The Effect of Mental Distress on Income: Results from a Community Survey

19 Pages Posted: 7 Jul 2004 Last revised: 27 Aug 2022

See all articles by Richard G. Frank

Richard G. Frank

Harvard Medical School; National Bureau of Economic Research (NBER)

Paul J. Gertler

University of California, Berkeley - Haas School of Business; National Bureau of Economic Research (NBER)

Date Written: November 1987

Abstract

We employ a unique data set from a community based survey to assess the effect of mental distress on earnings. The main advantage of the data is that detailed measurements of mental health status were made on all subjects in the study. This means that our population-based measure of mental distress does not rely on a patient having had contact with the health care system and obtaining a diagnosis from a provider. The use of diagnosis-based measures may introduce measurement-error bias into the estimates. Our results show that the presence of mental distress reduces earnings by approximately 21% to 33%. To assess the magnitude of any measurement-error bias we present a estimates of models using measures of mental health both on a population-wide basis and on a diagnosis basis. The estimated impact of mental illness on earning is only 9% lower using the using the diagnosis-based measure. The conclusion drawn from this is that little bias is introduced by using the diagnosis-based measure.

Suggested Citation

Frank, Richard G. and Gertler, Paul J., The Effect of Mental Distress on Income: Results from a Community Survey (November 1987). NBER Working Paper No. w2433, Available at SSRN: https://ssrn.com/abstract=227093

Richard G. Frank (Contact Author)

Harvard Medical School ( email )

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Paul J. Gertler

University of California, Berkeley - Haas School of Business ( email )

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