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Automated lung nodule detection and classification based on multiple classifiers voting

机译:基于多分类器投票的自动肺结节检测和分类

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摘要

Lung cancer is the most common cause of cancer-related death globally. Currently, lung nodule detection and classification are performed by radiologist-assisted computer-aided diagnosis systems. However, emerged artificially intelligent techniques such as neural network, support vector machine, and HMM have improved the detection and classification process of cancer in any part of the human body. Such automated methods and their possible combinations could be used to assist radiologists at early detection of lung nodules that could reduce treatment cost, death rate. Literature reveals that classification based on voting of classifiers exhibited better performance in the detection and classification process. Accordingly, this article presents an automated approach for lung nodule detection and classification that consists of multiple steps including lesion enhancement, segmentation, and features extraction from each candidate's lesion. Moreover, multiple classifiers logistic regression, multilayer perceptron, and voted perceptron are tested for the lung nodule classification using k-fold cross-validation process. The proposed approach is evaluated on the publically available Lung Image Database Consortium benchmark data set. Based on the performance evaluation, it is observed that the proposed method performed better in the stateof the art and achieved an overall accuracy rate of 100%.
机译:肺癌是全球癌症相关死亡最常见的原因。目前,通过放射科辅助的计算机辅助诊断系统进行肺结核检测和分类。然而,由于神经网络,支持向量机和肝脏等人为智能技术,并且在人体的任何部分中提高了癌症的检测和分类过程。这种自动化方法及其可能的组合可用于帮助放射科医师在早期检测肺结节,这可以降低治疗成本,死亡率。文献揭示了基于分类器的投票的分类在检测和分类过程中表现出更好的性能。因此,本文介绍了肺结核检测和分类的自动方法,该分类包括多个步骤,包括来自每个候选病变的病变增强,分段和特征提取。此外,使用K折叠交叉验证过程测试多个分类器逻辑回归,多层感知者和投票的感知者。所提出的方法是在公开可用的肺图像数据库联盟基准数据集上进行评估。基于性能评价,观察到该方法在本领域的状态下表现更好,并实现了100%的总精度率。

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