Large-scale medical studies such as the UK Biobank examine thousands of volunteer participants with medical imaging techniques. Combined with the vast amount of collected metadata, anatomical information from these images has the potential for medical analyses at unprecedented scale. However, their evaluation often requires manual input and long processing times, limiting the amount of reference values for biomarkers and other measurements available for research. Recent approaches with convolutional neural networks for regression can perform these evaluations automatically. On magnetic resonance imaging (MRI) data of more than 40,000 UK Biobank subjects, these systems can estimate human age, body composition and more. This style of analysis is almost entirely data-driven and no manual intervention or guidance with manually segmented ground truth images is required. The networks often closely emulate the reference method that provided their training data and can reach levels of agreement comparable to the expected variability between established medical gold standard techniques. The risk of silent failure can be individually quantified by predictive uncertainty obtained from a mean-variance criterion and ensembling. Saliency analysis furthermore enables an interpretation of the underlying relevant image features and showed that the networks learned to correctly target specific organs, limbs, and regions of interest.
翻译:大型医学研究,如英国生物库,对数以千计的自愿参与者进行医学成像技术检查。这些图象的解剖信息加上大量收集的元数据,有可能进行空前规模的医疗分析,然而,其评价往往需要人工输入和长时间的处理时间,限制生物标志的参考值和可供研究使用的其他测量方法;最近与进化神经回归网络采取的办法可以自动进行这些评估;在40,000多个英国生物库主体的磁共振成像(MRI)数据方面,这些系统可以估计人类的年龄、身体组成和更多;这种分析方式几乎完全是数据驱动的,不需要人工断裂地面真象的人工干预或指导;这些网络往往仿效提供其培训数据的参考方法,并能够达到与既定医疗金标准技术之间预期的变异性相当的一致程度;沉默风险可以个别地量化,从中得出平均变差标准和叠加的预测性不确定性。精度分析还有助于解释基本的相关图像特征,并显示所学的网络能够正确瞄准特定器官、肢体和感兴趣区域。