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3 months ago
Identifying Melanoma Images using EfficientNet Ensemble: Winning Solution to the SIIM-ISIC Melanoma Classification Challenge
Qishen Ha Bo Liu Fuxu Liu

Abstract
We present our winning solution to the SIIM-ISIC Melanoma Classification Challenge. It is an ensemble of convolutions neural network (CNN) models with different backbones and input sizes, most of which are image-only models while a few of them used image-level and patient-level metadata. The keys to our winning are: (1) stable validation scheme (2) good choice of model target (3) carefully tuned pipeline and (4) ensembling with very diverse models. The winning submission scored 0.9600 AUC on cross validation and 0.9490 AUC on private leaderboard.
Code Repositories
Ramstein/MelanomaClassification
pytorch
Mentioned in GitHub
haqishen/SIIM-ISIC-Melanoma-Classification-1st-Place-Solution
Official
pytorch
Mentioned in GitHub
Tirth27/Skin-Cancer-Classification-using-Deep-Learning
tf
Mentioned in GitHub
stanleyjzheng/masseyhacksvii
pytorch
Mentioned in GitHub
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| medical-image-classification-on-isic-2020 | EfficientNet Ensemble | AUC: 0.9490 |
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