Graphical abstract of an advanced architecture for accurate mammogram segmentation. More information at https://github.com/uefcancer/Deepdensity

Graphical abstract of an advanced architecture for accurate mammogram segmentation. More information at https://github.com/uefcancer/Deepdensity. Image courtesy of 

UEF Cancer AI research group


December 11, 2023 — A new deep learning challenge has been launched by the UEF Cancer AI research team, led by senior researcher Hamid Behravan, PhD, and funded by Sitra , the Finnish Innovation Fund. The challenge aims to develop an architecture capable of automatically estimating the breast percentage density from mammograms. High breast tissue density is a significant risk factor for breast cancer.

Breast density refers to the proportion of dense tissue to fatty tissue in the breast. Women with dense breasts have a higher risk of breast cancer than women with fatty breasts. Women with very dense breasts are 4-5 times more likely to get breast cancer than women with fatty breasts.

Current computer-aided design tools for estimating breast density percentages in mammograms often have limitations, such as being restricted to specific mammogram views, struggling with complete delineation of the pectoral muscle, and performing poorly in cases of data variability. These tools also require an experienced radiologist to adjust the segmentation threshold for dense tissue within the breast area.

The challenge calls for the development of a new deep learning architecture that can overcome these limitations and automatically estimate the area-based breast percentage density from mammograms. The challenge welcomes a range of approaches, including both regression and segmentation methods.

Participants will be training their models on a dataset of 569 mammogram images and testing their performance on a separate set of 149 images. A source code for a baseline segmentation approach is available in the provided Github repository. Participants are encouraged to utilize and enhance this model for the challenge density estimation task.

By participating in this challenge, participants will be contributing to a solution that could potentially lead to earlier detection of breast cancer and prevention. They will also be applying their deep learning and image analysis skills to a real-world problem with significant public health implications.

The challenge is open for submissions until March 31, 2024. The winners will be announced on April 1, 2024. We extend an invitation to the top three teams on the Leaderboard to collaborate with us in writing a manuscript.

For more information: https://www.kaggle.com/competitions/breast-density-prediction.


Related Content

News | Breast Imaging

Nov. 17, 2025 — RadNet, Inc. and its wholly owned subsidiary, DeepHealth have announced results from the largest real ...

Time November 17, 2025
arrow
News | Radiology Business

Nov. 12, 2025 — Siemens has announced plans to deconsolidate its remaining stake in Siemens Healthineers (currently ...

Time November 13, 2025
arrow
News | Artificial Intelligence

Nov. 6, 2025 — Lunit, a provider of AI for cancer diagnostics and precision oncology, recently announced that Volpara ...

Time November 07, 2025
arrow
News | RSNA 2025

Nov. 3, 2025 — QT Imaging Holdings has announced that its chief medical officer, Elaine luanow, MD, will host a seminar ...

Time November 04, 2025
arrow
News | Breast Imaging

Oct. 28, 2025 — QT Imaging Holdings, Inc., a medical device company focused on radiation-free imaging technology, has ...

Time October 28, 2025
arrow
Feature | Breast Imaging

Despite decades of progress in breast imaging, one challenge continues to test even the most skilled radiologists ...

Time October 24, 2025
arrow
News | Breast Imaging

Oct. 15, 2025 — Leading into Breast Cancer Awareness Month, Fujifilm Healthcare Americas Corp. and Beekley Medical ...

Time October 15, 2025
arrow
News | RSNA 2025

Oct. 7, 2025 – Clairity Inc., a leader in AI-based breast cancer risk prediction, will make five scientific ...

Time October 07, 2025
arrow
News | Breast Imaging

Oct. 3, 2025 — Gnosis for Her, a mobile breast health initiative redefining comfort and access in women's breast imaging ...

Time October 06, 2025
arrow
News | Mammography | Mayo Clinic

Early detection is key to breast cancer survival. But nearly half of all women in the U.S. have dense breast tissue ...

Time October 03, 2025
arrow
Subscribe Now