Achieving Fairness in Dermatological Disease Diagnosis through Automatic Weight Adjusting Federated Learning and Personalization
Gelei Xu, Yawen Wu, Jingtong Hu, Yiyu Shi

TL;DR
This paper introduces a fairness-aware federated learning framework for dermatological diagnosis that balances accuracy across skin types by adaptive weighting and personalization, improving fairness and performance.
Contribution
It proposes a novel two-stage federated learning approach with automatic weight adjustment and personalization to enhance fairness in dermatological disease diagnosis.
Findings
Improves diagnosis fairness across skin types.
Enhances overall diagnostic accuracy.
Maintains accuracy difference within 0.05 across skin types.
Abstract
Dermatological diseases pose a major threat to the global health, affecting almost one-third of the world's population. Various studies have demonstrated that early diagnosis and intervention are often critical to prognosis and outcome. To this end, the past decade has witnessed the rapid evolvement of deep learning based smartphone apps, which allow users to conveniently and timely identify issues that have emerged around their skins. In order to collect sufficient data needed by deep learning and at the same time protect patient privacy, federated learning is often used, where individual clients aggregate a global model while keeping datasets local. However, existing federated learning frameworks are mostly designed to optimize the overall performance, while common dermatological datasets are heavily imbalanced. When applying federated learning to such datasets, significant…
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Taxonomy
TopicsCutaneous Melanoma Detection and Management · Body Image and Dysmorphia Studies · Dermatology and Skin Diseases
