Database Commons
Database Commons

a catalog of worldwide biological databases

Database Profile

TACA

General information

URL: https://taca.lerner.ccf.org
Full name: The Alzheimer's Cell Atlas
Description: TACA is a new web portal with cell type-specific, abundant transcriptomic information, and 12 interactive visualization tools for AD. It provides abundant information for AD pathobiology and actionable systems biology tools for drug discovery.
Year founded: 2023
Last update:
Version:
Accessibility:
Accessible
Country/Region: United States

Classification & Tag

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Contact information

University/Institution: Genomic Medicine Institute
Address:
City:
Province/State:
Country/Region: United States
Contact name (PI/Team): Feixiong Cheng
Contact email (PI/Helpdesk): chengf@ccf.org

Publications

36254161
The Alzheimer's Cell Atlas (TACA): A single-cell molecular map for translational therapeutics accelerator in Alzheimer's disease. [PMID: 36254161]
Yadi Zhou, Jielin Xu, Yuan Hou, Lynn Bekris, James B Leverenz, Andrew A Pieper, Jeffrey Cummings, Feixiong Cheng

INTRODUCTION: Recent advances in generating massive single-cell/nucleus transcriptomic data have shown great potential for facilitating the identification of cell type-specific Alzheimer's disease (AD) pathobiology and drug-target discovery for therapeutic development.
METHODS: We developed The Alzheimer's Cell Atlas (TACA) by compiling an AD brain cell atlas consisting of over 1.1 million cells/nuclei across 26 data sets, covering major brain regions (hippocampus, cerebellum, prefrontal cortex, and so on) and cell types (astrocyte, microglia, neuron, oligodendrocytes, and so on). We conducted nearly 1400 differential expression comparisons to identify cell type-specific molecular alterations (e.g., case vs healthy control, sex-specific, apolipoprotein E () ε4/ε4, and TREM2 mutations). Each comparison was followed by protein-protein interaction module detection, functional enrichment analysis, and omics-informed target and drug (over 700,000 perturbation profiles) screening. Over 400 cell-cell interaction analyses using 6000 ligand-receptor interactions were conducted to identify the cell-cell communication networks in AD.
RESULTS: All results are integrated into TACA (https://taca.lerner.ccf.org/), a new web portal with cell type-specific, abundant transcriptomic information, and 12 interactive visualization tools for AD.
DISCUSSION: We envision that TACA will be a highly valuable resource for both basic and translational research in AD, as it provides abundant information for AD pathobiology and actionable systems biology tools for drug discovery.
HIGHLIGHTS: We compiled an Alzheimer's disease (AD) brain cell atlas consisting of more than 1.1 million cells/nuclei transcriptomes from 26 data sets, covering major brain regions (cortex, hippocampus, cerebellum) and cell types (e.g., neuron, oligodendrocyte, astrocyte, and microglia).We conducted over 1400 differential expression (DE) comparisons to identify cell type-specific gene expression alterations. Major comparison types are (1) AD versus healthy control; (2) sex-specific DE, (3) genotype-driven DE (i.e., apolipoprotein E [] ε4/ε4 vs ε3/ε3; TREM2 vs common variants) analysis; and (4) others. Each comparison was further followed by (1) human protein-protein interactome network module analysis, (2) pathway enrichment analysis, and (3) gene-set enrichment analysis.For drug screening, we conducted gene set enrichment analysis for all the comparisons with over 700,000 drug perturbation profiles connecting more than 10,000 human genes and 13,000 drugs/compounds.A total of over 400 analyses of cell-cell interactions against 6000 experimentally validated ligand-receptor interactions were conducted to reveal the disease-relevant cell-cell communications in AD.

Alzheimers Dement (N Y). 2022:8(1) | 29 Citations (from Europe PMC, 2026-03-28)

Ranking

All databases:
1778/6932 (74.365%)
Expression:
360/1361 (73.622%)
Interaction:
343/1200 (71.5%)
Health and medicine:
433/1755 (75.385%)
1778
Total Rank
27
Citations
6.75
z-index

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Record metadata

Created on: 2023-08-22
Curated by:
Yuanyuan Cheng [2023-09-11]
Yuxin Qin [2023-09-06]
Yuanyuan Cheng [2023-08-22]