The overall goal of the HMS LINCS Center is to delineate the fundamental principles of cellular response to perturbagens at the level of single-cells and cell populations and to make response data routinely available via web-based browse, query and programmatic interfaces. This will involve the development and testing of new measurement methods, computational algorithms, and response signatures for diverse human cell types exposed to perturbations individually and in combination. We will emphasize the systematic collection of data not currently available in existing public databases including live and fixed-cell imaging, biochemical data on signaling proteins and multi-factorial drug-response phenotypes. A focus on diverse transformed and primary cells, including those derived from healthy and diseased donors, and on clinical grade small molecules (kinase inhibitors and epigenome drugs) will increase the translational impact of our work. The proposed LINCS Center represents a continuation of a program in operation for ~3.5 years under a LINCS pilot phase U54 award. We will expand the scope and sophistication of our Center, devoting significant effort to (i) improving the quality of data analysis and visualization, particularly wih respect to the complexities of perturbagen polypharmacy (ii) accelerating the release of perturbagen-response signatures using methods that have been demonstrated to yield reliable and informative data, with a particular emphasis on primary and non-transformed cells (iii) developing and applying new measurement methods, particularly mass spectrometry for analysis of cell populations and live-cell imaging for analysis of single cells. The work will involve nine complementary but independent aims. In Data Generation, Aim 1 will perform systematic analysis of perturbagen responses at a single-cell level.
Aim 2 will collect multiplex protein and mRNA data on perturbagen response using a set of complementary imaging, mass spectrometry and bead-based assays.
Aim 3 will apply LINCS methods to non-transformed immune cells and induced pluripotent stem cells, and explore if signatures can guide a detailed medicinal chemistry campaign. In Data Analysis, Aim 4 will construct perturbagen-response signatures using statistical modeling, network inference and machine learning methods.
Aim 5 will develop new approaches to understanding and analyzing drug interactions on multiple phenotypes in single cells.
Aim 6 will develop a novel compressed sensing framework for analyzing the poly-pharmacology of kinase inhibitors.
Aim 7 will enhance the query, browse and explore functions of the HMS LINCS website and database and its integration with the UCSC Genome Browser. In Community Interaction and Outreach, Aim 8 will implement diverse training and outreach activities, including collaboration with LINCS and non-LINCS research groups. In Administration, Aim 9 will ensure effective management of the Center, sustained access to tools and data produced within the LINCS Project, and compliance with program goals.

Public Health Relevance

Disease networks are complex interactions between multiple proteins. Precise understanding of the multifactorial perturbations imposed on multi-component networks is a crucial step in the development of a rational approach to drug discovery and personalization of therapy. The LINCS Center we propose will develop innovative computational and experimental methods for understanding cellular perturbagen-response networks and will make the resulting data and new knowledge accessible to the diverse community of molecular and computational biologists, medicinal chemists and clinical investigators through outreach.

Agency
National Institute of Health (NIH)
Institute
National Heart, Lung, and Blood Institute (NHLBI)
Type
Specialized Center--Cooperative Agreements (U54)
Project #
5U54HL127365-03
Application #
9098801
Study Section
Special Emphasis Panel (ZRG1)
Program Officer
Srinivas, Pothur R
Project Start
2014-09-10
Project End
2020-06-30
Budget Start
2016-07-01
Budget End
2017-06-30
Support Year
3
Fiscal Year
2016
Total Cost
Indirect Cost
Name
Harvard Medical School
Department
Biology
Type
Schools of Medicine
DUNS #
047006379
City
Boston
State
MA
Country
United States
Zip Code
Jones, Douglas S; Jenney, Anne P; Joughin, Brian A et al. (2018) Inflammatory but not mitogenic contexts prime synovial fibroblasts for compensatory signaling responses to p38 inhibition. Sci Signal 11:
Lin, Jia-Ren; Izar, Benjamin; Wang, Shu et al. (2018) Highly multiplexed immunofluorescence imaging of human tissues and tumors using t-CyCIF and conventional optical microscopes. Elife 7:
Barrette, Anne Marie; Bouhaddou, Mehdi; Birtwistle, Marc R (2018) Integrating Transcriptomic Data with Mechanistic Systems Pharmacology Models for Virtual Drug Combination Trials. ACS Chem Neurosci 9:118-129
Coy, Shannon; Rashid, Rumana; Lin, Jia-Ren et al. (2018) Multiplexed immunofluorescence reveals potential PD-1/PD-L1 pathway vulnerabilities in craniopharyngioma. Neuro Oncol 20:1101-1112
Keenan, Alexandra B; Jenkins, Sherry L; Jagodnik, Kathleen M et al. (2018) The Library of Integrated Network-Based Cellular Signatures NIH Program: System-Level Cataloging of Human Cells Response to Perturbations. Cell Syst 6:13-24
Sampattavanich, Somponnat; Steiert, Bernhard; Kramer, Bernhard A et al. (2018) Encoding Growth Factor Identity in the Temporal Dynamics of FOXO3 under the Combinatorial Control of ERK and AKT Kinases. Cell Syst 6:664-678.e9
Berberich, Matthew J; Paulo, Joao A; Everley, Robert A (2018) MS3-IDQ: Utilizing MS3 Spectra beyond Quantification Yields Increased Coverage of the Phosphoproteome in Isobaric Tag Experiments. J Proteome Res 17:1741-1747
Koch, Peter D; Miller, Howard R; Yu, Gary et al. (2018) A High Content Screen in Macrophages Identifies Small Molecule Modulators of STING-IRF3 and NFkB Signaling. ACS Chem Biol 13:1066-1081
Graim, Kiley; Liu, Tiffany Ting; Achrol, Achal S et al. (2017) Revealing cancer subtypes with higher-order correlations applied to imaging and omics data. BMC Med Genomics 10:20
Gönen, Mehmet; Weir, Barbara A; Cowley, Glenn S et al. (2017) A Community Challenge for Inferring Genetic Predictors of Gene Essentialities through Analysis of a Functional Screen of Cancer Cell Lines. Cell Syst 5:485-497.e3

Showing the most recent 10 out of 36 publications