Abdel Razek Ahmed Abdel Khalek, Alksas Ahmed, Shehata Mohamed, AbdelKhalek Amr, Abdel Baky Khaled, El-Baz Ayman, Helmy Eman
Department of Diagnostic Radiology, Faculty of Medicine, Mansoura University, Elgomheryia Street, Mansoura, 3512, Egypt.
Biomaging Lab, Department of Bioengineering, University of Louisville, Louisville, KY, 40292, USA.
Insights Imaging. 2021 Oct 21;12(1):152. doi: 10.1186/s13244-021-01102-6.
This article is a comprehensive review of the basic background, technique, and clinical applications of artificial intelligence (AI) and radiomics in the field of neuro-oncology. A variety of AI and radiomics utilized conventional and advanced techniques to differentiate brain tumors from non-neoplastic lesions such as inflammatory and demyelinating brain lesions. It is used in the diagnosis of gliomas and discrimination of gliomas from lymphomas and metastasis. Also, semiautomated and automated tumor segmentation has been developed for radiotherapy planning and follow-up. It has a role in the grading, prediction of treatment response, and prognosis of gliomas. Radiogenomics allowed the connection of the imaging phenotype of the tumor to its molecular environment. In addition, AI is applied for the assessment of extra-axial brain tumors and pediatric tumors with high performance in tumor detection, classification, and stratification of patient's prognoses.
本文是对人工智能(AI)和放射组学在神经肿瘤学领域的基本背景、技术及临床应用的全面综述。多种AI和放射组学利用传统和先进技术,将脑肿瘤与非肿瘤性病变(如炎症性和脱髓鞘性脑病变)区分开来。它用于胶质瘤的诊断以及胶质瘤与淋巴瘤和转移瘤的鉴别。此外,还开发了半自动和自动肿瘤分割技术用于放射治疗计划和随访。它在胶质瘤的分级、治疗反应预测及预后判断中发挥作用。放射基因组学使肿瘤的影像表型与其分子环境建立联系。此外,AI还应用于轴外脑肿瘤和儿童肿瘤的评估,在肿瘤检测、分类及患者预后分层方面表现出色。