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基于CT的Delta放射组学可预测接受新辅助免疫化疗和手术治疗的食管癌患者的病理完全缓解。

Delta-radiomics based on CT predicts pathologic complete response in ESCC treated with neoadjuvant immunochemotherapy and surgery.

作者信息

Li Kaiyuan, Li Yuetong, Wang Zhulin, Huang Chunyao, Sun Shaowu, Liu Xu, Fan Wenbo, Zhang Guoqing, Li Xiangnan

机构信息

Department of Thoracic Surgery, First Affiliated Hospital of Zhengzhou University, Zhengzhou, Henan, China.

Clinical Medical College, Henan University, Henan, Kaifeng, China.

出版信息

Front Oncol. 2023 May 12;13:1131883. doi: 10.3389/fonc.2023.1131883. eCollection 2023.

Abstract

BACKGROUND AND PURPOSE

Unnecessary surgery can be avoided, and more appropriate treatment plans can be developed for patients if the efficacy of neoadjuvant immunochemotherapy for esophageal cancer (EC) can be predicted before surgery. The purpose of this study was to evaluate the ability of machine learning models based on delta features of immunochemotherapy CT images to predict the efficacy of neoadjuvant immunochemotherapy in patients with esophageal squamous cell carcinoma (ESCC) compared with machine learning models based solely on postimmunochemotherapy CT images.

MATERIALS AND METHODS

A total of 95 patients were enrolled in our study and randomly divided into a training group (n = 66) and test group (n = 29). We extracted preimmunochemotherapy radiomics features from preimmunochemotherapy enhanced CT images in the preimmunochemotherapy group (pregroup) and postimmunochemotherapy radiomics features from postimmunochemotherapy enhanced CT images in the postimmunochemotherapy group (postgroup). We then subtracted the preimmunochemotherapy features from the postimmunochemotherapy features and obtained a series of new radiomics features that were included in the delta group. The reduction and screening of radiomics features were carried out by using the Mann-Whitney U test and LASSO regression. Five pairwise machine learning models were established, the performance of which was evaluated by receiver operating characteristic (ROC) curve and decision curve analyses.

RESULTS

The radiomics signature of the postgroup was composed of 6 radiomics features; that of the delta-group was composed of 8 radiomics features. The area under the ROC curve (AUC) of the machine learning model with the best efficacy was 0.824 (0.706-0.917) in the postgroup and 0.848 (0.765-0.917) in the delta group. The decision curve showed that our machine learning models had good predictive performance. The delta group performed better than the postgroup for each corresponding machine learning model.

CONCLUSION

We established machine learning models that have good predictive efficacy and can provide certain reference values for clinical treatment decision-making. Our machine learning models based on delta imaging features performed better than those based on single time-stage postimmunochemotherapy imaging features.

摘要

背景与目的

如果能在手术前预测食管癌新辅助免疫化疗的疗效,就可以避免不必要的手术,并为患者制定更合适的治疗方案。本研究的目的是评估基于免疫化疗CT图像的增量特征的机器学习模型与仅基于免疫化疗后CT图像的机器学习模型相比,预测食管鳞状细胞癌(ESCC)患者新辅助免疫化疗疗效的能力。

材料与方法

本研究共纳入95例患者,随机分为训练组(n = 66)和测试组(n = 29)。我们从免疫化疗前组(预组)的免疫化疗前增强CT图像中提取免疫化疗前的影像组学特征,并从免疫化疗后组(后组)的免疫化疗后增强CT图像中提取免疫化疗后的影像组学特征。然后,我们用免疫化疗后的特征减去免疫化疗前的特征,得到一系列新的影像组学特征,纳入增量组。采用曼-惠特尼U检验和LASSO回归进行影像组学特征的降维和筛选。建立了5个两两比较的机器学习模型,通过受试者工作特征(ROC)曲线和决策曲线分析评估其性能。

结果

后组的影像组学特征由6个影像组学特征组成;增量组的影像组学特征由8个影像组学特征组成。疗效最佳的机器学习模型在ROC曲线下面积(AUC)在术后组为0.824(0.706 - 0.917),在增量组为0.848(0.765 - 0.917)。决策曲线表明我们的机器学习模型具有良好的预测性能。对于每个相应的机器学习模型,增量组的表现优于后组。

结论

我们建立的机器学习模型具有良好的预测疗效,可为临床治疗决策提供一定的参考价值。我们基于增量成像特征的机器学习模型比基于免疫化疗后单时间阶段成像特征的模型表现更好。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2999/10213404/0ba609371c92/fonc-13-1131883-g001.jpg

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