Effective Classification of Synovial Sarcoma Cancer Using Structure Features and Support Vectors
【Author】 Arunachalam, P.; Janakiraman, N.; Rashid, Junaid; Kim, Jungeun; Samanta, Sovan; Naseem, Usman; Sivaraman, Arun Kumar; Balasundaram, A.
【Source】CMC-COMPUTERS MATERIALS & CONTINUA
【影响因子】3.860
【Abstract】In this research work, we proposed a medical image analysis framework with two separate releases whether or not Synovial Sarcoma (SS) is the cell structure for cancer. Within this framework the histopathology images are decomposed into a third-level sub-band using a two-dimensional Discrete Wavelet Transform. Subsequently, the structure features (SFs) such as Principal Components Analysis (PCA), Independent Components Analysis (ICA) and Linear Discriminant Analysis (LDA) were extracted from this sub band image representation with the distribution of wavelet coefficients. These SFs are used as inputs of the Support Vector Machine (SVM) classifier. Also, classification of PCA + SVM, ICA + SVM, and LDA + SVM with Radial Basis Function (RBF) kernel the efficiency of the process is differentiated and compared with the best classification results. Furthermore, data collected on the internet from various histopathological centres via the Internet of Things (IoT) are stored and shared on blockchain technology across a wide range of image distribution across secure data IoT devices. Due to this, the minimum and maximum values of the kernel parameter are adjusted and updated periodically for the purpose of industrial application in device calibration. Consequently, these resolutions are presented with an excellent example of a technique for training and testing the cancer cell structure prognosis methods in spindle shaped cell (SSC) histopathological imaging databases. The performance characteristics of cross-validation are evaluated with the help of the receiver operating characteristics (ROC) curve, and significant differences in classification performance between the techniques are analyzed. The combination of LDA + SVM technique has been proven to be essential for intelligent SS cancer detection in the future, and it offers excellent classification accuracy, sensitivity, specificity.
【Keywords】Principal components analysis; independent components analysis; linear discriminant analysis; support vector machine; blockchain technology; IoT application; industry application
【发表时间】2022
【收录时间】2022-04-22
【文献类型】期刊
【主题类别】
区块链技术-分布式存储-
【DOI】 10.32604/cmc.2022.025339
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