Along with rich health-related metadata, medical images have been acquired for over 40,000 male and female UK Biobank participants, aged 44-82, since 2014. Phenotypes derived from these images, such as measurements of body composition from MRI, can reveal new links between genetics, cardiovascular disease, and metabolic conditions. In this work, six measurements of body composition and adipose tissues were automatically estimated by image-based, deep regression with ResNet50 neural networks from neck-to-knee body MRI. Despite the potential for high speed and accuracy, these networks produce no output segmentations that could indicate the reliability of individual measurements. The presented experiments therefore examine uncertainty quantification with mean-variance regression and ensembling to estimate individual measurement errors and thereby identify potential outliers, anomalies, and other failure cases automatically. In 10-fold cross-validation on data of about 8,500 subjects, mean-variance regression and ensembling showed complementary benefits, reducing the mean absolute error across all predictions by 12%. Both improved the calibration of uncertainties and their ability to identify high prediction errors. With intra-class correlation coefficients (ICC) above 0.97, all targets except the liver fat content yielded relative measurement errors below 5%. Testing on another 1,000 subjects showed consistent performance, and the method was finally deployed for inference to 30,000 subjects with missing reference values. The results indicate that deep regression ensembles could ultimately provide automated, uncertainty-aware measurements of body composition for more than 120,000 UK Biobank neck-to-knee body MRI that are to be acquired within the coming years.
翻译:与丰富的健康相关元数据一起,自2014年以来,英国生物库的40 000多名男女参与者(年龄44-82岁)获得了医疗图像,这些参与者的年龄为44-82岁。 从这些图像中得出的基因类型,例如对磁共振体构成的测量,能够揭示遗传学、心血管疾病和代谢条件之间的新联系。在这项工作中,对人体构成和脂肪组织进行的六种测量,通过基于图像的深度回归和ResNet50神经网络从颈部至膝部MRI自动估算出。尽管速度和准确度可能很高,但这些网络没有产生能够显示个人测量可靠性的产出部分。因此,提出的实验可以用中度变差回归来审查不确定性的量化,并结合来估计个体测量错误、心血管疾病和代谢条件之间的新联系。在对大约8 500个主题的数据进行十倍的交叉对比中,平均变差回归和嵌套显示了互补的好处,将所有预测的绝对误差减少12%。这些网络都提高了不确定性的校准度及其识别高预测误度的能力。因此,以中偏差性回归为平均误误度的数值的内比正值为内部误差值,因此,正正正正正正比正正正正正正比正标标标,最终显示直值为30,最终显示比值的数值比值(IM标值为30年的比值)最终显示了比值,最终值的数值比值为30000次的数值比值,最终值,比值为直值,比值为30,比值为直值为直值,最终值为直值,最终值,最终标值为正值,比正值比正标值为30,比正值。