Statistical and Machine Learning Methods for Integrating Clinical and Multimodal Imaging Data to Select Optimal Antidepressant Treatment

Information

  • Research Project
  • 10241351
  • ApplicationId
    10241351
  • Core Project Number
    K01MH113850
  • Full Project Number
    5K01MH113850-04
  • Serial Number
    113850
  • FOA Number
    PA-16-190
  • Sub Project Id
  • Project Start Date
    9/15/2018 - 7 years ago
  • Project End Date
    8/31/2022 - 3 years ago
  • Program Officer Name
    CHAVEZ, MARK
  • Budget Start Date
    9/1/2021 - 4 years ago
  • Budget End Date
    8/31/2022 - 3 years ago
  • Fiscal Year
    2021
  • Support Year
    04
  • Suffix
  • Award Notice Date
    8/9/2021 - 4 years ago

Statistical and Machine Learning Methods for Integrating Clinical and Multimodal Imaging Data to Select Optimal Antidepressant Treatment

Summary: The public health burden of major depressive disorder (MDD) is immense and current approaches for selecting antidepressant treatment have had limited success. By some estimates, fewer than one in three MDD patients will respond to their prescribed antidepressant and the quest for a treatment that will work is typically characterized by a lengthy course of trial-and-error. The need to identify patient characteristics (biomarkers) that can be used to objectively select personalized antidepressant treatment is clear. Accordingly, large clinical studies like the NIMH-funded Establishing Moderators and Biosignatures of Antidepressant Response for Clinical Care (EMBARC) study have collected massive amounts of baseline measures including those from various neuroimaging sources in the hope that some can be used to guide antidepressant treatment selection. These data bring with them many statistical challenges that have yet to be effectively addressed. These challenges include (1) dealing with high-dimensionality, (2) handling data missingness, and (3) determining how best to simultaneously model relationships between measures from multiple imaging modalities and the response of interest. The goal of this project is to acquire the essential training and experience to make significant progress in this area by addressing each of these challenges. Aim 1 of this project will employ state-of-the-art ensemble machine learning algorithms and targeted estimation to identify moderators of antidepressant treatment effect using scalar clinical, demographic, and summary neuroimaging data from clinical trials of antidepressant treatments, including EMBARC. Strategies for handling missing data in this context will also be investigated and guidelines on best practices will be proposed. Aim 2 will extend the methods used in Aim 1 and develop user-friendly software to directly incorporate high- dimensional multimodal neuroimaging data into treatment decision rules. Included in this aim will be an investigation into best practices for handling missing high-dimensional imaging data in the context of estimating treatment decision rules. Aim 3 will employ the novel methods developed in Aim 2 and the estimated treatment decision rules will be evaluated and compared with those developed in Aim 1. I have put together a training program that directly supports the completion of these research aims. It includes instruction, mentoring, and hands-on-experience (1) in psychopathology and the neural basis for psychiatric disorders and treatment for those disorders; (2) in the use of neuroimaging data to understand depression and response to antidepressant treatment; (3) in the use of modern algorithms to store, process, manipulate, and analyze big biomedical data like those arising in multimodal neuroimaging studies. This K01 Mentored Research Scientist Development Award will provide the training, time, and resources to be able to make substantial progress in addressing this important problem and will provide the skills and experience that will be crucial in my transition to an independent investigator.

IC Name
NATIONAL INSTITUTE OF MENTAL HEALTH
  • Activity
    K01
  • Administering IC
    MH
  • Application Type
    5
  • Direct Cost Amount
    149167
  • Indirect Cost Amount
    11796
  • Total Cost
    160963
  • Sub Project Total Cost
  • ARRA Funded
    False
  • CFDA Code
    242
  • Ed Inst. Type
  • Funding ICs
    NIMH:160963\
  • Funding Mechanism
    OTHER RESEARCH-RELATED
  • Study Section
    APDA
  • Study Section Name
    Adult Psychopathology and Disorders of Aging Study Section
  • Organization Name
    GEORGE WASHINGTON UNIVERSITY
  • Organization Department
  • Organization DUNS
    043990498
  • Organization City
    WASHINGTON
  • Organization State
    DC
  • Organization Country
    UNITED STATES
  • Organization Zip Code
    200520042
  • Organization District
    UNITED STATES