# Resolving Heterogeneity in the Diagnosis of Alzheimer’s Disease and its Progression Using Multimodal Data

**Authors:** Fuyan Hu, Nelson L. S. Tang, Haiying Wang, Huiru Zheng

PMC · DOI: 10.1007/s12031-026-02474-4 · 2026-02-04

## TL;DR

This study uses multimodal data and an unsupervised method to identify Alzheimer’s subtypes, improving early detection and understanding of disease progression.

## Contribution

A novel application of similarity network fusion to integrate multimodal data and identify biologically meaningful MCI subtypes in Alzheimer’s disease.

## Key findings

- The method achieved ~90% accuracy in diagnosing current and future Alzheimer’s cases.
- Two MCI subtypes were identified and validated using longitudinal data and biomarkers.
- Dysregulated pathways like GnRH, VEGF, and insulin signaling were observed between MCI subtypes.

## Abstract

Alzheimer’s disease (AD) is a complex and diverse illness that makes early detection extremely difficult. Most existing research utilizes data to identify biomarkers and more homogeneous subgroups to improve the detection, prediction of progression, and prognosis of AD. However, AD still suffers from a lack of appropriate biomarkers for early symptom detection and blurred boundaries between different subgroups. Here, an unsupervised clustering method known as similarity network fusion (SNF) was employed to analyze multimodal data from 972 subjects, including 370 with cognitively normal (CN), 565 with mild cognitive impairment (MCI), and 37 patients with AD. First, we constructed a similarity network for subjects using cognitive scores, genetics, and magnetic resonance imaging (MRI) related data, respectively. Then the SNF fusion method was employed to integrate the data, and spectral clustering was used to find subgroups sharing similarities across modalities. Our results indicated that the approach accurately diagnosed both current and prospective AD (~ 90%). Notably, we successfully identified two MCI subtypes with biological and clinical significance, validated by longitudinal studies of cognitive, clinical, fluid biomarkers and MRI-related features, dementia diagnosis, and pseudo-trajectory analysis. We also observed many dysregulated processes and signaling pathways between MCI subtypes, such as the GnRH signaling pathway, VEGF signaling pathway, and insulin signaling pathway. Overall, our research offers a distinctive viewpoint on the diversity of AD, and the more specific subtypes of MCI help create customized treatment plans.

The online version contains supplementary material available at 10.1007/s12031-026-02474-4.

## Linked entities

- **Diseases:** Alzheimer’s disease (MONDO:0004975), dementia (MONDO:0001627)

## Full-text entities

- **Genes:** ORC1 (origin recognition complex subunit 1) [NCBI Gene 4998] {aka HSORC1, ORC1L, PARC1}, APP (amyloid beta precursor protein) [NCBI Gene 351] {aka AAA, ABETA, ABPP, AD1, APPI, CTFgamma}, APOE (apolipoprotein E) [NCBI Gene 348] {aka AD2, APO-E, ApoE4, LDLCQ5, LPG}, CNC2 (Carney complex type 2, multiple neoplasia and lentiginosis) [NCBI Gene 1257] {aka CNC}, SNCA (synuclein alpha) [NCBI Gene 6622] {aka NACP, PARK1, PARK4, PD1}, GNRH1 (gonadotropin releasing hormone 1) [NCBI Gene 2796] {aka GNRH, GRH, LHRH, LNRH}, TP53 (tumor protein p53) [NCBI Gene 7157] {aka BCC7, BMFS5, LFS1, P53, TRP53}, MAPT (microtubule associated protein tau) [NCBI Gene 4137] {aka DDPAC, FTD1, FTDP-17, MAPTL, MSTD, MTBT1}, KRAS (KRAS proto-oncogene, GTPase) [NCBI Gene 3845] {aka 'C-K-RAS, C-K-RAS, CFC2, K-RAS2A, K-RAS2B, K-RAS4A}, VEGFA (vascular endothelial growth factor A) [NCBI Gene 7422] {aka L-VEGF, MVCD1, VEGF, VPF}, CD44 (CD44 molecule (IN blood group)) [NCBI Gene 960] {aka CDW44, CSPG8, ECM-III, ECMR-III, H-CAM, HCELL}, MTOR (mechanistic target of rapamycin kinase) [NCBI Gene 2475] {aka FRAP, FRAP1, FRAP2, RAFT1, RAPT1, SKS}, INS (insulin) [NCBI Gene 3630] {aka IDDM, IDDM1, IDDM2, ILPR, IRDN, MODY10}
- **Diseases:** neuronal damage (MESH:D009410), Dementia (MESH:D003704), atrophy (MESH:D001284), C1 (MESH:C565170), ventricular enlargement (MESH:D006332), brain atrophy (MESH:C566985), neurodegeneration (MESH:D019636), C2 (OMIM:217000), metabolic disorders (MESH:D008659), MCI (MESH:D060825), Parkinson's (MESH:D010300), neuronal dysfunction (MESH:D009461), AD (MESH:D000544), CN (MESH:D003072)
- **Chemicals:** Glycosaminoglycan (MESH:D006025), MCI-C2 (-), SPLs (MESH:D013107), florbetapir (MESH:C545186), glucose (MESH:D005947), FDG (MESH:D019788), pyruvate (MESH:D019289), vanadium (MESH:D014639), GPI (MESH:D017261), BP (MESH:C038809), ATP (MESH:D000255)
- **Species:** Homo sapiens (human, species) [taxon 9606]

## Figures

5 figures with captions in the complete paper: https://tomesphere.com/paper/PMC12872672/full.md

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Source: https://tomesphere.com/paper/PMC12872672