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借助残差卷积神经网络(ResNet)改善接受贝伐单抗化疗的不可切除肝转移结直肠癌患者生存情况的预测。

Improving the prediction of patient survival with the aid of residual convolutional neural network (ResNet) in colorectal cancer with unresectable liver metastases treated with bevacizumab-based chemotherapy.

作者信息

Chiu Sung-Hua, Li Hsiao-Chi, Chang Wei-Chou, Wu Chao-Cheng, Lin Hsuan-Hwai, Lo Cheng-Hsiang, Chang Ping-Ying

机构信息

Department of Electrical Engineering, National Taipei University of Technology, Taipei, Taiwan.

Department of Radiology, Tri-Service General Hospital, National Defense Medical Center, Taipei, Taiwan.

出版信息

Cancer Imaging. 2024 Dec 18;24(1):165. doi: 10.1186/s40644-024-00809-1.

Abstract

BACKGROUND

To verify overall survival predictions made with residual convolutional neural network-determined morphological response (ResNet-MR) in patients with unresectable synchronous liver-only metastatic colorectal cancer (mCRC) treated with bevacizumab-based chemotherapy (BBC).

METHODS

A retrospective review of liver-only mCRC patients treated with BBC from December 2011 to Apr 2021 was performed. Patients who had metachronous liver metastases or received locoregional treatment before the initiation of BBC were excluded. The percentage of downstaging to curative treatment and overall survival (OS) were recorded. Two abdominal radiologists evaluated portal venous phase CT images based on the morphological criteria and divided the images into Groups 1, 2, and 3. These images were used to establish the radiologists-determined morphological response (RD-MR), which classified patients into responders and non-responders based on the morphological change 3 months after the initiation of BBC. Then, the Group 1 and 3 images classified by the radiologists were input into ResNet as the training dataset. The trained ResNet then redivided the Group 2 images into Groups 1, 2 and 3. The ResNet-MR was determined on the basis of these redivided images and the initial Group 1 and 3 images classified by the radiologists.

RESULTS

Eighty-four patients were included in this study (53 males and 31 females, with a median age of 60.0 years). The follow-up time ranged from 10 to 86 months. A total of 407 CT images were input into ResNet as the training dataset. Both RD-MR and ResNet-MR correlated with OS (p value = 0.0167 and 0.0225, respectively). Regarding discriminatory ability for mortality, ResNet-MR had higher area under curve than RD-MR at both 1 year and 2 years and showed a significant difference in discriminatory ability (p-value = 0.0321) at 2 years. RD-MR classified 28 patients (33.3%) as responders, and ResNet-MR classified an additional 16 patients (19.0%) as responders; these 16 patients had longer OS than the remaining non-responders in the RD-MR group (27.49 versus 21.20 months, p value = 0.043) and had a higher percentage of downstaging (37.5% versus 17.5%, p value = 0.1610).

CONCLUSIONS

In CRC patients with liver metastases treated with BBC, prediction of survival can be improved with the aid of ResNet, enabling optimized individualized treatment.

摘要

背景

验证基于贝伐单抗的化疗(BBC)治疗的不可切除的仅肝转移结直肠癌(mCRC)患者中,利用残余卷积神经网络确定的形态学反应(ResNet-MR)进行的总生存预测。

方法

对2011年12月至2021年4月接受BBC治疗的仅肝转移mCRC患者进行回顾性研究。排除有异时性肝转移或在开始BBC治疗前接受过局部区域治疗的患者。记录降期至根治性治疗的百分比和总生存(OS)。两名腹部放射科医生根据形态学标准评估门静脉期CT图像,并将图像分为1、2和3组。这些图像用于建立放射科医生确定的形态学反应(RD-MR),根据BBC开始后3个月的形态学变化将患者分为反应者和非反应者。然后,将放射科医生分类的1组和3组图像作为训练数据集输入ResNet。经过训练的ResNet随后将2组图像重新分为1、2和3组。ResNet-MR基于这些重新划分的图像以及放射科医生最初分类的1组和3组图像来确定。

结果

本研究纳入84例患者(53例男性和31例女性,中位年龄60.0岁)。随访时间为10至86个月。共有407张CT图像作为训练数据集输入ResNet。RD-MR和ResNet-MR均与OS相关(p值分别为0.0167和0.0225)。关于对死亡率的鉴别能力,ResNet-MR在1年和2年时的曲线下面积均高于RD-MR,且在2年时鉴别能力有显著差异(p值 = 0.0321)。RD-MR将28例患者(33.3%)分类为反应者,ResNet-MR另外将16例患者(19.0%)分类为反应者;这16例患者的OS长于RD-MR组中其余的非反应者(27.49个月对21.20个月,p值 = 0.043),且降期百分比更高(37.5%对17.5%,p值 = 0.1610)。

结论

在接受BBC治疗的肝转移CRC患者中,借助ResNet可以改善生存预测,实现优化的个体化治疗。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e863/11654025/d019155ff0e1/40644_2024_809_Fig1_HTML.jpg

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