Accurate Occupational Pneumoconiosis Staging with Imbalanced Data

Kaiguang Yang, Ye Wang, Qianhao Luo, Xin Liu, Weiling Li
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Abstract

Occupational pneumoconiosis (OP) staging is a vital task concerning the lung healthy of a subject. The staging result of a patient is depended on the staging standard and his chest X-ray. It is essentially an image classification task. However, the distribution of OP data is commonly imbalanced, which largely reduces the effect of classification models which are proposed under the assumption that data follow a balanced distribution and causes inaccurate staging results. To achieve accurate OP staging, we proposed an OP staging model who is able to handle imbalance data in this work. The proposed model adopts gray level co-occurrence matrix (GLCM) to extract texture feature of chest X-ray and implements classification with a weighted broad learning system (WBLS). Empirical studies on six data cases provided by a hospital indicate that proposed model can perform better OP staging than state-of-the-art classifiers with imbalanced data.
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基于不平衡数据的职业性尘肺准确分期
职业性尘肺病(OP)分期是一项关系到受试者肺部健康的重要任务。病人的分期取决于分期标准和胸片。它本质上是一个图像分类任务。然而,OP数据的分布通常是不平衡的,这在很大程度上降低了在数据遵循平衡分布的假设下提出的分类模型的效果,导致分期结果不准确。为了实现准确的OP分期,我们提出了一种能够处理不平衡数据的OP分期模型。该模型采用灰度共生矩阵(GLCM)提取胸片纹理特征,并采用加权广义学习系统(WBLS)实现分类。对某医院提供的6个数据案例的实证研究表明,该模型比目前最先进的数据不平衡分类器能更好地进行OP分期。
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