Matches in SemOpenAlex for { <https://semopenalex.org/work/W4226147955> ?p ?o ?g. }
- W4226147955 endingPage "15" @default.
- W4226147955 startingPage "1" @default.
- W4226147955 abstract "Background: The detection of amyloid-β (Aβ) deposition in the brain provides crucial evidence in the clinical diagnosis of Alzheimer’s disease (AD). However, the current positron emission tomography (PET)-based brain Aβ examination suffers from the problems of coarse visual inspection (in many cases, with 2-class stratification) and high scanning cost. Objective: 1) To characterize the non-binary Aβ deposition levels in the AD continuum based on clustering of PET data, and 2) to explore the feasibility of predicting individual Aβ deposition grades with non-invasive functional magnetic resonance imaging (fMRI). Methods: 1) Individual whole-brain Aβ-PET images from the OASIS-3 dataset (N = 258) were grouped into three clusters (grades) with t-SNE and k-means. The demographical data as well as global and regional standard uptake value ratios (SUVRs) were compared among the three clusters with Chi-square tests or ANOVA tests. 2) From resting-state fMRI, both conventional functional connectivity (FC) and high-order FC networks were constructed and the topological architectures of the two networks were jointly learned with graph convolutional networks (GCNs) to predict the Aβ-PET grades for each individual. Results: We found three clearly separated clusters, indicating three Aβ-PET grades. There were significant differences in gender, age, cognitive ability, APOE type, as well as global and regional SUVRs among the three grades we found. The prediction of Aβ-PET grades with GCNs on FC for the 258 participants in the AD continuum reached a satisfactory averaged accuracy (78.8%) in the two-class classification tasks. Conclusion: The results demonstrated the feasibility of using deep learning on a non-invasive brain functional imaging technique to approximate PET-based Aβ deposition grading." @default.
- W4226147955 created "2022-05-05" @default.
- W4226147955 creator A5000937401 @default.
- W4226147955 creator A5024229930 @default.
- W4226147955 creator A5044868467 @default.
- W4226147955 creator A5046340513 @default.
- W4226147955 creator A5050852420 @default.
- W4226147955 creator A5058203667 @default.
- W4226147955 creator A5073920552 @default.
- W4226147955 creator A5085426866 @default.
- W4226147955 date "2022-02-25" @default.
- W4226147955 modified "2023-09-27" @default.
- W4226147955 title "Predicting Brain Amyloid-β PET Grades with Graph Convolutional Networks Based on Functional MRI and Multi-Level Functional Connectivity" @default.
- W4226147955 cites W1032188749 @default.
- W4226147955 cites W1964793333 @default.
- W4226147955 cites W1974594322 @default.
- W4226147955 cites W1977541817 @default.
- W4226147955 cites W1978408307 @default.
- W4226147955 cites W1984737558 @default.
- W4226147955 cites W2033987011 @default.
- W4226147955 cites W2037321375 @default.
- W4226147955 cites W2070267512 @default.
- W4226147955 cites W2071068165 @default.
- W4226147955 cites W2073092061 @default.
- W4226147955 cites W2074565442 @default.
- W4226147955 cites W2079903691 @default.
- W4226147955 cites W2101135654 @default.
- W4226147955 cites W2111902267 @default.
- W4226147955 cites W2115017507 @default.
- W4226147955 cites W2129497119 @default.
- W4226147955 cites W2166416515 @default.
- W4226147955 cites W2167840686 @default.
- W4226147955 cites W2171250577 @default.
- W4226147955 cites W2345678177 @default.
- W4226147955 cites W2560999412 @default.
- W4226147955 cites W2576070094 @default.
- W4226147955 cites W2582180708 @default.
- W4226147955 cites W2592627264 @default.
- W4226147955 cites W2614881333 @default.
- W4226147955 cites W2766125374 @default.
- W4226147955 cites W2769782531 @default.
- W4226147955 cites W2788894888 @default.
- W4226147955 cites W2793391328 @default.
- W4226147955 cites W2798054687 @default.
- W4226147955 cites W2806489700 @default.
- W4226147955 cites W2808227793 @default.
- W4226147955 cites W2834941082 @default.
- W4226147955 cites W2888363961 @default.
- W4226147955 cites W2889717585 @default.
- W4226147955 cites W2895106932 @default.
- W4226147955 cites W2926304847 @default.
- W4226147955 cites W2954581201 @default.
- W4226147955 cites W2963168174 @default.
- W4226147955 cites W2965401191 @default.
- W4226147955 cites W2968585277 @default.
- W4226147955 cites W2973208504 @default.
- W4226147955 cites W2974302373 @default.
- W4226147955 cites W3009672833 @default.
- W4226147955 cites W3012085194 @default.
- W4226147955 cites W3021376323 @default.
- W4226147955 cites W3021687767 @default.
- W4226147955 cites W3081200629 @default.
- W4226147955 cites W3084350364 @default.
- W4226147955 cites W3087906049 @default.
- W4226147955 cites W3091632786 @default.
- W4226147955 cites W3092764476 @default.
- W4226147955 cites W3103732311 @default.
- W4226147955 cites W3157186248 @default.
- W4226147955 doi "https://doi.org/10.3233/jad-215497" @default.
- W4226147955 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/35213377" @default.
- W4226147955 hasPublicationYear "2022" @default.
- W4226147955 type Work @default.
- W4226147955 citedByCount "1" @default.
- W4226147955 countsByYear W42261479552023 @default.
- W4226147955 crossrefType "journal-article" @default.
- W4226147955 hasAuthorship W4226147955A5000937401 @default.
- W4226147955 hasAuthorship W4226147955A5024229930 @default.
- W4226147955 hasAuthorship W4226147955A5044868467 @default.
- W4226147955 hasAuthorship W4226147955A5046340513 @default.
- W4226147955 hasAuthorship W4226147955A5050852420 @default.
- W4226147955 hasAuthorship W4226147955A5058203667 @default.
- W4226147955 hasAuthorship W4226147955A5073920552 @default.
- W4226147955 hasAuthorship W4226147955A5085426866 @default.
- W4226147955 hasConcept C132525143 @default.
- W4226147955 hasConcept C153180895 @default.
- W4226147955 hasConcept C154945302 @default.
- W4226147955 hasConcept C15744967 @default.
- W4226147955 hasConcept C169760540 @default.
- W4226147955 hasConcept C199374082 @default.
- W4226147955 hasConcept C22047676 @default.
- W4226147955 hasConcept C2775842073 @default.
- W4226147955 hasConcept C2779226451 @default.
- W4226147955 hasConcept C41008148 @default.
- W4226147955 hasConcept C66324658 @default.
- W4226147955 hasConcept C73555534 @default.
- W4226147955 hasConcept C80444323 @default.
- W4226147955 hasConcept C81363708 @default.
- W4226147955 hasConceptScore W4226147955C132525143 @default.