A Reliable and Interpretable Framework of Multi-view Learning for Liver Fibrosis Staging

Zheyao Gao, Yuanye Liu, Fuping Wu, N. Shi, Yuxin Shi, X. Zhuang
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引用次数: 1

Abstract

Staging of liver fibrosis is important in the diagnosis and treatment planning of patients suffering from liver diseases. Current deep learning-based methods using abdominal magnetic resonance imaging (MRI) usually take a sub-region of the liver as an input, which nevertheless could miss critical information. To explore richer representations, we formulate this task as a multi-view learning problem and employ multiple sub-regions of the liver. Previously, features or predictions are usually combined in an implicit manner, and uncertainty-aware methods have been proposed. However, these methods could be challenged to capture cross-view representations, which can be important in the accurate prediction of staging. Therefore, we propose a reliable multi-view learning method with interpretable combination rules, which can model global representations to improve the accuracy of predictions. Specifically, the proposed method estimates uncertainties based on subjective logic to improve reliability, and an explicit combination rule is applied based on Dempster-Shafer's evidence theory with good power of interpretability. Moreover, a data-efficient transformer is introduced to capture representations in the global view. Results evaluated on enhanced MRI data show that our method delivers superior performance over existing multi-view learning methods.
肝纤维化分期的可靠和可解释的多视角学习框架
肝纤维化分期在肝病患者的诊断和治疗计划中具有重要意义。目前使用腹部磁共振成像(MRI)的基于深度学习的方法通常将肝脏的一个亚区域作为输入,然而这可能会遗漏关键信息。为了探索更丰富的表征,我们将此任务制定为一个多视图学习问题,并使用肝脏的多个子区域。以前,特征或预测通常以隐式方式组合,并提出了不确定性感知方法。然而,这些方法在捕获交叉视图表示方面可能会受到挑战,这对于准确预测分期很重要。因此,我们提出了一种可靠的多视图学习方法,该方法具有可解释的组合规则,可以对全局表示进行建模,以提高预测的准确性。具体而言,该方法基于主观逻辑估计不确定性,提高了可靠性,并基于Dempster-Shafer证据理论采用显式组合规则,具有良好的可解释性。此外,还引入了一个数据高效的转换器来捕获全局视图中的表示。对增强MRI数据的评估结果表明,我们的方法比现有的多视图学习方法具有更好的性能。
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