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Improving identification of symptomatic cancer at primary care clinics: A predictive modeling analysis in Botswana

In resource‐limited settings, augmenting primary care provider (PCP)‐based referrals with data‐derived algorithms could direct scarce resources towards those patients most likely to have a cancer diagnosis and benefit from early treatment. Using data from Botswana, we compared accuracy of prediction...

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Autores principales: Molebatsi, Kesaobaka, Iyer, Hari S., Kohler, Racquel E., Gabegwe, Kemiso, Nkele, Isaac, Rabasha, Bokang, Botebele, Kerapetse, Barak, Tomer, Balosang, Siamisang, Tapela, Neo M., Dryden‐Peterson, Scott L.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley & Sons, Inc. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10286759/
https://www.ncbi.nlm.nih.gov/pubmed/35716138
http://dx.doi.org/10.1002/ijc.34178
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author Molebatsi, Kesaobaka
Iyer, Hari S.
Kohler, Racquel E.
Gabegwe, Kemiso
Nkele, Isaac
Rabasha, Bokang
Botebele, Kerapetse
Barak, Tomer
Balosang, Siamisang
Tapela, Neo M.
Dryden‐Peterson, Scott L.
author_facet Molebatsi, Kesaobaka
Iyer, Hari S.
Kohler, Racquel E.
Gabegwe, Kemiso
Nkele, Isaac
Rabasha, Bokang
Botebele, Kerapetse
Barak, Tomer
Balosang, Siamisang
Tapela, Neo M.
Dryden‐Peterson, Scott L.
author_sort Molebatsi, Kesaobaka
collection PubMed
description In resource‐limited settings, augmenting primary care provider (PCP)‐based referrals with data‐derived algorithms could direct scarce resources towards those patients most likely to have a cancer diagnosis and benefit from early treatment. Using data from Botswana, we compared accuracy of predictions of probable cancer using different approaches for identifying symptomatic cancer at primary clinics. We followed cancer suspects until they entered specialized care for cancer treatment (following pathologically confirmed diagnosis), exited from the study following noncancer diagnosis, or died. Routine symptom and demographic data included baseline cancer probability assessed by the primary care provider (low, intermediate, high), age, sex, performance status, baseline cancer probability by study physician, predominant symptom (lump, bleeding, pain or other) and HIV status. Logistic regression with 10‐fold cross‐validation was used to evaluate classification by different sets of predictors: (1) PCPs, (2) Algorithm‐only, (3) External specialist physician review and (4) Primary clinician augmented by algorithm. Classification accuracy was assessed using c‐statistics, sensitivity and specificity. Six hundred and twenty‐three adult cancer suspects with complete data were retained, of whom 166 (27%) were diagnosed with cancer. Models using PCP augmented by algorithm (c‐statistic: 77.2%, 95% CI: 73.4%, 81.0%) and external study physician assessment (77.6%, 95% CI: 73.6%, 81.7%) performed better than algorithm‐only (74.9%, 95% CI: 71.0%, 78.9%) and PCP initial assessment (62.8%, 95% CI: 57.9%, 67.7%) in correctly classifying suspected cancer patients. Sensitivity and specificity statistics from models combining PCP classifications and routine data were comparable to physicians, suggesting that incorporating data‐driven algorithms into referral systems could improve efficiency.
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spelling pubmed-102867592023-06-23 Improving identification of symptomatic cancer at primary care clinics: A predictive modeling analysis in Botswana Molebatsi, Kesaobaka Iyer, Hari S. Kohler, Racquel E. Gabegwe, Kemiso Nkele, Isaac Rabasha, Bokang Botebele, Kerapetse Barak, Tomer Balosang, Siamisang Tapela, Neo M. Dryden‐Peterson, Scott L. Int J Cancer Cancer Epidemiology In resource‐limited settings, augmenting primary care provider (PCP)‐based referrals with data‐derived algorithms could direct scarce resources towards those patients most likely to have a cancer diagnosis and benefit from early treatment. Using data from Botswana, we compared accuracy of predictions of probable cancer using different approaches for identifying symptomatic cancer at primary clinics. We followed cancer suspects until they entered specialized care for cancer treatment (following pathologically confirmed diagnosis), exited from the study following noncancer diagnosis, or died. Routine symptom and demographic data included baseline cancer probability assessed by the primary care provider (low, intermediate, high), age, sex, performance status, baseline cancer probability by study physician, predominant symptom (lump, bleeding, pain or other) and HIV status. Logistic regression with 10‐fold cross‐validation was used to evaluate classification by different sets of predictors: (1) PCPs, (2) Algorithm‐only, (3) External specialist physician review and (4) Primary clinician augmented by algorithm. Classification accuracy was assessed using c‐statistics, sensitivity and specificity. Six hundred and twenty‐three adult cancer suspects with complete data were retained, of whom 166 (27%) were diagnosed with cancer. Models using PCP augmented by algorithm (c‐statistic: 77.2%, 95% CI: 73.4%, 81.0%) and external study physician assessment (77.6%, 95% CI: 73.6%, 81.7%) performed better than algorithm‐only (74.9%, 95% CI: 71.0%, 78.9%) and PCP initial assessment (62.8%, 95% CI: 57.9%, 67.7%) in correctly classifying suspected cancer patients. Sensitivity and specificity statistics from models combining PCP classifications and routine data were comparable to physicians, suggesting that incorporating data‐driven algorithms into referral systems could improve efficiency. John Wiley & Sons, Inc. 2022-06-29 2022-11-15 /pmc/articles/PMC10286759/ /pubmed/35716138 http://dx.doi.org/10.1002/ijc.34178 Text en © 2022 The Authors. International Journal of Cancer published by John Wiley & Sons Ltd on behalf of UICC. https://creativecommons.org/licenses/by/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Cancer Epidemiology
Molebatsi, Kesaobaka
Iyer, Hari S.
Kohler, Racquel E.
Gabegwe, Kemiso
Nkele, Isaac
Rabasha, Bokang
Botebele, Kerapetse
Barak, Tomer
Balosang, Siamisang
Tapela, Neo M.
Dryden‐Peterson, Scott L.
Improving identification of symptomatic cancer at primary care clinics: A predictive modeling analysis in Botswana
title Improving identification of symptomatic cancer at primary care clinics: A predictive modeling analysis in Botswana
title_full Improving identification of symptomatic cancer at primary care clinics: A predictive modeling analysis in Botswana
title_fullStr Improving identification of symptomatic cancer at primary care clinics: A predictive modeling analysis in Botswana
title_full_unstemmed Improving identification of symptomatic cancer at primary care clinics: A predictive modeling analysis in Botswana
title_short Improving identification of symptomatic cancer at primary care clinics: A predictive modeling analysis in Botswana
title_sort improving identification of symptomatic cancer at primary care clinics: a predictive modeling analysis in botswana
topic Cancer Epidemiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10286759/
https://www.ncbi.nlm.nih.gov/pubmed/35716138
http://dx.doi.org/10.1002/ijc.34178
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