Skin Malignancy Classification Using Patients’ Skin Images and Meta-Data: Multimodal Fusion for Improving Fairness
Abstract
Skin cancer image classification across skin tones is a challenging problem due to the fact that skin cancer can present differently on different skin tones. This study evaluates the performance of image only models and fusion models in skin malignancy classification. The fusion models we consider are able to take in additional patient data, such as an indicator of their skin tone, and merge this information with the features provided by the image-only model. Results from the experiment show that fusion models perform substantially better than image-only models. In particular, we find that a form of multiplicative fusion results in the best performing models. This finding suggests that skin tones add predictive value in skin malignancy prediction problems. We further demonstrate that feature fusion methods reduce, but do not entirely eliminate, the disparity in performance of the model on patients with different skin tones.
Cite
Text
Wang et al. "Skin Malignancy Classification Using Patients’ Skin Images and Meta-Data: Multimodal Fusion for Improving Fairness." Proceedings of MIDL 2024, 2024.Markdown
[Wang et al. "Skin Malignancy Classification Using Patients’ Skin Images and Meta-Data: Multimodal Fusion for Improving Fairness." Proceedings of MIDL 2024, 2024.](https://mlanthology.org/midl/2024/wang2024midl-skin/)BibTeX
@inproceedings{wang2024midl-skin,
title = {{Skin Malignancy Classification Using Patients’ Skin Images and Meta-Data: Multimodal Fusion for Improving Fairness}},
author = {Wang, Ke and Shan, Ningyuan and Gouk, Henry and Ho, Iris Szu-Szu},
booktitle = {Proceedings of MIDL 2024},
year = {2024},
pages = {1670-1686},
volume = {250},
url = {https://mlanthology.org/midl/2024/wang2024midl-skin/}
}