Deep learning-based automatic pipeline system for predicting lateral cervical lymph node metastasis in patients with papillary thyroid carcinoma using computed tomography: A multi-center study.

IF 7 2区 医学 Q1 ONCOLOGY
Pengyi Yu, Cai Wang, Haicheng Zhang, Guibin Zheng, Chuanliang Jia, Zhonglu Liu, Qi Wang, Yakui Mu, Xin Yang, Ning Mao, Xicheng Song
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引用次数: 0

Abstract

Objective: The assessment of lateral lymph node metastasis (LLNM) in patients with papillary thyroid carcinoma (PTC) holds great significance. This study aims to develop and evaluate a deep learning-based automatic pipeline system (DLAPS) for diagnosing LLNM in PTC using computed tomography (CT).

Methods: A total of 1,266 lateral lymph nodes (LLNs) from 519 PTC patients who underwent CT examinations from January 2019 to November 2022 were included and divided into training and validation set, internal test set, pooled external test set, and prospective test set. The DLAPS consists of an auto-segmentation network based on RefineNet model and a classification network based on ensemble model (ResNet, Xception, and DenseNet). The performance of the DLAPS was compared with that of manually segmented DL models, the clinical model, and Node Reporting and Data System (Node-RADS). The improvement of radiologists' diagnostic performance under the DLAPS-assisted strategy was explored. In addition, bulk RNA-sequencing was conducted based on 12 LLNs to reveal the underlying biological basis of the DLAPS.

Results: The DLAPS yielded good performance with area under the receiver operating characteristic curve (AUC) of 0.872, 0.910, and 0.822 in the internal, pooled external, and prospective test sets, respectively. The DLAPS significantly outperformed clinical models (AUC 0.731, P<0.001) and Node-RADS (AUC 0.602, P<0.001) in the internal test set. Moreover, the performance of the DLAPS was comparable to that of the manually segmented deep learning (DL) model with AUCs ranging 0.814-0.901 in three test sets. Furthermore, the DLAPS-assisted strategy improved the performance of radiologists and enhanced inter-observer consistency. In clinical situations, the rate of unnecessary LLN dissection decreased from 33.33% to 7.32%. Furthermore, the DLAPS was associated with the cell-cell conjunction in the microenvironment.

Conclusions: Using CT images from PTC patients, the DLAPS could effectively segment and classify LLNs non-invasively, and this system had a good generalization ability and clinical applicability.

使用计算机断层扫描预测甲状腺乳头状癌患者颈侧淋巴结转移的基于深度学习的自动流水线系统:一项多中心研究。
目的评估甲状腺乳头状癌(PTC)患者的侧淋巴结转移(LLNM)具有重要意义。本研究旨在开发和评估基于深度学习的自动管道系统(DLAPS),该系统可使用计算机断层扫描(CT)诊断 PTC 中的 LLNM:共纳入2019年1月至2022年11月期间接受CT检查的519例PTC患者的1266个侧淋巴结(LLN),并将其分为训练集和验证集、内部测试集、汇集外部测试集和前瞻性测试集。DLAPS 由基于 RefineNet 模型的自动分割网络和基于集合模型(ResNet、Xception 和 DenseNet)的分类网络组成。DLAPS 的性能与人工分割的 DL 模型、临床模型和节点报告与数据系统(Node-RADS)的性能进行了比较。探讨了在 DLAPS 辅助策略下放射科医生诊断性能的提高情况。此外,还对 12 个 LLN 进行了大量 RNA 测序,以揭示 DLAPS 的生物学基础:结果:DLAPS性能良好,在内部测试集、外部集合测试集和前瞻性测试集中的接收者操作特征曲线下面积(AUC)分别为0.872、0.910和0.822。DLAPS 的表现明显优于临床模型(AUC 0.731,PConclusions:通过使用 PTC 患者的 CT 图像,DLAPS 可以有效地对 LLN 进行无创分割和分类,该系统具有良好的泛化能力和临床适用性。
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来源期刊
自引率
9.80%
发文量
1726
审稿时长
4.5 months
期刊介绍: Chinese Journal of Cancer Research (CJCR; Print ISSN: 1000-9604; Online ISSN:1993-0631) is published by AME Publishing Company in association with Chinese Anti-Cancer Association.It was launched in March 1995 as a quarterly publication and is now published bi-monthly since February 2013. CJCR is published bi-monthly in English, and is an international journal devoted to the life sciences and medical sciences. It publishes peer-reviewed original articles of basic investigations and clinical observations, reviews and brief communications providing a forum for the recent experimental and clinical advances in cancer research. This journal is indexed in Science Citation Index Expanded (SCIE), PubMed/PubMed Central (PMC), Scopus, SciSearch, Chemistry Abstracts (CA), the Excerpta Medica/EMBASE, Chinainfo, CNKI, CSCI, etc.
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