Abstract

Simple SummaryComputer-aided segmentation and machine learning added values of clinical parameters and diffusion-weighted imaging radiomics for predicting nodal metastasis in endometrial cancer, with a diagnostic performance superior to criteria based on lymph node size or apparent diffusion coefficient.Precise risk stratification in lymphadenectomy is important for patients with endometrial cancer (EC), to balance the therapeutic benefit against the operation-related morbidity and mortality. We aimed to investigate added values of computer-aided segmentation and machine learning based on clinical parameters and diffusion-weighted imaging radiomics for predicting lymph node (LN) metastasis in EC. This prospective observational study included 236 women with EC (mean age ± standard deviation, 51.2 ± 11.6 years) who underwent magnetic resonance (MR) imaging before surgery during July 2010–July 2018, randomly split into training (n = 165) and test sets (n = 71). A decision-tree model was constructed based on mean apparent diffusion coefficient (ADC) value of the tumor (cutoff, 1.1 × 10−3 mm2/s), skewness of the relative ADC value (cutoff, 1.2), short-axis diameter of LN (cutoff, 1.7 mm) and skewness ADC value of the LN (cutoff, 7.2 × 10−2), as well as tumor grade (1 vs. 2 and 3), and clinical tumor size (cutoff, 20 mm). The sensitivity and specificity of the model were 94% and 80% for the training set and 86%, 78% for the independent testing set, respectively. The areas under the receiver operating characteristics curve (AUCs) of the decision-tree was 0.85—significantly higher than the mean ADC model (AUC = 0.54) and LN short-axis diameter criteria (AUC = 0.62) (both p < 0.0001). We concluded that a combination of clinical and MR radiomics generates a prediction model for LN metastasis in EC, with diagnostic performance surpassing the conventional ADC and size criteria.

Highlights

  • Endometrial cancer (EC) is one of the most common gynecological malignancies worldwide

  • The aim of this study was to investigate added values of computer-aided segmentation and machine learning based on clinical parameters and diffusion-weighted imaging radiomics for predicting nodal metastasis in endometrial cancer

  • The sensitivity of the RadSignature for detecting lymph node (LN) metastasis (100%) was significantly higher than that of the apparent diffusion coefficient (ADC) (44%, p = 0.0001) or SA model (76%, p = 0.0313)

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Summary

Introduction

Endometrial cancer (EC) is one of the most common gynecological malignancies worldwide. Early-stage EC has favorable outcomes [2]; the prognosis for patients with lymph node (LN) involvement is considerably poorer. A lymphadenectomy is valuable in defining nodal status and tailoring adjuvant therapy [2]. Routine lymphadenectomy in patients with EC remains controversial [3,4] because of the potential postoperative morbidity and the technical difficulty of the procedure in obese patients. Emerging evidence suggests the survival benefit of systematic lymphadenectomy in patients with EC with intermediate or high risk for nodal metastasis [5]. This evidence highlights the importance of precise risk stratification in lymphadenectomy to balance the therapeutic benefit against perioperative morbidity and mortality

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