Reconstructing regulatory networks from time series single cell data New technological advances are enabling researchers to profile the gene expression of single cells. These experiments, termed single cell RNA-Seq, open the door to several important applications. These include the ability to elucidate the networks and pathways controlling cellular differentiation and understanding the sequence of regulatory events that lead to, and control, cell fate decisions. Such models and networks provide critical information for investigators attempting to derive specific types of differentiated human cells which in turn opens the door to several applications ranging from disease modeling to the ability to use regenerative cells for potential reconstitution of damaged cells or tissues. However, the analysis of single cell RNA-Seq data, and specifically time series single cell data which is required for such developmental studies, raises several new challenges. Determining which cells should be combined to construct developmental models is challenging. Cells at each time point usually come from a mixture of cell types, each of which may be a progenitor of one, or several, specific lineages. To reconstruct the networks controlling cell differentiation we first need to determine a `time series' by linking single cells within and between time points and then use these assignments to reconstruct the networks and pathways that drive cell fate decisions. A specific example of a differentiation process we intend to study is abnormal lung development which often arises due to genetic perturbations and can lead to congenital or neonatal lung diseases. Our preliminary results indicate that single cell RNA-Seq data has great potential to illuminate the complex gene regulatory networks that control normal development of several different types of cells in the lung and to aid in identifying regulatory mechanism that may go awry during abnormal development leading to disease. Given these initial findings, in this project we will develop and test computational methods, based on probabilistic graphical models, for the analysis and modeling of time series single cell RNA-Seq data. Our methods would allow the determination of the different types of cells at each time point, relationship between cells across time points and the reconstruction of regulatory networks that control the differentiation process. The reconstructed networks would also allow us to identify key genes and factors controlling the differentiation process and would lead to testable hypotheses about the proteins regulating key events. We will apply the methods we develop to study and model normal and diseased lung development by performing new single experiments on human induced pluripotent stem (iPS) cells.

Public Health Relevance

Reconstructing regulatory networks from time series single cell data Development of approaches for analyzing single cell RNA seq time series data is important for understanding the complex regulatory networks, including transcription factors and signaling pathways, that control embryonic development of tissue lineages and organs. Understanding this sequence of developmental milestones is a critical step in our ability to engineer methods for deriving differentiated human cell types in vitro from patient-derived pluripotent stem cells. Being able to derive these differentiated cells from any patient of any age provides unprecedented opportunities to model disease, design drug therapies, and prepare regenerative cells for potential reconstitution of damaged cells or tissues. In this proposal we will apply our computational methods to improve the differentiation of normal and patient-specific induced stem cells into lung epithelial progenitors allowing us to better understand a congenital/developmental pediatric lung disease that arises from heterozygous mutations in NKX2-1, a master transcriptional regulator of lung development.

Agency
National Institute of Health (NIH)
Institute
National Institute of General Medical Sciences (NIGMS)
Type
Research Project (R01)
Project #
1R01GM122096-01A1
Application #
9350447
Study Section
Special Emphasis Panel (ZRG1)
Program Officer
Resat, Haluk
Project Start
2017-08-01
Project End
2021-07-31
Budget Start
2017-08-01
Budget End
2018-07-31
Support Year
1
Fiscal Year
2017
Total Cost
Indirect Cost
Name
Carnegie-Mellon University
Department
Biostatistics & Other Math Sci
Type
Schools of Arts and Sciences
DUNS #
052184116
City
Pittsburgh
State
PA
Country
United States
Zip Code
15213
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Ding, Jun; Hagood, James S; Ambalavanan, Namasivayam et al. (2018) iDREM: Interactive visualization of dynamic regulatory networks. PLoS Comput Biol 14:e1006019
Ding, Jun; Aronow, Bruce J; Kaminski, Naftali et al. (2018) Reconstructing differentiation networks and their regulation from time series single-cell expression data. Genome Res :
Alavi, Amir; Ruffalo, Matthew; Parvangada, Aiyappa et al. (2018) A web server for comparative analysis of single-cell RNA-seq data. Nat Commun 9:4768
Ding, Jun; Bar-Joseph, Ziv (2017) MethRaFo: MeDIP-seq methylation estimate using a Random Forest Regressor. Bioinformatics 33:3477-3479