This research is aimed at demonstrating the feasibility of obtaining measures of depression severity using interactive voice response (IVR) technology that are equivalent or superior to clinician-administered Hamilton Depression Rating Scale (HAMD) interviews. Physicians will refer forty patients beginning treatment for a new episode of depression to the naturalistic, open-label study. Clinician HAMDs will be obtained at baseline and Weeks 2, 4 and 6. Beginning at baseline, subjects will call an IVR system daily to provide severity ratings of eight symptoms frequently associated with depression and a rating of clinical change since their last call. Beginning at baseline, and weekly thereafter, subjects will complete a validated IVR version of the HAMD, an IVR implementation of the Quick Inventory of Depressive Symptomatology (QIDS), provide a rating of clinical change since baseline enhanced by personalized recording of their experiences at baseline, and will provide speech samples elicited by a standardized protocol for subsequent acoustical analysis by Dr. Peter Snyder. Principal axis factoring will be used to define a statistically constrained, theoretically interpretable multivariate factor of depressive severity. Derived factor scores will be analyzed for between- and within-subjects variance related to clinician HAMD assessments and compared to depression metrics derived from the Daily Questions on Depression (DQD), the Memory Enhanced Retrospective Evaluation of Treatment (MERET), the IVR HAMD and QIDS, and speech characteristics extracted from the speech samples collected by IVR and analyzed in Dr. Snyder's laboratory. Improving the quality of assessment instruments used in depression treatment research might reverse the currently increasing rates of placebo response in randomized clinical trials, reduce the number of failed trials, provide more accurate measurement of therapeutic onset, and provide a more level playing field for comparing efficacy between compounds. Ultimately such efforts may decrease the drug development cycle at lower developmental costs.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
Small Business Innovation Research Grants (SBIR) - Phase I (R43)
Project #
1R43MH068950-01
Application #
6691474
Study Section
Special Emphasis Panel (ZRG1-SSS-R (10))
Program Officer
Steinberg, Louis H
Project Start
2003-09-15
Project End
2005-08-31
Budget Start
2003-09-15
Budget End
2005-08-31
Support Year
1
Fiscal Year
2003
Total Cost
$262,150
Indirect Cost
Name
Healthcare Technology Systems, LLC
Department
Type
DUNS #
844175617
City
Madison
State
WI
Country
United States
Zip Code
53717
Vogel, Adam P; Maruff, Paul; Snyder, Peter J et al. (2009) Standardization of pitch-range settings in voice acoustic analysis. Behav Res Methods 41:318-24
Mundt, James C; Snyder, Peter J; Cannizzaro, Michael S et al. (2007) Voice acoustic measures of depression severity and treatment response collected via interactive voice response (IVR) technology. J Neurolinguistics 20:50-64
Cannizzaro, Michael S; Reilly, Nicole; Mundt, James C et al. (2005) Remote capture of human voice acoustical data by telephone: a methods study. Clin Linguist Phon 19:649-58