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Risk prediction models for symptomatic patients with bladder and kidney cancer: a systematic review

BACKGROUND: Timely diagnosis of bladder and kidney cancer is key to improving clinical outcomes. Given the challenges of early diagnosis, models incorporating clinical symptoms and signs may be helpful to primary care clinicians when triaging at-risk patients. AIM: To identify and compare published...

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Autores principales: Harrison, Hannah, Usher-Smith, Juliet A, Li, Lanxin, Roberts, Lydia, Lin, Zhiyuan, Thompson, Rachel E, Rossi, Sabrina H, Stewart, Grant D, Walter, Fiona M, Griffin, Simon, Zhou, Yin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Royal College of General Practitioners 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8714528/
https://www.ncbi.nlm.nih.gov/pubmed/34844922
http://dx.doi.org/10.3399/BJGP.2021.0319
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author Harrison, Hannah
Usher-Smith, Juliet A
Li, Lanxin
Roberts, Lydia
Lin, Zhiyuan
Thompson, Rachel E
Rossi, Sabrina H
Stewart, Grant D
Walter, Fiona M
Griffin, Simon
Zhou, Yin
author_facet Harrison, Hannah
Usher-Smith, Juliet A
Li, Lanxin
Roberts, Lydia
Lin, Zhiyuan
Thompson, Rachel E
Rossi, Sabrina H
Stewart, Grant D
Walter, Fiona M
Griffin, Simon
Zhou, Yin
author_sort Harrison, Hannah
collection PubMed
description BACKGROUND: Timely diagnosis of bladder and kidney cancer is key to improving clinical outcomes. Given the challenges of early diagnosis, models incorporating clinical symptoms and signs may be helpful to primary care clinicians when triaging at-risk patients. AIM: To identify and compare published models that use clinical signs and symptoms to predict the risk of undiagnosed prevalent bladder or kidney cancer. DESIGN AND SETTING: Systematic review. METHOD: A search identified primary research reporting or validating models predicting the risk of bladder or kidney cancer in MEDLINE and EMBASE. After screening identified studies for inclusion, data were extracted onto a standardised form. The risk models were classified using TRIPOD guidelines and evaluated using the PROBAST assessment tool. RESULTS: The search identified 20 661 articles. Twenty studies (29 models) were identified through screening. All the models included haematuria (visible, non-visible, or unspecified), and seven included additional signs and symptoms (such as abdominal pain). The models combined clinical features with other factors (including demographic factors and urinary biomarkers) to predict the risk of undiagnosed prevalent cancer. Several models (n = 13) with good discrimination (area under the receiver operating curve >0.8) were identified; however, only eight had been externally validated. All of the studies had either high or unclear risk of bias. CONCLUSION: Models were identified that could be used in primary care to guide referrals, with potential to identify lower-risk patients with visible haematuria and to stratify individuals who present with non-visible haematuria. However, before application in general practice, external validations in appropriate populations are required.
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spelling pubmed-87145282022-01-25 Risk prediction models for symptomatic patients with bladder and kidney cancer: a systematic review Harrison, Hannah Usher-Smith, Juliet A Li, Lanxin Roberts, Lydia Lin, Zhiyuan Thompson, Rachel E Rossi, Sabrina H Stewart, Grant D Walter, Fiona M Griffin, Simon Zhou, Yin Br J Gen Pract Research BACKGROUND: Timely diagnosis of bladder and kidney cancer is key to improving clinical outcomes. Given the challenges of early diagnosis, models incorporating clinical symptoms and signs may be helpful to primary care clinicians when triaging at-risk patients. AIM: To identify and compare published models that use clinical signs and symptoms to predict the risk of undiagnosed prevalent bladder or kidney cancer. DESIGN AND SETTING: Systematic review. METHOD: A search identified primary research reporting or validating models predicting the risk of bladder or kidney cancer in MEDLINE and EMBASE. After screening identified studies for inclusion, data were extracted onto a standardised form. The risk models were classified using TRIPOD guidelines and evaluated using the PROBAST assessment tool. RESULTS: The search identified 20 661 articles. Twenty studies (29 models) were identified through screening. All the models included haematuria (visible, non-visible, or unspecified), and seven included additional signs and symptoms (such as abdominal pain). The models combined clinical features with other factors (including demographic factors and urinary biomarkers) to predict the risk of undiagnosed prevalent cancer. Several models (n = 13) with good discrimination (area under the receiver operating curve >0.8) were identified; however, only eight had been externally validated. All of the studies had either high or unclear risk of bias. CONCLUSION: Models were identified that could be used in primary care to guide referrals, with potential to identify lower-risk patients with visible haematuria and to stratify individuals who present with non-visible haematuria. However, before application in general practice, external validations in appropriate populations are required. Royal College of General Practitioners 2021-11-30 /pmc/articles/PMC8714528/ /pubmed/34844922 http://dx.doi.org/10.3399/BJGP.2021.0319 Text en © The Authors https://creativecommons.org/licenses/by/4.0/This article is Open Access: CC BY 4.0 licence (http://creativecommons.org/licences/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) ).
spellingShingle Research
Harrison, Hannah
Usher-Smith, Juliet A
Li, Lanxin
Roberts, Lydia
Lin, Zhiyuan
Thompson, Rachel E
Rossi, Sabrina H
Stewart, Grant D
Walter, Fiona M
Griffin, Simon
Zhou, Yin
Risk prediction models for symptomatic patients with bladder and kidney cancer: a systematic review
title Risk prediction models for symptomatic patients with bladder and kidney cancer: a systematic review
title_full Risk prediction models for symptomatic patients with bladder and kidney cancer: a systematic review
title_fullStr Risk prediction models for symptomatic patients with bladder and kidney cancer: a systematic review
title_full_unstemmed Risk prediction models for symptomatic patients with bladder and kidney cancer: a systematic review
title_short Risk prediction models for symptomatic patients with bladder and kidney cancer: a systematic review
title_sort risk prediction models for symptomatic patients with bladder and kidney cancer: a systematic review
topic Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8714528/
https://www.ncbi.nlm.nih.gov/pubmed/34844922
http://dx.doi.org/10.3399/BJGP.2021.0319
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