Pancreatic Cancer, Radiomics and Artificial Intelligence: A Review

L. Martí-Bonmatí
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引用次数: 2

Abstract

Computed tomography (CT) scans stratified patients with pancreatic ductal adenocarcinoma (PDA) into categories based on whether the tumor is expected to be resectable, borderline resectable, initially unresectable, or metastatic. When reporting these exams, radiologists use structured templates to ensure that the generated information is complete, although the difficulty in identifying initial microscopic infiltrations of adjacent structures and small metastases is well recognized. Radiomics is seen as a potentially useful tool for determining tumor aggressiveness and building predictive clinical models. If extracted radiomic signatures are validated as prognostic and predictive biomarkers, they could be used aiding in decision-making to facilitate personalized patient management with ACDP. Models with convolutional neural networks provide estimations associated with a biological aggressiveness profile by combining clinical, semantic, and radiomic features. Despite encouraging results, the main limitations for clinical use of quantitative imaging are due to the instability of the measurements and the diversity of obtained images (different equipment and protocols), both making difficult to generalize the obtained results. The availability of large multicenter repositories with standardized and annotated images, and associated data (clinical, molecular, genetic), together with radiomics and artificial intelligence tools, will allow to predict the behavior of these tumors at the diagnosis. Its validation in totally independent cohorts and causal inference models is needed.
胰腺癌,放射组学和人工智能:综述
计算机断层扫描(CT)对胰腺导管腺癌(PDA)患者进行分层扫描,根据肿瘤是否可切除、边缘性可切除、最初不可切除或转移进行分类。当报告这些检查时,放射科医生使用结构化模板来确保生成的信息是完整的,尽管识别相邻结构的初始显微浸润和小转移的困难是众所周知的。放射组学被视为确定肿瘤侵袭性和建立预测临床模型的潜在有用工具。如果提取的放射性特征被验证为预后和预测性生物标志物,它们可以用于辅助决策,以促进ACDP患者的个性化管理。卷积神经网络模型通过结合临床、语义和放射学特征,提供与生物侵袭性相关的估计。尽管结果令人鼓舞,但临床使用定量成像的主要限制是由于测量的不稳定性和获得的图像的多样性(不同的设备和方案),这两者都使所获得的结果难以推广。具有标准化和注释图像的大型多中心存储库的可用性,以及相关数据(临床,分子,遗传),以及放射组学和人工智能工具,将允许在诊断时预测这些肿瘤的行为。它需要在完全独立的队列和因果推理模型中进行验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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