无线电技术
精密医学
医学影像学
医学
肺癌
生物统计学
人工智能
放射基因组学
医学物理学
计算机科学
病理
公共卫生
作者
Ilke Tunali,Robert J. Gillies,Matthew B. Schabath
出处
期刊:Cold Spring Harbor Perspectives in Medicine
[Cold Spring Harbor Laboratory]
日期:2021-01-11
卷期号:11 (8): a039537-a039537
被引量:50
标识
DOI:10.1101/cshperspect.a039537
摘要
Medical imaging is the standard-of-care for early detection, diagnosis, treatment planning, monitoring, and image-guided interventions of lung cancer patients. Most medical images are stored digitally in a standardized Digital Imaging and Communications in Medicine format that can be readily accessed and used for qualitative and quantitative analysis. Over the several last decades, medical images have been shown to contain complementary and interchangeable data orthogonal to other sources such as pathology, hematology, genomics, and/or proteomics. As such, "radiomics" has emerged as a field of research that involves the process of converting standard-of-care images into quantitative image-based data that can be merged with other data sources and subsequently analyzed using conventional biostatistics or artificial intelligence (AI) methods. As radiomic features capture biological and pathophysiological information, these quantitative radiomic features have shown to provide rapid and accurate noninvasive biomarkers for lung cancer risk prediction, diagnostics, prognosis, treatment response monitoring, and tumor biology. In this review, radiomics and emerging AI methods in lung cancer research are highlighted and discussed including advantages, challenges, and pitfalls.
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