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自动分割对基于超声放射组学的早期宫颈癌患者术前淋巴结状态预测模型的影响。

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

机构信息

Department of Ultrasound imaging, 89657Wenzhou Medical University First Affiliated Hospital, Wenzhou, People's Republic of China.

Department of Radiotherapy Center, 89657Wenzhou Medical University First Affiliated Hospital, Wenzhou, People's Republic of China.

出版信息

Technol Cancer Res Treat. 2022 Jan-Dec;21:15330338221099396. doi: 10.1177/15330338221099396.

Abstract

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. 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. 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. The reliability and reproducibility of radiomics features, as well as the performance of radiomics models, were affected by manual segmentation and automatic segmentations.

摘要

本研究旨在探讨自动分割算法对术前预测早期宫颈癌患者淋巴结转移(LNM)状态的超声(US)放射组学模型性能的影响。收集了 148 例宫颈癌患者的 US 图像,由两位资深放射科医生进行手动勾画。构建了四个基于深度学习的自动分割模型,即 U-net、上下文编码器网络(CE-net)、Resnet 和注意 U-net,以自动分割肿瘤体积。从手动和自动分割的感兴趣区域(ROI)中提取放射组学特征,以预测这些宫颈癌患者术前的 LNM。评估了放射组学特征的可靠性和可重复性以及预测模型的性能。使用 Pyradiomics 从手动和自动分割的 ROI 中提取了 449 个放射组学特征。具有内类系数(ICC)>0.9 的特征均为 257 个(57.2%),分别来自手动和自动分割的轮廓。基于手动、注意 U-net、CE-net、Resnet 和 U-net 提取的放射组学特征的验证模型的 AUC 分别为 0.692、0.755、0.696、0.689 和 0.710。在 LNM 预测模型中,注意 U-net 表现最佳,训练和验证之间的差异最小。与基于手动勾画特征的模型相比,来自注意 U-net、CE-net、Resnet 和 U-net 的自动分割特征的模型的 AUC 分别提高了 9.11%、0.58%、-0.44%和 2.61%。放射组学特征的可靠性和可重复性以及放射组学模型的性能均受手动分割和自动分割的影响。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bafe/9082739/413e7dd4d58a/10.1177_15330338221099396-fig1.jpg

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