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SMO-based System for identifying common lung conditions using histogram

机译:基于SMO的直方图识别常见肺部疾病的系统

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摘要

A radiograph is a visualization aid that physicians use in identifying lung abnormalities. Although digitized x-ray images are available, diagnosis by a medical expert through pattern recognition is done manually. Thus, this paper presents a system that utilizes machine learning for pattern recognition and classification of three lung conditions, namely Normal, Pleural Effusion and Pneumothorax cases. Using two histogram equalization techniques, the designed system achieves an accuracy rate of 76.19% and 78.10% by using Sequential Minimal Optimization (SMO).
机译:射线照相是医生用来识别肺部异常的可视化辅助工具。尽管可以获得数字化的X射线图像,但是医学专家通过模式识别进行的诊断是手动完成的。因此,本文提出了一种利用机器学习进行模式识别和对三种肺部疾病(即正常,胸腔积液和气胸病例)进行分类的系统。通过使用两种直方图均衡技术,设计的系统通过使用顺序最小优化(SMO)达到了76.19%和78.10%的准确率。

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