Knowledge-Guided Multiview Deep Curriculum Learning for Elbow Fracture Classification
This work addresses a domain-specific problem in medical imaging for elbow fracture diagnosis, offering an incremental improvement by combining multiview networks with curriculum learning.
The authors tackled elbow fracture subtype classification by developing a multiview deep learning method that integrates medical knowledge via curriculum learning, achieving superior performance over existing methods on a dataset of 1,964 X-ray images.
Elbow fracture diagnosis often requires patients to take both frontal and lateral views of elbow X-ray radiographs. In this paper, we propose a multiview deep learning method for an elbow fracture subtype classification task. Our strategy leverages transfer learning by first training two single-view models, one for frontal view and the other for lateral view, and then transferring the weights to the corresponding layers in the proposed multiview network architecture. Meanwhile, quantitative medical knowledge was integrated into the training process through a curriculum learning framework, which enables the model to first learn from "easier" samples and then transition to "harder" samples to reach better performance. In addition, our multiview network can work both in a dual-view setting and with a single view as input. We evaluate our method through extensive experiments on a classification task of elbow fracture with a dataset of 1,964 images. Results show that our method outperforms two related methods on bone fracture study in multiple settings, and our technique is able to boost the performance of the compared methods. The code is available at https://github.com/ljaiverson/multiview-curriculum.