Classification of Luminal Subtypes in Full Mammogram Images Using
Transfer Learning
- URL: http://arxiv.org/abs/2301.09282v1
- Date: Mon, 23 Jan 2023 05:58:26 GMT
- Title: Classification of Luminal Subtypes in Full Mammogram Images Using
Transfer Learning
- Authors: Adarsh Bhandary Panambur, Prathmesh Madhu, Andreas Maier
- Abstract summary: Transfer learning is applied from a breast abnormality classification task to finetune a ResNet-18-based luminal versus non-luminal subtype classification task.
We show that our approach significantly outperforms the baseline classifier by achieving a mean AUC score of 0.6688 and a mean F1 score of 0.6693 on the test dataset.
- Score: 8.961271420114794
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Automatic identification of patients with luminal and non-luminal subtypes
during a routine mammography screening can support clinicians in streamlining
breast cancer therapy planning. Recent machine learning techniques have shown
promising results in molecular subtype classification in mammography; however,
they are highly dependent on pixel-level annotations, handcrafted, and radiomic
features. In this work, we provide initial insights into the luminal subtype
classification in full mammogram images trained using only image-level labels.
Transfer learning is applied from a breast abnormality classification task, to
finetune a ResNet-18-based luminal versus non-luminal subtype classification
task. We present and compare our results on the publicly available CMMD dataset
and show that our approach significantly outperforms the baseline classifier by
achieving a mean AUC score of 0.6688 and a mean F1 score of 0.6693 on the test
dataset. The improvement over baseline is statistically significant, with a
p-value of p<0.0001.
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