mri衍生放射组学模型用于前列腺癌的诊断、侵袭性和预后评估。

Xuehua Zhu, Lizhi Shao, Zhenyu Liu, Zenan Liu, Jide He, Jiangang Liu, Hao Ping, Jian Lu
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引用次数: 0

摘要

前列腺癌(PCa)是一种具有高度异质性的恶性肿瘤,这给准确诊断和选择最佳治疗方法带来了难题。具有解剖和功能序列的多参数磁共振成像(mp-MRI)已经发展成为检测和表征前列腺癌的常规和重要范例。此外,由于人工智能(AI)和图像数据处理的快速发展,使用放射组学提取定量数据已成为一个有前途的领域。放射组学通过提取成像特征来获取新的成像生物标志物,并建立精确评估的模型。放射组学模型提供了一种可靠的、无创的替代方案,以帮助精确医学,显示出优于基于临床病理参数的传统模型的优势。本综述的目的是概述放射组学在PCa中的相关研究,特别是围绕使用mri衍生图像特征的放射组学模型的开发和验证。目前的文献景观,主要集中在前列腺癌的检测,侵袭性和预后评估,回顾和总结。而不是专注于图像生物标志物鉴定和方法优化的研究,具有普遍临床实施的高潜力的模型被确定。此外,我们深入研究了不同模型可以解决的关键问题以及临床场景中可能出现的障碍。这篇综述将鼓励研究人员根据实际临床需求设计模型,并帮助泌尿科医生更好地理解放射组学产生的有希望的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MRI-derived radiomics models for diagnosis, aggressiveness, and prognosis evaluation in prostate cancer.

Prostate cancer (PCa) is a pernicious tumor with high heterogeneity, which creates a conundrum for making a precise diagnosis and choosing an optimal treatment approach. Multiparametric magnetic resonance imaging (mp-MRI) with anatomical and functional sequences has evolved as a routine and significant paradigm for the detection and characterization of PCa. Moreover, using radiomics to extract quantitative data has emerged as a promising field due to the rapid growth of artificial intelligence (AI) and image data processing. Radiomics acquires novel imaging biomarkers by extracting imaging signatures and establishes models for precise evaluation. Radiomics models provide a reliable and noninvasive alternative to aid in precision medicine, demonstrating advantages over traditional models based on clinicopathological parameters. The purpose of this review is to provide an overview of related studies of radiomics in PCa, specifically around the development and validation of radiomics models using MRI-derived image features. The current landscape of the literature, focusing mainly on PCa detection, aggressiveness, and prognosis evaluation, is reviewed and summarized. Rather than studies that exclusively focus on image biomarker identification and method optimization, models with high potential for universal clinical implementation are identified. Furthermore, we delve deeper into the critical concerns that can be addressed by different models and the obstacles that may arise in a clinical scenario. This review will encourage researchers to design models based on actual clinical needs, as well as assist urologists in gaining a better understanding of the promising results yielded by radiomics.

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