Deep Learning-Based Automated Segmentation of Uterine Myomas
Tausifa Jan Saleem, Mohammad Yaqub

TL;DR
This paper presents a deep learning approach for automated segmentation of uterine fibroids in MRI scans, utilizing a public dataset to establish a standardized baseline for future research.
Contribution
It introduces a deep learning-based segmentation method evaluated on a publicly available dataset, promoting reproducibility and benchmarking in uterine fibroid imaging.
Findings
Achieved promising segmentation accuracy on UMD dataset
Provided a baseline for future deep learning research in uterine fibroid segmentation
Facilitated standardized evaluation for automated MRI analysis
Abstract
Uterine fibroids (myomas) are the most common benign tumors of the female reproductive system, particularly among women of childbearing age. With a prevalence exceeding 70%, they pose a significant burden on female reproductive health. Clinical symptoms such as abnormal uterine bleeding, infertility, pelvic pain, and pressure-related discomfort play a crucial role in guiding treatment decisions, which are largely influenced by the size, number, and anatomical location of the fibroids. Magnetic Resonance Imaging (MRI) is a non-invasive and highly accurate imaging modality commonly used by clinicians for the diagnosis of uterine fibroids. Segmenting uterine fibroids requires a precise assessment of both the uterus and fibroids on MRI scans, including measurements of volume, shape, and spatial location. However, this process is labor intensive and time consuming and subjected to…
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