Data, Depth, and Design: Learning Reliable Models for Skin Lesion Analysis
Eduardo Valle, Michel Fornaciali, Afonso Menegola, Julia Tavares, Fl\'avia Vasques Bittencourt, Lin Tzy Li, Sandra Avila

TL;DR
This study systematically investigates key methodological choices in deep learning for skin lesion analysis, emphasizing the importance of data, transfer learning, and ensembles for reliable results.
Contribution
It provides a comprehensive analysis of 10 design factors through extensive experiments, highlighting the critical role of transfer learning and data in model performance.
Findings
Amount of training data significantly impacts performance.
Transfer learning is essential for effective skin lesion models.
Ensembles improve reliability without test set data leakage.
Abstract
Deep learning fostered a leap ahead in automated skin lesion analysis in the last two years. Those models are expensive to train and difficult to parameterize. Objective: We investigate methodological issues for designing and evaluating deep learning models for skin lesion analysis. We explore 10 choices faced by researchers: use of transfer learning, model architecture, train dataset, image resolution, type of data augmentation, input normalization, use of segmentation, duration of training, additional use of SVMs, and test data augmentation. Methods: We perform two full factorial experiments, for five different test datasets, resulting in 2560 exhaustive trials in our main experiment, and 1280 trials in our assessment of transfer learning. We analyze both with multi-way ANOVA. We use the exhaustive trials to simulate sequential decisions and ensembles, with and without the use of…
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