基于优化卷积神经网络的肺结节检测:改进蛾焰算法的影响。

IF 1.5 Q3 INSTRUMENTS & INSTRUMENTATION
Anuja Eliza Sebastian, Disha Dua
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引用次数: 2

摘要

肺癌是一种影响全世界人民的高风险疾病,肺结节是早期肺癌最常见的征兆。由于肺癌的早期识别可以大大提高肺部扫描患者的生存机会,因此准确有效的结节检测系统至关重要。自动肺结节识别减少了放射科医生的努力,以及误诊和漏诊的风险。为此,本文开发了一种新的肺结节检测模型,该模型包括“图像预处理、分割、特征提取和分类”四个阶段。在这个过程中,预处理是第一步,对输入的图像进行一系列的操作。然后,使用“Otsu阈值分割模型”对预处理后的图像进行分割。然后在第三阶段,检索LBP特征,然后通过优化的卷积神经网络(CNN)进行分类。在这种情况下,CNN的激活函数和卷积层数通过一种被称为改进蛾焰优化(IMFO)的算法进行优化调整。最后,通过对若干措施的分析,验证了方案的改进。与现有的SVM、KNN、CNN、MFO、WTEEB和GWO + FRVM方法相比,准确率分别提高了6.85%、2.91%、1.75%、0.73%、1.83%和4.05%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Lung Nodule Detection via Optimized Convolutional Neural Network: Impact of Improved Moth Flame Algorithm.

Lung Nodule Detection via Optimized Convolutional Neural Network: Impact of Improved Moth Flame Algorithm.

Lung Nodule Detection via Optimized Convolutional Neural Network: Impact of Improved Moth Flame Algorithm.

Lung Nodule Detection via Optimized Convolutional Neural Network: Impact of Improved Moth Flame Algorithm.

Lung cancer is a high-risk disease that affects people all over the world, and lung nodules are the most common sign of early lung cancer. Since early identification of lung cancer can considerably improve a lung scanner patient's chances of survival, an accurate and efficient nodule detection system can be essential. Automatic lung nodule recognition decreases radiologists' effort, as well as the risk of misdiagnosis and missed diagnoses. Hence, this article developed a new lung nodule detection model with four stages like "Image pre-processing, segmentation, feature extraction and classification". In this processes, pre-processing is the first step, in which the input image is subjected to a series of operations. Then, the "Otsu Thresholding model" is used to segment the pre-processed pictures. Then in the third stage, the LBP features are retrieved that is then classified via optimized Convolutional Neural Network (CNN). In this, the activation function and convolutional layer count of CNN is optimally tuned via a proposed algorithm known as Improved Moth Flame Optimization (IMFO). At the end, the betterment of the scheme is validated by carrying out analysis in terms of certain measures. Especially, the accuracy of the proposed work is 6.85%, 2.91%, 1.75%, 0.73%, 1.83%, as well as 4.05% superior to the extant SVM, KNN, CNN, MFO, WTEEB as well as GWO + FRVM methods respectively.

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来源期刊
Sensing and Imaging
Sensing and Imaging INSTRUMENTS & INSTRUMENTATION-
CiteScore
5.00
自引率
0.00%
发文量
31
期刊介绍: Sensing and Imaging: An International Journal publishes peer-reviewed theoretical and experimental papers in print and online covering sensing and imaging techniques, systems, networks, and applications in engineering, science and medicine. The journal scope is broad and multidisciplinary, covering subsurface and surface sensing, and other sensing areas. Subsurface and surface sensing involves detection, identification and classification of objects, structures and matter, respectively, under and at surfaces.
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