geneeskunde.aiRadar
Binnen 6–18 maandenTechnologie & AIvoorbereidenConfidence: 40%

AIdentifyAGE Ontology for Decision Support in Forensic Dental Age Assessment

Eerste signalering: Laatst bijgewerkt:

Samenvatting

AIdentifyAGE Ontology for Decision Support in Forensic Dental Age Assessment. arXiv:2602.16714v1 Announce Type: new Abstract: Age assessment is crucial in forensic and judicial decision-making, particularly in cases involving undocumented individuals and unaccompanied minors, where legal thresholds determine access to protection, healthcare, and judicial procedures. Dental age assessment is widely recognized as one of the most reliable biological approaches for adolescents and young adults, but current practices are challenged by methodological heterogeneity, fragmented data representation, and limited interoperability between clinical, forensic, and legal information systems. These limitations hinder transparency and reproducibility, amplified by the increasing adoption of AI- based methods. The AIdentifyAGE ontology is domain-specific and provides a standardized, semantically coherent framework, encompassing both manual and AI-assisted forensic dental age assessment workflows, and enabling traceable linkage between observations, methods, reference data, and reported outcomes. It models the complete medico-legal workflow, integrating judicial context, individual-level information, forensic examination data, dental developmental assessment methods, radiographic imaging, statistical reference studies, and AI-based estimation methods. It is being developed together with domain experts, and it builds on upper and established biomedical, dental, and machine learning ontologies, ensuring interoperability, extensibility, and compliance with FAIR principles. The AIdentifyAGE ontology is a fundamental step to enhance consistency, transparency, and explainability, establishing a robust foundation for ontology-driven decision support systems in medico-legal and judicial contexts.

Waarom dit ertoe doet

Deze technologische ontwikkeling kan de manier waarop AI in de zorg wordt ingezet fundamenteel veranderen.

Context (AI-duiding)

Klik op “Toon context” om AI-duiding op te halen.

Nieuwsbrief

Wekelijks dit soort signalen in je inbox

De nieuwsbrief bundelt nieuwe signalen, relevante verschuivingen en korte duiding zodat je minder afhankelijk bent van incidentele sitebezoeken.

Scores

4
Impact

De mate waarin dit signaal de Nederlandse gezondheidszorg kan beïnvloeden (1 = minimaal, 5 = transformatief).

3
Urgentie

Hoe snel actie of aandacht nodig is (1 = kan wachten, 5 = onmiddellijke aandacht vereist).

4
Onzekerheid

De mate van onzekerheid over de uitkomst of timing (1 = zeer voorspelbaar, 5 = zeer onzeker).

Tags

AImachine learning

Bronnen

Pipeline versie: 0.2.0 | Gegenereerd door: pipeline

← Terug naar signalen