An Improved Algorithm for Chest X-Ray Image Classification

B. A. Nugroho
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Abstract

The application of a Deep Neural Network for medical image classification has been known widely to help the tasks of an accurate doctor assessment. One of the applications is the classification of diseases from Chest X-Ray images. The NIH Chest X-Ray dataset is the most popular and the most prominent medical images database in the field. Several approaches have been made to improve the classification of the 14 classes from the dataset, including modifying network layers, handcrafting the dataset, and conducting smart-augmentation. We propose a weight modification algorithm to overcome the class imbalance problem. Hence, our objective is to improve the classification. The work's novelty is the proposed framework to improve the classification performance, which includes: (i) a novel weight calculation formula, (ii) the real-dataset augmentation into the training data. Experimental results are provided to show the improved classification performance. Our experiments are based on the standardized split-sets, which are also used by previous researches. The steady-state experiment settings are required to achieve acceptable results for the dataset. This study contributes to (i) the further cost-sensitive algorithm to train an imbalance Chest X-Ray dataset, also (ii) we provide results under identical settings compared to the previous study.
一种改进的胸部x射线图像分类算法
深度神经网络在医学图像分类中的应用已被广泛应用于帮助医生准确评估任务。其中一个应用是根据胸部x光图像对疾病进行分类。NIH胸部x射线数据集是该领域最受欢迎和最突出的医学图像数据库。已经提出了几种方法来改进来自数据集的14个类的分类,包括修改网络层、手工制作数据集和进行智能增强。我们提出了一种权值修正算法来克服类不平衡问题。因此,我们的目标是改进分类。该工作的新颖之处在于提出了提高分类性能的框架,其中包括:(i)新的权重计算公式,(ii)将真实数据集增强到训练数据中。实验结果表明了改进后的分类性能。我们的实验是基于标准化的分裂集,这也是以前的研究所使用的。为了使数据集获得可接受的结果,需要稳态实验设置。本研究有助于(i)进一步的成本敏感算法来训练不平衡胸部x射线数据集,以及(ii)我们提供了与先前研究相同设置下的结果。
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