A novel MF-DFA-Phase-Field hybrid MRIs classification system

Expert Syst. Appl.(2023)

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摘要
Accurate classification of magnetic resonance imaging (MRI) is an urgent need in clinical medicine. In this study, we explore an integrated classification model using multifractal detrended fluctuation analysis (MF-DFA) and Phase-Field models to develop a novel classifier that ensures high classification accuracy. A nonlinear hyperplane can be generated through the Phase-Field model and a dataset can be subsequently classified. First, two different types of MRI datasets are characterized in two-dimensional (2D) and three-dimensional (3D) spaces after feature extraction using Kolmogorov complexity (KC), Shannon entropy (SNE) and Higuchi's Hurst exponent (HHE). For small samples, a classification effect with 100% Accuracy, Recall and Precision can be achieved. However, for large samples, a good classification effect cannot be achieved. Therefore, we propose a novel MF-DFA-Phase-Field hybrid MRI classification method that also achieves a good classification effect on large samples. The effectiveness and robustness of the proposed MF-DFA-Phase-Field classifier will be analyzed using the generated synthetic data. Subsequently, the two datasets are represented in 2D and 3D computational spaces, where the generalized Hurst exponent computed by MF-DFA is used as the representation coordinate. For the first MRI dataset, the Accuracy, Recall, and Precision of the results for the classification metrics were 100%. In addition, we adopted another dataset with more complex image features and a larger sample size, achieving Accuracy, Recall and Precision of 92.65%, 92.85% and 92.87%, respectively. The Accuracy, Recall and Precision of the classification model based on a support vector machine (SVM) using the same dataset with 11 Hurst exponents as input vectors are 86.32%, 88.50% and 87.46% respectively. These results are all less than those of the proposed model. Similarly, our model performed better in other aspects than those by other scholars, such as MP-CNN and FC-CNN.
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关键词
MF-DFA,Phase-field,MRIs,Classification
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