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Pathology aware hierarchical transformers for multi-label thoracic disease classification using chest X-rays

Muneeb A. Khan et al · Springer · 2026

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Abstract Multi-label chest X-ray classification faces three critical challenges: (i) inadequate modeling of inter-pathology dependencies despite clinical co-occurrence patterns, (ii) severe class imbalance (11.2−47.6%) causing minority-class underperformance, and (iii) limited interpretability hindering clinical trust. Existing methods address these challenges independently; no current framework jointly models pathology dependencies, imbalance-aware training, and interpretable attention. We propose a Hierarchical Pathology-aware Vision Transformer (HP-ViT), which jointly addresses these limitations in a unified architecture by employing: Hierarchical Pathology-Aware Attention (HPAA) for explicit disease co-occurrence modeling through two-stage token refinement, Multi-Scale Feature Aggregation (MSFA) for detecting localized and diffuse abnormalities across four hierarchical scales, and Balanced Adaptive Focal Loss (BAFL) implementing curriculum-scheduled focal modulation that progressively transitions from class-balanced to difficulty-focused training. Evaluated on COVIDx, ChestX-ray14, and BIMCV-COVID19+ ( $$N{=}36{,}904$$ images), HP-ViT achieves macro-F1 of 0.924, exact match ratio of 0.842, and PPV of 0.925, representing 1.76%, 1.32%, and 1.5% improvements over state-of-the-art, with statistical significance ( $$p<0.001$$ , McNemar’s test on per-sample exact-match correctness). HP-ViT requires only 12.6 M parameters (85% reduction vs. ViT-B/16) with 29.8 ms inference time, enabling real-time clinical deployment. Interpretability evaluation yields 83.7% mean SSIM between attention maps and radiologist annotations, confirming pathology-aligned localization.

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APA 7

al, M. A. K. E. (2026). Pathology aware hierarchical transformers for multi-label thoracic disease classification using chest X-rays. https://doi.org/10.1007/s10791-026-10127-8

MLA

al, Muneeb A. Khan et. "Pathology aware hierarchical transformers for multi-label thoracic disease classification using chest X-rays." 2026. https://doi.org/10.1007/s10791-026-10127-8.

Chicago

al, Muneeb A. Khan et. 2026. "Pathology aware hierarchical transformers for multi-label thoracic disease classification using chest X-rays.". https://doi.org/10.1007/s10791-026-10127-8.

Harvard

al, M. A. K. E. 2026, Pathology aware hierarchical transformers for multi-label thoracic disease classification using chest X-rays, Springer, available at: https://doi.org/10.1007/s10791-026-10127-8 [Accessed 29 Jun. 2026].

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Título
Pathology aware hierarchical transformers for multi-label thoracic disease classification using chest X-rays
Autor / colaboradores
Muneeb A. Khan et al
Editorial
Springer
Año de publicación
2026
ISSN
2948-2992
ISSN
2948-2992
Idioma
eng

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