Recently, deep networks have shown impressive performance for the segmentation of cardiac Magnetic Resonance Imaging (MRI) images. However, their achievement is proving slow to transition to widespread use in medical clinics because of robustness issues leading to low trust of clinicians to their results. Predicting run-time quality of segmentation masks can be useful to warn clinicians against poor results. Despite its importance, there are few studies on this problem. To address this gap, we propose a quality control method based on the agreement across decoders of a multi-view network, TMS-Net, measured by the cosine similarity. The network takes three view inputs resliced from the same 3D image along different axes. Different from previous multi-view networks, TMS-Net has a single encoder and three decoders, leading to better noise robustness, segmentation performance and run-time quality estimation in our experiments on the segmentation of the left atrium on STACOM 2013 and STACOM 2018 challenge datasets. We also present a way to generate poor segmentation masks by using noisy images generated with engineered noise and Rician noise to simulate undertraining, high anisotropy and poor imaging settings problems. Our run-time quality estimation method show a good classification of poor and good quality segmentation masks with an AUC reaching to 0.97 on STACOM 2018. We believe that TMS-Net and our run-time quality estimation method has a high potential to increase the thrust of clinicians to automatic image analysis tools.
翻译:最近,深层网络显示,心脏磁共振自动成像(MRI)图像的分解表现令人印象深刻,但是,由于稳健问题导致临床医生信任度低,结果也不同,其成就证明在医疗诊所向广泛使用过渡方面缓慢。预测分解面面罩的运行时间质量可以有助于警告临床医生避免不良结果。尽管这一问题很重要,但对这一问题的研究很少。为了弥补这一差距,我们建议了一种质量控制方法,其依据是多视图网络TMS-Net的分解器协议,以近似相测量。这个网络从同一3D类诊所图像中取出的三个视图投入,在不同轴心轴上重新使用。不同于以前的多视图网络,TMS-Net有一个单一的编码器和3个解析器,可以导致更好的噪音稳健和分解功能,在STACOM 2013 和STACOM 2018 的左端小路段的分解器中,我们还提出一种方法,通过利用在高端图像上生成的冷却图像和高端质量分析,在高端平流结构中,我们一个高端的平流的平流的平流方法下展示。