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Discrimination between normal and malignant colorectal tissues based on discrepancies in their dielectric properties using machine learning methods

Sun, Ying; Zhang, Sa; Duan, Song; Huang, Lumao; Li, Zhou; Yu, Xuefei; Xin, Sherman Xuegang*
Science Citation Index Expanded
南方医科大学; 上海交通大学; 中山大学

摘要

Numerous researchers approved discrepancies in dielectric properties between malignant and normal tissues. Such discrepancies serve as a foundation for the development of computer-aided diagnostic technologies. In this study, machine learning methods were proposed for discrimination between normal and malignant colorectal tissues based on discrepancies in their dielectric properties. To do so, first, two independent-sample t-tests and receiver operating characteristic curve analysis were utilised to examine discrimination power with respect to three types of features, namely, permittivity, conductivity and Cole-Cole fitting parameters. K-nearest neighbour and support vector machine classifiers were used to assess the possibility of combining these features for better classification accuracy. Obtained k-fold cross-validation accuracy reached 88.2%. The obtained accuracy indicated the potential capability of discrimination between normal and malignant colorectal tissues based on discrepancies in their dielectric properties.

关键词

image classification feature extraction biological tissues support vector machines medical image processing learning (artificial intelligence) pattern classification cancer permittivity normal tissues malignant colorectal tissues dielectric properties machine learning methods malignant tissues computer-aided diagnostic technologies neighbour support vector machine classifiers