| Literature DB >> 28379842 |
Leyun Pan1, Caixia Cheng, Uwe Haberkorn, Antonia Dimitrakopoulou-Strauss.
Abstract
A variety of compartment models are used for the quantitative analysis of dynamic positron emission tomography (PET) data. Traditionally, these models use an iterative fitting (IF) method to find the least squares between the measured and calculated values over time, which may encounter some problems such as the overfitting of model parameters and a lack of reproducibility, especially when handling noisy data or error data. In this paper, a machine learning (ML) based kinetic modeling method is introduced, which can fully utilize a historical reference database to build a moderate kinetic model directly dealing with noisy data but not trying to smooth the noise in the image. Also, due to the database, the presented method is capable of automatically adjusting the models using a multi-thread grid parameter searching technique. Furthermore, a candidate competition concept is proposed to combine the advantages of the ML and IF modeling methods, which could find a balance between fitting to historical data and to the unseen target curve. The machine learning based method provides a robust and reproducible solution that is user-independent for VOI-based and pixel-wise quantitative analysis of dynamic PET data.Entities:
Mesh:
Year: 2017 PMID: 28379842 DOI: 10.1088/1361-6560/aa6244
Source DB: PubMed Journal: Phys Med Biol ISSN: 0031-9155 Impact factor: 3.609