2023
DOI: 10.3390/diagnostics13243643
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The Development and Validation of an AI Diagnostic Model for Sacroiliitis: A Deep-Learning Approach

Kyu-Hong Lee,
Ro-Woon Lee,
Kyung-Hee Lee
et al.

Abstract: Purpose: Sacroiliitis refers to the inflammatory condition of the sacroiliac joints, frequently causing lower back pain. It is often associated with systemic conditions. However, its signs on radiographic images can be subtle, which may result in it being overlooked or underdiagnosed. This study aims to utilize artificial intelligence (AI) to create a diagnostic tool for more accurate sacroiliitis detection in radiological images, with the goal of optimizing treatment plans and improving patient outcomes. Mate… Show more

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Cited by 2 publications
(1 citation statement)
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“…A study by Lee et al utilized AI to develop a diagnostic tool for more accurate detection of sacroiliitis in radiological images [ 87 ]. The AI model demonstrated high accuracy for different sacroiliitis grades, with percentages ranging from 94.53% to 98.44%, and achieved 100% sensitivity for Grade 3 and normal cases, as well as 100% specificity for Grade 4.…”
Section: Resultsmentioning
confidence: 99%
“…A study by Lee et al utilized AI to develop a diagnostic tool for more accurate detection of sacroiliitis in radiological images [ 87 ]. The AI model demonstrated high accuracy for different sacroiliitis grades, with percentages ranging from 94.53% to 98.44%, and achieved 100% sensitivity for Grade 3 and normal cases, as well as 100% specificity for Grade 4.…”
Section: Resultsmentioning
confidence: 99%