Toward Intraoperative Margin Assessment Using a Deep Learning-Based Approach for Automatic Tumor Segmentation in Breast Lumpectomy Ultrasound Images.
Dinusha VeluponnarLisanne L de BoerFreija GeldofLynn-Jade S JongMarcos Da Silva GuimaraesMarie-Jeanne T F D Vrancken PeetersFrederieke H van DuijnhovenTheo J M RuersBehdad DashtbozorgPublished in: Cancers (2023)
There is an unmet clinical need for an accurate, rapid and reliable tool for margin assessment during breast-conserving surgeries. Ultrasound offers the potential for a rapid, reproducible, and non-invasive method to assess margins. However, it is challenged by certain drawbacks, including a low signal-to-noise ratio, artifacts, and the need for experience with the acquirement and interpretation of images. A possible solution might be computer-aided ultrasound evaluation. In this study, we have developed new ensemble approaches for automated breast tumor segmentation. The ensemble approaches to predict positive and close margins (distance from tumor to margin ≤ 2.0 mm) in the ultrasound images were based on 8 pre-trained deep neural networks. The best optimum ensemble approach for segmentation attained a median Dice score of 0.88 on our data set. Furthermore, utilizing the segmentation results we were able to achieve a sensitivity of 96% and a specificity of 76% for predicting a close margin when compared to histology results. The promising results demonstrate the capability of AI-based ultrasound imaging as an intraoperative surgical margin assessment tool during breast-conserving surgery.
Keyphrases
- deep learning
- convolutional neural network
- artificial intelligence
- neural network
- magnetic resonance imaging
- machine learning
- big data
- contrast enhanced ultrasound
- patients undergoing
- ultrasound guided
- neoadjuvant chemotherapy
- squamous cell carcinoma
- minimally invasive
- electronic health record
- air pollution
- climate change
- loop mediated isothermal amplification
- early breast cancer
- radiation therapy
- lymph node
- human health
- sensitive detection
- surgical site infection
- contrast enhanced