Irawati Indrarini Dyah, Hadiyoso Sugondo, Budiman Gelar, Fahmi Arfianto, Latip Rohaya
School of Applied Science, Telkom University, Bandung, Jawa Barat, Indonesia.
School of Electrical Engineering, Telkom University, Bandung, Jawa Barat, Indonesia.
J Med Signals Sens. 2022 Nov 10;12(4):278-284. doi: 10.4103/jmss.jmss_127_21. eCollection 2022 Oct-Dec.
Lung cancer images require large memory storage and transmission bandwidth for sending the data. Compressive sensing (CS), as a method with a statistical approach in signal sampling, provides different output patterns based on information sources. Thus, it can be considered that CS can be used for feature extraction of compressed information.
In this study, we proposed a novel texture extraction-based CS for lung cancer classification. We classify three types of lung cancer, including adenocarcinoma (ACA), squamous cell carcinoma (SCC), and benign lung cancer (N). The classification is carried out based on texture extraction, which is processed in 2 stages, the first stage to detect N and the second to detect ACA and SCC.
The simulation results show that two-stage texture extraction can improve accuracy by an average of 84%. The proposed system is expected to be decision support in assisting clinical diagnosis. In terms of technical storage, this system can save memory resources.
The proposed two-step texture extraction system combined with CS and K- Nearest Neighbor has succeeded in classifying lung cancer with high accuracy; the system can also save memory storage. It is necessary to examine the complexity of the proposed method so that it can be analyzed further.
肺癌图像在传输数据时需要大量的内存存储和传输带宽。压缩感知(CS)作为一种信号采样的统计方法,根据信息源提供不同的输出模式。因此,可以认为CS可用于压缩信息的特征提取。
在本研究中,我们提出了一种基于纹理提取的新型CS用于肺癌分类。我们对三种类型的肺癌进行分类,包括腺癌(ACA)、鳞状细胞癌(SCC)和良性肺癌(N)。分类基于纹理提取进行,分两个阶段处理,第一阶段检测N,第二阶段检测ACA和SCC。
模拟结果表明,两阶段纹理提取平均可提高84%的准确率。所提出的系统有望在辅助临床诊断方面提供决策支持。在技术存储方面,该系统可以节省内存资源。
所提出的结合CS和K近邻的两步纹理提取系统成功地对肺癌进行了高精度分类;该系统还可以节省内存存储。有必要研究所提出方法的复杂性,以便进一步分析。