Huang Zhe, Wessler Benjamin S, Hughes Michael C
Dept. of Computer Science, Tufts University, Medford, MA, USA.
Division of Cardiology, Tufts Medical Center, Boston, MA, USA.
Proc Mach Learn Res. 2023 Aug;219:285-307.
Aortic stenosis (AS) is a degenerative valve condition that causes substantial morbidity and mortality. This condition is under-diagnosed and under-treated. In clinical practice, AS is diagnosed with expert review of transthoracic echocardiography, which produces dozens of ultrasound images of the heart. Only some of these views show the aortic valve. To automate screening for AS, deep networks must learn to mimic a human expert's ability to identify views of the aortic valve then aggregate across these relevant images to produce a study-level diagnosis. We find previous approaches to AS detection yield insufficient accuracy due to relying on inflexible averages across images. We further find that off-the-shelf attention-based multiple instance learning (MIL) performs poorly. We contribute a new end-to-end MIL approach with two key methodological innovations. First, a supervised attention technique guides the learned attention mechanism to favor relevant views. Second, a novel self-supervised pretraining strategy applies contrastive learning on the representation of the whole study instead of individual images as commonly done in prior literature. Experiments on an open-access dataset and a temporally-external heldout set show that our approach yields higher accuracy while reducing model size.
主动脉瓣狭窄(AS)是一种退行性瓣膜疾病,会导致严重的发病率和死亡率。这种疾病的诊断和治疗不足。在临床实践中,AS通过对经胸超声心动图进行专家评估来诊断,该检查会生成数十张心脏的超声图像。其中只有一些视图显示主动脉瓣。为了实现AS筛查的自动化,深度网络必须学会模仿人类专家识别主动脉瓣视图的能力,然后在这些相关图像上进行汇总以得出研究级别的诊断。我们发现,以前的AS检测方法由于依赖于图像间缺乏灵活性的平均值,导致准确性不足。我们还发现,现成的基于注意力的多实例学习(MIL)效果不佳。我们提出了一种新的端到端MIL方法,具有两项关键的方法创新。首先,一种监督注意力技术引导学习到的注意力机制偏向相关视图。其次,一种新颖的自监督预训练策略对整个研究的表示应用对比学习,而不是像先前文献中通常那样对单个图像进行对比学习。在一个开放获取数据集和一个时间上外部保留集上进行的实验表明,我们的方法在提高准确性的同时减小了模型大小。