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Superpixel with nanoscale imaging and boosted deep convolutional neural network concept for lung tumor classification

机译:Superpixel与纳米级成像,并提升了肺肿瘤分类的深度卷积神经网络概念

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摘要

Lung tumor is a complex illness caused by irregular lung cell growth. Earlier tumor detection is a key factor in effective treatment planning. When assessing the lung computed tomography, the doctor has many difficulties when determining the precise tumor boundaries. By offering the radiologist a second opinion and helping to improve the sensitivity and accuracy of tumor detection, the use of computer-aided diagnosis could be near as effective. In this research article, the proposed Lung Tumor Detection Algorithm consists of four phases: image acquisition, preprocessing, segmentation, and classification. The Advance Target Map Superpixel-based Region Segmentation Algorithm is proposed for segmentation purposes, and then the tumor region is measured using the nanoimaging theory. Using the concept of boosted deep convolutional neural network yields 97.3% precision, image recognition can be achieved. In the types of literature with the current method, which shows the study's proposed efficacy, the implementation of the proposed approach is found dramatically.
机译:肺肿瘤是一种由不规则肺细胞生长引起的复杂疾病。早期的肿瘤检测是有效治疗计划的关键因素。在评估肺计算断层扫描时,医生在确定精确的肿瘤边界时具有许多困难。通过提供放射科医师第二种意见并帮助提高肿瘤检测的敏感性和准确性,使用计算机辅助诊断可能邻近有效。在本研究文章中,所提出的肺肿瘤检测算法由四个阶段组成:图像采集,预处理,分割和分类。提出了用于分割目的的预先目标图基于吡咯基区分割算法,然后使用纳米图像理论测量肿瘤区域。利用增强深度卷积神经网络的概念产生97.3%精度,可以实现图像识别。在具有目前方法的文献类型中,显示了研究所提出的疗效,急剧发现所提出的方法的实施。

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