Clinical diagnostic and treatment decisions rely upon the integration of patient-specific data with clinical reasoning. Cancer presents a unique context that influence treatment decisions, given its diverse forms of disease evolution. Biomedical imaging allows noninvasive assessment of disease based on visual evaluations leading to better clinical outcome prediction and therapeutic planning. Early methods of brain cancer characterization predominantly relied upon statistical modeling of neuroimaging data. Driven by the breakthroughs in computer vision, deep learning became the de facto standard in the domain of medical imaging. Integrated statistical and deep learning methods have recently emerged as a new direction in the automation of the medical practice unifying multi-disciplinary knowledge in medicine, statistics, and artificial intelligence. In this study, we critically review major statistical and deep learning models and their applications in brain imaging research with a focus on MRI-based brain tumor segmentation. The results do highlight that model-driven classical statistics and data-driven deep learning is a potent combination for developing automated systems in clinical oncology.
翻译:临床诊断和治疗决定依赖于将特定病人的数据与临床推理结合起来。癌症是一个独特的背景,影响治疗决定,因为其疾病演变的形式多种多样。生物医学成像允许在视觉评估的基础上对疾病进行非侵入性评估,从而导致更好的临床结果预测和治疗规划。早期脑癌特征分析方法主要依赖神经造型数据的统计模型分析。在计算机视觉突破的驱动下,深层次学习成为医学成像领域事实上的标准。综合统计和深层次学习方法最近成为医学实践自动化的新方向,统一了医学、统计和人工智能方面的多学科知识。在本研究中,我们严格审查主要的统计和深层次学习模型及其在脑成像研究中的应用,重点是基于MRI的脑肿瘤分解。结果确实突出表明,模型驱动的古典统计数据和数据驱动的深层学习是发展临床肿瘤自动化系统的有力组合。