Journal of Gambling Studies

, 23:479 | Cite as

Examining DSM-IV Criteria for Pathological Gambling: Psychometric Properties and Evidence from Cognitive Biases

  • Chad E. Lakey
  • Adam S. Goodie
  • Charles E. Lance
  • Randy Stinchfield
  • Ken C. Winters
Original Paper


We examined the DSM-IV criteria for pathological gambling as assessed with the DSM-IV-based Diagnostic Interview for Gambling Severity (DIGS; Winters, Specker, & Stinchfield, 2002). We first analyzed the psychometric properties of the DIGS, and then assessed the extent to which performance on two judgment and decision-making tasks, the Georgia Gambling Task (Goodie, 2003) and the Iowa Gambling Task (Bechara, Damasio, Damasio, & Anderson, 1994), related to higher reports of gambling pathology. In a sample of frequent gamblers, we found strong psychometric support for the DSM-IV conception of pathological gambling as measured by the DIGS, predictive relationships between DIGS scores and all cognitive performance measures, and significant differences in performance measures between individuals with and without pathological gambling. Analyses using suggested revisions to the pathological gambling threshold (Stinchfield, 2003) revealed that individuals meeting four of the DSM-IV criteria aligned significantly more with pathological gamblers than with non-pathological gamblers, supporting the suggested change in the cutoff score from five to four symptoms. Discussion focuses on the validity of the DSM-IV criteria as assessed by the DIGS and the role of cognitive biases in pathological gambling.


Pathological gambling DSM-IV criteria Georgia Gambling Task Iowa Gambling Task Overconfidence 



This research was supported in part by National Institute of Mental Health research grant R01 MH067827 to A.S. Goodie, National Institute on Aging research grant AG15321, National Institute of Drug Abuse research grant R01 DA019460, and National Institute of Health research grant R03 CA117470 to C.E. Lance, and National Institute on Drug Abuse research grant K02 DA15347 to K.C. Winters.


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Copyright information

© Springer Science + Business Media, LLC 2007

Authors and Affiliations

  • Chad E. Lakey
    • 1
  • Adam S. Goodie
    • 1
  • Charles E. Lance
    • 1
  • Randy Stinchfield
    • 2
  • Ken C. Winters
    • 2
  1. 1.Department of PsychologyUniversity of GeorgiaAthensUSA
  2. 2.University of MinnesotaMinneapolisUSA

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