利用CNN进行胸片疾病分类

Tejasvi Raj Pant, Ravi Kiran Aryal, Tribikram Panthi, Milan Maharjan, Basanta Joshi
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引用次数: 1

摘要

随着科技的进步,许多比过去更准确、更容易的事情已经成为可能。利用图像处理和机器学习技术,医学科学取得了许多显著的成就。本文立足于卷积神经网络的基础上,对胸片患者进行疾病诊断。所使用的数据集来自Kaggle提供的美国国立卫生研究院胸部x射线数据集。在数据集中的14种疾病中发现了7种疾病的大量输出,即肺不张、实变、积液、肿块、结节、胸膜增厚和气胸。在将这7种疾病作为个体疾病考虑时,多标签分类的准确率分别为60%和75%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Disease Classification of Chest X-Ray using CNN
With the advancement of technology, many things with greater accuracy and ease than past had been made possible. Using image processing and machine learning techniques, various noticeable achievements have been seen in medical science. This paper stands on the foundation of the Convolution Neural Network to diagnose the disease of patients from Chest X-Ray. The dataset used is from the National Institutes of Health Chest X-Ray Dataset available in Kaggle. Considerable output for seven diseases namely Atelectasis, Consolidation, Effusion, Mass, Nodule, Pleural Thickening, and Pneumothorax was found out of fourteen diseases available in the dataset. The accuracy for multilabel classification among these 7 diseases was found to be 60% and 75% while considering it as an individual disease.
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