Improving Breast Mass Classification Performance of Radiomics-based model by Image Enhancement with Discrete Wavelet Transformation

被引:0
作者
Thanh Hang Nguyen [1 ]
Minh Tu Anh Vo [1 ]
机构
[1] Ho Chi Minh City Univ Technol Vietnam Natl Univ, Dept Biomed Engn, Ho Chi Minh City, Vietnam
来源
2023 1ST INTERNATIONAL CONFERENCE ON HEALTH SCIENCE AND TECHNOLOGY, ICHST 2023 | 2023年
关键词
Discrete Wavelet Transformation; Radiomics; Breast Cancer; Computer-aid Diagnosis; Machine Learning; DIAGNOSIS;
D O I
10.1109/ICHST59286.2023.10565363
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Early detection and accurate characterization of breast mass play an essential role in breast cancer treatment, one of the leading risks to women. Taking advantage of the development of artificial intelligence-based computer-aid diagnosis tools, the Radiomics-based machine learning model presented a promising performance in breast mass classification by extracting massive amounts of robust features within the abnormal region. In this work, the utilization of Discrete Wavelet Transformation (DWT) was employed to boost the low-frequency patterns of the breast ultrasound image to enhance its performance. These low-frequency patterns potentially contain valuable information to distinguish benign and malignant breast masses. Firstly, the 1D DWT was applied to get enhanced images, and then a total of 80 Radiomics-based features were extracted from the enhanced image dataset. In the training stage, three Machine Learning models, namely Support Vector Machine, Random Forest, and XGBoost, were utilized. Finally, the proposed pipeline (DWT-Radiomics) classification performance was compared to the conventional Radiomics pipeline by the 4-fold cross-validation technique. The DWT-Radiomics evaluation metrics are the most important in enhanced images. Especially in the SVM model, the weighted F1, Precision, and recall are 0.675, 0.715, and 0.703 respectively, compared to 0.553, 0.465, and 0.682 respectively in the conventional pipeline. The XGBoost model achieved the highest performance with the weighted F1, precision, and recall scores were 0.800, 0.801, and 0.802, respectively in the DWT-Radiomics pipeline and 0.774, 0.773, and 0.777 in the conventional pipeline. Moreover, the mutual information index of DWT-based features is significantly greater than the conventional feature. The results present that DWT-Radomics feature extraction outperformed conventional Radiomics in benign and malignant mass discrimination and model classification. In conclusion, the DWT could enhance robust patterns that significantly contribute to breast mass classification.
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页数:6
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共 49 条
[41]   Assessment of performance and reproducibility of applying a content-based image retrieval scheme for classification of breast lesions [J].
Gundreddy, Rohith Reddy ;
Tan, Maxine ;
Qiu, Yuchen ;
Cheng, Samuel ;
Liu, Hong ;
Zheng, Bin .
MEDICAL PHYSICS, 2015, 42 (07) :4241-4249
[42]   Classification of Mass Type Based on Segmentation Techniques with Support Vector Machine Model for Diagnosis of Breast cancer [J].
Makandar, Aziz ;
Halalli, Bhagirathi .
2017 1ST IEEE INTERNATIONAL CONFERENCE ON DATA MANAGEMENT, ANALYTICS AND INNOVATION (ICDMAI), 2017, :81-86
[43]   Enhancing Breast Mass Cancer Detection Through Hybrid ViT-Based Image Segmentation Model [J].
Touazi, Faycal ;
Gaceb, Djamel ;
Boudissa, Nesrine ;
Assas, Siham .
ADVANCES IN COMPUTING SYSTEMS AND APPLICATIONS, 2025, 1145 :126-135
[44]   MF-OMKT: Model fusion based on online mutual knowledge transfer for breast cancer histopathological image classification [J].
Li, Guangli ;
Li, Chuanxiu ;
Wu, Guangting ;
Xu, Guangxin ;
Zhou, Ying ;
Zhang, Hongbin .
ARTIFICIAL INTELLIGENCE IN MEDICINE, 2022, 134
[45]   Deconv-transformer (DecT): A histopathological image classification model for breast cancer based on color deconvolution and transformer architecture [J].
He, Zhu ;
Lin, Mingwei ;
Xu, Zeshui ;
Yao, Zhiqiang ;
Chen, Hong ;
Alhudhaif, Adi ;
Alenezi, Fayadh .
INFORMATION SCIENCES, 2022, 608 :1093-1112
[46]   Role of combined clinical-radiomics model based on contrast-enhanced MRI in predicting the malignancy of breast non-mass enhancements without an additional diffusion-weighted imaging sequence [J].
Li, Yan ;
Yang, Zhenlu ;
Lv, Wenzhi ;
Qin, Yanjin ;
Tang, Caili ;
Yan, Xu ;
Yin, Ting ;
Ai, Tao ;
Xia, Liming .
QUANTITATIVE IMAGING IN MEDICINE AND SURGERY, 2023, 13 (09) :5974-5985
[47]   Breast cancer image classification based on H&E staining using a causal attention graph neural network model [J].
Chang, Xiaoya ;
Zhang, Zhongrong ;
Sun, Jianguo ;
Lin, Kang ;
Song, Ping'an .
MEDICAL & BIOLOGICAL ENGINEERING & COMPUTING, 2025, 63 (07) :1965-1979
[48]   Radiomics-based predictive model for preoperative risk classification of gastrointestinal stromal tumors using multiparametric magnetic resonance imaging: a retrospective study; [Auf Radiomics basierendes prädiktives Modell für die präoperative Risikoklassifikation gastrointestinaler Stromatumoren anhand multiparametrischer Magnetresonanzbildgebung: eine retrospektive Studie] [J].
Juan Du ;
Linsha Yang ;
Tao Zheng ;
Defeng Liu .
Die Radiologie, 2024, 64 (Suppl 1) :166-176
[49]   Classification of breast mass lesions using model-based analysis of the characteristic kinetic curve derived from fuzzy c-means clustering [J].
Chang, Yeun-Chung ;
Huang, Yan-Hao ;
Huang, Chiun-Sheng ;
Chang, Pei-Kang ;
Chen, Jeon-Hor ;
Chang, Ruey-Feng .
MAGNETIC RESONANCE IMAGING, 2012, 20 (03) :312-322