Ismail Marwa, Craig Stephen, Ahmed Raheel, de Blank Peter, Tiwari Pallavi
Department of Radiology, University of Wisconsin-Madison, Madison, WI 53706, USA.
Department of Neurosurgery, School of Medicine and Public Health, University of Wisconsin-Madison, Madison, WI 53706, USA.
Diagnostics (Basel). 2023 Aug 22;13(17):2727. doi: 10.3390/diagnostics13172727.
Recent advances in artificial intelligence have greatly impacted the field of medical imaging and vastly improved the development of computational algorithms for data analysis. In the field of pediatric neuro-oncology, radiomics, the process of obtaining high-dimensional data from radiographic images, has been recently utilized in applications including survival prognostication, molecular classification, and tumor type classification. Similarly, radiogenomics, or the integration of radiomic and genomic data, has allowed for building comprehensive computational models to better understand disease etiology. While there exist excellent review articles on radiomics and radiogenomic pipelines and their applications in adult solid tumors, in this review article, we specifically review these computational approaches in the context of pediatric medulloblastoma tumors. Based on our systematic literature research via PubMed and Google Scholar, we provide a detailed summary of a total of 15 articles that have utilized radiomic and radiogenomic analysis for survival prognostication, tumor segmentation, and molecular subgroup classification in the context of pediatric medulloblastoma. Lastly, we shed light on the current challenges with the existing approaches as well as future directions and opportunities with using these computational radiomic and radiogenomic approaches for pediatric medulloblastoma tumors.
人工智能的最新进展对医学成像领域产生了巨大影响,并极大地推动了用于数据分析的计算算法的发展。在小儿神经肿瘤学领域,放射组学,即从放射影像中获取高维数据的过程,最近已应用于生存预后、分子分类和肿瘤类型分类等方面。同样,放射基因组学,即放射组学和基因组数据的整合,使得构建全面的计算模型以更好地理解疾病病因成为可能。虽然已有关于放射组学和放射基因组学流程及其在成人实体瘤中的应用的优秀综述文章,但在本文中,我们专门在小儿髓母细胞瘤的背景下综述这些计算方法。基于我们通过PubMed和谷歌学术进行的系统文献研究,我们详细总结了总共15篇在小儿髓母细胞瘤背景下利用放射组学和放射基因组学分析进行生存预后、肿瘤分割和分子亚组分类的文章。最后,我们阐明了现有方法当前面临的挑战以及使用这些计算放射组学和放射基因组学方法处理小儿髓母细胞瘤的未来方向和机遇。