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Lymph-vascular space invasion prediction in cervical cancer: Exploring radiomics and deep learning multilevel features of tumor and peritumor tissue on multiparametric MRI

机译:子宫颈癌的淋巴血管空间浸润预测:在多参数MRI上探索肿瘤和周围组织的放射学和深度学习多层次特征

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Preoperative determination of the presence of LVSI plays an important role in guiding surgical planning. In this paper, multiparametric magnetic resonance imaging (MRI)-based radiomics and deep feature learning strategy was applied to both tumor and peritumor tissues for preoperative prediction of LVSI in early-stage cervical cancer. 111 training cohort patients (44 LVSI-positive and 67 LVSI-negative) and 56 validation cohort patients (23 LVSI-positive and 33 LVSI-negative) with T1CE and T2WI modalities were enrolled. Radiomics features were extracted from tumor tissues, and peri-tumor tissues with different radial dilation distances outside tumor. The VGG-19 was used to extract high-level deep features. Support Vector Machine (SVM) models were constructed based on the radiomic and deep features extracted from multiparametric MRI. Models performance was evaluated on the validation cohort. Features extracted from tumor tissue with 8 mm and 4 mm radial dilation distances outside tumor show best discriminative performance for T1CE and T-2 WI respectively. For the final model construction, five radiomics features and three deep learning features were selected. The final model showed the best prediction results, with an AUC of 0.842 (95% confidence interval [CI], 0.772-0.913) in the training cohort and 0.775 (95% CI, 0.637-0.912) in the validation cohort. The sensitivity and specificity were 0.773 and 0.776 in the training cohort and 0.739 and 0.667 in the validation cohort. Taking into consideration of the features of peritumor tissues can contribute to improving LVSI prediction performance. The radiomics and deep learning fusion strategy shows the potential in prediction of LVSI in early-stage cervical cancer. (C) 2020 Elsevier Ltd. All rights reserved.
机译:术前确定LVSI的存在在指导手术计划中起着重要作用。在本文中,基于多参数磁共振成像(MRI)的放射学和深度特征学习策略被应用于肿瘤和周围组织,用于术前预测早期宫颈癌的LVSI。纳入111名接受T1CE和T2WI方式训练的队列患者(44例LVSI阳性和67 LVSI阴性)和56例验证队列患者(23 LVSI阳性和33 LVSI阴性)。从肿瘤组织和肿瘤周围具有不同径向扩张距离的肿瘤周围组织中提取放射组学特征。 VGG-19用于提取高级深度特征。支持向量机(SVM)模型是基于从多参数MRI中提取的放射线和深度特征构建的。在验证队列中评估模型的性能。从肿瘤组织径向外侧扩张距离为8 mm和4 mm的肿瘤组织中提取的特征分别显示出对T1CE和T-2 WI的最佳区分性能。对于最终的模型构建,选择了五个放射​​性要素和三个深度学习要素。最终模型显示出最佳的预测结果,训练队列的AUC为0.842(95%置信区间[CI],0.772-0.913),而验证队列的AUC为0.775(95%CI,0.637-0.912)。在训练队列中,灵敏度和特异性分别为0.773和0.776,在验证队列中,灵敏度和特异性为0.739和0.667。考虑到周围组织的特征可以有助于改善LVSI预测性能。放射学和深度学习融合策略显示了在早期宫颈癌中预测LVSI的潜力。 (C)2020 Elsevier Ltd.保留所有权利。

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