Early prediction of cerebral palsy is essential as it leads to early treatment and monitoring. Deep learning has shown promising results in biomedical engineering thanks to its capacity of modelling complicated data with its non-linear architecture. However, due to their complex structure, deep learning models are generally not interpretable by humans, making it difficult for clinicians to rely on the findings. In this paper, we propose a channel attention module for deep learning models to predict cerebral palsy from infants' body movements, which highlights the key features (i.e. body joints) the model identifies as important, thereby indicating why certain diagnostic results are found. To highlight the capacity of the deep network in modelling input features, we utilize raw joint positions instead of hand-crafted features. We validate our system with a real-world infant movement dataset. Our proposed channel attention module enables the visualization of the vital joints to this disease that the network considers. Our system achieves 91.67% accuracy, suppressing other state-of-the-art deep learning methods.
翻译:早期预测脑性麻痹至关重要,因为它会导致早期治疗和监测。深层学习通过其非线性结构模拟复杂数据的能力,在生物医学工程方面显示了令人乐观的成果。然而,由于深层学习模型的结构复杂,人类一般无法解释,因此临床医生难以依赖这些发现。在本文中,我们提议为深层学习模型提供一个关注模块,以预测婴儿身体运动中的脑性麻痹,这突出地显示了模型确定的重要特征(即身体连接),从而说明了为什么发现了某些诊断结果。为了突出深层网络在建模输入特征方面的能力,我们使用原始联合位置,而不是手动特征。我们用真实世界婴儿运动数据集验证了我们的系统。我们提议的对通道的关注模块使得网络所考虑的这一疾病的重要连接能够视觉化。我们的系统实现了91.67%的准确度,抑制了其他最先进的深层学习方法。