Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/118028
PIRA download icon_1.1View/Download Full Text
DC FieldValueLanguage
dc.contributorDepartment of Electrical and Electronic Engineering-
dc.contributorDepartment of Data Science and Artificial Intelligence-
dc.creatorLiu, C-
dc.creatorCosmo, L-
dc.creatorRossi, L-
dc.date.accessioned2026-03-12T01:03:03Z-
dc.date.available2026-03-12T01:03:03Z-
dc.identifier.issn0031-3203-
dc.identifier.urihttp://hdl.handle.net/10397/118028-
dc.language.isoenen_US
dc.publisherElsevier BVen_US
dc.rights© 2026 The Authors. Published by Elsevier Ltd. This is an open access article under the CC BY-NC-ND license ( http://creativecommons.org/licenses/by-nc-nd/4.0/ ).en_US
dc.rightsThe following publication Liu, C., Cosmo, L., & Rossi, L. (2026). Diagnosing Alzheimer’s disease using hypergraph neural networks with prompt tuning. Pattern Recognition, 176, 113290 is available at https://doi.org/10.1016/j.patcog.2026.113290.en_US
dc.subjectAlzheimer's diseaseen_US
dc.subjectGraph neural networksen_US
dc.subjectPrompt learningen_US
dc.titleDiagnosing Alzheimer’s disease using hypergraph neural networks with prompt tuningen_US
dc.typeJournal/Magazine Articleen_US
dc.identifier.volume176-
dc.identifier.doi10.1016/j.patcog.2026.113290-
dcterms.abstractThe accurate diagnosis of Alzheimer’s disease (AD) and prognosis of mild cognitive impairment (MCI) conversion are crucial for early intervention. However, existing multimodal methods face several challenges, from the heterogeneity of input data, to underexplored modality interactions, missing data due to patient dropouts, and limited data caused by the time-consuming and costly data collection process. In this paper, we propose a novel Prompted Hypergraph Neural Network (PHGNN) framework that addresses these limitations by integrating hypergraph based learning with prompt learning. Hypergraphs capture higher-order relationships between different modalities, while our prompt learning approach for hypergraphs, adapted from NLP, enables efficient training with limited data. Our model is validated through extensive experiments on the ADNI dataset as well as cross-domain validations using the OASIS-3 and NACC datasets. The results demonstrate that PHGNN outperforms SOTA methods in both AD diagnosis and MCI conversion prediction, showing superior cross-domain generalization capabilities. At the same time, it uses only a fraction (6%) of the tunable parameters of traditional fine-tuning and maintains a low computational load compared to alternative tuning strategies.-
dcterms.accessRightsopen accessen_US
dcterms.bibliographicCitationPattern recognition, Aug. 2026, v. 176, 113290-
dcterms.isPartOfPattern recognition-
dcterms.issued2026-08-
dc.identifier.scopus2-s2.0-105030090280-
dc.identifier.eissn1873-5142-
dc.identifier.artn113290-
dc.description.validate202603 bcch-
dc.description.oaVersion of Recorden_US
dc.identifier.FolderNumberOA_TAen_US
dc.description.fundingSourceSelf-fundeden_US
dc.description.pubStatusPublisheden_US
dc.description.TAElsevier (2026)en_US
dc.description.oaCategoryTAen_US
Appears in Collections:Journal/Magazine Article
Files in This Item:
File Description SizeFormat 
1-s2.0-S0031320326002554-main.pdf2.63 MBAdobe PDFView/Open
Open Access Information
Status open access
File Version Version of Record
Access
View full-text via PolyU eLinks SFX Query
Show simple item record

Google ScholarTM

Check

Altmetric


Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.