研究目的
Investigating the therapeutic effects of a specific herbal medicine on a particular disease.
研究成果
The proposed framework for PET reconstruction involving confidence interval-based constrained total variation regularization offers appealing properties in terms of spatial and statistical bias/variance trade-off. The combination between the hard constraint and the reconstructed confidence intervals allows for the design of a regularized algorithm that does not make data-fitting compromises when regularizing the solution. The soft constraint alternative provides even more accurate variance levels, keeping bias in reasonable ranges compared to usual regularization procedures.
研究不足
The technical and application constraints of the experiments include the need for further work on confidence interval reconstruction and the use of more sophisticated regularization functions. Potential areas for optimization include the design of regularization procedures for specific clinical application tasks.