基于 CT 的多模态深度学习用于对接受免疫疗法的晚期肝细胞癌患者进行无创总生存期预测

IF 4.1 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Yujia Xia, Jie Zhou, Xiaolei Xun, Jin Zhang, Ting Wei, Ruitian Gao, Bobby Reddy, Chao Liu, Geoffrey Kim, Zhangsheng Yu
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引用次数: 0

摘要

目的开发一种结合CT扫描和临床信息的深度学习模型,以预测晚期肝细胞癌(HCC)的总生存期:这项回顾性研究纳入了2018年至2022年间来自52个跨国内部中心的免疫治疗晚期HCC患者。利用基线和首次随访CT图像以及7个临床变量,提出了一个多模态预后模型。开发的卷积-递归神经网络(CRNN)从自动选择的代表性二维CT切片中提取空间-时间信息,提供放射学评分,然后与基于Cox的临床评分融合,提供生存风险。该模型的有效性采用与时间相关的接收者操作曲线下面积(AUC)进行评估,风险组的分层则采用对数秩检验。将多模态输入的预后效果与缺失模态的模型和基于体型的RECIST标准进行了比较:结果:共纳入 277 名患者(平均年龄 61 岁 ± 12 [SD],180 名男性)。多模态 CRNN 模型在验证集和测试集中的 1 年总生存预测 AUC 分别为 0.777 和 0.704。根据训练集的中位风险评分,该模型在验证集(危险比 [HR] = 3.330,p = 0.008)和测试集(HR = 2.024,p = 0.047)中实现了明显的风险分层。缺失模态的模型(基于单模态成像的模型和仅包含基线扫描的模型)仍能获得良好的风险分层性能(所有 p 均为结论):对 CT 扫描和临床数据的深度学习分析可为晚期 HCC 患者提供重要的预后见解:建立的模型可以帮助监测患者的疾病状态,并在首次随访时识别出预后不良的患者,帮助临床医生做出明智的治疗决策,并进行早期及时的干预:基于人工智能的晚期HCC预后模型是针对多国患者开发的。该模型从CT扫描中提取空间-时间信息,并将其与临床变量相结合,从而得出预后结果。与传统的基于大小的 RECIST 方法相比,该模型显示出更优越的预后能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CT-based multimodal deep learning for non-invasive overall survival prediction in advanced hepatocellular carcinoma patients treated with immunotherapy.

Objectives: To develop a deep learning model combining CT scans and clinical information to predict overall survival in advanced hepatocellular carcinoma (HCC).

Methods: This retrospective study included immunotherapy-treated advanced HCC patients from 52 multi-national in-house centers between 2018 and 2022. A multi-modal prognostic model using baseline and the first follow-up CT images and 7 clinical variables was proposed. A convolutional-recurrent neural network (CRNN) was developed to extract spatial-temporal information from automatically selected representative 2D CT slices to provide a radiological score, then fused with a Cox-based clinical score to provide the survival risk. The model's effectiveness was assessed using a time-dependent area under the receiver operating curve (AUC), and risk group stratification using the log-rank test. Prognostic performances of multi-modal inputs were compared to models of missing modality, and the size-based RECIST criteria.

Results: Two-hundred seven patients (mean age, 61 years ± 12 [SD], 180 men) were included. The multi-modal CRNN model reached the AUC of 0.777 and 0.704 of 1-year overall survival predictions in the validation and test sets. The model achieved significant risk stratification in validation (hazard ratio [HR] = 3.330, p = 0.008), and test sets (HR = 2.024, p = 0.047) based on the median risk score of the training set. Models with missing modalities (the single-modal imaging-based model and the model incorporating only baseline scans) can still achieve favorable risk stratification performance (all p < 0.05, except for one, p = 0.053). Moreover, results proved the superiority of the deep learning-based model to the RECIST criteria.

Conclusion: Deep learning analysis of CT scans and clinical data can offer significant prognostic insights for patients with advanced HCC.

Critical relevance statement: The established model can help monitor patients' disease statuses and identify those with poor prognosis at the time of first follow-up, helping clinicians make informed treatment decisions, as well as early and timely interventions.

Key points: An AI-based prognostic model was developed for advanced HCC using multi-national patients. The model extracts spatial-temporal information from CT scans and integrates it with clinical variables to prognosticate. The model demonstrated superior prognostic ability compared to the conventional size-based RECIST method.

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来源期刊
Insights into Imaging
Insights into Imaging Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
7.30
自引率
4.30%
发文量
182
审稿时长
13 weeks
期刊介绍: Insights into Imaging (I³) is a peer-reviewed open access journal published under the brand SpringerOpen. All content published in the journal is freely available online to anyone, anywhere! I³ continuously updates scientific knowledge and progress in best-practice standards in radiology through the publication of original articles and state-of-the-art reviews and opinions, along with recommendations and statements from the leading radiological societies in Europe. Founded by the European Society of Radiology (ESR), I³ creates a platform for educational material, guidelines and recommendations, and a forum for topics of controversy. A balanced combination of review articles, original papers, short communications from European radiological congresses and information on society matters makes I³ an indispensable source for current information in this field. I³ is owned by the ESR, however authors retain copyright to their article according to the Creative Commons Attribution License (see Copyright and License Agreement). All articles can be read, redistributed and reused for free, as long as the author of the original work is cited properly. The open access fees (article-processing charges) for this journal are kindly sponsored by ESR for all Members. The journal went open access in 2012, which means that all articles published since then are freely available online.
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