Multi-task fusion for improving mammography screening data
classification
- URL: http://arxiv.org/abs/2112.01320v1
- Date: Wed, 1 Dec 2021 13:56:27 GMT
- Title: Multi-task fusion for improving mammography screening data
classification
- Authors: Maria Wimmer, Gert Sluiter, David Major, Dimitrios Lenis, Astrid Berg,
Theresa Neubauer, Katja B\"uhler
- Abstract summary: We propose a pipeline approach, where we first train a set of individual, task-specific models.
We then investigate the fusion thereof, which is in contrast to the standard model ensembling strategy.
Our fusion approaches improve AUC scores significantly by up to 0.04 compared to standard model ensembling.
- Score: 3.7683182861690843
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Machine learning and deep learning methods have become essential for
computer-assisted prediction in medicine, with a growing number of applications
also in the field of mammography. Typically these algorithms are trained for a
specific task, e.g., the classification of lesions or the prediction of a
mammogram's pathology status. To obtain a comprehensive view of a patient,
models which were all trained for the same task(s) are subsequently ensembled
or combined. In this work, we propose a pipeline approach, where we first train
a set of individual, task-specific models and subsequently investigate the
fusion thereof, which is in contrast to the standard model ensembling strategy.
We fuse model predictions and high-level features from deep learning models
with hybrid patient models to build stronger predictors on patient level. To
this end, we propose a multi-branch deep learning model which efficiently fuses
features across different tasks and mammograms to obtain a comprehensive
patient-level prediction. We train and evaluate our full pipeline on public
mammography data, i.e., DDSM and its curated version CBIS-DDSM, and report an
AUC score of 0.962 for predicting the presence of any lesion and 0.791 for
predicting the presence of malignant lesions on patient level. Overall, our
fusion approaches improve AUC scores significantly by up to 0.04 compared to
standard model ensembling. Moreover, by providing not only global patient-level
predictions but also task-specific model results that are related to
radiological features, our pipeline aims to closely support the reading
workflow of radiologists.
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