학술논문

Using computer-assisted content analysis to advance anal dysplasia natural history research
Document Type
article
Source
AIDS. 36(3)
Subject
Biomedical and Clinical Sciences
Clinical Sciences
Anal Canal
Anus Neoplasms
Atypical Squamous Cells of the Cervix
Carcinoma in Situ
HIV Infections
Humans
Retrospective Studies
anal cytology
anal dysplasia
content analysis
HIV
Biological Sciences
Medical and Health Sciences
Psychology and Cognitive Sciences
Virology
Biomedical and clinical sciences
Health sciences
Language
Abstract
ObjectiveOur study aim was to validate the use of computer-aided narrative content analysis in the extraction of standard diagnostic categories using an archived cytology database that included individually overread reference classification.DesignA retrospective analysis of narrative anal cytology results collected on HIV-infected patients at the University of California, San Diego between January and December 2001.MethodsWe used computer-assisted content analysis extraction methodology using Wordstat 8.0 (Provalis Research) that operated using a classification dictionary that we developed for the following diagnostic categories: NAMC, ASCUS, LSIL, HSIL. We compared its accuracy to a physician overread manually extracted method: that classified each report into the most severe diagnostic category referenced in the narrative report. Agreement between content analysis mapped diagnostic categories and the reference category was evaluated using kappa agreement.ResultsDuring 2001, 901 patients underwent 997 anal cytological examinations as routine screening. By reference diagnostic category: 54 (5.4%) were unsatisfactory, 460 (46.1%) were NAMC, 291 (29.2%) were ASCUS, 131 (13.1%) were LSIL, and 61 (6.1%) were HSIL. Computer-aided content analysis extracted a single diagnosis from each report in 963 (96.2%) cases and two diagnoses in 38 (3.8%) cases. The Kappa agreement was 0.96 (0.019 s.e.). There were 29 cases classified ASCUS by reference category but LSIL by adjudicated content analysis. A focused review indicated that the over reader assigned reference category was in error.ConclusionComputer-aided narrative content analysis of anal cytology results yielded accurate and time-efficient classification into meaningful diagnostic categories that can be used to evaluate screening programs and modeling natural history.