Comparing Stacking Ensemble Techniques to Improve Musculoskeletal Fracture Image Classification.
Ibrahem KandelMauro CastelliAleš PopovičPublished in: Journal of imaging (2021)
Bone fractures are among the main reasons for emergency room admittance and require a rapid response from doctors. Bone fractures can be severe and can lead to permanent disability if not treated correctly and rapidly. Using X-ray imaging in the emergency room to detect fractures is a challenging task that requires an experienced radiologist, a specialist who is not always available. The availability of an automatic tool for image classification can provide a second opinion for doctors operating in the emergency room and reduce the error rate in diagnosis. This study aims to increase the existing state-of-the-art convolutional neural networks' performance by using various ensemble techniques. In this approach, different CNNs (Convolutional Neural Networks) are used to classify the images; rather than choosing the best one, a stacking ensemble provides a more reliable and robust classifier. The ensemble model outperforms the results of individual CNNs by an average of 10%.
Keyphrases
- convolutional neural network
- deep learning
- public health
- emergency department
- high resolution
- machine learning
- healthcare
- bone mineral density
- emergency medical
- multiple sclerosis
- palliative care
- magnetic resonance imaging
- bone regeneration
- newly diagnosed
- mass spectrometry
- fluorescence imaging
- hip fracture
- dual energy
- sensitive detection