Accuracy of PHQ-9 against psychiatric diagnosis for depression among people living with HIV: A multicounty cross-sectional study.

Marcel Yotebieng,Natalia Zotova, Charlotte Bernard,Suzanne Goodrich,Ajeh Rogers Awoh,Dana Watnick, Dominique Mahambu Nsonde, Elodie Flore Tchiengang Moungang, Julie Laure Nguemo Noumedem, Guy Calvin Nko'o Mbongo'o,Albert Minga, Moussa Seydi,Paul Gandou,Edith Kamaru Kwobah,Lukoye Atwoli,Antoine Jaquet,Kara Wools-Kaloustian,Kathryn Anastos, IeDEA Consortium

AIDS (London, England)(2024)

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Abstract
OBJECTIVE:The aim of this study was to assess the performance of the 9-item Patient Health questionnaire (PHQ-9) against psychiatrist diagnosis in PLWH. DESIGN:Cross-sectional analysis of data collected between January 2018 and July 2022 across five sites in Cameroon, Cote d'Ivoire, Kenya, Senegal, and the Republic of Congo. Participants were ≥18 years and receiving HIV care at the participating site. PHQ-9 was administered by study staff followed by a psychiatrist's evaluation within 3 days. RESULTS:Overall, 778 participants with complete data were included: 297 (38.2%) in Cameroon, 132 (17.0%) in Congo, 148 (19.0%) in Cote d'Ivoire, 98 (12.6%) in Kenya, and 103 (13.2%) in Senegal. The area under the curve for PHQ-9 score was generally high ranging from 0.935 (95% CI: 0.893, 0.977) in Cote d'Ivoire to 0.768 (95% CI: 0.589, 0.947) in Congo. However, for the common cut-off score ≥10, sensitivity was low: 50% or lower in Cameroon, Congo and Senegal, 66.7% in Kenya and 70.6% in Cote d'Ivoire. But negative predictive values (NPV) were high: 98.9% (95% CI: 96.9%, 99.8%) in Cameroon, 96.1 (95% CI: 91.1, 98.7) in Cote d'Ivoire, 96.3% (95% CI: 89.7%, 99.2%) in Kenya, 95.7% (95% CI: 90.2%, 98.6%) in Congo, and 89.0% (95% CI: 81.2%, 94.4%) in Senegal. INTERPRETATION:Across all countries, PHQ-9 score ≥10 performed very poorly (low sensitivity) as a tool to identify psychiatrist diagnosed depression. However, the observed high NPV suggests it can be used to rule out depression.
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