Alzheimers Dement (Amst). 2025 May 12;17(2):e70118. doi: 10.1002/dad2.70118. eCollection 2025 Apr-Jun.
ABSTRACT
INTRODUCTION: The locus coeruleus (LC) is linked to the development and pathophysiology of neurodegenerative diseases such as Alzheimer’s disease (AD). Magnetic resonance imaging-based LC features have shown potential to assess LC integrity in vivo.
METHODS: We present a deep learning-based LC segmentation and feature extraction method called Ensemble-based Locus Coeruleus Segmentation Network (ELSI-Net) and apply it to healthy aging and AD dementia datasets. Agreement to expert raters and previously published LC atlases were assessed. We aimed to reproduce previously reported differences in LC integrity in aging and AD dementia and correlate extracted features to cerebrospinal fluid (CSF) biomarkers of AD pathology.
RESULTS: ELSI-Net demonstrated high agreement to expert raters and published atlases. Previously reported group differences in LC integrity were detected and correlations to CSF biomarkers were found.
DISCUSSION: Although we found excellent performance, further evaluations on more diverse datasets from clinical cohorts are required for a conclusive assessment of ELSI-Net’s general applicability.
HIGHLIGHTS: We provide a thorough evaluation of a fully automatic locus coeruleus (LC) segmentation method termed Ensemble-based Locus Coeruleus Segmentation Network (ELSI-Net) in aging and Alzheimer’s disease (AD) dementia.ELSI-Net outperforms previous work and shows high agreement with manual ratings and previously published LC atlases.ELSI-Net replicates previously shown LC group differences in aging and AD.ELSI-Net’s LC mask volume correlates with cerebrospinal fluid biomarkers of AD pathology.
PMID:40365469 | PMC:PMC12069022 | DOI:10.1002/dad2.70118
AI-Assisted Evidence Search
Share Evidence Blueprint
Search Google Scholar