Robust automated computational approach for classifying frontotemporal neurodegeneration: Multimodal/multicenter neuroimaging

Timely diagnosis of behavioral variant frontotemporal dementia (bvFTD) remains challenging because it depends on clinical expertise and potentially ambiguous diagnostic guidelines. Recent recommendations highlight the role of multimodal neuroimaging and machine learning methods as complementary tool...

Ausführliche Beschreibung

Gespeichert in:
Bibliographische Detailangaben
Veröffentlicht in:Alzheimer's & dementia : diagnosis, assessment & disease monitoring assessment & disease monitoring, 2019-12, Vol.11 (1), p.588-598
Hauptverfasser: Donnelly-Kehoe, Patricio Andres, Pascariello, Guido Orlando, García, Adolfo M., Hodges, John R., Miller, Bruce, Rosen, Howie, Manes, Facundo, Landin-Romero, Ramon, Matallana, Diana, Serrano, Cecilia, Herrera, Eduar, Reyes, Pablo, Santamaria-Garcia, Hernando, Kumfor, Fiona, Piguet, Olivier, Ibanez, Agustin, Sedeño, Lucas
Format: Artikel
Sprache:eng
Schlagworte:
Online-Zugang:Volltext
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
Beschreibung
Zusammenfassung:Timely diagnosis of behavioral variant frontotemporal dementia (bvFTD) remains challenging because it depends on clinical expertise and potentially ambiguous diagnostic guidelines. Recent recommendations highlight the role of multimodal neuroimaging and machine learning methods as complementary tools to address this problem. We developed an automatic, cross-center, multimodal computational approach for robust classification of patients with bvFTD and healthy controls. We analyzed structural magnetic resonance imaging and resting-state functional connectivity from 44 patients with bvFTD and 60 healthy controls (across three imaging centers with different acquisition protocols) using a fully automated processing pipeline, including site normalization, native space feature extraction, and a random forest classifier. Our method successfully combined multimodal imaging information with high accuracy (91%), sensitivity (83.7%), and specificity (96.6%). This multimodal approach enhanced the system's performance and provided a clinically informative method for neuroimaging analysis. This underscores the relevance of combining multimodal imaging and machine learning as a gold standard for dementia diagnosis. •A multimodal computational approach was implemented to identify patients with bvFTD.•We combined features from structural MRI data and fMRI-based functional connectivity.•Our approach was validated over 103 subjects from three different centers.•Our multimodal approach yielded high classification accuracy (91%) across centers.•Multimodal computational approaches may be useful complements for dementia diagnosis.
ISSN:2352-8729
2352-8729
DOI:10.1016/j.dadm.2019.06.002