The Effects of Automatic Segmentations on Preoperative Lymph Node Status Prediction Models With Ultrasound Radiomics for Patients With Early Stage Cervical Cancer

Author:

Teng Yinyan1,Ai Yao2,Liang Tao2,Yu Bing2,Jin Juebin3,Xie Congying24,Jin Xiance25ORCID

Affiliation:

1. Department of Ultrasound imaging, Wenzhou Medical University First Affiliated Hospital, Wenzhou, People’s Republic of China

2. Department of Radiotherapy Center, Wenzhou Medical University First Affiliated Hospital, Wenzhou, People’s Republic of China

3. Department of Medical Engineering, Wenzhou Medical University First Affiliated Hospital, Wenzhou, People’s Republic of China

4. Department of Radiation and Medical Oncology, Wenzhou Medical University Second Affiliated Hospital, Wenzhou, People’s Republic of China

5. School of Basic Medical Science, Wenzhou Medical University, Wenzhou, People’s Republic of China

Abstract

Introduction: The purpose of this study is to investigate the effects of automatic segmentation algorithms on the performance of ultrasound (US) radiomics models in predicting the status of lymph node metastasis (LNM) for patients with early stage cervical cancer preoperatively. Methods: US images of 148 cervical cancer patients were collected and manually contoured by two senior radiologists. The four deep learning-based automatic segmentation models, namely U-net, context encoder network (CE-net), Resnet, and attention U-net were constructed to segment the tumor volumes automatically. Radiomics features were extracted and selected from manual and automatically segmented regions of interest (ROIs) to predict the LNM of these cervical cancer patients preoperatively. The reliability and reproducibility of radiomics features and the performances of prediction models were evaluated. Results: A total of 449 radiomics features were extracted from manual and automatic segmented ROIs with Pyradiomics. Features with an intraclass coefficient (ICC) > 0.9 were all 257 (57.2%) from manual and automatic segmented contours. The area under the curve (AUCs) of validation models with radiomics features extracted from manual, attention U-net, CE-net, Resnet, and U-net were 0.692, 0.755, 0.696, 0.689, and 0.710, respectively. Attention U-net showed best performance in the LNM prediction model with a lowest discrepancy between training and validation. The AUCs of models with automatic segmentation features from attention U-net, CE-net, Resnet, and U-net were 9.11%, 0.58%, –0.44%, and 2.61% higher than AUC of model with manual contoured features, respectively. Conclusion: The reliability and reproducibility of radiomics features, as well as the performance of radiomics models, were affected by manual segmentation and automatic segmentations.

Funder

National Natural Science Foundation of China

Wenzhou Municipal Science and Technology Bureau

Zhejiang Engineering Research Center of Intelligent Medicine

Publisher

SAGE Publications

Subject

Cancer Research,Oncology

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