# AI-based chest CT quantification of interstitial lung disease in idiopathic inflammatory myopathies: agreement with expert visual assessment in 107 patients

**Authors:** Youlia Kuzmanovic, Amira Benattia, Amandine Laporte, Kubéraka Mariampillai, Yves Allenbach, Yurdagül Uzunhan, Pierre-Yves Brillet, Phillipe A. Grenier, Victoria Donciu, Nicoletta Pasi, Olivier Benveniste, Alban Redheuil, Samia Boussouar

PMC · DOI: 10.1186/s12890-026-04201-6 · BMC Pulmonary Medicine · 2026-02-26

## TL;DR

This study shows that AI can reliably assess lung disease in myopathy patients using CT scans, especially for certain types of lung abnormalities.

## Contribution

The study evaluates AI's ability to quantify interstitial lung disease in myopathies and compares it to expert visual assessments.

## Key findings

- AI showed strong agreement with experts for ground-glass opacities and consolidation.
- Agreement was weaker for fibrotic patterns like reticulations and honeycombing.
- AI analysis was possible in 99% of CT scans, indicating high feasibility.

## Abstract

Interstitial lung disease (ILD) is a determinant of morbidity and mortality in idiopathic inflammatory myopathies (IIM), but chest HRCT evaluation remains observer-dependent. Artificial intelligence (AI) may provide reproducible quantitative assessment. We compared AI-based quantification of ILD with expert visual scoring in IIM.

In this monocentric retrospective study, 107 patients with IIM-associated ILD from a national myositis registry were included. One representative chest HRCT per patient was evaluated by a thoracic radiologist using a semi-quantitative lobar score and by a commercially available AI tool for lung texture analysis. AI-derived volumes were converted to the same 5-point scale as the visual score. Correlations were assessed with Spearman coefficients and agreement with Cohen’s kappa.

All CTs were suitable for visual assessment and 106/107 (99%) for AI analysis. AI identified ground-glass opacities (GGO) as the predominant abnormality, with a lower-lobe predominance. Correlations between AI and radiologist scores were strong for normal lung (r = 0.77) and moderate for GGO (r = 0.64) and consolidation (r = 0.60), but weaker for reticulations (r = 0.34) and honeycombing (r = 0.42). Agreement was good for GGO (κ = 0.70) and consolidation (κ = 0.60), moderate for reticulations (κ = 0.37) and low for honeycombing (κ = 0.16).

In IIM-associated ILD, AI-based chest HRCT quantification showed good agreement with expert visual assessment, particularly for GGO and consolidation, but was less reliable for complex fibrotic patterns. AI may support more objective and reproducible evaluation of interstitial involvement, as a complement to expert interpretation.

## Linked entities

- **Diseases:** interstitial lung disease (MONDO:0015925), idiopathic inflammatory myopathies (MONDO:0020122)

## Full-text entities

- **Diseases:** inflammatory myopathies (MESH:D009220), interstitial lung disease (MESH:D017563)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Full text

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## Figures

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## References

3 references — full list in the complete paper: https://tomesphere.com/paper/PMC13040765/full.md

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Source: https://tomesphere.com/paper/PMC13040765