Lung Tumor Segmentation Using Marker-Controlled Watershed and Support Vector Machine

Surbhi Vijh, Rituparna Sarma, Sumit Kumar
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引用次数: 3

Abstract

The medical imaging technique showed remarkable improvement in interventional treatment of computer-aided medical diagnosis system. Image processing techniques are broadly applied in detection and exploring the abnormalities issues in tumor detection. The early stage of lung tumor detection is extremely important in medical research field. The proposed work uses image processing segmentation technique for detection of lung tumor and the support vector classifier learning technique for predicting stage of tumor. After performing preprocessing and segmentation the features are extracted from region of lung nodule. The classification is performed on dataset acquired from national cancer institute for the evaluation of lung cancer diagnosis. The multi-class machine learning classification technique SVM (support vector machine) identifies the tumor stage of lung dataset. The proposed methodology provides classification of tumor stages and improves the decision-making process. The performance is evaluated by measuring the parameters namely accuracy, sensitivity, and specificity.
基于标记控制分水岭和支持向量机的肺肿瘤分割
医学影像技术在计算机辅助医学诊断系统介入治疗中的应用有了显著的提高。图像处理技术被广泛应用于检测和探索肿瘤检测中的异常问题。肺肿瘤的早期检测在医学研究领域具有极其重要的意义。本文采用图像处理分割技术对肺肿瘤进行检测,采用支持向量分类器学习技术对肿瘤分期进行预测。经过预处理和分割,提取肺结节区域的特征。分类是在国家癌症研究所获得的用于肺癌诊断评估的数据集上进行的。采用多类机器学习分类技术SVM(支持向量机)对肺数据集的肿瘤分期进行识别。提出的方法提供肿瘤分期的分类和改进决策过程。通过测量准确性、灵敏度和特异性等参数来评估其性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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