基于卷积神经网络的胸片肺炎自动检测

Septy Aminatul Khoiriyah, A. Basofi, A. Fariza
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引用次数: 11

摘要

x射线成像是一种非侵入性方法,它将小剂量的电离辐射暴露在身体的某些部位,以帮助医生诊断包括肺炎在内的疾病。对放射科医生来说,在胸部x光图像上检测肺炎可能很困难,因为x光图像通常不清晰,与其他诊断重叠,并接近许多其他异常。这种自动化方法是作为帮助医生诊断肺炎的决策支持工具而开发的。本文提出了不同的深度卷积神经网络结构,并采用增强策略对胸部x线图像中的肺炎检测进行分类。我们使用三个卷积层和三个分类层(完全连接)。调整大小、翻转和旋转增强策略以避免过拟合。实验结果表明,在本文提出的CNN架构上,增强策略的准确率值为83.38%,而未增强策略的准确率值为80.25%。使用增强策略和不使用增强策略的预测结果之间的微小差异表明,所提出的CNN架构可以训练小数据集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional Neural Network for Automatic Pneumonia Detection in Chest Radiography
X-ray imagery is a non-invasive method that involves exposure to small doses of ionizing radiation to parts of the body to help doctors diagnose diseases, including pneumonia. Detecting pneumonia on a chest X-ray image can be difficult for radiologists because X-ray images are often unclear, overlap with other diagnoses, and approach many other abnormalities. The automated method was developed as a decision support tool to help doctors diagnose pneumonia. This paper proposes different deep convolution neural network architectures with an augmentation strategy to classify the pneumonia detection from the chest X-ray images. We use three convolution layers and three classification layers (fully connected). Resize, flip, and rotation augmentation strategy to avoid overfitting. The experiment result shows that the augmentation strategy on the proposed CNN's architecture results in an accuracy value of 83,38% while on without augmentation result accuracy value 80,25%. The small difference between prediction results with the augmentation strategy and without the augmentation strategy shows that the proposed CNN's architecture can train small datasets.
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