晚期胃癌:新辅助化疗后淋巴转移的 CT 放射线组学预测

Jia Sun, Zhilong Wang, Haitao Zhu, Qi Yang, Yingshi Sun
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引用次数: 0

摘要

本研究旨在利用基线和再分期计算机断层扫描(CT)创建和评估用于预测晚期胃癌(AGC)新辅助治疗后淋巴结转移的机器学习模型。在这项回顾性分析中,我们评估了来自两家机构的 158 名切除胃癌患者的 CT 图像和病理数据。经组织学证实患有胃癌的患者均符合纳入条件。他们接受了新辅助化疗,至少切除了 15 个淋巴结。所有患者都接受了基线和术前腹部 CT 检查,并有完整的临床病理报告。他们被分为两组:(a) 主队列(125 人)用于创建模型,(b) 测试队列(33 人)用于评估模型预测淋巴结转移的能力。放射组学模型对淋巴结转移的诊断能力与放射科医生传统的 CT 形态学诊断进行了比较。基于基线和术前 CT 图像的放射组学模型在训练组(AUC 0.846)和测试组(AUC 0.843)都取得了令人鼓舞的结果。在训练组中,灵敏度和特异性分别为 81.3% 和 77.8%,而在测试组中,灵敏度和特异性分别为 84% 和 75%。放射科医生的诊断敏感性和特异性分别为 70% 和 42.2%(使用基线 CT)以及 46.3% 和 62.2%(使用术前 CT)。特别是在诊断 N0 病例(无淋巴结转移)方面,放射组学模型的特异性高于传统 CT。与传统的CT成像相比,基于CT的放射组学模型能更准确地评估新辅助化疗后AGC患者的淋巴结转移情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Advanced Gastric Cancer: CT Radiomics Prediction of Lymph Modes Metastasis After Neoadjuvant Chemotherapy.

Advanced Gastric Cancer: CT Radiomics Prediction of Lymph Modes Metastasis After Neoadjuvant Chemotherapy.

This study aims to create and assess machine learning models for predicting lymph node metastases following neoadjuvant treatment in advanced gastric cancer (AGC) using baseline and restaging computed tomography (CT). We evaluated CT images and pathological data from 158 patients with resected stomach cancer from two institutions in this retrospective analysis. Patients were eligible for inclusion if they had histologically proven gastric cancer. They had received neoadjuvant chemotherapy, with at least 15 lymph nodes removed. All patients received baseline and preoperative abdominal CT and had complete clinicopathological reports. They were divided into two cohorts: (a) the primary cohort (n = 125) for model creation and (b) the testing cohort (n = 33) for evaluating models' capacity to predict the existence of lymph node metastases. The diagnostic ability of the radiomics-model for lymph node metastasis was compared to traditional CT morphological diagnosis by radiologist. The radiomics model based on the baseline and preoperative CT images produced encouraging results in the training group (AUC 0.846) and testing cohort (AUC 0.843). In the training cohort, the sensitivity and specificity were 81.3% and 77.8%, respectively, whereas in the testing cohort, they were 84% and 75%. The diagnostic sensitivity and specificity of the radiologist were 70% and 42.2% (using baseline CT) and 46.3% and 62.2% (using preoperative CT). In particular, the specificity of radiomics model was higher than that of conventional CT in diagnosing N0 cases (no lymph node metastasis). The CT-based radiomics model could assess lymph node metastasis more accurately than traditional CT imaging in AGC patients following neoadjuvant chemotherapy.

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