MeVs-deep CNN:用于高效肺癌分类的优化深度学习模型

IF 3 4区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Ranjana M. Sewatkar, Asnath Victy Phamila Y
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引用次数: 0

摘要

肺癌是一种影响许多人的危险疾病。癌症的类型和部位是决定适当治疗的关键因素。早期识别癌细胞可以挽救无数生命,因此开发自动检测技术至关重要。尽管多年来研究人员提出了许多方法,但要达到较高的预测准确度仍是一项长期挑战。针对这一问题,本研究采用基于深度卷积神经网络(MeVs-deep CNN)的 "记忆启用秃鹫搜索优化"(Memory-Enabled Vulture Search Optimization)来开发一种自主、准确的肺癌分类系统。数据最初来自 PET/CT 数据集,并使用非局部均值(NL-Means)方法进行预处理。然后使用提出的 MeVs 优化方法对数据进行分割。特征提取过程结合了基于统计、纹理和强度的特征以及基于 Resnet-101 的特征,从而创建了用于癌症分类和多级标准化卷积融合模型的最终特征向量。随后,MeVs-deep CNN 利用 MeVs 优化技术对肺癌进行自动分类。该研究的主要贡献在于 MeVs 优化,它能利用拟合函数有效调整分类器的参数。输出结果使用准确度、灵敏度、特异性、AUC 和损失函数等指标进行评估。MeVs-deep CNN 的效率通过这些指标得到了证明,在训练阶段达到了 97.08%、97.93%、96.42%、95.88% 和 2.92% 的数值;在训练阶段达到了 95.78%、95.34%、96.测试百分比分别为 95.78%、95.34%、96.42%、93.48% 和 4.22%;k-fold 训练数据分别为 96.33%、95.20%、97.65%、94.83% 和 3.67%;k-fold 测试数据分别为 94.16%、95.20%、93.30%、91.66% 和 5.84%。这些结果证明了研究的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

MeVs-deep CNN: optimized deep learning model for efficient lung cancer classification

MeVs-deep CNN: optimized deep learning model for efficient lung cancer classification

Lung cancer is a dangerous condition that impacts many people. The type and location of cancer are critical factors in determining the appropriate medical treatment. Early identification of cancer cells can save numerous lives, making the development of automated detection techniques essential. Although many methods have been proposed by researchers over the years, achieving high prediction accuracy remains a persistent challenge. Addressing this issue, this research employs Memory-Enabled Vulture Search Optimization based on Deep Convolutional Neural Networks (MeVs-deep CNN) to develop an autonomous, accurate lung cancer categorization system. The data is initially gathered from the PET/CT dataset and preprocessed using the Non-Local Means (NL-Means) approach. The proposed MeVs optimization approach is then used to segment the data. The feature extraction process incorporates statistical, texture, and intensity-based features and Resnet-101-based features, resulting in the creation of the final feature vector for cancer classification and the multi-level standardized convolutional fusion model. Subsequently, the MeVs-deep CNN leverages the MeVs optimization technique to automatically classify lung cancer. The key contribution of the research is the MeVs optimization, which effectively adjusts the classifier's parameters using the fitness function. The output is evaluated using metrics such as accuracy, sensitivity, specificity, AUC, and loss function. The efficiency of the MeVs-deep CNN is demonstrated through these metrics, achieving values of 97.08%, 97.93%, 96.42%, 95.88%, and 2.92% for training phase; 95.78%, 95.34%, 96.42%, 93.48%, and 4.22% for testing percentage; 96.33%, 95.20%, 97.65%, 94.83%, and 3.67% for k-fold train data; and 94.16%, 95.20%, 93.30%, 91.66%, and 5.84% for k-fold test data. These results demonstrate the effectiveness of the research.

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来源期刊
Multimedia Tools and Applications
Multimedia Tools and Applications 工程技术-工程:电子与电气
CiteScore
7.20
自引率
16.70%
发文量
2439
审稿时长
9.2 months
期刊介绍: Multimedia Tools and Applications publishes original research articles on multimedia development and system support tools as well as case studies of multimedia applications. It also features experimental and survey articles. The journal is intended for academics, practitioners, scientists and engineers who are involved in multimedia system research, design and applications. All papers are peer reviewed. Specific areas of interest include: - Multimedia Tools: - Multimedia Applications: - Prototype multimedia systems and platforms
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