학술논문

Learning-Based Cancer Treatment Outcome Prognosis Using Multimodal Biomarkers
Document Type
Periodical
Source
IEEE Transactions on Radiation and Plasma Medical Sciences IEEE Trans. Radiat. Plasma Med. Sci. Radiation and Plasma Medical Sciences, IEEE Transactions on. 6(2):231-244 Feb, 2022
Subject
Nuclear Engineering
Engineered Materials, Dielectrics and Plasmas
Bioengineering
Computing and Processing
Fields, Waves and Electromagnetics
Prognostics and health management
Feature extraction
Biomarkers
Training
Cancer
Generators
Biomedical imaging
Cancer therapy
deep learning
microRNA expressions
modular framework
multimodal biomarkers
positron emission tomography (PET) images
treatment outcome prediction
Language
ISSN
2469-7311
2469-7303
Abstract
Predicting early in treatment whether a tumor is likely to be responsive is a difficult yet important task to support clinical decision making. Studies have shown that multimodal biomarkers could provide complementary information and lead to more accurate treatment outcome prognosis than unimodal biomarkers. However, the prognosis accuracy could be affected by multimodal data heterogeneity and incompleteness. The small-sized and imbalance datasets also bring additional challenges for training a designed prognosis model. In this study, a modular framework employing multimodal biomarkers for cancer treatment outcome prediction was proposed. It includes four modules of synthetic data generation, deep feature extraction, multimodal feature fusion, and classification to address the challenges described above. The feasibility and advantages of the designed framework were demonstrated through an example study, in which the goal was to stratify oropharyngeal squamous cell carcinoma (OPSCC) patients with low and high risks of treatment failures by use of the positron emission tomography (PET) image data and microRNA (miRNA) biomarkers. The superior prognosis performance and the comparison with other methods demonstrated the efficiency of the proposed framework and its ability of enabling seamless integration, validation, and comparison of various algorithms in each module of the framework. The limitation and future work were discussed as well.