HUS Medical Imaging Center, University of Helsinki and Helsinki University Hospital, Helsinki, Finland.
Medical Physics Department, Konstantopoulio General Hospital, Athens, Greece.
Phys Med. 2018 Dec;56:90-93. doi: 10.1016/j.ejmp.2018.11.005. Epub 2018 Nov 16.
Big data and deep learning will profoundly change various areas of professions and research in the future. This will also happen in medicine and medical imaging in particular. As medical physicists, we should pursue beyond the concept of technical quality to extend our methodology and competence towards measuring and optimising the diagnostic value in terms of how it is connected to care outcome. Functional implementation of such methodology requires data processing utilities starting from data collection and management and culminating in the data analysis methods. Data quality control and validation are prerequisites for the deep learning application in order to provide reliable further analysis, classification, interpretation, probabilistic and predictive modelling from the vast heterogeneous big data. Challenges in practical data analytics relate to both horizontal and longitudinal analysis aspects. Quantitative aspects of data validation, quality control, physically meaningful measures, parameter connections and system modelling for the future artificial intelligence (AI) methods are positioned firmly in the field of Medical Physics profession. It is our interest to ensure that our professional education, continuous training and competence will follow this significant global development.
大数据和深度学习将深刻改变未来各个专业和研究领域,医学和医学影像尤其如此。作为医学物理学家,我们应该超越技术质量的概念,将我们的方法和能力扩展到衡量和优化诊断价值方面,以及如何将其与治疗效果联系起来。要实现这种方法的功能,需要从数据收集和管理开始,最终到数据分析方法,使用数据处理工具。为了从大量异构大数据中提供可靠的进一步分析、分类、解释、概率和预测建模,深度学习应用需要进行数据质量控制和验证。实际数据分析中的挑战涉及横向和纵向分析方面。数据验证、质量控制、物理有意义的测量、参数连接和未来人工智能 (AI) 方法的系统建模的定量方面在医学物理学领域中得到了明确的定位。我们有兴趣确保我们的专业教育、持续培训和能力将跟上这一重大的全球发展。