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arxiv: 2501.18782 · v1 · pith:COM4DHR3 · submitted 2025-01-30 · eess.IV · cs.CV

PSO-Net: Development of an automated psoriasis assessment system using attention-based interpretable deep neural networks

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classification eess.IV cs.CV
keywords psoriasisscoresassessmentattention-baseddeepdifferentdrawbacksinterpretable
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Psoriasis is a chronic skin condition that requires long-term treatment and monitoring. Although, the Psoriasis Area and Severity Index (PASI) is utilized as a standard measurement to assess psoriasis severity in clinical trials, it has many drawbacks such as (1) patient burden for in-person clinic visits for assessment of psoriasis, (2) time required for investigator scoring and (3) variability of inter- and intra-rater scoring. To address these drawbacks, we propose a novel and interpretable deep learning architecture called PSO-Net, which maps digital images from different anatomical regions to derive attention-based scores. Regional scores are further combined to estimate an absolute PASI score. Moreover, we devise a novel regression activation map for interpretability through ranking attention scores. Using this approach, we achieved inter-class correlation scores of 82.2% [95% CI: 77- 87%] and 87.8% [95% CI: 84-91%] with two different clinician raters, respectively.

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