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Assessment of the impact of adherence and other predictors during HAART on various CD4 cell responses in resource-limited settings

OBJECTIVE: The aim of this study was to quantify, by modeling, the impact of significant predictors on CD4 cell response during antiretroviral therapy in a resource-limited setting. METHODS: Modeling was used to determine which antiretroviral therapy response predictors (baseline CD4 cell count, cli...

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Autores principales: Abrogoua, Danho Pascal, Kablan, Brou Jerome, Kamenan, Boua Alexis Thierry, Aulagner, Gilles, N’Guessan, Konan, Zohoré, Christian
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Dove Medical Press 2012
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3333809/
https://www.ncbi.nlm.nih.gov/pubmed/22536059
http://dx.doi.org/10.2147/PPA.S26507
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author Abrogoua, Danho Pascal
Kablan, Brou Jerome
Kamenan, Boua Alexis Thierry
Aulagner, Gilles
N’Guessan, Konan
Zohoré, Christian
author_facet Abrogoua, Danho Pascal
Kablan, Brou Jerome
Kamenan, Boua Alexis Thierry
Aulagner, Gilles
N’Guessan, Konan
Zohoré, Christian
author_sort Abrogoua, Danho Pascal
collection PubMed
description OBJECTIVE: The aim of this study was to quantify, by modeling, the impact of significant predictors on CD4 cell response during antiretroviral therapy in a resource-limited setting. METHODS: Modeling was used to determine which antiretroviral therapy response predictors (baseline CD4 cell count, clinical state, age, and adherence) significantly influence immunological response in terms of CD4 cell gain compared to a reference value at different periods of monitoring. RESULTS: At 6 months, CD4 cell response was significantly influenced by baseline CD4 count alone. The probability of no increase in CD4 cells was 2.6 higher in patients with a baseline CD4 cell count of ≥200/mm(3). At 12 months, CD4 cell response was significantly influenced by both baseline CD4 cell count and adherence. The probability of no increase in CD4 cells was three times higher in patients with a baseline CD4 cell count of ≥200/mm(3) and 0.15 times lower with adherent patients. At 18 months, CD4 cell response was also significantly influenced by both baseline CD4 cell count and adherence. The probability of no increase in CD4 cells was 5.1 times higher in patients with a baseline CD4 cell count of ≥200/mm(3) and 0.28 times lower with adherent patients. At 24 months, optimal CD4 cell response was significantly influenced by adherence alone. Adherence increased the probability (by 5.8) of an optimal increase in CD4 cells. Age and baseline clinical state had no significant influence on immunological response. CONCLUSION: The relationship between adherence and CD4 cell response was the most significant compared to that of baseline CD4 cell count. Counseling before initiation of treatment and educational therapy during follow-up must always help to strengthen adherence and optimize the efficiency of antiretroviral therapy in a resource-limited setting.
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spelling pubmed-33338092012-04-25 Assessment of the impact of adherence and other predictors during HAART on various CD4 cell responses in resource-limited settings Abrogoua, Danho Pascal Kablan, Brou Jerome Kamenan, Boua Alexis Thierry Aulagner, Gilles N’Guessan, Konan Zohoré, Christian Patient Prefer Adherence Original Research OBJECTIVE: The aim of this study was to quantify, by modeling, the impact of significant predictors on CD4 cell response during antiretroviral therapy in a resource-limited setting. METHODS: Modeling was used to determine which antiretroviral therapy response predictors (baseline CD4 cell count, clinical state, age, and adherence) significantly influence immunological response in terms of CD4 cell gain compared to a reference value at different periods of monitoring. RESULTS: At 6 months, CD4 cell response was significantly influenced by baseline CD4 count alone. The probability of no increase in CD4 cells was 2.6 higher in patients with a baseline CD4 cell count of ≥200/mm(3). At 12 months, CD4 cell response was significantly influenced by both baseline CD4 cell count and adherence. The probability of no increase in CD4 cells was three times higher in patients with a baseline CD4 cell count of ≥200/mm(3) and 0.15 times lower with adherent patients. At 18 months, CD4 cell response was also significantly influenced by both baseline CD4 cell count and adherence. The probability of no increase in CD4 cells was 5.1 times higher in patients with a baseline CD4 cell count of ≥200/mm(3) and 0.28 times lower with adherent patients. At 24 months, optimal CD4 cell response was significantly influenced by adherence alone. Adherence increased the probability (by 5.8) of an optimal increase in CD4 cells. Age and baseline clinical state had no significant influence on immunological response. CONCLUSION: The relationship between adherence and CD4 cell response was the most significant compared to that of baseline CD4 cell count. Counseling before initiation of treatment and educational therapy during follow-up must always help to strengthen adherence and optimize the efficiency of antiretroviral therapy in a resource-limited setting. Dove Medical Press 2012-03-23 /pmc/articles/PMC3333809/ /pubmed/22536059 http://dx.doi.org/10.2147/PPA.S26507 Text en © 2012 Abrogoua et al, publisher and licensee Dove Medical Press Ltd. This is an Open Access article which permits unrestricted noncommercial use, provided the original work is properly cited.
spellingShingle Original Research
Abrogoua, Danho Pascal
Kablan, Brou Jerome
Kamenan, Boua Alexis Thierry
Aulagner, Gilles
N’Guessan, Konan
Zohoré, Christian
Assessment of the impact of adherence and other predictors during HAART on various CD4 cell responses in resource-limited settings
title Assessment of the impact of adherence and other predictors during HAART on various CD4 cell responses in resource-limited settings
title_full Assessment of the impact of adherence and other predictors during HAART on various CD4 cell responses in resource-limited settings
title_fullStr Assessment of the impact of adherence and other predictors during HAART on various CD4 cell responses in resource-limited settings
title_full_unstemmed Assessment of the impact of adherence and other predictors during HAART on various CD4 cell responses in resource-limited settings
title_short Assessment of the impact of adherence and other predictors during HAART on various CD4 cell responses in resource-limited settings
title_sort assessment of the impact of adherence and other predictors during haart on various cd4 cell responses in resource-limited settings
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3333809/
https://www.ncbi.nlm.nih.gov/pubmed/22536059
http://dx.doi.org/10.2147/PPA.S26507
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