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An Actionable Expert-System Algorithm to Support Nurse-Led Cancer Survivorship Care: Algorithm Development Study

BACKGROUND: Comprehensive models of survivorship care are necessary to improve access to and coordination of care. New models of care provide the opportunity to address the complexity of physical and psychosocial problems and long-term health needs experienced by patients following cancer treatment....

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Autores principales: Pfisterer, Kaylen J, Lohani, Raima, Janes, Elizabeth, Ng, Denise, Wang, Dan, Bryant-Lukosius, Denise, Rendon, Ricardo, Berlin, Alejandro, Bender, Jacqueline, Brown, Ian, Feifer, Andrew, Gotto, Geoffrey, Saha, Shumit, Cafazzo, Joseph A, Pham, Quynh
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10585445/
https://www.ncbi.nlm.nih.gov/pubmed/37792435
http://dx.doi.org/10.2196/44332
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author Pfisterer, Kaylen J
Lohani, Raima
Janes, Elizabeth
Ng, Denise
Wang, Dan
Bryant-Lukosius, Denise
Rendon, Ricardo
Berlin, Alejandro
Bender, Jacqueline
Brown, Ian
Feifer, Andrew
Gotto, Geoffrey
Saha, Shumit
Cafazzo, Joseph A
Pham, Quynh
author_facet Pfisterer, Kaylen J
Lohani, Raima
Janes, Elizabeth
Ng, Denise
Wang, Dan
Bryant-Lukosius, Denise
Rendon, Ricardo
Berlin, Alejandro
Bender, Jacqueline
Brown, Ian
Feifer, Andrew
Gotto, Geoffrey
Saha, Shumit
Cafazzo, Joseph A
Pham, Quynh
author_sort Pfisterer, Kaylen J
collection PubMed
description BACKGROUND: Comprehensive models of survivorship care are necessary to improve access to and coordination of care. New models of care provide the opportunity to address the complexity of physical and psychosocial problems and long-term health needs experienced by patients following cancer treatment. OBJECTIVE: This paper presents our expert-informed, rules-based survivorship algorithm to build a nurse-led model of survivorship care to support men living with prostate cancer (PCa). The algorithm is called No Evidence of Disease (Ned) and supports timelier decision-making, enhanced safety, and continuity of care. METHODS: An initial rule set was developed and refined through working groups with clinical experts across Canada (eg, nurse experts, physician experts, and scientists; n=20), and patient partners (n=3). Algorithm priorities were defined through a multidisciplinary consensus meeting with clinical nurse specialists, nurse scientists, nurse practitioners, urologic oncologists, urologists, and radiation oncologists (n=17). The system was refined and validated using the nominal group technique. RESULTS: Four levels of alert classification were established, initiated by responses on the Expanded Prostate Cancer Index Composite for Clinical Practice survey, and mediated by changes in minimal clinically important different alert thresholds, alert history, and clinical urgency with patient autonomy influencing clinical acuity. Patient autonomy was supported through tailored education as a first line of response, and alert escalation depending on a patient-initiated request for a nurse consultation. CONCLUSIONS: The Ned algorithm is positioned to facilitate PCa nurse-led care models with a high nurse-to-patient ratio. This novel expert-informed PCa survivorship care algorithm contains a defined escalation pathway for clinically urgent symptoms while honoring patient preference. Though further validation is required through a pragmatic trial, we anticipate the Ned algorithm will support timelier decision-making and enhance continuity of care through the automation of more frequent automated checkpoints, while empowering patients to self-manage their symptoms more effectively than standard care. INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): RR2-10.1136/bmjopen-2020-045806
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spelling pubmed-105854452023-10-20 An Actionable Expert-System Algorithm to Support Nurse-Led Cancer Survivorship Care: Algorithm Development Study Pfisterer, Kaylen J Lohani, Raima Janes, Elizabeth Ng, Denise Wang, Dan Bryant-Lukosius, Denise Rendon, Ricardo Berlin, Alejandro Bender, Jacqueline Brown, Ian Feifer, Andrew Gotto, Geoffrey Saha, Shumit Cafazzo, Joseph A Pham, Quynh JMIR Cancer Original Paper BACKGROUND: Comprehensive models of survivorship care are necessary to improve access to and coordination of care. New models of care provide the opportunity to address the complexity of physical and psychosocial problems and long-term health needs experienced by patients following cancer treatment. OBJECTIVE: This paper presents our expert-informed, rules-based survivorship algorithm to build a nurse-led model of survivorship care to support men living with prostate cancer (PCa). The algorithm is called No Evidence of Disease (Ned) and supports timelier decision-making, enhanced safety, and continuity of care. METHODS: An initial rule set was developed and refined through working groups with clinical experts across Canada (eg, nurse experts, physician experts, and scientists; n=20), and patient partners (n=3). Algorithm priorities were defined through a multidisciplinary consensus meeting with clinical nurse specialists, nurse scientists, nurse practitioners, urologic oncologists, urologists, and radiation oncologists (n=17). The system was refined and validated using the nominal group technique. RESULTS: Four levels of alert classification were established, initiated by responses on the Expanded Prostate Cancer Index Composite for Clinical Practice survey, and mediated by changes in minimal clinically important different alert thresholds, alert history, and clinical urgency with patient autonomy influencing clinical acuity. Patient autonomy was supported through tailored education as a first line of response, and alert escalation depending on a patient-initiated request for a nurse consultation. CONCLUSIONS: The Ned algorithm is positioned to facilitate PCa nurse-led care models with a high nurse-to-patient ratio. This novel expert-informed PCa survivorship care algorithm contains a defined escalation pathway for clinically urgent symptoms while honoring patient preference. Though further validation is required through a pragmatic trial, we anticipate the Ned algorithm will support timelier decision-making and enhance continuity of care through the automation of more frequent automated checkpoints, while empowering patients to self-manage their symptoms more effectively than standard care. INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): RR2-10.1136/bmjopen-2020-045806 JMIR Publications 2023-10-04 /pmc/articles/PMC10585445/ /pubmed/37792435 http://dx.doi.org/10.2196/44332 Text en ©Kaylen J Pfisterer, Raima Lohani, Elizabeth Janes, Denise Ng, Dan Wang, Denise Bryant-Lukosius, Ricardo Rendon, Alejandro Berlin, Jacqueline Bender, Ian Brown, Andrew Feifer, Geoffrey Gotto, Shumit Saha, Joseph A Cafazzo, Quynh Pham. Originally published in JMIR Cancer (https://cancer.jmir.org), 04.10.2023. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Cancer, is properly cited. The complete bibliographic information, a link to the original publication on https://cancer.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Pfisterer, Kaylen J
Lohani, Raima
Janes, Elizabeth
Ng, Denise
Wang, Dan
Bryant-Lukosius, Denise
Rendon, Ricardo
Berlin, Alejandro
Bender, Jacqueline
Brown, Ian
Feifer, Andrew
Gotto, Geoffrey
Saha, Shumit
Cafazzo, Joseph A
Pham, Quynh
An Actionable Expert-System Algorithm to Support Nurse-Led Cancer Survivorship Care: Algorithm Development Study
title An Actionable Expert-System Algorithm to Support Nurse-Led Cancer Survivorship Care: Algorithm Development Study
title_full An Actionable Expert-System Algorithm to Support Nurse-Led Cancer Survivorship Care: Algorithm Development Study
title_fullStr An Actionable Expert-System Algorithm to Support Nurse-Led Cancer Survivorship Care: Algorithm Development Study
title_full_unstemmed An Actionable Expert-System Algorithm to Support Nurse-Led Cancer Survivorship Care: Algorithm Development Study
title_short An Actionable Expert-System Algorithm to Support Nurse-Led Cancer Survivorship Care: Algorithm Development Study
title_sort actionable expert-system algorithm to support nurse-led cancer survivorship care: algorithm development study
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10585445/
https://www.ncbi.nlm.nih.gov/pubmed/37792435
http://dx.doi.org/10.2196/44332
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