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Stratifying patients with peripheral neuropathic pain based on sensory profiles: algorithm and sample size recommendations

In a recent cluster analysis, it has been shown that patients with peripheral neuropathic pain can be grouped into 3 sensory phenotypes based on quantitative sensory testing profiles, which are mainly characterized by either sensory loss, intact sensory function and mild thermal hyperalgesia and/or...

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Autores principales: Vollert, Jan, Maier, Christoph, Attal, Nadine, Bennett, David L.H., Bouhassira, Didier, Enax-Krumova, Elena K., Finnerup, Nanna B., Freynhagen, Rainer, Gierthmühlen, Janne, Haanpää, Maija, Hansson, Per, Hüllemann, Philipp, Jensen, Troels S., Magerl, Walter, Ramirez, Juan D., Rice, Andrew S.C., Schuh-Hofer, Sigrid, Segerdahl, Märta, Serra, Jordi, Shillo, Pallai R., Sindrup, Soeren, Tesfaye, Solomon, Themistocleous, Andreas C., Tölle, Thomas R., Treede, Rolf-Detlef, Baron, Ralf
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Wolters Kluwer 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5515640/
https://www.ncbi.nlm.nih.gov/pubmed/28595241
http://dx.doi.org/10.1097/j.pain.0000000000000935
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author Vollert, Jan
Maier, Christoph
Attal, Nadine
Bennett, David L.H.
Bouhassira, Didier
Enax-Krumova, Elena K.
Finnerup, Nanna B.
Freynhagen, Rainer
Gierthmühlen, Janne
Haanpää, Maija
Hansson, Per
Hüllemann, Philipp
Jensen, Troels S.
Magerl, Walter
Ramirez, Juan D.
Rice, Andrew S.C.
Schuh-Hofer, Sigrid
Segerdahl, Märta
Serra, Jordi
Shillo, Pallai R.
Sindrup, Soeren
Tesfaye, Solomon
Themistocleous, Andreas C.
Tölle, Thomas R.
Treede, Rolf-Detlef
Baron, Ralf
author_facet Vollert, Jan
Maier, Christoph
Attal, Nadine
Bennett, David L.H.
Bouhassira, Didier
Enax-Krumova, Elena K.
Finnerup, Nanna B.
Freynhagen, Rainer
Gierthmühlen, Janne
Haanpää, Maija
Hansson, Per
Hüllemann, Philipp
Jensen, Troels S.
Magerl, Walter
Ramirez, Juan D.
Rice, Andrew S.C.
Schuh-Hofer, Sigrid
Segerdahl, Märta
Serra, Jordi
Shillo, Pallai R.
Sindrup, Soeren
Tesfaye, Solomon
Themistocleous, Andreas C.
Tölle, Thomas R.
Treede, Rolf-Detlef
Baron, Ralf
author_sort Vollert, Jan
collection PubMed
description In a recent cluster analysis, it has been shown that patients with peripheral neuropathic pain can be grouped into 3 sensory phenotypes based on quantitative sensory testing profiles, which are mainly characterized by either sensory loss, intact sensory function and mild thermal hyperalgesia and/or allodynia, or loss of thermal detection and mild mechanical hyperalgesia and/or allodynia. Here, we present an algorithm for allocation of individual patients to these subgroups. The algorithm is nondeterministic—ie, a patient can be sorted to more than one phenotype—and can separate patients with neuropathic pain from healthy subjects (sensitivity: 78%, specificity: 94%). We evaluated the frequency of each phenotype in a population of patients with painful diabetic polyneuropathy (n = 151), painful peripheral nerve injury (n = 335), and postherpetic neuralgia (n = 97) and propose sample sizes of study populations that need to be screened to reach a subpopulation large enough to conduct a phenotype-stratified study. The most common phenotype in diabetic polyneuropathy was sensory loss (83%), followed by mechanical hyperalgesia (75%) and thermal hyperalgesia (34%, note that percentages are overlapping and not additive). In peripheral nerve injury, frequencies were 37%, 59%, and 50%, and in postherpetic neuralgia, frequencies were 31%, 63%, and 46%. For parallel study design, either the estimated effect size of the treatment needs to be high (>0.7) or only phenotypes that are frequent in the clinical entity under study can realistically be performed. For crossover design, populations under 200 patients screened are sufficient for all phenotypes and clinical entities with a minimum estimated treatment effect size of 0.5.
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spelling pubmed-55156402017-07-31 Stratifying patients with peripheral neuropathic pain based on sensory profiles: algorithm and sample size recommendations Vollert, Jan Maier, Christoph Attal, Nadine Bennett, David L.H. Bouhassira, Didier Enax-Krumova, Elena K. Finnerup, Nanna B. Freynhagen, Rainer Gierthmühlen, Janne Haanpää, Maija Hansson, Per Hüllemann, Philipp Jensen, Troels S. Magerl, Walter Ramirez, Juan D. Rice, Andrew S.C. Schuh-Hofer, Sigrid Segerdahl, Märta Serra, Jordi Shillo, Pallai R. Sindrup, Soeren Tesfaye, Solomon Themistocleous, Andreas C. Tölle, Thomas R. Treede, Rolf-Detlef Baron, Ralf Pain Research Paper In a recent cluster analysis, it has been shown that patients with peripheral neuropathic pain can be grouped into 3 sensory phenotypes based on quantitative sensory testing profiles, which are mainly characterized by either sensory loss, intact sensory function and mild thermal hyperalgesia and/or allodynia, or loss of thermal detection and mild mechanical hyperalgesia and/or allodynia. Here, we present an algorithm for allocation of individual patients to these subgroups. The algorithm is nondeterministic—ie, a patient can be sorted to more than one phenotype—and can separate patients with neuropathic pain from healthy subjects (sensitivity: 78%, specificity: 94%). We evaluated the frequency of each phenotype in a population of patients with painful diabetic polyneuropathy (n = 151), painful peripheral nerve injury (n = 335), and postherpetic neuralgia (n = 97) and propose sample sizes of study populations that need to be screened to reach a subpopulation large enough to conduct a phenotype-stratified study. The most common phenotype in diabetic polyneuropathy was sensory loss (83%), followed by mechanical hyperalgesia (75%) and thermal hyperalgesia (34%, note that percentages are overlapping and not additive). In peripheral nerve injury, frequencies were 37%, 59%, and 50%, and in postherpetic neuralgia, frequencies were 31%, 63%, and 46%. For parallel study design, either the estimated effect size of the treatment needs to be high (>0.7) or only phenotypes that are frequent in the clinical entity under study can realistically be performed. For crossover design, populations under 200 patients screened are sufficient for all phenotypes and clinical entities with a minimum estimated treatment effect size of 0.5. Wolters Kluwer 2017-05-02 2017-08 /pmc/articles/PMC5515640/ /pubmed/28595241 http://dx.doi.org/10.1097/j.pain.0000000000000935 Text en Copyright © 2017 The Author(s). Published by Wolters Kluwer Health, Inc. on behalf of the International Association for the Study of Pain. This is an open access article distributed under the Creative Commons Attribution License 4.0 (CCBY) (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Paper
Vollert, Jan
Maier, Christoph
Attal, Nadine
Bennett, David L.H.
Bouhassira, Didier
Enax-Krumova, Elena K.
Finnerup, Nanna B.
Freynhagen, Rainer
Gierthmühlen, Janne
Haanpää, Maija
Hansson, Per
Hüllemann, Philipp
Jensen, Troels S.
Magerl, Walter
Ramirez, Juan D.
Rice, Andrew S.C.
Schuh-Hofer, Sigrid
Segerdahl, Märta
Serra, Jordi
Shillo, Pallai R.
Sindrup, Soeren
Tesfaye, Solomon
Themistocleous, Andreas C.
Tölle, Thomas R.
Treede, Rolf-Detlef
Baron, Ralf
Stratifying patients with peripheral neuropathic pain based on sensory profiles: algorithm and sample size recommendations
title Stratifying patients with peripheral neuropathic pain based on sensory profiles: algorithm and sample size recommendations
title_full Stratifying patients with peripheral neuropathic pain based on sensory profiles: algorithm and sample size recommendations
title_fullStr Stratifying patients with peripheral neuropathic pain based on sensory profiles: algorithm and sample size recommendations
title_full_unstemmed Stratifying patients with peripheral neuropathic pain based on sensory profiles: algorithm and sample size recommendations
title_short Stratifying patients with peripheral neuropathic pain based on sensory profiles: algorithm and sample size recommendations
title_sort stratifying patients with peripheral neuropathic pain based on sensory profiles: algorithm and sample size recommendations
topic Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5515640/
https://www.ncbi.nlm.nih.gov/pubmed/28595241
http://dx.doi.org/10.1097/j.pain.0000000000000935
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