Automated Computer-Assisted Medical Decision-Making System Based on Morphological Shape and Skin Thickness Analysis for Asymmetry Detection in Mammographic Images.
Rafael Bayareh MancillaLuis Alberto Medina-RamosAlfonso Toriz-VázquezYazmín Mariela Hernández-RodríguezOscar Eduardo Cigarroa-MayorgaPublished in: Diagnostics (Basel, Switzerland) (2023)
Breast cancer is a significant health concern for women, emphasizing the need for early detection. This research focuses on developing a computer system for asymmetry detection in mammographic images, employing two critical approaches: Dynamic Time Warping (DTW) for shape analysis and the Growing Seed Region (GSR) method for breast skin segmentation. The methodology involves processing mammograms in DICOM format. In the morphological study, a centroid-based mask is computed using extracted images from DICOM files. Distances between the centroid and the breast perimeter are then calculated to assess similarity through Dynamic Time Warping analysis. For skin thickness asymmetry identification, a seed is initially set on skin pixels and expanded based on intensity and depth similarities. The DTW analysis achieves an accuracy of 83%, correctly identifying 23 possible asymmetry cases out of 20 ground truth cases. The GRS method is validated using Average Symmetric Surface Distance and Relative Volumetric metrics, yielding similarities of 90.47% and 66.66%, respectively, for asymmetry cases compared to 182 ground truth segmented images, successfully identifying 35 patients with potential skin asymmetry. Additionally, a Graphical User Interface is designed to facilitate the insertion of DICOM files and provide visual representations of asymmetrical findings for validation and accessibility by physicians.
Keyphrases
- deep learning
- optical coherence tomography
- convolutional neural network
- soft tissue
- public health
- decision making
- primary care
- wound healing
- magnetic resonance imaging
- machine learning
- risk assessment
- human health
- polycystic ovary syndrome
- health information
- real time pcr
- breast cancer risk
- positive airway pressure