Statistical distance as a measure of physiological dysregulation is largely robust to variation in its biomarker composition.

Physiological dysregulation may underlie aging and many chronic diseases, but is challenging to quantify because of the complexity of the underlying systems. Recently, we described a measure of physiological dysregulation, DM, that uses statistical distance to assess the degree to which an individua...

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Main Authors: Alan A Cohen, Qing Li, Emmanuel Milot, Maxime Leroux, Samuel Faucher, Vincent Morissette-Thomas, Véronique Legault, Linda P Fried, Luigi Ferrucci
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2015-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC4395377?pdf=render
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spelling doaj-e7e81a99084d418795865efe03c8ea5d2020-11-24T21:11:03ZengPublic Library of Science (PLoS)PLoS ONE1932-62032015-01-01104e012254110.1371/journal.pone.0122541Statistical distance as a measure of physiological dysregulation is largely robust to variation in its biomarker composition.Alan A CohenQing LiEmmanuel MilotMaxime LerouxSamuel FaucherVincent Morissette-ThomasVéronique LegaultLinda P FriedLuigi FerrucciPhysiological dysregulation may underlie aging and many chronic diseases, but is challenging to quantify because of the complexity of the underlying systems. Recently, we described a measure of physiological dysregulation, DM, that uses statistical distance to assess the degree to which an individual's biomarker profile is normal versus aberrant. However, the sensitivity of DM to details of the calculation method has not yet been systematically assessed. In particular, the number and choice of biomarkers and the definition of the reference population (RP, the population used to define a "normal" profile) may be important. Here, we address this question by validating the method on 44 common clinical biomarkers from three longitudinal cohort studies and one cross-sectional survey. DMs calculated on different biomarker subsets show that while the signal of physiological dysregulation increases with the number of biomarkers included, the value of additional markers diminishes as more are added and inclusion of 10-15 is generally sufficient. As long as enough markers are included, individual markers have little effect on the final metric, and even DMs calculated from mutually exclusive groups of markers correlate with each other at r~0.4-0.5. We also used data subsets to generate thousands of combinations of study populations and RPs to address sensitivity to differences in age range, sex, race, data set, sample size, and their interactions. Results were largely consistent (but not identical) regardless of the choice of RP; however, the signal was generally clearer with a younger and healthier RP, and RPs too different from the study population performed poorly. Accordingly, biomarker and RP choice are not particularly important in most cases, but caution should be used across very different populations or for fine-scale analyses. Biologically, the lack of sensitivity to marker choice and better performance of younger, healthier RPs confirm an interpretation of DM physiological dysregulation and as an emergent property of a complex system.http://europepmc.org/articles/PMC4395377?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Alan A Cohen
Qing Li
Emmanuel Milot
Maxime Leroux
Samuel Faucher
Vincent Morissette-Thomas
Véronique Legault
Linda P Fried
Luigi Ferrucci
spellingShingle Alan A Cohen
Qing Li
Emmanuel Milot
Maxime Leroux
Samuel Faucher
Vincent Morissette-Thomas
Véronique Legault
Linda P Fried
Luigi Ferrucci
Statistical distance as a measure of physiological dysregulation is largely robust to variation in its biomarker composition.
PLoS ONE
author_facet Alan A Cohen
Qing Li
Emmanuel Milot
Maxime Leroux
Samuel Faucher
Vincent Morissette-Thomas
Véronique Legault
Linda P Fried
Luigi Ferrucci
author_sort Alan A Cohen
title Statistical distance as a measure of physiological dysregulation is largely robust to variation in its biomarker composition.
title_short Statistical distance as a measure of physiological dysregulation is largely robust to variation in its biomarker composition.
title_full Statistical distance as a measure of physiological dysregulation is largely robust to variation in its biomarker composition.
title_fullStr Statistical distance as a measure of physiological dysregulation is largely robust to variation in its biomarker composition.
title_full_unstemmed Statistical distance as a measure of physiological dysregulation is largely robust to variation in its biomarker composition.
title_sort statistical distance as a measure of physiological dysregulation is largely robust to variation in its biomarker composition.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2015-01-01
description Physiological dysregulation may underlie aging and many chronic diseases, but is challenging to quantify because of the complexity of the underlying systems. Recently, we described a measure of physiological dysregulation, DM, that uses statistical distance to assess the degree to which an individual's biomarker profile is normal versus aberrant. However, the sensitivity of DM to details of the calculation method has not yet been systematically assessed. In particular, the number and choice of biomarkers and the definition of the reference population (RP, the population used to define a "normal" profile) may be important. Here, we address this question by validating the method on 44 common clinical biomarkers from three longitudinal cohort studies and one cross-sectional survey. DMs calculated on different biomarker subsets show that while the signal of physiological dysregulation increases with the number of biomarkers included, the value of additional markers diminishes as more are added and inclusion of 10-15 is generally sufficient. As long as enough markers are included, individual markers have little effect on the final metric, and even DMs calculated from mutually exclusive groups of markers correlate with each other at r~0.4-0.5. We also used data subsets to generate thousands of combinations of study populations and RPs to address sensitivity to differences in age range, sex, race, data set, sample size, and their interactions. Results were largely consistent (but not identical) regardless of the choice of RP; however, the signal was generally clearer with a younger and healthier RP, and RPs too different from the study population performed poorly. Accordingly, biomarker and RP choice are not particularly important in most cases, but caution should be used across very different populations or for fine-scale analyses. Biologically, the lack of sensitivity to marker choice and better performance of younger, healthier RPs confirm an interpretation of DM physiological dysregulation and as an emergent property of a complex system.
url http://europepmc.org/articles/PMC4395377?pdf=render
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