Over the past ten years a good deal has been learned from fMRI studies about the spatial patterns of neural activation used by the human brain to represent meanings of words and concepts. Much less is understood about the time evolution of this neural activity, including the temporally interrelated sub-processes the brain employs during the hundreds of milliseconds it takes to comprehend a single word, or the more complex processes it uses to construct and encode meaning of entire sentences as the words arrive one by one. We propose research to study, and to build computational models of, the detailed spatial and temporal neural activity observed during the comprehension of single words, phrases, sentences, and stories. This proposed research will specifically target the following questions: What information is encoded by neural activity where and when, and by which subprocesses in the brain, during the time it takes to comprehend a single word in isolation? What is the flow of information encoded when a newly sensed word first activates sensory cortex, then later results in neural activation encoding the word meaning? How does the brain integrate a newly encountered word in the context of earlier words in the sentence or phrase, to compose the meaning representation of the multi-word phrase or sentence? and How do semantic expectations and demands, together with syntactic sentence structure alter the processing of words, compared to processing the same words in isolation, or as an unstructured set such as {kick, Joe, ball}? To study these questions we will (1) devise novel experimental protocols to probe the flow of information encoded in neural signals during word and sentence processing, (2) collect new brain image data using both fMRI to achieve spatial resolution of a few millimeters, and MEG to achieve temporal resolution of a few milliseconds, (3) develop and apply novel machine learning approaches to build computational models that integrate and that predict this combined experimental data. Our goal is to develop an increasingly accurate computational model of how the brain comprehends words, phrases and sentences - a model that makes testable predictions about the neural activity observed in response to novel language stimuli. Intellectual Merit: This collaborative research brings together advanced machine learning algorithms with novel experimental protocols for MEG and fMRI brain imaging to advance our understanding of two fundamental open questions about the human brain: how does the brain represent meaning, and what neuro-cognitive processes construct that meaning piece-by-piece from perceived language stimuli? Broader Impacts: If successful, this research will impact a broad range of communities, including (1) cognitive neuroscience and computational linguistics, providing improved understanding of language processing in the brain, (2) machine learning, by driving the development of new methods for time series and latent variable analysis, integrating multiple data sets, and incorporating diverse background knowledge as priors, (3) clinical studies of brain pathologies, especially those related to language processing, and informing treatment strategies for developmental and acquired language disorders (4) education of graduates, undergraduates and the general public, through dissemination of technical articles, teaching materials, and news about our work in the public press.

Agency
National Institute of Health (NIH)
Institute
Eunice Kennedy Shriver National Institute of Child Health & Human Development (NICHD)
Type
Research Project (R01)
Project #
5R01HD075328-04
Application #
8860217
Study Section
Special Emphasis Panel (ZRG1-IFCN-B (55))
Program Officer
Miller, Brett
Project Start
2012-08-16
Project End
2017-05-31
Budget Start
2015-06-01
Budget End
2016-05-31
Support Year
4
Fiscal Year
2015
Total Cost
$228,077
Indirect Cost
$72,425
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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