Tabassum Mehnaz, Suman Abdulla Al, Suero Molina Eric, Pan Elizabeth, Di Ieva Antonio, Liu Sidong
Centre for Health Informatics, Australian Institute of Health Innovation, Macquarie University, Sydney, NSW 2109, Australia.
Computational NeuroSurgery (CNS) Lab, Macquarie Medical School, Macquarie University, Sydney, NSW 2109, Australia.
Cancers (Basel). 2023 Jul 28;15(15):3845. doi: 10.3390/cancers15153845.
Radiomics is a rapidly evolving field that involves extracting and analysing quantitative features from medical images, such as computed tomography or magnetic resonance images. Radiomics has shown promise in brain tumor diagnosis and patient-prognosis prediction by providing more detailed and objective information about tumors' features than can be obtained from the visual inspection of the images alone. Radiomics data can be analyzed to determine their correlation with a tumor's genetic status and grade, as well as in the assessment of its recurrence vs. therapeutic response, among other features. In consideration of the multi-parametric and high-dimensional space of features extracted by radiomics, machine learning can further improve tumor diagnosis, treatment response, and patients' prognoses. There is a growing recognition that tumors and their microenvironments (habitats) mutually influence each other-tumor cells can alter the microenvironment to increase their growth and survival. At the same time, habitats can also influence the behavior of tumor cells. In this systematic review, we investigate the current limitations and future developments in radiomics and machine learning in analysing brain tumors and their habitats.
放射组学是一个快速发展的领域,涉及从医学图像(如计算机断层扫描或磁共振图像)中提取和分析定量特征。放射组学通过提供比仅通过图像目视检查所能获得的关于肿瘤特征更详细、更客观的信息,在脑肿瘤诊断和患者预后预测方面显示出前景。可以分析放射组学数据以确定其与肿瘤的基因状态和分级的相关性,以及在评估其复发与治疗反应等特征方面的相关性。考虑到放射组学提取的特征的多参数和高维空间,机器学习可以进一步改善肿瘤诊断、治疗反应和患者预后。人们越来越认识到肿瘤及其微环境(栖息地)相互影响——肿瘤细胞可以改变微环境以增加其生长和存活。同时,栖息地也可以影响肿瘤细胞的行为。在本系统评价中,我们研究了放射组学和机器学习在分析脑肿瘤及其栖息地方面的当前局限性和未来发展。