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  3. Exploring the limit of image resolution for human expert classification of vascular ultrasound images in giant cell arteritis and healthy subjects: the GCA-US-AI project.
 

Exploring the limit of image resolution for human expert classification of vascular ultrasound images in giant cell arteritis and healthy subjects: the GCA-US-AI project.

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BORIS DOI
10.48620/88850
Date of Publication
June 12, 2025
Publication Type
Article
Division/Institute

Clinic of Rheumatolog...

Author
Bauer, Claus-Juergen
Chrysidis, Stavros
Dejaco, Christian
Koster, Matthew J
Kohler, Minna J
Monti, Sara
Schmidt, Wolfgang A
Mukhtyar, Chetan B
Karakostas, Pantelis
Milchert, Marcin
Ponte, Cristina
Duftner, Christina
de Miguel, Eugenio
Hocevar, Alojzija
Iagnocco, Annamaria
Terslev, Lene
Døhn, Uffe Møller
Nielsen, Berit Dalsgaard
Juche, Aaron
Seitz, Luca
Clinic of Rheumatology and Immunology
Keller, Kresten Krarup
Karalilova, Rositsa
Daikeler, Thomas
Mackie, Sarah Louise
Torralba, Karina
van der Geest, Kornelis S M
Boumans, Dennis
Bosch, Philipp
Tomelleri, Alessandro
Aschwanden, Markus
Kermani, Tanaz A
Diamantopoulos, Andreas
Fredberg, Ulrich
Inanc, Nevsun
Petzinna, Simon M
Albarqouni, Shadi
Behning, Charlotte
Schäfer, Valentin Sebastian
Subject(s)

600 - Technology::610...

Series
Annals of the Rheumatic Diseases
ISSN or ISBN (if monograph)
1468-2060
0003-4967
Publisher
BMJ Publishing Group
Language
English
Publisher DOI
10.1016/j.ard.2025.05.010
PubMed ID
40514330
Description
Objectives
Prompt diagnosis of giant cell arteritis (GCA) with ultrasound is crucial for preventing severe ocular and other complications, yet expertise in ultrasound performance is scarce. The development of an artificial intelligence (AI)-based assistant that facilitates ultrasound image classification and helps to diagnose GCA early promises to close the existing gap. In the projection of the planned AI, this study investigates the minimum image resolution required for human experts to reliably classify ultrasound images of arteries commonly affected by GCA for the presence or absence of GCA.
Methods
Thirty-one international experts in GCA ultrasonography participated in a web-based exercise. They were asked to classify 10 ultrasound images for each of 5 vascular segments as GCA, normal, or not able to classify. The following segments were assessed: (1) superficial common temporal artery, (2) its frontal and (3) parietal branches (all in transverse view), (4) axillary artery in transverse view, and 5) axillary artery in longitudinal view. Identical images were shown at different resolutions, namely 32 × 32, 64 × 64, 128 × 128, 224 × 224, and 512 × 512 pixels, thereby resulting in a total of 250 images to be classified by every study participant.
Results
Classification performance improved with increasing resolution up to a threshold, plateauing at 224 × 224 pixels. At 224 × 224 pixels, the overall classification sensitivity was 0.767 (95% CI, 0.737-0.796), and specificity was 0.862 (95% CI, 0.831-0.888).
Conclusions
A resolution of 224 × 224 pixels ensures reliable human expert classification and aligns with the input requirements of many common AI-based architectures. Thus, the results of this study substantially guide projected AI development.
Handle
https://boris-portal.unibe.ch/handle/20.500.12422/212044
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1-s2.0-S0003496725009690-main.pdftextAdobe PDF1.69 MBpublishedOpen
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