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Pulmonary nodules detection algorithm based on robust cascade classifier for CT images

机译:基于鲁棒级联分类器的CT图像肺结节检测算法

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Lung cancer has been the deadliest among all other types of cancer. Our purpose is to propose an efficient method to detect the pulmonary nodules from CT images and classify the nodule into either cancerous (Malignant) or non-cancerous (Benign). We achieve this by framing the problem as a constructing classifier task and exploit data in the form of classifier to learn a mapping from raw data to object classification. In particular, we propose a learning method based on a form of cascade classifier which allows learning in a supervised manner, only based on pulmonary nodule image block extracted from the original CT images without access to around-information annotations. In order to validate our approach, we use a synthetic database to mimic the task of detecting pulmonary nodule automatically from CT images - as commonly encountered in automatic detection of medical images applications - and show that classifier can automatically detect pulmonary nodules from the lungs CT images accurately. The method is able to achieve an overall accuracy of 97.01%.
机译:在所有其他类型的癌症中,肺癌是最致命的。我们的目的是提出一种从CT图像中检测肺结节并将结节分为癌性(恶性)或非癌性(良性)的有效方法。我们通过将问题视为构建分类器任务来实现这一目标,并以分类器的形式利用数据来学习从原始数据到对象分类的映射。特别是,我们提出了一种基于级联分类器形式的学习方法,该方法仅基于从原始CT图像中提取的肺结节图像块进行访问,而无需访问周围信息注释,从而可以以监督方式进行学习。为了验证我们的方法,我们使用了一个综合数据库来模拟从CT图像自动检测肺结节的任务(这在医学图像应用程序的自动检测中很常见),并显示分类器可以从肺部CT图像自动检测肺结节准确。该方法能够达到97.01 \%的整体精度。

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