Minimum labelling requirements for dermatology artificial intelligence‐based Software as Medical Device (SaMD): A consensus statement
Background/Objectives Artificial intelligence (AI) holds remarkable potential to improve care delivery in dermatology. End users (health professionals and general public) of AI‐based Software as Medical Devices (SaMD) require relevant labelling information to ensure that these devices can be used ap...
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          | Published in | Australasian journal of dermatology Vol. 65; no. 3; pp. e21 - e29 | 
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| Main Authors | , , , , , , , , , , , , , | 
| Format | Journal Article | 
| Language | English | 
| Published | 
        Australia
          Wiley Subscription Services, Inc
    
        01.05.2024
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| Subjects | |
| Online Access | Get full text | 
| ISSN | 0004-8380 1440-0960 1440-0960  | 
| DOI | 10.1111/ajd.14222 | 
Cover
| Summary: | Background/Objectives
Artificial intelligence (AI) holds remarkable potential to improve care delivery in dermatology. End users (health professionals and general public) of AI‐based Software as Medical Devices (SaMD) require relevant labelling information to ensure that these devices can be used appropriately. Currently, there are no clear minimum labelling requirements for dermatology AI‐based SaMDs.
Methods
Common labelling recommendations for AI‐based SaMD identified in a recent literature review were evaluated by an Australian expert panel in digital health and dermatology via a modified Delphi consensus process. A nine‐point Likert scale was used to indicate importance of 10 items, and voting was conducted to determine the specific characteristics to include for some items. Consensus was achieved when more than 75% of the experts agreed that inclusion of information was necessary.
Results
There was robust consensus supporting inclusion of all proposed items as minimum labelling requirements; indication for use, intended user, training and test data sets, algorithm design, image processing techniques, clinical validation, performance metrics, limitations, updates and adverse events. Nearly all suggested characteristics of the labelling items received endorsement, except for some characteristics related to performance metrics. Moreover, there was consensus that uniform labelling criteria should apply across all AI categories and risk classes set out by the Therapeutic Goods Administration.
Conclusions
This study provides critical evidence for setting labelling standards by the Therapeutic Goods Administration to safeguard patients, health professionals, consumers, industry, and regulatory bodies from AI‐based dermatology SaMDs that do not currently provide adequate information about how they were developed and tested. | 
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| Bibliography: | 1 or allowed by this copyright notice, all other rights are reserved and you are not allowed to reproduce the whole or any part of this work in any way (electronic or otherwise) without first being given specific written permission from the Commonwealth to do so. Requests and inquiries concerning reproduction and rights are to be sent to the TGA Copyright Officer, Therapeutic Goods Administration, PO Box 100, Woden ACT 2606 or emailed to Commonwealth of Australia 2023. This work is copyright. You may reproduce the whole or part of this work in unaltered form for your own personal use or, if you are part of an organization, for internal use within your organization, but only if you or your organization do not use the reproduction for any commercial purpose and retain this copyright notice and all disclaimer notices as part of that reproduction. Apart from rights to use as permitted by the Copyright Act 1968 Copyright notice (Table tga.copyright@tga.gov.au . ObjectType-Article-1 SourceType-Scholarly Journals-1 ObjectType-Feature-2 content type line 14 content type line 23  | 
| ISSN: | 0004-8380 1440-0960 1440-0960  | 
| DOI: | 10.1111/ajd.14222 |