FDG PET放射组学及其在淋巴瘤中的应用。

IF 5.1 2区 医学 Q1 HEMATOLOGY
Luca Ceriani, Lisa Milan, Stephane Chauvie, Emanuele Zucca
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引用次数: 0

摘要

早期发现一线治疗失败的淋巴瘤患者对于优化疾病管理至关重要。正电子发射断层扫描是一种成熟的淋巴瘤分期和反应评估工具,通常是视觉或半定量评估,留下了许多未开发的潜在信息。放射组学分析采用数学描述符,可以从与疾病生物学特征相关的基线图像中提取定量特征。新出现的放射学特征,如代谢肿瘤体积、病变总糖酵解、疾病传播和代谢异质性的标志物,被证明是淋巴瘤强有力的预后生物标志物。纹理分析是放射组学最先进的领域,它提供了高度复杂的特征,在被采用为可靠的生物标志物之前,需要进一步的标准化和验证。将放射学特征与临床危险因素和基因组数据相结合,在改善临床风险预测方面具有很大的潜力。本文综述了放射组学分析的现状、其标准化的进展以及将其纳入临床实践和试验设计。放射组学标记与循环肿瘤DNA的整合可能为开发基线和动态风险评分提供一种全面的方法,促进新疗法的测试,并推进侵袭性淋巴瘤的个性化治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understandings 18 FDG PET radiomics and its application to lymphoma.

The early identification of lymphoma patients who fail front-line treatment is crucial for optimizing disease management. Positron emission tomography, a well-established tool for staging and response evaluation in lymphoma, is typically assessed visually or semiquantitatively, leaving much of its latent information unexploited. Radiomic analysis, which employs mathematical descriptors, can enable the extraction of quantitative features from baseline images that correlate with the disease's biological characteristics. Emerging radiomic features such as metabolic tumour volume, total lesion glycolysis and markers of disease dissemination and metabolic heterogeneity are proving to be powerful prognostic biomarkers in lymphoma. Texture analysis, the most advanced area of radiomics, offers highly complex features that require further standardization and validation before being adopted as reliable biomarkers. Combining radiomic features with clinical risk factors and genomic data holds promising potential for improving clinical risk prediction. This review explores the current state of radiomic analysis, progress towards its standardization and its incorporation into clinical practice and trial designs. The integration of radiomic markers with circulating tumour DNA may provide a comprehensive approach to developing baseline and dynamic risk scores, facilitating the testing of novel treatments and advancing personalized treatment of aggressive lymphomas.

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来源期刊
CiteScore
8.60
自引率
4.60%
发文量
565
审稿时长
1 months
期刊介绍: The British Journal of Haematology publishes original research papers in clinical, laboratory and experimental haematology. The Journal also features annotations, reviews, short reports, images in haematology and Letters to the Editor.
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