研究目的
To evaluate and compare the usefulness of B-mode, texture, and Nakagami images in breast ultrasound for classifying benign and malignant tumors by combining different physical ultrasonic features to improve diagnostic performance.
研究成果
The combination of morphological, texture, and Nakagami features (specifically SS, VAR, and Nm) provides the best performance for breast tumor classification, with high accuracy, specificity, and sensitivity. This verifies that different physical ultrasonic features are functionally complementary, and the optimal feature set's discriminating performance is independent of the classifier used. Future work could integrate additional features like elastography for improved classification.
研究不足
The study is limited by variability in lesion contour delineation, dependence on different ultrasound imaging platforms and system settings, and the specific number and types of breast tumors used. The performance may not generalize to all systems or tumor types, and further optimization is needed for real-world applications.
1:Experimental Design and Method Selection:
The study used an integrated analysis based on B-mode, texture, and Nakagami images. Methods included Pearson's correlation matrix for feature correlation, fuzzy c-means clustering and stepwise regression for optimal feature set determination, and logistic regression, ROC curve analysis, and support vector machine for diagnostic ability estimation.
2:Sample Selection and Data Sources:
Raw data from 160 clinical cases (80 benign, 80 malignant) were obtained, with breast ultrasound images acquired using a portable ultrasound scanner. Cases were pathologically proven and classified by an experienced breast surgeon.
3:List of Experimental Equipment and Materials:
Portable ultrasound scanner (Model 3000, Terason) with a 7.5 MHz linear array transducer (Model 12L5, Terason), Adobe Photoshop software for contour delineation, MATLAB software (version R2015b, Mathworks) for algorithm implementation.
4:5 MHz linear array transducer (Model 12L5, Terason), Adobe Photoshop software for contour delineation, MATLAB software (version R2015b, Mathworks) for algorithm implementation.
Experimental Procedures and Operational Workflow:
4. Experimental Procedures and Operational Workflow: Ultrasound images were acquired with standardized settings. Tumor contours were manually delineated on B-mode images and mapped to Nakagami images. Morphological, texture, and Nakagami parameters were extracted. Data were analyzed using statistical methods and classifiers with cross-validation.
5:Data Analysis Methods:
Student's t-test for statistical significance, ROC curve analysis for diagnostic performance, Pearson's correlation matrix for feature correlations, fuzzy c-means clustering and stepwise regression for feature selection, logistic regression and SVM for classification.
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