Radiomics and deep learning characterisation of liver malignancies in CT images - A systematic review.
Authors
Affiliations (4)
Affiliations (4)
- Department of Biomedical Imaging, Advanced Medical and Dental Institute, Universiti Sains Malaysia, Kepala Batas, Pulau Penang, 13200, Malaysia; Department of Radiography and Radiation Sciences, Faculty of Allied Health Sciences, Federal University of Health Sciences Azare, Nigeria.
- Department of Biomedical Imaging, Advanced Medical and Dental Institute, Universiti Sains Malaysia, Kepala Batas, Pulau Penang, 13200, Malaysia; Advanced Management of Liver Malignancies Research Program, Advanced Medical and Dental Institute, Universiti Sains Malaysia, Penang, Malaysia. Electronic address: [email protected].
- Department of Biomedical Imaging, Advanced Medical and Dental Institute, Universiti Sains Malaysia, Kepala Batas, Pulau Penang, 13200, Malaysia; Advanced Management of Liver Malignancies Research Program, Advanced Medical and Dental Institute, Universiti Sains Malaysia, Penang, Malaysia.
- Faculty of Electrical Engineering, Universiti Teknologi MARA, Penang Campus, Permatang Pauh, Pulau Pinang, 13500, Malaysia.
Abstract
Computed tomography (CT) has been widely used as an effective tool for liver imaging due to its high spatial resolution, and ability to differentiate tissue densities, which contributing to comprehensive image analysis. Recent advancements in artificial intelligence (AI) promoted the role of Machine Learning (ML) in managing liver cancers by predicting or classifying tumours using mathematical algorithms. Deep learning (DL), a subset of ML, expanded these capabilities through convolutional neural networks (CNN) that analyse large data automatically. This review examines methods, achievements, limitations, and performance outcomes of ML-based radiomics and DL models for liver malignancies from CT imaging. A systematic search for full-text articles in English on CT radiomics and DL in liver cancer analysis was conducted in PubMed, Scopus, Science Citation Index, and Cochrane Library databases between 2020 and 2024 using the keywords; machine learning, radiomics, deep learning, computed tomography, liver cancer and associated MESH terms. PRISMA guidelines were used to identify and screen studies for inclusion. A total of 49 studies were included consisting of 17 Radiomics, 24 DL, and 8 combined DL/Radiomics studies. Radiomics has been predominantly utilised for predictive analysis, while DL has been extensively applied to automatic liver and tumour segmentation with a surge of a recent increase in studies integrating both techniques. Despite the growing popularity of DL methods, classical radiomics models are still relevant and often preferred over DL methods when performance is similar, due to lower computational and data needs. Performance of models keep improving, but challenges like data scarcity and lack of standardised protocols persists.