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Measuring the use and career histories of drug users in treatment: reliability of the Lifetime Drug Use History (LDUH) and its data yield relative to clinical case notes.

作者信息

Day Ed, Best David, Cantillano Vanessa, Gaston Romina Lopez, Nambamali Angela, Keaney Francis

机构信息

Department of Psychiatry, University of Birmingham, Birmingham, UK.

出版信息

Drug Alcohol Rev. 2008 Mar;27(2):171-7. doi: 10.1080/09595230701829504.

Abstract

INTRODUCTION AND AIMS

There is no generally accepted clinical or research instrument available for recording the longitudinal course of a drug-using 'career'. This paper reports on an initial examination of the properties of the Lifetime Drug Use History Questionnaire (LDUH), built around monthly mapping of drug use patterns in relation to other life events.

DESIGN AND METHODS

Forty heroin and cocaine users completed structured interviews at two treatment sites. Twenty subjects were interviewed on two occasions separated by a 3-day interval, using either the same interviewer (n = 10) or two different interviewers (n = 10) as assessments of inter-rater and test - retest reliability.

RESULTS

Very good inter-rater agreements were observed, demonstrated by Cronbach's alpha and intraclass correlation coefficients generally higher than 0.8 and 0.7, respectively. Additionally, concordance with clinical notes was assessed for four drug use history variables, resulting in poorer rates of agreement. An exact matching with clinical records was obtained for the variable 'age of first use of heroin' in 47.2% (n = 17) of the heroin users, while a good agreement (only 1 or 2 years' difference) was found in 36.1% of cases (n = 5).

DISCUSSION AND CONCLUSIONS

The LDUH method resulted in high reliability for heroin and cocaine and suggests an effective, clinically applicable method for history-taking. The paucity and inconsistency of similar information in the clinical notes would further justify the use of a standardised method for recording drug histories.

摘要

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