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基于残差网络-视觉Transformer的磁共振成像-内镜融合模型预测局部晚期直肠癌新辅助放化疗的治疗反应:一项多中心研究

ResNet-Vision Transformer based MRI-endoscopy fusion model for predicting treatment response to neoadjuvant chemoradiotherapy in locally advanced rectal cancer: A multicenter study.

作者信息

Zhang Junhao, Liu Ruiqing, Hao Di, Tian Guangye, Zhang Shiwei, Zhang Sen, Zang Yitong, Pang Kai, Hu Xuhua, Ren Keyu, Cui Mingjuan, Liu Shuhao, Wu Jinhui, Wang Quan, Feng Bo, Tong Weidong, Yang Yingchi, Wang Guiying, Lu Yun

机构信息

Department of Gastrointestinal Surgery, The Affiliated Hospital of Qingdao University, Qingdao, Shandong 266000, China.

School of Control Science and Engineering, Shandong University, Jinan, Shandong 250061, China.

出版信息

Chin Med J (Engl). 2024 Dec 10. doi: 10.1097/CM9.0000000000003391.

Abstract

BACKGROUND

Neoadjuvant chemoradiotherapy followed by radical surgery has been a common practice for patients with locally advanced rectal cancer, but the response rate varies among patients. This study aimed to develop a ResNet-Vision Transformer based magnetic resonance imaging (MRI)-endoscopy fusion model to precisely predict treatment response and provide personalized treatment.

METHODS

In this multicenter study, 366 eligible patients who had undergone neoadjuvant chemoradiotherapy followed by radical surgery at eight Chinese tertiary hospitals between January 2017 and June 2024 were recruited, with 2928 pretreatment colonic endoscopic images and 366 pelvic MRI images. An MRI-endoscopy fusion model was constructed based on the ResNet backbone and Transformer network using pretreatment MRI and endoscopic images. Treatment response was defined as good response or non-good response based on the tumor regression grade. The Delong test and the Hanley-McNeil test were utilized to compare prediction performance among different models and different subgroups, respectively. The predictive performance of the MRI-endoscopy fusion model was comprehensively validated in the test sets and was further compared to that of the single-modal MRI model and single-modal endoscopy model.

RESULTS

The MRI-endoscopy fusion model demonstrated favorable prediction performance. In the internal validation set, the area under the curve (AUC) and accuracy were 0.852 (95% confidence interval [CI]: 0.744-0.940) and 0.737 (95% CI: 0.712-0.844), respectively. Moreover, the AUC and accuracy reached 0.769 (95% CI: 0.678-0.861) and 0.729 (95% CI: 0.628-0.821), respectively, in the external test set. In addition, the MRI-endoscopy fusion model outperformed the single-modal MRI model (AUC: 0.692 [95% CI: 0.609-0.783], accuracy: 0.659 [95% CI: 0.565-0.775]) and the single-modal endoscopy model (AUC: 0.720 [95% CI: 0.617-0.823], accuracy: 0.713 [95% CI: 0.612-0.809]) in the external test set.

CONCLUSION

The MRI-endoscopy fusion model based on ResNet-Vision Transformer achieved favorable performance in predicting treatment response to neoadjuvant chemoradiotherapy and holds tremendous potential for enabling personalized treatment regimens for locally advanced rectal cancer patients.

摘要

背景

新辅助放化疗后行根治性手术一直是局部晚期直肠癌患者的常见治疗方式,但患者的反应率各不相同。本研究旨在开发一种基于ResNet-视觉Transformer的磁共振成像(MRI)-内镜融合模型,以精确预测治疗反应并提供个性化治疗。

方法

在这项多中心研究中,招募了2017年1月至2024年6月期间在中国八家三级医院接受新辅助放化疗后行根治性手术的366例符合条件的患者,收集了2928张治疗前结肠内镜图像和366张盆腔MRI图像。使用治疗前的MRI和内镜图像,基于ResNet主干和Transformer网络构建了一个MRI-内镜融合模型。根据肿瘤退缩分级将治疗反应定义为良好反应或非良好反应。分别使用德龙检验和汉利-麦克尼尔检验来比较不同模型和不同亚组之间的预测性能。在测试集中对MRI-内镜融合模型的预测性能进行了全面验证,并进一步与单模态MRI模型和单模态内镜模型的预测性能进行了比较。

结果

MRI-内镜融合模型表现出良好的预测性能。在内部验证集中,曲线下面积(AUC)和准确率分别为0.852(95%置信区间[CI]:0.744-0.940)和0.737(95%CI:0.712-0.844)。此外,在外部测试集中,AUC和准确率分别达到0.769(95%CI:0.678-0.861)和0.729(95%CI:0.628-0.821)。此外,在外部测试集中,MRI-内镜融合模型的表现优于单模态MRI模型(AUC:0.692[95%CI:0.609-0.783],准确率:0.659[95%CI:0.565-0.775])和单模态内镜模型(AUC:0.72(95%CI:0.617-0.823),准确率:0.713[95%CI:0.612-0.809])。

结论

基于ResNet-视觉Transformer的MRI-内镜融合模型在预测新辅助放化疗的治疗反应方面表现良好,在为局部晚期直肠癌患者制定个性化治疗方案方面具有巨大潜力。

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