IEEE J Biomed Health Inform. 2023 Jul;27(7):3513-3524. doi: 10.1109/JBHI.2023.3267057. Epub 2023 Jun 30.
To accurately diagnose pneumonia patients on a limited annotated chest X-ray image dataset, a prior knowledge-based active attention network (PKA-Net) was constructed. The PKA-Net uses improved ResNet as the backbone network and consists of residual blocks, novel subject enhancement and background suppression (SEBS) blocks and candidate template generators, where template generators are designed to generate candidate templates for characterizing the importance of different spatial locations in feature maps. The core of PKA-Net is SEBS block, which is proposed based on the prior knowledge that highlighting distinctive features and suppressing irrelevant features can improve the recognition effect. The purpose of SEBS block is to generate active attention features without any high-level features and enhance the ability of the model to localize lung lesions. In SEBS block, first, a series of candidate templates T with different spatial energy distributions are generated and the controllability of the energy distribution in T enables active attention features to maintain the continuity and integrity of the feature space distributions. Second, Top-n templates are selected from T according to certain learning rules, which are then operated by a convolution layer for generating supervision information that can guide the inputs of SEBS block to form active attention features. We evaluated the PKA-Net on the binary classification problem of identifying pneumonia and healthy controls on a dataset containing 5856 chest X-ray images (ChestXRay2017), the results showed that our method can achieve 97.63% accuracy and 0.9872 sensitivity.
为了在有限标注的胸部 X 射线图像数据集上准确诊断肺炎患者,构建了一个基于先验知识的主动注意网络(PKA-Net)。PKA-Net 使用改进的 ResNet 作为骨干网络,由残差块、新颖的主题增强和背景抑制(SEBS)块和候选模板生成器组成,其中模板生成器用于生成候选模板以描述特征图中不同空间位置的重要性。PKA-Net 的核心是 SEBS 块,它是基于突出显著特征和抑制不相关特征可以提高识别效果的先验知识提出的。SEBS 块的目的是生成无需任何高级特征的主动注意特征,并增强模型定位肺部病变的能力。在 SEBS 块中,首先生成一系列具有不同空间能量分布的候选模板 T,T 中的能量分布的可控性使主动注意特征能够保持特征空间分布的连续性和完整性。其次,根据一定的学习规则从 T 中选择 Top-n 模板,然后对其进行卷积层操作,生成可以指导 SEBS 块输入形成主动注意特征的监督信息。我们在包含 5856 张胸部 X 射线图像(ChestXRay2017)的数据集上评估了 PKA-Net 在肺炎和健康对照的二分类问题上的性能,结果表明,我们的方法可以达到 97.63%的准确率和 0.9872 的灵敏度。