Ang Nan Gu, Michael Tsang, Hooman Vaseli, Teresa Tsang, Purang Abolmaesumi
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引用次数: 0
摘要
超声引导诊断的根本问题在于,获取的图像通常是三维解剖的二维横截面,可能会遗漏重要的解剖细节。这一局限性导致超声心动图检查面临挑战,如心脏瓣膜显示不清或心室缩短。临床医生在解释这些图像时必须考虑到固有的不确定性,而机器学习的单击标签不具备这种细微差别。我们提出了不确定性再训练(RT4U),这是一种以数据为中心的方法,可将不确定性引入训练集中的弱信息输入。这种简单的方法可用于现有的最先进的主动脉狭窄分类方法,以进一步提高其准确性。我们在三个不同的数据集上验证了 RT4U 的有效性:一个公共(TMED-2)和一个私人 AS 数据集,以及一个源自 CIFAR-10 的玩具数据集。
Reliable Multi-View Learning with Conformal Prediction for Aortic Stenosis Classification in Echocardiography
The fundamental problem with ultrasound-guided diagnosis is that the acquired
images are often 2-D cross-sections of a 3-D anatomy, potentially missing
important anatomical details. This limitation leads to challenges in ultrasound
echocardiography, such as poor visualization of heart valves or foreshortening
of ventricles. Clinicians must interpret these images with inherent
uncertainty, a nuance absent in machine learning's one-hot labels. We propose
Re-Training for Uncertainty (RT4U), a data-centric method to introduce
uncertainty to weakly informative inputs in the training set. This simple
approach can be incorporated to existing state-of-the-art aortic stenosis
classification methods to further improve their accuracy. When combined with
conformal prediction techniques, RT4U can yield adaptively sized prediction
sets which are guaranteed to contain the ground truth class to a high accuracy.
We validate the effectiveness of RT4U on three diverse datasets: a public
(TMED-2) and a private AS dataset, along with a CIFAR-10-derived toy dataset.
Results show improvement on all the datasets.