Guidelines for bioinformatics of single-cell sequencing data analysis in Alzheimer’s disease: review, recommendation, implementation and application

被引:0
作者
Minghui Wang
Won-min Song
Chen Ming
Qian Wang
Xianxiao Zhou
Peng Xu
Azra Krek
Yonejung Yoon
Lap Ho
Miranda E. Orr
Guo-Cheng Yuan
Bin Zhang
机构
[1] Icahn School of Medicine at Mount Sinai,Department of Genetics and Genomic Sciences
[2] Icahn School of Medicine at Mount Sinai,Mount Sinai Center for Transformative Disease Modeling
[3] Icahn School of Medicine at Mount Sinai,Institute for Personalized Medicine
[4] Wake Forest School of Medicine,Department of Internal Medicine, Section of Gerontology and Geriatric Medicine
[5] Wake Forest School of Medicine,Sticht Center for Healthy Aging and Alzheimer’s Prevention
[6] Icahn School of Medicine at Mount Sinai,Icahn Institute of Genomics and Multiscale Biology
[7] Icahn School of Medicine at Mount Sinai,Department of Pharmacological Sciences
来源
Molecular Neurodegeneration | / 17卷
关键词
Alzheimer’s disease; Single cell sequencing; Single cell RNA-sequencing; Single cell ATAC-sequencing; Spatial transcriptomics; Clustering analysis; Trajectory analysis; Gene networks; And brain cell types;
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摘要
Alzheimer’s disease (AD) is the most common form of dementia, characterized by progressive cognitive impairment and neurodegeneration. Extensive clinical and genomic studies have revealed biomarkers, risk factors, pathways, and targets of AD in the past decade. However, the exact molecular basis of AD development and progression remains elusive. The emerging single-cell sequencing technology can potentially provide cell-level insights into the disease. Here we systematically review the state-of-the-art bioinformatics approaches to analyze single-cell sequencing data and their applications to AD in 14 major directions, including 1) quality control and normalization, 2) dimension reduction and feature extraction, 3) cell clustering analysis, 4) cell type inference and annotation, 5) differential expression, 6) trajectory inference, 7) copy number variation analysis, 8) integration of single-cell multi-omics, 9) epigenomic analysis, 10) gene network inference, 11) prioritization of cell subpopulations, 12) integrative analysis of human and mouse sc-RNA-seq data, 13) spatial transcriptomics, and 14) comparison of single cell AD mouse model studies and single cell human AD studies. We also address challenges in using human postmortem and mouse tissues and outline future developments in single cell sequencing data analysis. Importantly, we have implemented our recommended workflow for each major analytic direction and applied them to a large single nucleus RNA-sequencing (snRNA-seq) dataset in AD. Key analytic results are reported while the scripts and the data are shared with the research community through  GitHub. In summary, this comprehensive review provides insights into various approaches to analyze single cell sequencing data and offers specific guidelines for study design and a variety of analytic directions. The review and the accompanied software tools will serve as a valuable resource for studying cellular and molecular mechanisms of AD, other diseases, or biological systems at the single cell level.
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