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An alternative methodology for the prediction of adherence to anti HIV treatment

BACKGROUND: Successful treatment of HIV-positive patients is fundamental to controlling the progression to AIDS. Causes of treatment failure are either related to drug resistance and/or insufficient drug levels in the blood. Severe side effects, coupled with the intense nature of many regimens, can...

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Autores principales: Thompson, I Richard, Bidgood, Penelope, Petróczi, Andrea, Denholm-Price, James CW, Fielder, Mark D
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2009
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2698819/
https://www.ncbi.nlm.nih.gov/pubmed/19486507
http://dx.doi.org/10.1186/1742-6405-6-9
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author Thompson, I Richard
Bidgood, Penelope
Petróczi, Andrea
Denholm-Price, James CW
Fielder, Mark D
author_facet Thompson, I Richard
Bidgood, Penelope
Petróczi, Andrea
Denholm-Price, James CW
Fielder, Mark D
author_sort Thompson, I Richard
collection PubMed
description BACKGROUND: Successful treatment of HIV-positive patients is fundamental to controlling the progression to AIDS. Causes of treatment failure are either related to drug resistance and/or insufficient drug levels in the blood. Severe side effects, coupled with the intense nature of many regimens, can lead to treatment fatigue and consequently to periodic or permanent non-adherence. Although non-adherence is a recognised problem in HIV treatment, it is still poorly detected in both clinical practice and research and often based on unreliable information such as self-reports, or in a research setting, Medication Events Monitoring System caps or prescription refill rates. To meet the need for having objective information on adherence, we propose a method using viral load and HIV genome sequence data to identify non-adherence amongst patients. PRESENTATION OF THE HYPOTHESIS: With non-adherence operationally defined as a sharp increase in viral load in the absence of mutation, it is hypothesised that periods of non-adherence can be identified retrospectively based on the observed relationship between changes in viral load and mutation. TESTING THE HYPOTHESIS: Spikes in the viral load (VL) can be identified from time periods over which VL rises above the undetectable level to a point at which the VL decreases by a threshold amount. The presence of mutations can be established by comparing each sequence to a reference sequence and by comparing sequences in pairs taken sequentially in time, in order to identify changes within the sequences at or around 'treatment change events'. Observed spikes in VL measurements without mutation in the corresponding sequence data then serve as a proxy indicator of non-adherence. IMPLICATIONS OF THE HYPOTHESIS: It is envisaged that the validation of the hypothesised approach will serve as a first step on the road to clinical practice. The information inferred from clinical data on adherence would be a crucially important feature of treatment prediction tools provided for practitioners to aid daily practice. In addition, distinct characteristics of biological markers routinely used to assess the state of the disease may be identified in the adherent and non-adherent groups. This latter approach would directly help clinicians to differentiate between non-responding and non-adherent patients.
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spelling pubmed-26988192009-06-19 An alternative methodology for the prediction of adherence to anti HIV treatment Thompson, I Richard Bidgood, Penelope Petróczi, Andrea Denholm-Price, James CW Fielder, Mark D AIDS Res Ther Hypothesis BACKGROUND: Successful treatment of HIV-positive patients is fundamental to controlling the progression to AIDS. Causes of treatment failure are either related to drug resistance and/or insufficient drug levels in the blood. Severe side effects, coupled with the intense nature of many regimens, can lead to treatment fatigue and consequently to periodic or permanent non-adherence. Although non-adherence is a recognised problem in HIV treatment, it is still poorly detected in both clinical practice and research and often based on unreliable information such as self-reports, or in a research setting, Medication Events Monitoring System caps or prescription refill rates. To meet the need for having objective information on adherence, we propose a method using viral load and HIV genome sequence data to identify non-adherence amongst patients. PRESENTATION OF THE HYPOTHESIS: With non-adherence operationally defined as a sharp increase in viral load in the absence of mutation, it is hypothesised that periods of non-adherence can be identified retrospectively based on the observed relationship between changes in viral load and mutation. TESTING THE HYPOTHESIS: Spikes in the viral load (VL) can be identified from time periods over which VL rises above the undetectable level to a point at which the VL decreases by a threshold amount. The presence of mutations can be established by comparing each sequence to a reference sequence and by comparing sequences in pairs taken sequentially in time, in order to identify changes within the sequences at or around 'treatment change events'. Observed spikes in VL measurements without mutation in the corresponding sequence data then serve as a proxy indicator of non-adherence. IMPLICATIONS OF THE HYPOTHESIS: It is envisaged that the validation of the hypothesised approach will serve as a first step on the road to clinical practice. The information inferred from clinical data on adherence would be a crucially important feature of treatment prediction tools provided for practitioners to aid daily practice. In addition, distinct characteristics of biological markers routinely used to assess the state of the disease may be identified in the adherent and non-adherent groups. This latter approach would directly help clinicians to differentiate between non-responding and non-adherent patients. BioMed Central 2009-06-01 /pmc/articles/PMC2698819/ /pubmed/19486507 http://dx.doi.org/10.1186/1742-6405-6-9 Text en Copyright © 2009 Thompson et al; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License ( (http://creativecommons.org/licenses/by/2.0) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Hypothesis
Thompson, I Richard
Bidgood, Penelope
Petróczi, Andrea
Denholm-Price, James CW
Fielder, Mark D
An alternative methodology for the prediction of adherence to anti HIV treatment
title An alternative methodology for the prediction of adherence to anti HIV treatment
title_full An alternative methodology for the prediction of adherence to anti HIV treatment
title_fullStr An alternative methodology for the prediction of adherence to anti HIV treatment
title_full_unstemmed An alternative methodology for the prediction of adherence to anti HIV treatment
title_short An alternative methodology for the prediction of adherence to anti HIV treatment
title_sort alternative methodology for the prediction of adherence to anti hiv treatment
topic Hypothesis
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC2698819/
https://www.ncbi.nlm.nih.gov/pubmed/19486507
http://dx.doi.org/10.1186/1742-6405-6-9
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