Paper
6 July 2018 Transfer deep learning mammography diagnostic model from public datasets to clinical practice: a comparison of model performance and mammography datasets
Quan Chen, Jinze Liu, Kyle Luo, Xiaofei Zhang, Xiaoqin Wang
Author Affiliations +
Proceedings Volume 10718, 14th International Workshop on Breast Imaging (IWBI 2018); 1071813 (2018) https://doi.org/10.1117/12.2317411
Event: The Fourteenth International Workshop on Breast Imaging, 2018, Atlanta, Georgia, United States
Abstract
Literatures have showed that deep learning models can detect a breast cancer with high diagnostic accuracy in the publicly available mammography datasets. The objective of this study is to examine whether the high performance (accuracy) of a deep learning model, trained by the public mammography dataset, can be transferred into the clinic practice by applying it to a new mammography dataset obtained in an academic breast center. An end-to-end CNN architecture was trained on DDSM dataset and transferred to INbreast dataset and the in-house collected dataset. The model achieved validation AUC of 0.82 on DDSM dataset and 0.93 on INbreast dataset. However, it only achieved 0.70 when applied to the in-house dataset. Reviewing the images revealed that the in-house dataset is more challenging to classify. The mean subtlety score for DDSM dataset is 3.64 and median is 4. For in-house dataset, the mean and median scores are 2.65 and 2, respectively. In addition, the in-house dataset has more co-existing benign abnormalities as more patients with benign biopsy or prior surgery return for mammography. These observations are in line with other institutes’ finding that the relative percentage of early stage cancer cases from mammography diagnosis has more than tripled since 2002. This indicates that currently available public open datasets may be inadequate to represent the mammography seen in today’s clinical practice. It is necessary to build an updated mammography database that contains sufficient pathological heterogeneity of breast cancer and coexisting benign abnormalities that reflect the cases seen in current practice.
© (2018) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Quan Chen, Jinze Liu, Kyle Luo, Xiaofei Zhang, and Xiaoqin Wang "Transfer deep learning mammography diagnostic model from public datasets to clinical practice: a comparison of model performance and mammography datasets", Proc. SPIE 10718, 14th International Workshop on Breast Imaging (IWBI 2018), 1071813 (6 July 2018); https://doi.org/10.1117/12.2317411
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Cited by 4 scholarly publications.
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KEYWORDS
Mammography

Data modeling

Breast cancer

Cancer

Performance modeling

Databases

Diagnostics

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