Faculty of Computer Science and Research Campus STIMULATE, University of Magdeburg, Germany.
Faculty of Computer Science and Research Campus STIMULATE, University of Magdeburg, Germany.
Artif Intell Med. 2021 Jun;116:102073. doi: 10.1016/j.artmed.2021.102073. Epub 2021 Apr 10.
Various convolutional neural network (CNN) based concepts have been introduced for the prostate's automatic segmentation and its coarse subdivision into transition zone (TZ) and peripheral zone (PZ). However, when targeting a fine-grained segmentation of TZ, PZ, distal prostatic urethra (DPU) and the anterior fibromuscular stroma (AFS), the task becomes more challenging and has not yet been solved at the level of human performance. One reason might be the insufficient amount of labeled data for supervised training. Therefore, we propose to apply a semi-supervised learning (SSL) technique named uncertainty-aware temporal self-learning (UATS) to overcome the expensive and time-consuming manual ground truth labeling. We combine the SSL techniques temporal ensembling and uncertainty-guided self-learning to benefit from unlabeled images, which are often readily available. Our method significantly outperforms the supervised baseline and obtained a Dice coefficient (DC) of up to 78.9%, 87.3%, 75.3%, 50.6% for TZ, PZ, DPU and AFS, respectively. The obtained results are in the range of human inter-rater performance for all structures. Moreover, we investigate the method's robustness against noise and demonstrate the generalization capability for varying ratios of labeled data and on other challenging tasks, namely the hippocampus and skin lesion segmentation. UATS achieved superiority segmentation quality compared to the supervised baseline, particularly for minimal amounts of labeled data.
已经引入了各种基于卷积神经网络(CNN)的概念,用于前列腺的自动分割及其粗略细分为移行区(TZ)和周围区(PZ)。然而,当目标是对 TZ、PZ、远端前列腺尿道(DPU)和前纤维肌肉基质(AFS)进行细粒度分割时,任务变得更加具有挑战性,并且尚未达到人类表现水平。原因之一可能是用于监督训练的标记数据量不足。因此,我们提出应用一种名为不确定性感知时间自我学习(UATS)的半监督学习(SSL)技术来克服昂贵且耗时的手动地面实况标记。我们结合 SSL 技术的时间集成和不确定性引导的自我学习,从通常易于获得的未标记图像中受益。我们的方法显著优于监督基线,在 TZ、PZ、DPU 和 AFS 方面的 Dice 系数(DC)分别高达 78.9%、87.3%、75.3%和 50.6%。对于所有结构,获得的结果均处于人类内部评分者表现的范围内。此外,我们研究了该方法对噪声的鲁棒性,并证明了在不同比例的标记数据和其他具有挑战性的任务(即海马体和皮肤病变分割)上的泛化能力。与监督基线相比,UATS 实现了优越的分割质量,特别是在标记数据量最少的情况下。