基于大规模训练自组织映射和学习向量量化的肺结节分类

Yan Soon Weei, H. S. Pheng
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引用次数: 0

摘要

肺内细胞的异常生长导致结节的发展,肺结节的过度生长最终会形成癌细胞。在早期阶段检测肺结节是至关重要的,这样可以在肺结节发展为致命的肺癌之前进行适当的治疗。近几十年来,机器学习已被广泛应用于计算机辅助系统中,为放射科医生在医学图像异常检测中提供第二意见。本文的目的是实现一种机器学习算法在计算机断层扫描(CT)图像上的肺结节分类和增强。实现了基于教学高斯值的子区域分类模型-大规模训练自组织映射和学习向量量化(MTSOM-LVQ)。利用高斯分布函数将每个子区域与其教学值相关联。结果表明,MTSOM-LVQ能够增强CT图像上的结节,抑制非结节。对地图大小、训练迭代、训练样本大小等参数的调整都会影响MTSOMLVQ的性能。此外,验证了MTSOM-LVQ的性能,分类灵敏度达到90%。综上所述,在今后的研究中,通过选择优化后的参数,可以进一步提高MTSOM-LVQ的训练精度。
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Lung Nodules Classification Using Massive-Training Self-Organizing Map and Learning Vector Quantization
The abnormal growth of cells in the lungs leads to the development of nodules and the overgrowth of lung nodules will eventually form a cancerous cell. Detection of lung nodules in the early stage is vital in such a way that proper treatments can be applied before the lung nodules grow into lethal lung cancer. In recent decades, machine learning has been widely used in the computer aided system to provide second opinion to the radiologists in the detection of abnormality on medical images. The aim of this paper is to implement a machine learning algorithm in the classification and enhancement of lung nodules on computed tomography (CT) images. The classification model – Massive-Training Self-Organizing Map and Learning Vector Quantization (MTSOM-LVQ) is implemented to classify the sub-regions based on the teaching Gaussian values. Each sub-region is associated with its teaching value generated by using Gaussian distribution function. The results show that MTSOM-LVQ is able to enhance nodules and suppressing non-nodules on CT images. Adjustment on the parameters such as map size, training iteration and size of the training sample would affect the performance of the MTSOMLVQ. Besides, the performance of the MTSOM-LVQ is validated and 90% classification sensitivity is achieved. As a conclusion, the training accuracy can be further improved by choosing the optimized parameters for MTSOM-LVQ in future research.
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