 Royal North Shore Hospital St Leonards NSW 2065
Query!
Ethics committee country [1]
302835
0
Australia
Query!
Date submitted for ethics approval [1]
302835
0
22/10/2018
Query!
Approval date [1]
302835
0
07/11/2018
Query!
Ethics approval number [1]
302835
0
Query!
Summary
Brief summary
MedAl Cardiology is a software tool that will enable health care professionals to diagnose various heart conditions in real time using Artificial Intelligence (AI). It would provide a diagnosis of heart functioning by analysing heart sounds recordings. The MedAI Cardiology algorithm will classify the patient status as “Normal” or “Abnormal” and will provide in-depth insights about various heart conditions. An automated analysis capability will support medical practitioners in deciding whether or not to refer the patient for further investigation.
Query!
Trial website
Query!
Trial related presentations / publications
Query!
Public notes
Query!
Contacts
Principal investigator
Name
91554
0
Prof Ravinay Bhindi
Query!
Address
91554
0
Department of Cardiology, Level 5, Acute Services Building, Royal North Shore Hospital
Reserve Rd, St Leonards, NSW, 2065
Query!
Country
91554
0
Australia
Query!
Phone
91554
0
+61294395290
Query!
Fax
91554
0
Query!
Email
91554
0
[email protected]
Query!
Contact person for public queries
Name
91555
0
Dina Peleg Kowarski
Query!
Address
91555
0
Dina Peleg Kowarski, Director
Visionware Solutions
4/8-10 Parraween Street
Cremorne, NSW 2090
Query!
Country
91555
0
Australia
Query!
Phone
91555
0
+61481548166
Query!
Fax
91555
0
Query!
Email
91555
0
[email protected]
Query!
Contact person for scientific queries
Name
91556
0
Dina Peleg Kowarski
Query!
Address
91556
0
Dina Peleg Kowarski, Director
Visionware Solutions
4/8-10 Parraween Street
Cremorne, NSW 2090
Query!
Country
91556
0
Australia
Query!
Phone
91556
0
+61481548166
Query!
Fax
91556
0
Query!
Email
91556
0
[email protected]
Query!
Data sharing statement
Will individual participant data (IPD) for this trial be available (including data dictionaries)?
No
Query!
No/undecided IPD sharing reason/comment
Query!
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.
Download to PDF