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Predicting chronic postsurgical pain: current evidence and a novel program to develop predictive biomarker signatures

Chronic pain affects more than 50 million Americans. Treatments remain inadequate, in large part, because the pathophysiological mechanisms underlying the development of chronic pain remain poorly understood. Pain biomarkers could potentially identify and measure biological pathways and phenotypical...

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Autores principales: Sluka, Kathleen A., Wager, Tor D., Sutherland, Stephani P., Labosky, Patricia A., Balach, Tessa, Bayman, Emine O., Berardi, Giovanni, Brummett, Chad M., Burns, John, Buvanendran, Asokumar, Caffo, Brian, Calhoun, Vince D., Clauw, Daniel, Chang, Andrew, Coffey, Christopher S., Dailey, Dana L., Ecklund, Dixie, Fiehn, Oliver, Fisch, Kathleen M., Frey Law, Laura A., Harris, Richard E., Harte, Steven E., Howard, Timothy D., Jacobs, Joshua, Jacobs, Jon M., Jepsen, Kristen, Johnston, Nicolas, Langefeld, Carl D., Laurent, Louise C., Lenzi, Rebecca, Lindquist, Martin A., Lokshin, Anna, Kahn, Ari, McCarthy, Robert J., Olivier, Michael, Porter, Linda, Qian, Wei-Jun, Sankar, Cheryse A., Satterlee, John, Swensen, Adam C., Vance, Carol G.T., Waljee, Jennifer, Wandner, Laura D., Williams, David A., Wixson, Richard L., Zhou, Xiaohong Joe
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wolters Kluwer 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10436361/
https://www.ncbi.nlm.nih.gov/pubmed/37326643
http://dx.doi.org/10.1097/j.pain.0000000000002938
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author Sluka, Kathleen A.
Wager, Tor D.
Sutherland, Stephani P.
Labosky, Patricia A.
Balach, Tessa
Bayman, Emine O.
Berardi, Giovanni
Brummett, Chad M.
Burns, John
Buvanendran, Asokumar
Caffo, Brian
Calhoun, Vince D.
Clauw, Daniel
Chang, Andrew
Coffey, Christopher S.
Dailey, Dana L.
Ecklund, Dixie
Fiehn, Oliver
Fisch, Kathleen M.
Frey Law, Laura A.
Harris, Richard E.
Harte, Steven E.
Howard, Timothy D.
Jacobs, Joshua
Jacobs, Jon M.
Jepsen, Kristen
Johnston, Nicolas
Langefeld, Carl D.
Laurent, Louise C.
Lenzi, Rebecca
Lindquist, Martin A.
Lokshin, Anna
Kahn, Ari
McCarthy, Robert J.
Olivier, Michael
Porter, Linda
Qian, Wei-Jun
Sankar, Cheryse A.
Satterlee, John
Swensen, Adam C.
Vance, Carol G.T.
Waljee, Jennifer
Wandner, Laura D.
Williams, David A.
Wixson, Richard L.
Zhou, Xiaohong Joe
author_facet Sluka, Kathleen A.
Wager, Tor D.
Sutherland, Stephani P.
Labosky, Patricia A.
Balach, Tessa
Bayman, Emine O.
Berardi, Giovanni
Brummett, Chad M.
Burns, John
Buvanendran, Asokumar
Caffo, Brian
Calhoun, Vince D.
Clauw, Daniel
Chang, Andrew
Coffey, Christopher S.
Dailey, Dana L.
Ecklund, Dixie
Fiehn, Oliver
Fisch, Kathleen M.
Frey Law, Laura A.
Harris, Richard E.
Harte, Steven E.
Howard, Timothy D.
Jacobs, Joshua
Jacobs, Jon M.
Jepsen, Kristen
Johnston, Nicolas
Langefeld, Carl D.
Laurent, Louise C.
Lenzi, Rebecca
Lindquist, Martin A.
Lokshin, Anna
Kahn, Ari
McCarthy, Robert J.
Olivier, Michael
Porter, Linda
Qian, Wei-Jun
Sankar, Cheryse A.
Satterlee, John
Swensen, Adam C.
Vance, Carol G.T.
Waljee, Jennifer
Wandner, Laura D.
Williams, David A.
Wixson, Richard L.
Zhou, Xiaohong Joe
author_sort Sluka, Kathleen A.
collection PubMed
description Chronic pain affects more than 50 million Americans. Treatments remain inadequate, in large part, because the pathophysiological mechanisms underlying the development of chronic pain remain poorly understood. Pain biomarkers could potentially identify and measure biological pathways and phenotypical expressions that are altered by pain, provide insight into biological treatment targets, and help identify at-risk patients who might benefit from early intervention. Biomarkers are used to diagnose, track, and treat other diseases, but no validated clinical biomarkers exist yet for chronic pain. To address this problem, the National Institutes of Health Common Fund launched the Acute to Chronic Pain Signatures (A2CPS) program to evaluate candidate biomarkers, develop them into biosignatures, and discover novel biomarkers for chronification of pain after surgery. This article discusses candidate biomarkers identified by A2CPS for evaluation, including genomic, proteomic, metabolomic, lipidomic, neuroimaging, psychophysical, psychological, and behavioral measures. Acute to Chronic Pain Signatures will provide the most comprehensive investigation of biomarkers for the transition to chronic postsurgical pain undertaken to date. Data and analytic resources generatedby A2CPS will be shared with the scientific community in hopes that other investigators will extract valuable insights beyond A2CPS's initial findings. This article will review the identified biomarkers and rationale for including them, the current state of the science on biomarkers of the transition from acute to chronic pain, gaps in the literature, and how A2CPS will address these gaps.
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spelling pubmed-104363612023-08-19 Predicting chronic postsurgical pain: current evidence and a novel program to develop predictive biomarker signatures Sluka, Kathleen A. Wager, Tor D. Sutherland, Stephani P. Labosky, Patricia A. Balach, Tessa Bayman, Emine O. Berardi, Giovanni Brummett, Chad M. Burns, John Buvanendran, Asokumar Caffo, Brian Calhoun, Vince D. Clauw, Daniel Chang, Andrew Coffey, Christopher S. Dailey, Dana L. Ecklund, Dixie Fiehn, Oliver Fisch, Kathleen M. Frey Law, Laura A. Harris, Richard E. Harte, Steven E. Howard, Timothy D. Jacobs, Joshua Jacobs, Jon M. Jepsen, Kristen Johnston, Nicolas Langefeld, Carl D. Laurent, Louise C. Lenzi, Rebecca Lindquist, Martin A. Lokshin, Anna Kahn, Ari McCarthy, Robert J. Olivier, Michael Porter, Linda Qian, Wei-Jun Sankar, Cheryse A. Satterlee, John Swensen, Adam C. Vance, Carol G.T. Waljee, Jennifer Wandner, Laura D. Williams, David A. Wixson, Richard L. Zhou, Xiaohong Joe Pain Comprehensive Review Chronic pain affects more than 50 million Americans. Treatments remain inadequate, in large part, because the pathophysiological mechanisms underlying the development of chronic pain remain poorly understood. Pain biomarkers could potentially identify and measure biological pathways and phenotypical expressions that are altered by pain, provide insight into biological treatment targets, and help identify at-risk patients who might benefit from early intervention. Biomarkers are used to diagnose, track, and treat other diseases, but no validated clinical biomarkers exist yet for chronic pain. To address this problem, the National Institutes of Health Common Fund launched the Acute to Chronic Pain Signatures (A2CPS) program to evaluate candidate biomarkers, develop them into biosignatures, and discover novel biomarkers for chronification of pain after surgery. This article discusses candidate biomarkers identified by A2CPS for evaluation, including genomic, proteomic, metabolomic, lipidomic, neuroimaging, psychophysical, psychological, and behavioral measures. Acute to Chronic Pain Signatures will provide the most comprehensive investigation of biomarkers for the transition to chronic postsurgical pain undertaken to date. Data and analytic resources generatedby A2CPS will be shared with the scientific community in hopes that other investigators will extract valuable insights beyond A2CPS's initial findings. This article will review the identified biomarkers and rationale for including them, the current state of the science on biomarkers of the transition from acute to chronic pain, gaps in the literature, and how A2CPS will address these gaps. Wolters Kluwer 2023-09 2023-06-15 /pmc/articles/PMC10436361/ /pubmed/37326643 http://dx.doi.org/10.1097/j.pain.0000000000002938 Text en Copyright © 2023 The Author(s). Published by Wolters Kluwer Health, Inc. on behalf of the International Association for the Study of Pain. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution-Non Commercial-No Derivatives License 4.0 (CCBY-NC-ND) (https://creativecommons.org/licenses/by-nc-nd/4.0/) , where it is permissible to download and share the work provided it is properly cited. The work cannot be changed in any way or used commercially without permission from the journal.
spellingShingle Comprehensive Review
Sluka, Kathleen A.
Wager, Tor D.
Sutherland, Stephani P.
Labosky, Patricia A.
Balach, Tessa
Bayman, Emine O.
Berardi, Giovanni
Brummett, Chad M.
Burns, John
Buvanendran, Asokumar
Caffo, Brian
Calhoun, Vince D.
Clauw, Daniel
Chang, Andrew
Coffey, Christopher S.
Dailey, Dana L.
Ecklund, Dixie
Fiehn, Oliver
Fisch, Kathleen M.
Frey Law, Laura A.
Harris, Richard E.
Harte, Steven E.
Howard, Timothy D.
Jacobs, Joshua
Jacobs, Jon M.
Jepsen, Kristen
Johnston, Nicolas
Langefeld, Carl D.
Laurent, Louise C.
Lenzi, Rebecca
Lindquist, Martin A.
Lokshin, Anna
Kahn, Ari
McCarthy, Robert J.
Olivier, Michael
Porter, Linda
Qian, Wei-Jun
Sankar, Cheryse A.
Satterlee, John
Swensen, Adam C.
Vance, Carol G.T.
Waljee, Jennifer
Wandner, Laura D.
Williams, David A.
Wixson, Richard L.
Zhou, Xiaohong Joe
Predicting chronic postsurgical pain: current evidence and a novel program to develop predictive biomarker signatures
title Predicting chronic postsurgical pain: current evidence and a novel program to develop predictive biomarker signatures
title_full Predicting chronic postsurgical pain: current evidence and a novel program to develop predictive biomarker signatures
title_fullStr Predicting chronic postsurgical pain: current evidence and a novel program to develop predictive biomarker signatures
title_full_unstemmed Predicting chronic postsurgical pain: current evidence and a novel program to develop predictive biomarker signatures
title_short Predicting chronic postsurgical pain: current evidence and a novel program to develop predictive biomarker signatures
title_sort predicting chronic postsurgical pain: current evidence and a novel program to develop predictive biomarker signatures
topic Comprehensive Review
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10436361/
https://www.ncbi.nlm.nih.gov/pubmed/37326643
http://dx.doi.org/10.1097/j.pain.0000000000002938
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