Meta Ordinal Regression Forest for Medical Image Classification with Ordinal Labels
This work addresses the challenge of leveraging ordinal label information in medical image classification, which is crucial for tasks like tumor grading, but it appears incremental as it builds on existing CNN and forest-based approaches.
The paper tackles the problem of medical image classification with ordinal labels by proposing a meta ordinal regression forest (MORF) method, which improves generalization by incorporating ordinal information through a combination of CNN and differential forest in a meta-learning framework, achieving superior performance over state-of-the-art methods on datasets like LIDC-IDRI and Breast Ultrasound Dataset.
The performance of medical image classification has been enhanced by deep convolutional neural networks (CNNs), which are typically trained with cross-entropy (CE) loss. However, when the label presents an intrinsic ordinal property in nature, e.g., the development from benign to malignant tumor, CE loss cannot take into account such ordinal information to allow for better generalization. To improve model generalization with ordinal information, we propose a novel meta ordinal regression forest (MORF) method for medical image classification with ordinal labels, which learns the ordinal relationship through the combination of convolutional neural network and differential forest in a meta-learning framework. The merits of the proposed MORF come from the following two components: a tree-wise weighting net (TWW-Net) and a grouped feature selection (GFS) module. First, the TWW-Net assigns each tree in the forest with a specific weight that is mapped from the classification loss of the corresponding tree. Hence, all the trees possess varying weights, which is helpful for alleviating the tree-wise prediction variance. Second, the GFS module enables a dynamic forest rather than a fixed one that was previously used, allowing for random feature perturbation. During training, we alternatively optimize the parameters of the CNN backbone and TWW-Net in the meta-learning framework through calculating the Hessian matrix. Experimental results on two medical image classification datasets with ordinal labels, i.e., LIDC-IDRI and Breast Ultrasound Dataset, demonstrate the superior performances of our MORF method over existing state-of-the-art methods.