颅底肿瘤放射组学的应用与整合。

4区 医学 Q2 Biochemistry, Genetics and Molecular Biology
Ruchit V Patel, Karenna J Groff, Wenya Linda Bi
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引用次数: 0

摘要

放射组学是从医学影像中提取特征的定量方法,是颅底肿瘤学的一个新领域。新颖的图像分析方法使我们能够从人眼无法感知的图像中捕捉模式。这一丰富的数据源可与一系列临床特征相结合,有望成为无创的生物标志物来源。放射组学在颅底病理学中的应用主要围绕三种常见肿瘤:脑膜瘤、蝶窦/窦旁肿瘤和前庭分裂瘤。放射组学研究可分为五个领域:肿瘤检测/分割、肿瘤类型分类、肿瘤分级、肿瘤特征检测和预后判断。在这些领域中采用了各种计算架构,其中深度学习方法相对于机器学习更为常见。在整个放射学应用中,对比增强 T1 加权 MRI 图像仍然是模型开发中使用最多的序列。将放射学特征标准化并与肿瘤生物学联系起来的努力促进了放射学模型的临床应用。尽管模型的性能有所提高,但仍有一些挑战阻碍了模型的可转化性,包括样本量小和在单一机构的同质数据上进行模型训练。要认识到放射组学在颅底肿瘤学方面的潜力,前瞻性的多机构合作将是验证放射组学技术的基石。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applications and Integration of Radiomics for Skull Base Oncology.

Radiomics, a quantitative approach to extracting features from medical images, represents a new frontier in skull base oncology. Novel image analysis approaches have enabled us to capture patterns from images imperceptible by the human eye. This rich source of data can be combined with a range of clinical features, holding the potential to be a noninvasive source of biomarkers. Applications of radiomics in skull base pathologies have centered around three common tumor classes: meningioma, sellar/parasellar tumors, and vestibular schwannomas. Radiomic investigations can be categorized into five domains: tumor detection/segmentation, classification between tumor types, tumor grading, detection of tumor features, and prognostication. Various computational architectures have been employed across these domains, with deep-learning methods becoming more common versus machine learning. Across radiomic applications, contrast-enhanced T1-weighted MRI images remain the most utilized sequence for model development. Efforts to standardize and connect radiomic features to tumor biology have facilitated more clinically applicable radiomic models. Despite the advancement in model performance, several challenges continue to hinder translatability, including small sample sizes and model training on homogenous single institution data. To recognize the potential of radiomics for skull base oncology, prospective, multi-institutional collaboration will be the cornerstone for a validated radiomic technology.

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来源期刊
Advances in experimental medicine and biology
Advances in experimental medicine and biology 医学-医学:研究与实验
CiteScore
5.90
自引率
0.00%
发文量
465
审稿时长
2-4 weeks
期刊介绍: Advances in Experimental Medicine and Biology provides a platform for scientific contributions in the main disciplines of the biomedicine and the life sciences. This series publishes thematic volumes on contemporary research in the areas of microbiology, immunology, neurosciences, biochemistry, biomedical engineering, genetics, physiology, and cancer research. Covering emerging topics and techniques in basic and clinical science, it brings together clinicians and researchers from various fields.
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