Cargando…

A classification algorithm for predicting progression from normal cognition to mild cognitive impairment across five cohorts: The preclinical AD consortium

INTRODUCTION: We established a method for diagnostic harmonization across multiple studies of preclinical Alzheimer's disease and validated the method by examining its relationship with clinical status and cognition. METHODS: Cognitive and clinical data were used from five studies (N = 1746). C...

Descripción completa

Detalles Bibliográficos
Autores principales: Gross, Alden L., Hassenstab, Jason J., Johnson, Sterling C., Clark, Lindsay R., Resnick, Susan M., Kitner-Triolo, Melissa, Masters, Colin L., Maruff, Paul, Morris, John C., Soldan, Anja, Pettigrew, Corinne, Albert, Marilyn S.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5476965/
https://www.ncbi.nlm.nih.gov/pubmed/28653035
http://dx.doi.org/10.1016/j.dadm.2017.05.003
_version_ 1783244696261230592
author Gross, Alden L.
Hassenstab, Jason J.
Johnson, Sterling C.
Clark, Lindsay R.
Resnick, Susan M.
Kitner-Triolo, Melissa
Masters, Colin L.
Maruff, Paul
Morris, John C.
Soldan, Anja
Pettigrew, Corinne
Albert, Marilyn S.
author_facet Gross, Alden L.
Hassenstab, Jason J.
Johnson, Sterling C.
Clark, Lindsay R.
Resnick, Susan M.
Kitner-Triolo, Melissa
Masters, Colin L.
Maruff, Paul
Morris, John C.
Soldan, Anja
Pettigrew, Corinne
Albert, Marilyn S.
author_sort Gross, Alden L.
collection PubMed
description INTRODUCTION: We established a method for diagnostic harmonization across multiple studies of preclinical Alzheimer's disease and validated the method by examining its relationship with clinical status and cognition. METHODS: Cognitive and clinical data were used from five studies (N = 1746). Consensus diagnoses established in each study used criteria to identify progressors from normal cognition to mild cognitive impairment. Correspondence was evaluated between these consensus diagnoses and three algorithmic classifications based on (1) objective cognitive impairment in 2+ tests only; (2) a Clinical Dementia Rating (CDR) of ≥0.5 only; and (3) both. Associations between baseline cognitive performance and cognitive change were each tested in relation to progression to algorithm-based classifications. RESULTS: In each study, an algorithmic classification based on both cognitive testing cutoff scores and a CDR ≥0.5 provided optimal balance of sensitivity and specificity (areas under the curve: 0.85–0.95). Over an average 6.6 years of follow-up (up to 28 years), N = 186 initially cognitively normal participants aged on average 64 years at baseline progressed (incidence rate: 15.3 people/1000 person-years). Baseline cognitive scores and cognitive change were associated with future diagnostic status using this algorithmic classification. DISCUSSION: Both cognitive tests and CDR ratings can be combined across multiple studies to obtain a reliable algorithmic classification with high specificity and sensitivity. This approach may be applicable to large cohort studies and to clinical trials focused on preclinical Alzheimer's disease because it provides an alternative to implementation of a time-consuming adjudication panel.
format Online
Article
Text
id pubmed-5476965
institution National Center for Biotechnology Information
language English
publishDate 2017
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-54769652017-06-26 A classification algorithm for predicting progression from normal cognition to mild cognitive impairment across five cohorts: The preclinical AD consortium Gross, Alden L. Hassenstab, Jason J. Johnson, Sterling C. Clark, Lindsay R. Resnick, Susan M. Kitner-Triolo, Melissa Masters, Colin L. Maruff, Paul Morris, John C. Soldan, Anja Pettigrew, Corinne Albert, Marilyn S. Alzheimers Dement (Amst) Cognitive & Behavioral Assessment INTRODUCTION: We established a method for diagnostic harmonization across multiple studies of preclinical Alzheimer's disease and validated the method by examining its relationship with clinical status and cognition. METHODS: Cognitive and clinical data were used from five studies (N = 1746). Consensus diagnoses established in each study used criteria to identify progressors from normal cognition to mild cognitive impairment. Correspondence was evaluated between these consensus diagnoses and three algorithmic classifications based on (1) objective cognitive impairment in 2+ tests only; (2) a Clinical Dementia Rating (CDR) of ≥0.5 only; and (3) both. Associations between baseline cognitive performance and cognitive change were each tested in relation to progression to algorithm-based classifications. RESULTS: In each study, an algorithmic classification based on both cognitive testing cutoff scores and a CDR ≥0.5 provided optimal balance of sensitivity and specificity (areas under the curve: 0.85–0.95). Over an average 6.6 years of follow-up (up to 28 years), N = 186 initially cognitively normal participants aged on average 64 years at baseline progressed (incidence rate: 15.3 people/1000 person-years). Baseline cognitive scores and cognitive change were associated with future diagnostic status using this algorithmic classification. DISCUSSION: Both cognitive tests and CDR ratings can be combined across multiple studies to obtain a reliable algorithmic classification with high specificity and sensitivity. This approach may be applicable to large cohort studies and to clinical trials focused on preclinical Alzheimer's disease because it provides an alternative to implementation of a time-consuming adjudication panel. Elsevier 2017-05-30 /pmc/articles/PMC5476965/ /pubmed/28653035 http://dx.doi.org/10.1016/j.dadm.2017.05.003 Text en © 2017 The Authors http://creativecommons.org/licenses/by-nc-nd/4.0/ This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Cognitive & Behavioral Assessment
Gross, Alden L.
Hassenstab, Jason J.
Johnson, Sterling C.
Clark, Lindsay R.
Resnick, Susan M.
Kitner-Triolo, Melissa
Masters, Colin L.
Maruff, Paul
Morris, John C.
Soldan, Anja
Pettigrew, Corinne
Albert, Marilyn S.
A classification algorithm for predicting progression from normal cognition to mild cognitive impairment across five cohorts: The preclinical AD consortium
title A classification algorithm for predicting progression from normal cognition to mild cognitive impairment across five cohorts: The preclinical AD consortium
title_full A classification algorithm for predicting progression from normal cognition to mild cognitive impairment across five cohorts: The preclinical AD consortium
title_fullStr A classification algorithm for predicting progression from normal cognition to mild cognitive impairment across five cohorts: The preclinical AD consortium
title_full_unstemmed A classification algorithm for predicting progression from normal cognition to mild cognitive impairment across five cohorts: The preclinical AD consortium
title_short A classification algorithm for predicting progression from normal cognition to mild cognitive impairment across five cohorts: The preclinical AD consortium
title_sort classification algorithm for predicting progression from normal cognition to mild cognitive impairment across five cohorts: the preclinical ad consortium
topic Cognitive & Behavioral Assessment
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5476965/
https://www.ncbi.nlm.nih.gov/pubmed/28653035
http://dx.doi.org/10.1016/j.dadm.2017.05.003
work_keys_str_mv AT grossaldenl aclassificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT hassenstabjasonj aclassificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT johnsonsterlingc aclassificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT clarklindsayr aclassificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT resnicksusanm aclassificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT kitnertriolomelissa aclassificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT masterscolinl aclassificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT maruffpaul aclassificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT morrisjohnc aclassificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT soldananja aclassificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT pettigrewcorinne aclassificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT albertmarilyns aclassificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT grossaldenl classificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT hassenstabjasonj classificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT johnsonsterlingc classificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT clarklindsayr classificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT resnicksusanm classificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT kitnertriolomelissa classificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT masterscolinl classificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT maruffpaul classificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT morrisjohnc classificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT soldananja classificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT pettigrewcorinne classificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium
AT albertmarilyns classificationalgorithmforpredictingprogressionfromnormalcognitiontomildcognitiveimpairmentacrossfivecohortsthepreclinicaladconsortium