Deep learning methods have been shown to be effective for the automatic segmentation of structures and pathologies in medical imaging. However, they require large annotated datasets, whose manual segmentation is a tedious and time-consuming task, especially for large structures. We present a new method of partial annotations that uses a small set of consecutive annotated slices from each scan with an annotation effort that is equal to that of only few annotated cases. The training with partial annotations is performed by using only annotated blocks, incorporating information about slices outside the structure of interest and modifying a batch loss function to consider only the annotated slices. To facilitate training in a low data regime, we use a two-step optimization process. We tested the method with the popular soft Dice loss for the fetal body segmentation task in two MRI sequences, TRUFI and FIESTA, and compared full annotation regime to partial annotations with a similar annotation effort. For TRUFI data, the use of partial annotations yielded slightly better performance on average compared to full annotations with an increase in Dice score from 0.936 to 0.942, and a substantial decrease in Standard Deviations (STD) of Dice score by 22% and Average Symmetric Surface Distance (ASSD) by 15%. For the FIESTA sequence, partial annotations also yielded a decrease in STD of the Dice score and ASSD metrics by 27.5% and 33% respectively for in-distribution data, and a substantial improvement also in average performance on out-of-distribution data, increasing Dice score from 0.84 to 0.9 and decreasing ASSD from 7.46 to 4.01 mm. The two-step optimization process was helpful for partial annotations for both in-distribution and out-of-distribution data. The partial annotations method with the two-step optimizer is therefore recommended to improve segmentation performance under low data regime.
翻译:深度学习方法已证明对医学成像的结构和病理的自动分解有效,然而,它们需要大量附加说明的数据集,其人工分解是一项烦琐和耗时的任务,特别是大型结构。我们展示了一种新的部分说明方法,它使用每次扫描的少量连续附加说明切片,其批注努力相当于仅有几个附加说明的案例。仅使用附加说明的区块进行部分说明培训,包括关于利益结构之外的切片的信息,并修改批次损失函数,以只考虑附加说明的切片。为了便利低数据制度的培训,我们使用两步制优化程序。我们用两种 MRI 序列(TRUFIFI 和FIESTATA ) 中流行的软骰子断裂切片断方法测试了这种方法,将完全注解制度与部分说明相提法进行类似努力。对于TRUFFIFIA数据,部分说明的使用平均表现稍好,比DSD的分分分数从0.936到部分递增部分数据, ASASD的分数从0.942到部分数据递减为正常数据。