Development and validation of risk models to predict chronic kidney disease among people living with HIV: protocol for a systematic review

Introduction Chronic kidney disease (CKD) is estimated to affect about 9.1% of the global population with a substantially increased risk of the condition (6.8%–17.2%) among people living with HIV (PLWH). This increased risk is attributed to HIV infection itself, antiretroviral therapy, coexisting vi...

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Main Authors: A P Kengne, Adesola Z Musa, Babatunde L Salako, Nasheeta Peer, Oluwatosin Olaseni Odubela, Nkiruka Odunukwe
Format: Article
Language:English
Published: BMJ Publishing Group 2022-07-01
Series:BMJ Open
Online Access:https://bmjopen.bmj.com/content/12/7/e061149.full
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author A P Kengne
Adesola Z Musa
Babatunde L Salako
Nasheeta Peer
Oluwatosin Olaseni Odubela
Nkiruka Odunukwe
author_facet A P Kengne
Adesola Z Musa
Babatunde L Salako
Nasheeta Peer
Oluwatosin Olaseni Odubela
Nkiruka Odunukwe
author_sort A P Kengne
collection DOAJ
description Introduction Chronic kidney disease (CKD) is estimated to affect about 9.1% of the global population with a substantially increased risk of the condition (6.8%–17.2%) among people living with HIV (PLWH). This increased risk is attributed to HIV infection itself, antiretroviral therapy, coexisting viral infections, non-infectious comorbidities and traditional risk factors for CKD. Predictive models have been employed in the estimation of prevalent and incident CKD risk in both PLWH and the general population. A predictive model showing an individual’s risk of prevalent and/or progression to kidney failure is useful for initiating timely interventions that prevent further worsening of kidney function. This study will systematically review published prediction models developed and/or validated for prevalent and incident CKD in PLWH, describe their characteristics, compare performance and assess methodological quality and applicability.Methods and analysis Studies with predictive models of interest will be identified by searching MEDLINE, Web of Science, Cumulative Index to Nursing and Allied Health Literature, Cochrane library and Scopus from inception to May 2022. Title and abstract screening, full-text review and data extraction will be completed independently by two reviewers. Using appropriate tools designed for predictive modelling investigations, the included papers will be rigorously assessed for bias and applicability. Extracted data will be presented in tables, so that published prediction models can be compared qualitatively. Quantitative data on the predictive performance of these models will be synthesised with meta-analyses if appropriate.Ethics and dissemination The findings of the review will be disseminated in peer-reviewed journals and seminar presentations. Ethical approval is not required as this is a protocol for a systematic review.PROSPERO registration number CRD42021279694.
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spelling doaj-art-c09afe0a56c843a1982eab5afdd99b1d2025-01-31T01:35:13ZengBMJ Publishing GroupBMJ Open2044-60552022-07-0112710.1136/bmjopen-2022-061149Development and validation of risk models to predict chronic kidney disease among people living with HIV: protocol for a systematic reviewA P Kengne0Adesola Z Musa1Babatunde L Salako2Nasheeta Peer3Oluwatosin Olaseni Odubela4Nkiruka Odunukwe5Medicine, University of Cape Town, Rondebosch, South AfricaClinical Sciences Department, Nigerian Institute of Medical Research, Lagos, NigeriaClinical Sciences Department, Nigerian Institute of Medical Research, Lagos, NigeriaMedicine, University of Cape Town, Rondebosch, South AfricaMedicine, University of Cape Town, Rondebosch, South AfricaClinical Sciences Department, Nigerian Institute of Medical Research, Lagos, NigeriaIntroduction Chronic kidney disease (CKD) is estimated to affect about 9.1% of the global population with a substantially increased risk of the condition (6.8%–17.2%) among people living with HIV (PLWH). This increased risk is attributed to HIV infection itself, antiretroviral therapy, coexisting viral infections, non-infectious comorbidities and traditional risk factors for CKD. Predictive models have been employed in the estimation of prevalent and incident CKD risk in both PLWH and the general population. A predictive model showing an individual’s risk of prevalent and/or progression to kidney failure is useful for initiating timely interventions that prevent further worsening of kidney function. This study will systematically review published prediction models developed and/or validated for prevalent and incident CKD in PLWH, describe their characteristics, compare performance and assess methodological quality and applicability.Methods and analysis Studies with predictive models of interest will be identified by searching MEDLINE, Web of Science, Cumulative Index to Nursing and Allied Health Literature, Cochrane library and Scopus from inception to May 2022. Title and abstract screening, full-text review and data extraction will be completed independently by two reviewers. Using appropriate tools designed for predictive modelling investigations, the included papers will be rigorously assessed for bias and applicability. Extracted data will be presented in tables, so that published prediction models can be compared qualitatively. Quantitative data on the predictive performance of these models will be synthesised with meta-analyses if appropriate.Ethics and dissemination The findings of the review will be disseminated in peer-reviewed journals and seminar presentations. Ethical approval is not required as this is a protocol for a systematic review.PROSPERO registration number CRD42021279694.https://bmjopen.bmj.com/content/12/7/e061149.full
spellingShingle A P Kengne
Adesola Z Musa
Babatunde L Salako
Nasheeta Peer
Oluwatosin Olaseni Odubela
Nkiruka Odunukwe
Development and validation of risk models to predict chronic kidney disease among people living with HIV: protocol for a systematic review
BMJ Open
title Development and validation of risk models to predict chronic kidney disease among people living with HIV: protocol for a systematic review
title_full Development and validation of risk models to predict chronic kidney disease among people living with HIV: protocol for a systematic review
title_fullStr Development and validation of risk models to predict chronic kidney disease among people living with HIV: protocol for a systematic review
title_full_unstemmed Development and validation of risk models to predict chronic kidney disease among people living with HIV: protocol for a systematic review
title_short Development and validation of risk models to predict chronic kidney disease among people living with HIV: protocol for a systematic review
title_sort development and validation of risk models to predict chronic kidney disease among people living with hiv protocol for a systematic review
url https://bmjopen.bmj.com/content/12/7/e061149.full
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