Latent Space Analysis for Melanoma Prevention

Publication date: Jun 23, 2025

Melanoma represents a critical health risk due to its aggressive progression and high mortality, underscoring the need for early, interpretable diagnostic tools. While deep learning has advanced in skin lesion classification, most existing models provide only binary outputs, offering limited clinical insight. This work introduces a novel approach that extends beyond classification, enabling interpretable risk modelling through a Conditional Variational Autoencoder. The proposed method learns a structured latent space that captures semantic relationships among lesions, allowing for a nuanced, continuous assessment of morphological differences. An SVM is also trained on this representation effectively differentiating between benign nevi and melanomas, demonstrating strong and consistent performance. More importantly, the learned latent space supports visual and geometric interpretation of malignancy, with the spatial proximity of a lesion to known melanomas serving as a meaningful indicator of risk. This approach bridges predictive performance with clinical applicability, fostering early detection, highlighting ambiguous cases, and enhancing trust in AI-assisted diagnosis through transparent and interpretable decision-making.

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Concepts Keywords
Cnns Classification
Efficient Clinical
Train Cvae
Tumor Image
Latent
Learning
Melanoma
Melanomas
Nevi
Nevus
Representations
Risk
Skin
Space
Training

Semantics

Type Source Name
disease MESH Melanoma
pathway KEGG Melanoma
disease MESH nevi and melanomas
disease MESH malignancy
disease MESH nevi
disease MESH skin cancer
disease MESH carcinoma
disease MESH squamous carcinoma
drug DRUGBANK Gold
drug DRUGBANK Honey
drug DRUGBANK Flunarizine
drug DRUGBANK Saquinavir
drug DRUGBANK Pidolic Acid
disease MESH uncertainty
disease MESH clinical relevance
drug DRUGBANK Guanosine

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