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Trial registered on ANZCTR
Registration number
ACTRN12623000275662
Ethics application status
Approved
Date submitted
28/02/2023
Date registered
15/03/2023
Date last updated
15/03/2023
Date data sharing statement initially provided
15/03/2023
Type of registration
Prospectively registered
Titles & IDs
Public title
One Million Skin Checks: A Feasibility Study of Teledermatology and Artificial Intelligence in General Practice
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Scientific title
One Million Skin Checks: A Feasibility Study of Teledermatology and Artificial Intelligence in General Practice For Skin Cancer Detection in Adults
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Secondary ID [1]
309082
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None
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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:
Skin cancer diagnosis
329144
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Condition category
Condition code
Cancer
326125
326125
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0
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Malignant melanoma
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Cancer
326126
326126
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0
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Non melanoma skin cancer
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Intervention/exposure
Study type
Interventional
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Description of intervention(s) / exposure
The study involves 3 interventions made directly to GP's. All GP's will have access to all 3 interventions. The interventions will not affect patient care.
Intervention 1: Provision of a 2 hour online education module for GP's, produced by MetaOptima, to teach GP's how to use the DermEngine software to obtain dermoscopic images of suspicious skin lesions using a smartphone and dermatoscope, and to interpret the artificial intelligence report. Each GP will access the education module via the DermEngine Academy online training website on one occasion, at the start of the trial. The module involves text and images demonstrating correct and incorrect ways to use the DermEngine software, take dermoscopic images as well as labelled images of appropriate lesions and a selection of images of examples of conditions which would not be suitable for imaging (eg inflammatory skin disorders). There is an evaluation quiz at the end of the module.
Immediately after successful completion of the training module, GP's will be able to begin enrolling sequential patients and accessing interventions 2 and 3, as below. Access to the DermEngine app and cloud based web portal will be granted automatically by the software on successful completion of the training module. The study team (Drs Anderson and Koutsis) will check that the information has been entered and accessed on DermEngine on a weekly basis and contact GP's where there are significant delays.
Intervention 2: Provision of a teledermatology opinion by an Australian Consultant Dermatologist to the GP's on skin lesions from patients that they have enrolled into the study and imaged, after they have finalised standard care clinical management plan. The Consultant Dermatologist will log in to a dedicated clinical trial version of the secure online (cloud based) DermEngine site and view trial images and enter their diagnosis. The teledermatology opinion is generated for every patient and will be accessed within the DermEngine or website by the GP. Teledermatology opinions will be delayed by at least 24hrs to ensure that they do not affect patient care. The DermEngine app and site are already in common use in clinical care in dermatology services across Australia and meet relevant IT data security/governance requirements.
Intervention 3: Provision of an artificial intelligence (AI) assessment to the GP's on skin lesions from patients that they have enrolled into the study and imaged, after they have finalised standard care clinical management plan for patients. The AI opinion is generated for every patient and provided within the cloud based DermEngine site. AI results will be delayed by at least 24 hrs to ensure that they do not affect patient care.
DermEngine is a commercial product produced by MetaOptima Technology Australia Pty Ltd
Sydney, NSW. It consists of a smartphone app and a cloudbased platform, accessed from any web browser. The product has been modified for this trial to incorporate produce a bespoke study version. Modifications include identifying patients only by their study ID (ie DermEngine is anonymised for trial patients) and the inclusion of teledermatology and AI opinions. which will only be available to those engaged in this clinical trial.
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Intervention code [1]
325541
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Diagnosis / Prognosis
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Intervention code [2]
325546
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Treatment: Devices
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Comparator / control treatment
no control group
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Control group
Uncontrolled
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Outcomes
Primary outcome [1]
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Proportion of GP's screened for the study who agree to participate, as measured by: Number of GPs who agree to participate in the study divided by number of GPs who are assessed as suitable during the screening process
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Assessment method [1]
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Timepoint [1]
334013
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Prior to patient recruitment, at screening of GP expression of interest forms by investigators
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Primary outcome [2]
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Proportion of lesion images that are of adequate quality for assessment by the teledermatologist. The teledermatologist will access images for review by logging into their DermEngine account, using their study login, which allows them to access the modified and restricted anonymised study version of DermEngine.
The calculation for this study outcome = number of lesions of adequate quality for assessment by teledermatologist (i.e lesions not rejected by the teledermatology (TD) divided by total number of lesions recruited. Recorded by Consultant Dermatologist
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Assessment method [2]
334014
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Timepoint [2]
334014
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At point of teledermatology assessment by Consultant Dermatologist
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Primary outcome [3]
334015
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Proportion of lesion images that are of adequate quality for assessment by the AI.
As measured by: Number of lesions of adequate quality for assessment by the AI (i.e lesions not rejected by the AI) divided by total number of lesions recruited. Determined by the AI algorithm within DermEngine.
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Assessment method [3]
334015
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Timepoint [3]
334015
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At point of AI assessment of images within the DermEngine app
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Secondary outcome [1]
419082
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Proportion of lesions that are correctly selected for analysis by GPs (ie. not lesions in the exclusion criteria.
As measured by: Number of lesions diagnosed by histopathology which are not excluded lesions (Eg: not lesions in the excluded clinical scenarios - inflammatory, infective, etc) divided by total number of lesions recruited
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Assessment method [1]
419082
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Timepoint [1]
419082
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At point that GP uploads histopathology result to DermEngine app
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Secondary outcome [2]
419083
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GP's views and experiences of using the AI.
As measured by a questionnaire assessing feasibility, acceptability and appropriateness measures based on validated intervention tools with answers on a 5 point Likert scale.
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Assessment method [2]
419083
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Timepoint [2]
419083
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At the point the GP logs into DermEngine app to access the AI result for each lesion
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Secondary outcome [3]
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GP views and experiences of using the teledermatology service.
As measured by a questionnaire assessing feasibility, acceptability and appropriateness measures based on validated intervention tools with answers on a 5 point Likert scale.
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Assessment method [3]
419084
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Timepoint [3]
419084
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At the point the GP logs into the DermEngine app to access the teledermatology result for each lesion
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Secondary outcome [4]
419085
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GP’s views and experiences of using the online training modules.
As measured by questionnaires for each module assessing feasibility, acceptability and appropriateness measures based on validated intervention tools with answers on a 5 point Likert scale.
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Assessment method [4]
419085
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Timepoint [4]
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Immediately after GP's complete each of the modules of the 2 hour online training modules within the DermEngine Academy.
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Secondary outcome [5]
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GP's views and experiences of using the AI as measured by a semi-structured video interview based on constructs from the consolidated framework for implementation of research (CFIR).
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Assessment method [5]
419375
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Timepoint [5]
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Within 2 months of recruitment of each GP's 10th and final patient
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Secondary outcome [6]
419376
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GP views and experiences of using the teledermatology service, as measured by a semi-structured video interview based on constructs from CFIR.
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Assessment method [6]
419376
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Timepoint [6]
419376
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Within 2 months of recruitment of each GP's final patient
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Secondary outcome [7]
419377
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GP's views and experiences of using the online training modules, as measured by a semi-structured video interview based on constructs from CFIR
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Assessment method [7]
419377
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Timepoint [7]
419377
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Within 2 months of recruitment of each GP's final patient
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Secondary outcome [8]
419378
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GP sensitivity in diagnosing any form of skin cancer
Sensitivity = (number of cancerous lesions correctly identified as such by GP)/(total number of cancerous lesions)
Data collection: GPs will enter provisional diagnosis for each lesion at time of image capture, which may include cancer. GPs will biopsy each lesion and submit the histopathology report for each lesion which is gold standard for diagnosing cancer.
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Assessment method [8]
419378
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Timepoint [8]
419378
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Calculated within 2 months following recruitment of last patient
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Secondary outcome [9]
419379
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GP specificity in diagnosing any form of skin cancer.
Specificity = (number of benign lesions correctly identified as such by GP)/(total number of benign lesions) x 100
Data collection: GPs will enter provisional diagnosis for each lesion at time of image capture, which may include cancer. GPs will biopsy each lesion and submit the histopathology report for each lesion which is gold standard for diagnosing cancer.
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Assessment method [9]
419379
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Timepoint [9]
419379
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Calculated within 2 months following recruitment of last patient
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Eligibility
Key inclusion criteria
STUDY PARTICIPANTS:
Patients with a skin lesion where the GP is concerned about possible skin cancer
Lesions:
• For surgical biopsy and submission for histopathological assessment
• Suspicious for one of the three target cutaneous malignancies of DermDx
o Melanoma
o Basal Cell Carcinoma
o Squamous Cell Carcinoma or Actinic Keratosis (Intraepithelial SCC/Bowen’s Disease)
• Amenable for imaging with a dermatoscope (or dermoscopic attachment) and digital imaging device (E.g.: digital camera or smartphone)
• Amenable for contact or non-contact dermoscopy
• Size: entire lesion must fit within field of view of the dermatoscope
Biopsy type:
• All types of surgical biopsy or excision suitable for histological assessment. These include partial biopsy or complete excision, shave, punch, curettage.
Patients:
• Types 1 to 3 Fitzpatrick skin phototype
• Aged 18 years or older
• ability to consent to digital image acquisition, analysis of the image by teledermatologist and artificial intelligence image algorithm and surgical biopsy/excision. If they are unable to consent an authorised person may provide consent on their behalf (As outlined in the Health Privacy Act 1988).
GP'S
• GPs must have general, unrestricted medical practitioner registration with AHPRA
• They must work and recruit patients in a primary care environment (mixed general practice, GP skin cancer practice)
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Minimum age
18
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
Lesions
• Previously biopsied
• Sites: mucosal, acral, ocular, umbilicus
Clinical scenarios
• Emergency or Life-Threatening conditions, e.g.: Steven-Johnson Syndrome, Toxic-Epidermal Necrolysis
• Infections, e.g.: folliculitis
• Infestations, e.g.: scabies
• Inflammatory conditions, e.g.: eczema, psoriasis
• Blistering disorders, e.g.: pemphigus vulgaris
• Hair loss, e.g.: alopecia areata
• Traumatic injuries
Patient
• Pregnant women (due to known physiological changes that occur in naevi during pregnancy)
• Unable to tolerate dermoscopy (e.g.: sitting still, hypersensitivity to any contact materials)
GP
Practitioners
• Other primary care clinicians who do not hold medical registration with AHPRA. E.g.: nurse practitioners
• Practitioners working in a specialist practice or environment. E.g.: GPs working within a surgical oncology or dermatology practice
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Study design
Purpose of the study
Diagnosis
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Allocation to intervention
Non-randomised trial
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Procedure for enrolling a subject and allocating the treatment (allocation concealment procedures)
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Methods used to generate the sequence in which subjects will be randomised (sequence generation)
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Masking / blinding
Open (masking not used)
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Who is / are masked / blinded?
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Intervention assignment
Single group
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Other design features
This is a feasibility study and so there is no control group
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Phase
Not Applicable
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Type of endpoint/s
Efficacy
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Statistical methods / analysis
Sample size for the process of using the AI and TD is 300 lesions. For all skin malignancies (melanoma and keratinocyte cancers) the number number needed to biopsy (NNB) is estimated at 1.9 to 2.1. 300 cases would allow sensitivity and specificity for detecting any kind of skin malignancy (i.e. melanoma, SCC, or BCC) to be estimated with a precision of +/- 7% or less, assuming the proportion of cases with any form of skin cancer is 50%, an expected sensitivity of 95%, expected specificity of 80%, 5% missing data, type I error of 5%, and power of 80%.
The primary outcomes will be reported using statistical proportions with 95% confidence intervals.
Results from the questionnaires will be summarised with descriptive statistics such as proportions and means, with 95% Confidence Intervals. Thematic analysis will be used to analyse the interview data.
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Recruitment
Recruitment status
Not yet recruiting
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Date of first participant enrolment
Anticipated
1/04/2023
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Actual
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Date of last participant enrolment
Anticipated
30/09/2023
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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
300
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Accrual to date
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Final
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Recruitment in Australia
Recruitment state(s)
ACT,NSW,NT,QLD,SA,TAS,WA,VIC
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Funding & Sponsors
Funding source category [1]
313286
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Commercial sector/Industry
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Name [1]
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MetaOptima Technology Australia Pty Ltd
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Address [1]
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Level 3, 223 Liverpool St
Darlinghurst NSW 2010
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Country [1]
313286
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Australia
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Primary sponsor type
Other Collaborative groups
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Name
Melanoma Institute Australia
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Address
The Poche Centre
40 Rocklands Rd,
Wollstonecraft
Sydney
NSW 2065
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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]
315040
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Country [1]
315040
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Ethics approval
Ethics application status
Approved
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Ethics committee name [1]
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Sydney Local Health District Ethics Review Committee (RPAH Zone)
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Ethics committee address [1]
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Research Ethics and Governance Office (REGO) Royal Prince Alfred Hospital Missenden Road CAMPERDOWN NSW 2050
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Ethics committee country [1]
312516
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Australia
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Date submitted for ethics approval [1]
312516
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Approval date [1]
312516
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16/09/2022
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Ethics approval number [1]
312516
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X22-0214 & 2022/ETH01500
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Summary
Brief summary
"One Million Skin Checks: A Feasibility Study of Teledermatology and Artificial Intelligence in General Practice For Skin Checks in Adults” is a research study looking at using teledermatology and artificial intelligence to help diagnose skin cancers. The primary aim of the study is to assess the feasibility of using these technologies in general practice to support skin cancer diagnosis and management. The secondary aim is to evaluate GPs’ experience of using the teledermatology and artificial intelligence diagnosis tools and the online training modules for these tools. Who is it for? You may be eligible for this study if you are aged 18 years or older, you have a skin lesion where the GP is concerned about possible skin cancer and the lesion is suitable for imaging and biopsy. Study details All participants who choose to enrol in this study will have their skin lesion assessed by the GP using both standard care methods, and the newly developed artificial intelligence (AI) diagnosis tools. All participants will have a biopsy of the lesion taken and sent for further cellular analysis to determine next treatment steps. Please note that the use of the AI tools will not impact upon the care you receive. The GP will continue to treat all participants as they would without the AI tools, but they will then assess their treatment decisions against those provided by the AI tools at a later time. In order to assess the lesion using the AI diagnosis tools, the GP will attach a specialised microscope fitting to their smartphone and use this to take photos of the lesion. These photos will then be uploaded to a new app (DermEngine) which will connect the GP to a consultant dermatologist for further review of the lesion. The app also has an AI algorithm built into it which will assess the lesion photos, make a diagnosis, and tells the clinician how likely it is to be cancer. The AI result and the teledermatology opinion from the consultant dermatologist will be made available to your GP a day or two after your consultation. As all of the images in the study are anonymised before leaving the GP practice, the AI and teledermatology results will not be communicated directly to patients, but may be available from your GP upon request. It is hoped this research will demonstrate that use of these AI diagnostic tools for skin cancer checks is practical and acceptable to GPs. If this study does find that using the AI diagnostic tools is beneficial, a larger study enrolling more participants may be undertaken to determine the efficacy of the diagnostic tools compared to standard care for skin cancer checks.
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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 James Koutsis
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Address
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Melanoma Institute of Australia
40 Rocklands Rd, Wollstonecraft, NSW, 2065
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Country
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Australia
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Phone
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+61 29911 7200
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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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James Koutsis
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Address
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Melanoma Institute of Australia
40 Rocklands Rd, Wollstonecraft, NSW, 2065
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Country
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Australia
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Phone
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+61 29911 7200
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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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Pascale Guitera
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Address
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Melanoma Institute of Australia
40 Rocklands Rd, Wollstonecraft, NSW, 2065
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Country
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Australia
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Phone
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+61 9515 8537
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Fax
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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
Sensitive commercial data
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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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