LE QUY DON
Technical University
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Wavelet radiomics features from multiphase CT images for screening hepatocellular carcinoma: analysis and comparison

Tang, V.H. and Duong, S.T.M. and Nguyen, C.D.T. and Huynh, T.M. and Duc, V.T. and Phan, C. and Le, H. and Bui, T. and Truong, S.Q.H. (2023) Wavelet radiomics features from multiphase CT images for screening hepatocellular carcinoma: analysis and comparison. Scientific Reports, 13 (1). ISSN 20452322

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Abstract

Early detection of liver malignancy based on medical image analysis plays a crucial role in patient prognosis and personalized treatment. This task, however, is challenging due to several factors, including medical data scarcity and limited training samples. This paper presents a study of three important aspects of radiomics feature from multiphase computed tomography (CT) for classifying hepatocellular carcinoma (HCC) and other focal liver lesions: wavelet-transformed feature extraction, relevant feature selection, and radiomics features-based classification under the inadequate training samples. Our analysis shows that combining radiomics features extracted from the wavelet and original CT domains enhance the classification performance significantly, compared with using those extracted from the wavelet or original domain only. To facilitate the multi-domain and multiphase radiomics feature combination, we introduce a logistic sparsity-based model for feature selection with Bayesian optimization and find that the proposed model yields more discriminative and relevant features than several existing methods, including filter-based, wrapper-based, or other model-based techniques. In addition, we present analysis and performance comparison with several recent deep convolutional neural network (CNN)-based feature models proposed for hepatic lesion diagnosis. The results show that under the inadequate data scenario, the proposed wavelet radiomics feature model produces comparable, if not higher, performance metrics than the CNN-based feature models in terms of area under the curve. © 2023, The Author(s).

Item Type: Article
Divisions: Faculties > Faculty of Information Technology
Identification Number: 10.1038/s41598-023-46695-8
Uncontrolled Keywords: Bayes theorem; diagnostic imaging; human; liver cell carcinoma; liver tumor; pathology; prognosis; retrospective study; x-ray computed tomography, Bayes Theorem; Carcinoma, Hepatocellular; Humans; Liver Neoplasms; Prognosis; Retrospective Studies; Tomography, X-Ray Computed
URI: http://eprints.lqdtu.edu.vn/id/eprint/11001

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