As a result of the accelerated pace of development of technologies for characterizing the human genome, the rate-limiting step for large scale genomic investigation in clinical populations is now phenotyping. This is particularly the case for neuropsychiatric (NP) illness, where phenotypes are complex, biomarkers are lacking, and the primary cell types of interest are difficult to access directly. It has become apparent that both rare and common genetic variation contributes to disease risk and that this risk crosses traditional diagnostic boundaries in psychiatry. Taking advantage of a large, already-established NP biobank could dramatically accelerate progress toward understanding the cross-disorder mechanism of action of disease liability genes. This study proposes novel applications of emerging technologies in informatics and cellular neurobiology to eliminate this phenotyping bottleneck. In doing so, it will accelerate investigation of clinical and cellular phenotypes for understanding single and multilocus/polygenic associations.
Aim 1 : Adapt and expand one of the largest NP cellular biobanks by parsing electronic health records with gold-standard assessment of cognition and other RDoC phenotypes.
Aim 2 : Define the genome-wide multidimensional functional genomics (MFG) landscape in NP disease into which the transcriptomic signature (RNA-seq) of each induced neuron (IN) representing a clinically characterized individual is projected. The projection provides the mapping from molecular to phenotypic characterization and a directionality towards healthful/neurotypical states used in Aim 3.
Aim 3 : Develop a probabilistic model of gene expression dependencies that will predict which small molecular perturbations are likely to shift the IN transcriptomic signature in a healthful direction in the MFG and to then update the model based on measured perturbations in the MFG.
Aim 4 : Select patient samples to study in greater detail for epigenetic (DNA methylation, histone marks and RNA editing) and transcriptional control particularly with regard to activity dependent changes that have been implicated in many NP diseases.
Aim 5 : Here we assess just how well the clinical phenotypes are informed by the genome-wide characterizations and assess which is more robust.

Public Health Relevance

This study is designed to answer the question: can we use the fruits of the first phases of the human genome project to create a new and more robust scheme of classifying neuropsychiatric disease, one that is more reliable with regard to prognosis of these diseases, more insightful as to the biological aberration in each category and, therefore, more effective in treating the patient.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Specialized Center (P50)
Project #
5P50MH106933-02
Application #
8929310
Study Section
National Human Genome Research Institute Initial Review Group (GNOM)
Program Officer
Senthil, Geetha
Project Start
2014-09-19
Project End
2019-07-31
Budget Start
2015-08-01
Budget End
2016-07-31
Support Year
2
Fiscal Year
2015
Total Cost
Indirect Cost
Name
Harvard Medical School
Department
Miscellaneous
Type
Schools of Medicine
DUNS #
047006379
City
Boston
State
MA
Country
United States
Zip Code
Lake, Blue B; Chen, Song; Sos, Brandon C et al. (2018) Integrative single-cell analysis of transcriptional and epigenetic states in the human adult brain. Nat Biotechnol 36:70-80
Brown, Hannah E; Hart, Kamber L; Snapper, Leslie A et al. (2018) Impairment in delay discounting in schizophrenia and schizoaffective disorder but not primary mood disorders. NPJ Schizophr 4:9
McCoy Jr, Thomas H; Yu, Sheng; Hart, Kamber L et al. (2018) High Throughput Phenotyping for Dimensional Psychopathology in Electronic Health Records. Biol Psychiatry 83:997-1004
Xia, Yin; Cai, Tianxi; Cai, T Tony (2018) Multiple Testing of Submatrices of a Precision Matrix with Applications to Identification of Between Pathway Interactions. J Am Stat Assoc 113:328-339
Singh, Vivek Kumar; Shrivastava, Utkarsh; Bouayad, Lina et al. (2018) Machine learning for psychiatric patient triaging: an investigation of cascading classifiers. J Am Med Inform Assoc 25:1481-1487
Lodato, Michael A; Rodin, Rachel E; Bohrson, Craig L et al. (2018) Aging and neurodegeneration are associated with increased mutations in single human neurons. Science 359:555-559
McCoy Jr, Thomas H; Castro, Victor M; Hart, Kamber L et al. (2018) Genome-wide Association Study of Dimensional Psychopathology Using Electronic Health Records. Biol Psychiatry 83:1005-1011
Xia, Yin; Cai, Tianxi; Cai, T Tony (2018) Two-Sample Tests for High-Dimensional Linear Regression with an Application to Detecting Interactions. Stat Sin 28:63-92
Sinnott, Jennifer A; Cai, Tianxi (2018) Pathway aggregation for survival prediction via multiple kernel learning. Stat Med 37:2501-2515
Yu, Sheng; Ma, Yumeng; Gronsbell, Jessica et al. (2018) Enabling phenotypic big data with PheNorm. J Am Med Inform Assoc 25:54-60

Showing the most recent 10 out of 56 publications