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Open AccessJournal ArticleDOI

The Human Cell Atlas

Aviv Regev, +81 more
- 05 Dec 2017 - 
- Vol. 6
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TLDR
An open comprehensive reference map of the molecular state of cells in healthy human tissues would propel the systematic study of physiological states, developmental trajectories, regulatory circuitry and interactions of cells, and also provide a framework for understanding cellular dysregulation in human disease.
Abstract
The recent advent of methods for high-throughput single-cell molecular profiling has catalyzed a growing sense in the scientific community that the time is ripe to complete the 150-year-old effort to identify all cell types in the human body. The Human Cell Atlas Project is an international collaborative effort that aims to define all human cell types in terms of distinctive molecular profiles (such as gene expression profiles) and to connect this information with classical cellular descriptions (such as location and morphology). An open comprehensive reference map of the molecular state of cells in healthy human tissues would propel the systematic study of physiological states, developmental trajectories, regulatory circuitry and interactions of cells, and also provide a framework for understanding cellular dysregulation in human disease. Here we describe the idea, its potential utility, early proofs-of-concept, and some design considerations for the Human Cell Atlas, including a commitment to open data, code, and community.

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Citations
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A decade of molecular cell atlases.

TL;DR: The development of molecular cell atlases has been crucially dependent on technological advances, which can be traced back three decades as mentioned in this paper , and a vibrant international community has made important contributions with the use of these tools to discover and characterize cell types over an extended period, starting around 2011-2012.
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Single cell RNA-sequencing: replicability of cell types

TL;DR: Recent efforts to evaluate clusters from single-cell RNA-sequencing data are described, and a framework for considering current evidence and practices in terms of their capacity to establish principles of cell biology is provided.
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Palantir characterizes cell fate continuities in human hematopoiesis

TL;DR: An algorithm that models trajectories of differentiating cells, which treats cell-fate as a probabilistic process, and leverages entropy to measure the changing nature of cell plasticity along the differentiation trajectory is presented.
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Idiopathic pulmonary fibrosis and systemic sclerosis: pathogenic mechanisms and therapeutic interventions

TL;DR: In this article, the authors examined the pathogenesis of fibrotic diseases, mainly addressing triggers for induction, processes that lead to progression, therapies and therapeutic trials, and focused on two fibroblastic diseases with lung involvement, idiopathic pulmonary fibrosis and systemic sclerosis.
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Charting a tissue from single-cell transcriptomes

TL;DR: A conceptually different approach is presented that allows to reconstruct spatial positions of cells in a variety of tissues without using reference imaging data and shows that this optimization problem can be cast as a generalized optimal transport problem and solved efficiently.
References
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Journal ArticleDOI

Continuous cultures of fused cells secreting antibody of predefined specificity

TL;DR: The derivation of a number of tissue culture cell lines which secrete anti-sheep red blood cell (SRBC) antibodies is described here, made by fusion of a mouse myeloma and mouse spleen cells from an immunised donor.
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Journal ArticleDOI

Fast unfolding of communities in large networks

TL;DR: In this paper, the authors proposed a simple method to extract the community structure of large networks based on modularity optimization, which is shown to outperform all other known community detection methods in terms of computation time.
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