Artificial Intelligence-Driven Facial Image Analysis for the Early Detection of Rare Diseases: Legal, Ethical, Forensic, and Cybersecurity Considerations

Author:

Kováč Peter123ORCID,Jackuliak Peter4ORCID,Bražinová Alexandra5,Varga Ivan6ORCID,Aláč Michal7ORCID,Smatana Martin8,Lovich Dušan9,Thurzo Andrej210ORCID

Affiliation:

1. Institute of Forensic Medicine, Faculty of Medicine, Comenius University in Bratislava, Sasinkova 4, 81108 Bratislava, Slovakia

2. forensic.sk Institute of Forensic Medical Expertises Ltd., Boženy Němcovej 1004/8, 81104 Bratislava, Slovakia

3. Kinstellar, Hviezdoslavovo Námestie 13, 81102 Bratislava, Slovakia

4. 5th Department of Internal Medicine, Faculty of Medicine, Comenius University in Bratislava, University Hospital, Ružinovská 6, 82606 Bratislava, Slovakia

5. Institute of Epidemiology, Faculty of Medicine, Comenius University in Bratislava, Špitálska 24, 81372 Bratislava, Slovakia

6. Institute of Histology and Embryology, Faculty of Medicine, Comenius University in Bratislava, Sasinkova 4, 81104 Bratislava, Slovakia

7. Department of Administrative Law, Faculty of Law, Trnava University, Kollárova 545/10, 91701 Trnava, Slovakia

8. Faculty of Nursing and Health Professional Studies, Slovak Medical University, Limbová 12, 83303 Bratislava, Slovakia

9. Institute of Public Law—Department of Criminal Law, Criminalistics and Criminology, Faculty of Law, The Pan-European University, Tomášikova 20, 82102 Bratislava, Slovakia

10. Department of Orthodontics, Regenerative and Forensic Dentistry, Faculty of Medicine, Comenius University in Bratislava, Dvořákovo Nábrežie 4, 81102 Bratislava, Slovakia

Abstract

This narrative review explores the potential, complexities, and consequences of using artificial intelligence (AI) to screen large government-held facial image databases for the early detection of rare genetic diseases. Government-held facial image databases, combined with the power of artificial intelligence, offer the potential to revolutionize the early diagnosis of rare genetic diseases. AI-powered phenotyping, as exemplified by the Face2Gene app, enables highly accurate genetic assessments from simple photographs. This and similar breakthrough technologies raise significant privacy and ethical concerns about potential government overreach augmented with the power of AI. This paper explores the concept, methods, and legal complexities of AI-based phenotyping within the EU. It highlights the transformative potential of such tools for public health while emphasizing the critical need to balance innovation with the protection of individual privacy and ethical boundaries. This comprehensive overview underscores the urgent need to develop robust safeguards around individual rights while responsibly utilizing AI’s potential for improved healthcare outcomes, including within a forensic context. Furthermore, the intersection of AI and sensitive genetic data necessitates proactive cybersecurity measures. Current and future developments must focus on securing AI models against attacks, ensuring data integrity, and safeguarding the privacy of individuals within this technological landscape.

Funder

The Slovak Research and Development Agency

Cultural and Educational Grant Agency of the Ministry of Education and Science of the Slovak Republic

Publisher

MDPI AG

Reference47 articles.

1. European Commission. Directorate General for Research and Innovation (2021). Collaboration: A Key to Unlock the Challenges of Rare Diseases Research, Publications Office.

2. How many rare diseases are there?;Haendel;Nat. Rev. Drug Discov.,2020

3. Donaldson, L. (2024, June 24). 2009 ANNUAL REPORT of the Chief Medical Officer. Available online: http://www.sthc.co.uk/documents/cmo_report_2009.pdf.

4. Awakening Australia to Rare Diseases: Symposium report and preliminary outcomes;Dawkins;Orphanet J. Rare Dis.,2011

5. The common problem of rare disease in general practice;Knight;Med. J. Aust.,2006

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