ISO 18374:2025
International Standard
Current Edition
·
Approved on
30 April 2025
Dentistry — Artificial intelligence (AI) and augmented intelligence (AuI) based 2D radiograph analysis — Data generation, data annotation and data processing
ISO 18374:2025 Files
English
13 Pages
Current Edition
46.35 BHD
ISO 18374:2025 Scope
This document defines the requirements for developing and documenting the goals, limitations, target end users and target patient population for artificial intelligence (AI) and augmented intelligence (AuI) enabled 2D radiograph analysis software for dentistry applications. It outlines the requirements for appropriate training data, validation data, test data and annotation for the software to ensure that it achieves its intended goals, and is restricted to the aspects. This document does not cover the specific implementation details, and focuses on static (i.e. non-dynamic) AI/AuI.
Best Sellers
GSO 150-2:2013
Gulf Standard
Expiration dates for food products - Part 2 :
Voluntary expiration dates

BH GSO 150-2:2015
GSO 150-2:2013
Bahraini Standard
Expiration dates for food products - Part 2 :
Voluntary expiration dates


BH GSO 2055-1:2016
GSO 2055-1:2015
Bahraini Technical Regulation
HALAL FOOD - Part 1 : General Requirements


GSO 2055-1:2015
Gulf Technical Regulation
HALAL FOOD - Part 1 : General Requirements

Recently Published
ISO 24690:2025
International Standard
Glass reinforced thermosetting plastic (GRP) pipes — Test method for the determination of long-term pressure endurance strength

ISO 15614-11:2025
International Standard
Specification and qualification of welding procedures for metallic materials — Welding procedure test — Part 11: Electron and laser beam welding

IEC/TS 81001-2-2:2025
International Standard
Health software and health IT systems safety, effectiveness and security — Part 2-2: Guidance for the implementation, disclosure and communication of security needs, risks and controls

ISO 37190:2025
International Standard
Guidance for practical implementation of ISO 37155 series for supervising at each life cycle phase of smart community infrastructures
