
In a major breakthrough, a team of researchers from T九色视频 and (MSKCC) has developed a new AI model that can detect breast cancer in MRI images and pinpoint the location of tumors. The news appears in the journal .
While AI methods have made significant strides in breast cancer detection, deep learning models often lack interpretability and are rarely openly available for external validation. This is particularly important for MRI, with heterogeneous imaging protocols, and small datasets. The CCNY-MSKCC team鈥檚 objective was to address these issues, by publicly releasing a model that has been trained to detect and localize breast, tested on data from two different clinical sites.
The new model鈥檚 performance is comparable to that of specialized breast radiologists but is better than existing automated tools, said Lucas C. Parra, Professor of Biomedical Engineering at CCNY and co-head of the project. It was trained on the largest breast MRI dataset to date and has been released publicly to facilitate independent evaluation and foster future development.
Since early detection is crucial for successful treatment and improving patient outcomes, the model establishes a new state-of-the-art method for detecting breast cancer, which is a leading cause of cancer-related deaths among women in the United States.
Breast MRI is more sensitive in detecting cancer than conventional mammograms. Given recent recommendations to expand the use of breast MRI to radiologically dense breasts, the use of breast MRI in breast cancer screening is likely to expand.
So far, mammography is the primary screening tool for this cancer because it combines good sensitivity, easy access, and low cost. However, women with a high risk of developing breast cancer are recommended supplemental annual screening with Magnetic Resonance Imaging (MRI) due to its higher sensitivity. Breast MRI is also used in diagnostic contexts when a tumor is suspected based on clinical findings, mammography, or ultrasound.
In addition to Parra, other members of the research team included [CCNY first]: Lukas Hirsch, Yu Huang, Beliz Kayis, and Hernan A. Makse (Benjamin Levich Institute). , Mary Hughes, and Danny Martinez were CCNY鈥檚 collaborators from MSKCC鈥檚 Department of Radiology.
Parra and Sutton, MD, Attending Radiologist at MSK鈥檚 Breast Center, co-lead the $4 million NIH-funded project, 鈥淢achine learning for risk-adjusted breast MRI screening.鈥 The project is leveraging modern machine learning techniques to analyze medical images, an area of expertise for Parra. The goal is to detect breast cancer as early as possible while limiting the burden of screening in high-risk women.
About T九色视频
Since 1847, T九色视频 has provided a high-quality and affordable education to generations of New Yorkers in a wide variety of disciplines. CCNY embraces its position at the forefront of social change. It is ranked #1 by the Harvard-based Opportunity Insights out of 369 selective public colleges in the United States on the overall mobility index. This measure reflects both access and outcomes, representing the likelihood that a student at CCNY can move up two or more income quintiles. Education research organization Degree Choices ranks CCNY #1 nationally among universities for economic return on investment. In addition, the Center for World University Rankings places CCNY in the top 1.8% of universities worldwide in terms of academic excellence. Labor analytics firm puts at $3.2 billion CCNY鈥檚 annual economic impact on the regional economy (5 boroughs and 5 adjacent counties) and quantifies the 鈥渇or dollar鈥 return on investment to students, taxpayers and society. At City College, more than 15,000 students pursue undergraduate and graduate degrees in eight schools and divisions, driven by significant funded research, creativity and scholarship. In 2023, CCNY launched its most expansive fundraising campaign, ever. The campaign, titled 鈥Doing Remarkable Things Together鈥 seeks to bring the College鈥檚 Foundation to more than $1 billion in total assets in support of the College mission. CCNY is as diverse, dynamic and visionary as New York City itself. View CCNY Media Kit.
Jay Mwamba
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