通过纵向液体活检数据的动态感知模型预测对胃癌患者的反应。

IF 5.1 1区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY
Gastric Cancer Pub Date : 2025-09-01 Epub Date: 2025-06-17 DOI:10.1007/s10120-025-01628-4
Zifan Chen, Jie Zhao, Yanyan Li, Xujiao Feng, Yang Chen, Yilin Li, Xinyu Nan, Huimin Liu, Bin Dong, Lin Shen, Li Zhang
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引用次数: 0

摘要

背景:胃癌(GC)由于其患者特异性异质性,在预测治疗反应方面存在挑战。最近,液体活检已经成为一种有价值的数据方式,提供基本的细胞和分子洞察,同时促进时间敏感信息的捕获。本研究旨在利用人工智能(AI)技术分析纵向液体活检数据。方法:收集2019年7月至2022年4月北京肿瘤医院91例患者的纵向液体活检数据。该数据集包括1895个肿瘤相关细胞图像和1698个肿瘤标志物指数。随后,我们引入了动态感知模型(DAM)来预测对GC处理的反应。DAM通过人工智能设计的组件整合动态数据,促进深入的纵向分析。结果:通过三重交叉验证,与传统的细胞计数方法相比,DAM具有优越的性能,预测GC处理反应的AUC为0.807。在测试集中,DAM保持稳定的疗效,AUC为0.802。此外,DAM显示出基于早期治疗数据准确预测治疗反应的能力。此外,DAM对注意机制的视觉分析确定了与焦点区域相关的六个动态视觉特征,这些特征与治疗反应密切相关。结论:这些发现代表了应用人工智能技术解释纵向液体活检数据和在GC中使用视觉分析的开创性努力。该方法为胃癌患者的精确反应预测和个性化治疗策略提供了一条有希望的途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting response to patients with gastric cancer via a dynamic-aware model with longitudinal liquid biopsy data.

Background: Gastric cancer (GC) presents challenges in predicting treatment responses due to its patient-specific heterogeneity. Recently, liquid biopsies have emerged as a valuable data modality, offering essential cellular and molecular insights while facilitating the capture of time-sensitive information. This study aimed to leverage artificial intelligence (AI) technology to analyze longitudinal liquid biopsy data.

Methods: We collected a dataset from longitudinal liquid biopsies of 91 patients at Peking Cancer Hospital, spanning from July 2019 to April 2022. This dataset included 1895 tumor-related cellular images and 1698 tumor marker indices. Subsequently, we introduced the Dynamic-Aware Model (DAM) to predict responses to GC treatment. DAM incorporates dynamic data through AI-engineered components, facilitating an in-depth longitudinal analysis.

Results: Utilizing threefold cross-validation, DAM exhibited superior performance compared to traditional cell-counting methods, achieving an AUC of 0.807 in predicting GC treatment responses. In the test set, DAM maintained stable efficacy with an AUC of 0.802. Besides, DAM showed the capability to accurately predict treatment responses based on early treatment data. Moreover, DAM's visual analysis of attention mechanisms identified six dynamic visual features related to focus areas, which were strongly associated with treatment-response.

Conclusions: These findings represent a pioneering effort in applying AI technology to interpret longitudinal liquid biopsy data and employ visual analytics in GC. This approach provides a promising pathway toward precise response prediction and personalized treatment strategies for patients with GC.

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来源期刊
Gastric Cancer
Gastric Cancer 医学-胃肠肝病学
CiteScore
14.70
自引率
2.70%
发文量
80
审稿时长
6-12 weeks
期刊介绍: Gastric Cancer is an esteemed global forum that focuses on various aspects of gastric cancer research, treatment, and biology worldwide. The journal promotes a diverse range of content, including original articles, case reports, short communications, and technical notes. It also welcomes Letters to the Editor discussing published articles or sharing viewpoints on gastric cancer topics. Review articles are predominantly sought after by the Editor, ensuring comprehensive coverage of the field. With a dedicated and knowledgeable editorial team, the journal is committed to providing exceptional support and ensuring high levels of author satisfaction. In fact, over 90% of published authors have expressed their intent to publish again in our esteemed journal.
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