Astrocyte is the most abundant glia cell and significantly outnumbers neuron in the human brain. Long thought to be primarily passive cell, astrocyte has been increasingly recognized as essential player with active regulatory role in neural circuitry and pathology. Since a single astrocyte interacts with thousands of synapses, other glial cells and blood vessels, it is well positioned to link neuronal information in different spatial-temporal dimensions to achieve higher level brain integration. Indeed, neuron-astrocyte communication at synapses regulates breathing, memory formation, motor function, and sleep, and are implicated in many neuropsychiatric disorders. All these results provide strong rationale for modeling and analyzing astrocyte function, which will provide unprecedented insights to our understanding how astrocytes function to regulate and protect brain and how these functions can be exploited for astrocyte-based therapeutic targets. Recent advances in the modern microscopy and ultrasensitive genetic encoded calcium indicators (GECI) have enabled optical recording of astrocytic calcium dynamics ? the excitatory state and functional readout of astrocytes ? in vitro, ex vivo and in vivo. Compared to the great experimental capability of generating tremendous volumes of astrocyte functional data, the development of computational tools to analyze and interpret the complex and big data is lagged far behind, which has severely jeopardized a deeper understanding of the functional roles of astrocytes. To address the pressing need, we thus propose to develop sophisticated computational tools for interpreting the complex calcium dynamics data, through judicious application of advanced machine learning and systems theories. We have the following three specific aim.
Aim1). Developing computational tools to analyze the cellular properties of calcium signaling in a single astrocyte.
Aim2). Developing computational tools to analyze the network properties of calcium signaling in a population of astrocytes.
Aim3). Validating experimentally the computational tools, developing optimal experiment protocol and disseminating the software packages. Our preliminary studies on both synthetic and real datasets demonstrate the feasibility of our plans and highlight the potential of analyzing astrocyte functional activity to understand neuronal circuitry and pathology, including for the first time the surprising discovery of hyper-activity in Down?s syndrome astrocytes compared to the normal astrocytes. This proposal is built on pre-established collaboration between two groups with the much needed complementary expertise for accomplishing this project, (1) computational scientists (Yu lab at Virginia Tech) and (2) experimental neuroscientists (Tian lab at UC Davis). The pre-established working relationships, developed channels of communication and mechanisms for resource sharing will help insure that the work will proceed in an efficient and effective manner.

Public Health Relevance

Although astrocytes, the most abundant glia cells in the brain, have been proposed to play important roles in the neural circuitry, our understanding of the physiological roles of astrocyte in neural circuitry is very limited partially due to the lack of sophisticated computational tools to analyze the complex astrocyte calcium data. We thus propose to apply advanced machine learning and systems theories to address the pressing need. Deep understanding of the functional roles of astrocytes in health and disease will translate into identifying novel therapeutic avenues for treatment of brain disorders.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Research Project (R01)
Project #
1R01MH110504-01A1
Application #
9311535
Study Section
Biodata Management and Analysis Study Section (BDMA)
Program Officer
Ferrante, Michele
Project Start
2017-04-14
Project End
2022-01-31
Budget Start
2017-04-14
Budget End
2018-01-31
Support Year
1
Fiscal Year
2017
Total Cost
$580,007
Indirect Cost
$157,066
Name
Virginia Polytechnic Institute and State University
Department
Engineering (All Types)
Type
Schools of Engineering
DUNS #
003137015
City
Blacksburg
State
VA
Country
United States
Zip Code
24060
Wang, Yinxue; Ali, Maria; Wang, Yue et al. (2018) DETECTION AND TRACKING OF MIGRATING OLIGODENDROCYTE PROGENITOR CELLS FROM IN VIVO FLUORESCENCE TIME-LAPSE IMAGING DATA. Proc IEEE Int Symp Biomed Imaging 2018:961-964
Wang, Yinxue; Shi, Guilai; Miller, David J et al. (2017) Automated Functional Analysis of Astrocytes from Chronic Time-Lapse Calcium Imaging Data. Front Neuroinform 11:48