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Optimising outcomes for adults with cystic fibrosis taking CFTR modulators by individualising care: personalised data linkage to understand treatment optimisation (PLUTO), a novel clinical framework

Optimising outcomes for adults with cystic fibrosis taking CFTR modulators by individualising care: personalised data linkage to understand treatment optimisation (PLUTO), a novel clinical framework
Optimising outcomes for adults with cystic fibrosis taking CFTR modulators by individualising care: personalised data linkage to understand treatment optimisation (PLUTO), a novel clinical framework

Cystic Fibrosis (CF) is a life-limiting, inherited condition in which a novel class of oral medicine, CFTR modulators, has revolutionised symptoms and health indicators, providing an opportunity to evaluate traditional treatment regimens with the hope of reducing burden. Additionally, there is cautious optimism that life expectancy for people with CF born today could ultimately compare to that of the general population. Given this potential, there is a need and requirement to optimise treatment to balance burden with the best clinical outcomes for each person with CF in an individualised manner. Personalised data-Linkage to Understand Treatment Optimisation (PLUTO) is a clinical framework, developed within the 14-Centre UK CFHealthHub Learning Health System collaborative, designed for use at an individual level for people with CF taking CFTR modulators. The PLUTO framework encourages use of two routinely collected clinical outcome measure (FEV1 and BMI) to determine health status. Where FEV1 or BMI trends suggest that optimal health outcomes are not being achieved for a person with CF, PLUTO supports consideration of adherence to both CFTR modulators and inhaled therapy to help guide the next steps. PLUTO is designed to support people with CF and their clinical teams to individualise care and optimise outcomes for those taking CFTR modulators, using data available in routine clinical encounters.

0954-6111
Sandler, Robert D.
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Anderson, Alan
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Barnett, Tracy
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Bourke, Stephen J.
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Cameron, Sarah
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Chapman, Stephen J.
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Choyce, Jocelyn
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Daniels, Thomas
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Daniels, Tracey
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Dawson, Sophie
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Doe, Simon
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Dooney, Michael
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Echevarria, Carlos
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Galey, Penny
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Fitch, Giles
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Lai, Lana Y.H.
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Nightingale, Julia A.
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Thomas, Michelle
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Thompson, Rachael
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Whitehouse, Joanna
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Warnock, Louise
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Waine, David
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Withers, Nick
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Hoo, Zhe Hui
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Wildman, Martin J.
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et al.
Sandler, Robert D.
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Anderson, Alan
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Barnett, Tracy
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Bourke, Stephen J.
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Cameron, Sarah
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Chapman, Stephen J.
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Choyce, Jocelyn
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Daniels, Thomas
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Daniels, Tracey
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Dawson, Sophie
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Doe, Simon
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Dooney, Michael
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Echevarria, Carlos
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Galey, Penny
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Fitch, Giles
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Lai, Lana Y.H.
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Nightingale, Julia A.
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Thomas, Michelle
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Thompson, Rachael
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Whitehouse, Joanna
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Warnock, Louise
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Waine, David
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Withers, Nick
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Hoo, Zhe Hui
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Wildman, Martin J.
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Sandler, Robert D., Anderson, Alan and Barnett, Tracy , et al. (2025) Optimising outcomes for adults with cystic fibrosis taking CFTR modulators by individualising care: personalised data linkage to understand treatment optimisation (PLUTO), a novel clinical framework. Respiratory Medicine, 239, [107995]. (doi:10.1016/j.rmed.2025.107995).

Record type: Review

Abstract

Cystic Fibrosis (CF) is a life-limiting, inherited condition in which a novel class of oral medicine, CFTR modulators, has revolutionised symptoms and health indicators, providing an opportunity to evaluate traditional treatment regimens with the hope of reducing burden. Additionally, there is cautious optimism that life expectancy for people with CF born today could ultimately compare to that of the general population. Given this potential, there is a need and requirement to optimise treatment to balance burden with the best clinical outcomes for each person with CF in an individualised manner. Personalised data-Linkage to Understand Treatment Optimisation (PLUTO) is a clinical framework, developed within the 14-Centre UK CFHealthHub Learning Health System collaborative, designed for use at an individual level for people with CF taking CFTR modulators. The PLUTO framework encourages use of two routinely collected clinical outcome measure (FEV1 and BMI) to determine health status. Where FEV1 or BMI trends suggest that optimal health outcomes are not being achieved for a person with CF, PLUTO supports consideration of adherence to both CFTR modulators and inhaled therapy to help guide the next steps. PLUTO is designed to support people with CF and their clinical teams to individualise care and optimise outcomes for those taking CFTR modulators, using data available in routine clinical encounters.

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More information

Accepted/In Press date: 11 February 2025
e-pub ahead of print date: 15 February 2025
Published date: 19 February 2025

Identifiers

Local EPrints ID: 503193
URI: http://eprints.soton.ac.uk/id/eprint/503193
ISSN: 0954-6111
PURE UUID: 24135a0b-662c-4757-acc4-f2a75b5e81e3
ORCID for Thomas Daniels: ORCID iD orcid.org/0000-0002-5249-5100

Catalogue record

Date deposited: 23 Jul 2025 16:43
Last modified: 11 Sep 2025 03:03

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Contributors

Author: Robert D. Sandler
Author: Alan Anderson
Author: Tracy Barnett
Author: Stephen J. Bourke
Author: Sarah Cameron
Author: Stephen J. Chapman
Author: Jocelyn Choyce
Author: Thomas Daniels ORCID iD
Author: Tracey Daniels
Author: Sophie Dawson
Author: Simon Doe
Author: Michael Dooney
Author: Carlos Echevarria
Author: Penny Galey
Author: Giles Fitch
Author: Lana Y.H. Lai
Author: Julia A. Nightingale
Author: Michelle Thomas
Author: Rachael Thompson
Author: Joanna Whitehouse
Author: Louise Warnock
Author: David Waine
Author: Nick Withers
Author: Zhe Hui Hoo
Author: Martin J. Wildman
Corporate Author: et al.

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