A CT-based deep learning for segmenting tumors and predicting microsatellite instability in patients with colorectal cancers: a multicenter cohort study.

IF 9.7 1区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Weicui Chen, Kaiyi Zheng, Wenjing Yuan, Ziqi Jia, Yuankui Wu, Xiaohui Duan, Wei Yang, Zhibo Wen, Liming Zhong, Xian Liu
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引用次数: 0

Abstract

Purpose: To develop and validate deep learning (DL) models using preoperative contrast-enhanced CT images for tumor auto-segmentation and microsatellite instability (MSI) prediction in colorectal cancer (CRC).

Materials and methods: Patients with CRC who underwent surgery or biopsy between January 2018 and April 2023 were retrospectively enrolled. Mismatch repair protein expression was determined via immunohistochemistry or fluorescence multiplex polymerase chain reaction-capillary electrophoresis. Manually delineated tumor contours using arterial and venous phase CT images by three abdominal radiologists are served as ground truth. Tumor auto-segmentation used nnU-Net. MSI prediction employed ViT or convolutional neural networks models, trained and validated with arterial and venous phase images (image model) or combined clinical-pathological factors (combined model). The segmentation model was evaluated using patch coverage ratio, Dice coefficient, recall, precision, and F1-score. The predictive models' efficacy was assessed using areas under the curves and decision curve analysis.

Results: Overall, 2180 patients (median age: 61 years ± 17 [SD]; 1285 males) were divided into training (n = 1159), validation (n = 289), and independent external test (n = 732) groups. High-level MSI status was present in 435 patients (20%). In the external test set, the segmentation model performed well in the arterial phase, with patch coverage ratio, Dice coefficient, recall, precision, and F1-score values of 0.87, 0.71, 0.72, 0.74, and 0.71, respectively. For MSI prediction, the combined models outperformed the clinical model (AUC = 0.83 and 0.82 vs 0.67, p < 0.001) and two image models (AUC = 0.75 and 0.77, p < 0.001). Decision curve analysis confirmed the higher net benefit of the combined model compared to the other models across probability thresholds ranging from 0.1 to 0.45.

Conclusion: DL enhances tumor segmentation efficiency and, when integrated with contrast-enhanced CT and clinicopathological factors, exhibits good diagnostic performance in predicting MSI in CRC.

基于 CT 的深度学习分割肿瘤并预测结直肠癌患者的微卫星不稳定性:一项多中心队列研究。
目的:利用术前对比增强 CT 图像开发和验证深度学习(DL)模型,用于结直肠癌(CRC)的肿瘤自动分割和微卫星不稳定性(MSI)预测:回顾性纳入2018年1月至2023年4月期间接受手术或活检的CRC患者。通过免疫组化或荧光多重聚合酶链反应-毛细管电泳测定错配修复蛋白的表达。三位腹部放射科医生使用动脉和静脉相 CT 图像手动绘制肿瘤轮廓,作为基本真相。使用 nnU-Net 进行肿瘤自动分割。MSI 预测采用 ViT 或卷积神经网络模型,并通过动脉和静脉相位图像(图像模型)或临床病理综合因素(综合模型)进行训练和验证。使用斑块覆盖率、Dice系数、召回率、精确度和F1分数对分割模型进行评估。预测模型的有效性通过曲线下面积和决策曲线分析进行评估:总计 2180 名患者(中位年龄:61 岁 ± 17 [SD];1285 名男性)被分为训练组(n = 1159)、验证组(n = 289)和独立外部测试组(n = 732)。435 名患者(20%)存在高水平 MSI 状态。在外部测试集中,分割模型在动脉阶段表现良好,斑块覆盖率、Dice系数、召回率、精确度和F1-score值分别为0.87、0.71、0.72、0.74和0.71。在 MSI 预测方面,组合模型的表现优于临床模型(AUC = 0.83 和 0.82 vs 0.67,p 结论:DL 增强了肿瘤分割的效率:DL提高了肿瘤分割效率,与对比增强CT和临床病理因素相结合,在预测CRC的MSI方面表现出良好的诊断性能。
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来源期刊
Radiologia Medica
Radiologia Medica 医学-核医学
CiteScore
14.10
自引率
7.90%
发文量
133
审稿时长
4-8 weeks
期刊介绍: Felice Perussia founded La radiologia medica in 1914. It is a peer-reviewed journal and serves as the official journal of the Italian Society of Medical and Interventional Radiology (SIRM). The primary purpose of the journal is to disseminate information related to Radiology, especially advancements in diagnostic imaging and related disciplines. La radiologia medica welcomes original research on both fundamental and clinical aspects of modern radiology, with a particular focus on diagnostic and interventional imaging techniques. It also covers topics such as radiotherapy, nuclear medicine, radiobiology, health physics, and artificial intelligence in the context of clinical implications. The journal includes various types of contributions such as original articles, review articles, editorials, short reports, and letters to the editor. With an esteemed Editorial Board and a selection of insightful reports, the journal is an indispensable resource for radiologists and professionals in related fields. Ultimately, La radiologia medica aims to serve as a platform for international collaboration and knowledge sharing within the radiological community.
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