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Target product profiles for digital health technologies including those with artificial intelligence: a systematic review
0
Zitationen
19
Autoren
2025
Jahr
Abstract
Digital health technologies (DHTs), including those incorporating artificial intelligence (AI), have the potential to improve healthcare access, efficiency, and quality, reducing gaps between healthcare capacity and demand. Despite prioritisation in health policy, the adoption of DHTs remains limited, especially for AI, in part due to complex system requirements. Target product profiles (TPPs) are documents outlining the characteristics necessary for medical technologies to be utilised in practice and offer a way to align DHTs' research and development with health systems' needs. This systematic review examines current DHT TPPs' methodologies, stakeholders, and contents. A total of 14 TPPs were identified, most targeted at low- and middle-income settings and communicable diseases. Only one TPP outlined the requirements for an AI device specifically. In total, 248 different characteristics were reported across the TPPs identified and were consolidated down to 33 key characteristics. Some considerations for DHTs' successful adoption, such as regulatory requirements or environmental sustainability, were reported inconsistently or not at all. There was little standardisation in TPP development or contents, and limited transparency in reporting. Our findings emphasise the need for guidelines for TPP development, could help inform these, and could be used as a basis to develop future DHT TPPs. <b>Systematic Review Registration</b>: https://www.researchprotocols.org/2024/1/e50568/authors.
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Autoren
- Trystan Macdonald
- Henry David Jeffry Hogg
- Jacqueline Dinnes
- Lucy Verrinder
- Gregory Maniatopoulos
- Sian Taylor‐Phillips
- Bethany Shinkins
- J Kevin Dunbar
- Ameenat Lola Solebo
- Hannah Sutton
- John Attwood
- Michael Pogose
- Rosalind Given-Wilson
- Felix Greaves
- Carl Macrae
- Russell Pearson
- Adnan Tufail
- Xiaoxuan Liu
- Alastair K. Denniston
Institutionen
- NIHR Birmingham Biomedical Research Centre(GB)
- University Hospitals Birmingham NHS Foundation Trust(GB)
- University of Birmingham(GB)
- University College Birmingham(GB)
- Scot Young Research (United Kingdom)(GB)
- University of Leicester(GB)
- University of Warwick(GB)
- Directorate of Health(IS)
- University College London(GB)
- Moorfields Eye Hospital(GB)
- Great Ormond Street Hospital(GB)
- Moorfields Eye Hospital NHS Foundation Trust(GB)
- Alder Hey Children's Hospital(GB)
- University of Liverpool(GB)
- Bausch Health (United Kingdom)(GB)
- NHS Digital(GB)
- Imperial College London(GB)
- Department of Health and Social Care(GB)
- University of Nottingham(GB)
- Centre for Innovation in Regulatory Science(GB)
- NIHR Moorfields Biomedical Research Centre(GB)