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A Comparative Analysis of Image Segmentation Techniques Toward Automatic Risk Prediction of Solitary Pulmonary Nodules

机译:孤立肺结节自动风险预测图像分割技术的比较分析

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Lung cancer is considered as a leading cause of death throughout the globe. Manual interpretation of cancer detection is time consuming and thus increases the death rate. With the help of improvement in medical imaging technology, a computer-aided diagnostics system could be an aid to combat this disease. Automatic segmentation of a region of interest is one of the most challenging problem in medical image analysis. An inaccurate segmentation of solitary pulmonary nodule may lead to an erroneous prediction of the disease. In this paper, we perform a comparative study among the available segmentation techniques, which can automatically segment the solitary pulmonary nodules from high-resolution computed tomography (CT) images and then we propose a computerized lung nodule risk prediction model based on the best segmentation technique.
机译:肺癌被视为全球各地死亡的主要原因。手动解释癌症检测是耗时,从而提高了死亡率。在改善医学成像技术的帮助下,计算机辅助诊断系统可能是对抗这种疾病的帮助。感兴趣区域的自动分割是医学图像分析中最具挑战性的问题之一。孤立肺结核的不准确的分割可能导致对疾病的错误预测。在本文中,我们在可用的分割技术中进行比较研究,可以自动分段从高分辨率计算断层扫描(CT)图像中孤立肺结节,然后我们提出基于最佳分割技术的计算机化肺结节风险预测模型。

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