Clinic of Radiology, University Hospital Münster, Münster, Germany.
Department of Medical Imaging, Division of Neuroradiology, Toronto Western Hospital, University Health Network, Toronto, ON, Canada.
Acta Neurochir Suppl. 2022;134:171-182. doi: 10.1007/978-3-030-85292-4_21.
This chapter describes technical considerations and current and future clinical applications of lesion detection using machine learning in the clinical setting. Lesion detection is central to neuroradiology and precedes all further processes which include but are not limited to lesion characterization, quantification, longitudinal disease assessment, prognosis, and prediction of treatment response. A number of machine learning algorithms focusing on lesion detection have been developed or are currently under development which may either support or extend the imaging process. Examples include machine learning applications in stroke, aneurysms, multiple sclerosis, neuro-oncology, neurodegeneration, and epilepsy.
本章介绍了在临床环境中使用机器学习进行病变检测的技术考虑因素以及当前和未来的临床应用。病变检测是神经放射学的核心,它先于所有进一步的过程,包括但不限于病变特征描述、定量、纵向疾病评估、预后以及治疗反应预测。已经开发或正在开发许多专注于病变检测的机器学习算法,这些算法可以支持或扩展成像过程。示例包括在中风、动脉瘤、多发性硬化症、神经肿瘤学、神经退行性变和癫痫等疾病中的机器学习应用。