人工智能与影像组学在肾细胞癌疗效及预后评估中的研究进展

史 乃静1, 张 聪1, 刘 冲*2
1、承德医学院研究生学院;保定市第一中心医院医学影像一科
2、保定市第一中心医院医学影像一科

摘要


肾细胞癌(renal cell carcinoma,RCC)是泌尿系统常见的恶性肿瘤,其复杂性和异质性特征使得治疗疗效和预后评估成为临床决策的关键挑战。近年来,随着CT、MR等影像技术的升级,结合人工智能(Artificial Intelligence,AI)与影像组学分析为预后预测提供了新的量化手段,对推进个体化精准治疗具有重要意义。本文系统综述基于人工智能与影像组学在RCC治疗疗效和预后评估中的应用现状与发展趋势。

关键词


肾细胞癌;影像组学;计算机体层成像;磁共振成像;综述

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参考


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