Institute of Statistics, National Chiao Tung University, Hsinchu, Taiwan.
Department of Pediatrics, Chang Gung Memorial Hospital, Kaohsiung Medical Centre, Kaohsiung, Taiwan.
Sci Rep. 2020 Oct 15;10(1):17374. doi: 10.1038/s41598-020-73831-5.
Acute lower respiratory infection is the leading cause of child death in developing countries. Current strategies to reduce this problem include early detection and appropriate treatment. Better diagnostic and therapeutic strategies are still needed in poor countries. Artificial-intelligence chest X-ray scheme has the potential to become a screening tool for lower respiratory infection in child. Artificial-intelligence chest X-ray schemes for children are rare and limited to a single lung disease. We need a powerful system as a diagnostic tool for most common lung diseases in children. To address this, we present a computer-aided diagnostic scheme for the chest X-ray images of several common pulmonary diseases of children, including bronchiolitis/bronchitis, bronchopneumonia/interstitial pneumonitis, lobar pneumonia, and pneumothorax. The study consists of two main approaches: first, we trained a model based on YOLOv3 architecture for cropping the appropriate location of the lung field automatically. Second, we compared three different methods for multi-classification, included the one-versus-one scheme, the one-versus-all scheme and training a classifier model based on convolutional neural network. Our model demonstrated a good distinguishing ability for these common lung problems in children. Among the three methods, the one-versus-one scheme has the best performance. We could detect whether a chest X-ray image is abnormal with 92.47% accuracy and bronchiolitis/bronchitis, bronchopneumonia, lobar pneumonia, pneumothorax, or normal with 71.94%, 72.19%, 85.42%, 85.71%, and 80.00% accuracy, respectively. In conclusion, we provide a computer-aided diagnostic scheme by deep learning for common pulmonary diseases in children. This scheme is mostly useful as a screening for normal versus most of lower respiratory problems in children. It can also help review the chest X-ray images interpreted by clinicians and may remind possible negligence. This system can be a good diagnostic assistance under limited medical resources.
急性下呼吸道感染是发展中国家儿童死亡的主要原因。目前减少这一问题的策略包括早期发现和适当治疗。在贫穷国家,仍需要更好的诊断和治疗策略。人工智能 X 射线胸片方案有可能成为儿童下呼吸道感染的筛查工具。儿童人工智能 X 射线方案很少,且仅限于单一肺部疾病。我们需要一个强大的系统作为儿童最常见肺部疾病的诊断工具。为此,我们提出了一种计算机辅助诊断方案,用于儿童几种常见肺部疾病的 X 射线胸片图像,包括细支气管炎/支气管炎、支气管肺炎/间质性肺炎、大叶性肺炎和气胸。该研究包括两种主要方法:首先,我们基于 YOLOv3 架构训练了一个模型,用于自动裁剪肺部区域。其次,我们比较了三种用于多分类的方法,包括一对一方案、一对多方案和基于卷积神经网络训练分类器模型。我们的模型对这些儿童常见肺部问题具有良好的区分能力。在这三种方法中,一对一方案的性能最好。我们可以以 92.47%的准确率检测到 X 射线胸片图像是否异常,并且以 71.94%、72.19%、85.42%、85.71%和 80.00%的准确率分别检测到细支气管炎/支气管炎、支气管肺炎、大叶性肺炎、气胸或正常。总之,我们通过深度学习为儿童常见肺部疾病提供了一种计算机辅助诊断方案。该方案主要用于正常与儿童下呼吸道问题的筛查,也可帮助临床医生审查解读的 X 射线胸片图像,并可能提醒可能的疏忽。在医疗资源有限的情况下,该系统可以作为一种很好的诊断辅助手段。