Litcius/Paper detail

Automated segmentation of endometrial cancer on MR images using deep learning

Erlend Hodneland, Julie A. Dybvik, Kari S. Wagner‐Larsen, Veronika Šoltészová, Antonella Z. Munthe-Kaas, Kristine E. Fasmer, Camilla Krakstad, Arvid Lundervold, Alexander Selvikvåg Lundervold, Øyvind Salvesen, Bradley J. Erickson, Ingfrid S. Haldorsen

2021Scientific Reports67 citationsDOIOpen Access PDF

Abstract

Preoperative MR imaging in endometrial cancer patients provides valuable information on local tumor extent, which routinely guides choice of surgical procedure and adjuvant therapy. Furthermore, whole-volume tumor analyses of MR images may provide radiomic tumor signatures potentially relevant for better individualization and optimization of treatment. We apply a convolutional neural network for automatic tumor segmentation in endometrial cancer patients, enabling automated extraction of tumor texture parameters and tumor volume. The network was trained, validated and tested on a cohort of 139 endometrial cancer patients based on preoperative pelvic imaging. The algorithm was able to retrieve tumor volumes comparable to human expert level (likelihood-ratio test, [Formula: see text]). The network was also able to provide a set of segmentation masks with human agreement not different from inter-rater agreement of human experts (Wilcoxon signed rank test, [Formula: see text], [Formula: see text], and [Formula: see text]). An automatic tool for tumor segmentation in endometrial cancer patients enables automated extraction of tumor volume and whole-volume tumor texture features. This approach represents a promising method for automatic radiomic tumor profiling with potential relevance for better prognostication and individualization of therapeutic strategy in endometrial cancer.

Topics & Concepts

Artificial intelligenceAlgorithmComputer scienceRadiomics and Machine Learning in Medical ImagingEndometrial and Cervical Cancer TreatmentsSarcoma Diagnosis and Treatment