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Analytic methods for factors, dimensions and endpoints in clinical trials for Alzheimer’s disease
Alzheimer’s disease (AD) is a complex disease process, so finding a single biomarker to track in clinical trials has proven difficult. This paper describes and contrasts statistical methods that might be used with biomarkers in clinical trials for AD, highlighting their differences, limitations and...
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Published in: | The Journal of nutrition, health & aging health & aging, 2009-03, Vol.13 (3), p.249-255 |
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description | Alzheimer’s disease (AD) is a complex disease process, so finding a single biomarker to track in clinical trials has proven difficult. This paper describes and contrasts statistical methods that might be used with biomarkers in clinical trials for AD, highlighting their differences, limitations and interpretations. The first method is traditional regression, within which one dependent variable, the Best Empirically Supported Indicator (BESI), must be identified. In this approach one biomarker (e.g., the ratio of tau to Aβ42 from CSF) is the indicator for an individual’s disease status, and change in that status. The second approach is an exploratory factor analysis (EFA) to consolidate a multitude of candidate dependent variables into a sample-dependent, mathematically-optimized smaller set of ‘factors’. The third method is latent variable (LV) modeling of multiple indicators of an entity (e.g., “disease burden”). The LV approach can yield a complex ‘dependent variable’, the Best Measurement Model Indicator (BMMI). A measurement model represents an entity that several dependent variables reflect or measure, and so can include many ‘dependent variables’, and estimate their relative contributions to the underlying entity. The selection of a single BESI is an artifact of regression that limits the investigator’s ability to utilize all relevant variables representing the entity of interest. EFA results in sample-specific combination of biomarkers that might not generalize to a new sample — and fit of the EFA results cannot be tested. Latent variable methods can be useful to construct powerful, efficient statistical models that optimally combine diverse biomarkers into a single, multidimensional dependent variable that can generalize across samples when they are theory-driven and not sample-dependent. This paper shows that EFA can work to uncover underlying structure, but that it does not always yield solutions that ‘fit’ the data. It is not recommended as a method to build BMMIs, which will be useful in establishing diagnostic criteria, creating and evaluating benchmarks, and monitoring progression in clinical trials. |
doi_str_mv | 10.1007/s12603-009-0067-0 |
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E.</creator><creatorcontrib>Tractenberg, R. E.</creatorcontrib><description>Alzheimer’s disease (AD) is a complex disease process, so finding a single biomarker to track in clinical trials has proven difficult. This paper describes and contrasts statistical methods that might be used with biomarkers in clinical trials for AD, highlighting their differences, limitations and interpretations. The first method is traditional regression, within which one dependent variable, the Best Empirically Supported Indicator (BESI), must be identified. In this approach one biomarker (e.g., the ratio of tau to Aβ42 from CSF) is the indicator for an individual’s disease status, and change in that status. The second approach is an exploratory factor analysis (EFA) to consolidate a multitude of candidate dependent variables into a sample-dependent, mathematically-optimized smaller set of ‘factors’. The third method is latent variable (LV) modeling of multiple indicators of an entity (e.g., “disease burden”). The LV approach can yield a complex ‘dependent variable’, the Best Measurement Model Indicator (BMMI). A measurement model represents an entity that several dependent variables reflect or measure, and so can include many ‘dependent variables’, and estimate their relative contributions to the underlying entity. The selection of a single BESI is an artifact of regression that limits the investigator’s ability to utilize all relevant variables representing the entity of interest. EFA results in sample-specific combination of biomarkers that might not generalize to a new sample — and fit of the EFA results cannot be tested. Latent variable methods can be useful to construct powerful, efficient statistical models that optimally combine diverse biomarkers into a single, multidimensional dependent variable that can generalize across samples when they are theory-driven and not sample-dependent. This paper shows that EFA can work to uncover underlying structure, but that it does not always yield solutions that ‘fit’ the data. It is not recommended as a method to build BMMIs, which will be useful in establishing diagnostic criteria, creating and evaluating benchmarks, and monitoring progression in clinical trials.</description><identifier>ISSN: 1279-7707</identifier><identifier>EISSN: 1760-4788</identifier><identifier>DOI: 10.1007/s12603-009-0067-0</identifier><identifier>PMID: 19262962</identifier><language>eng</language><publisher>Paris: Springer-Verlag</publisher><subject>Adult and adolescent clinical studies ; Aging ; Alzheimer Disease - cerebrospinal fluid ; Alzheimer Disease - diagnosis ; Alzheimer Disease - metabolism ; Alzheimer's disease ; Biological and medical sciences ; Biomarkers ; Biomarkers - cerebrospinal fluid ; Biomarkers - metabolism ; Brain - metabolism ; Clinical trials ; Clinical Trials as Topic - statistics & numerical data ; Degenerative and inherited degenerative diseases of the nervous system. Leukodystrophies. Prion diseases ; Dependent variables ; Factor Analysis, Statistical ; Feeding. Feeding behavior ; Fundamental and applied biological sciences. Psychology ; Geriatrics/Gerontology ; Humans ; JNHA: Clinical Trials and Aging ; Medical imaging ; Medical sciences ; Medicine ; Medicine & Public Health ; Methods ; Neuroimaging ; Neurology ; Neurosciences ; Nutrition ; Organic mental disorders. Neuropsychology ; Primary Care Medicine ; Psychology. Psychoanalysis. Psychiatry ; Psychopathology. 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E.</creatorcontrib><title>Analytic methods for factors, dimensions and endpoints in clinical trials for Alzheimer’s disease</title><title>The Journal of nutrition, health & aging</title><addtitle>J Nutr Health Aging</addtitle><addtitle>J Nutr Health Aging</addtitle><description>Alzheimer’s disease (AD) is a complex disease process, so finding a single biomarker to track in clinical trials has proven difficult. This paper describes and contrasts statistical methods that might be used with biomarkers in clinical trials for AD, highlighting their differences, limitations and interpretations. The first method is traditional regression, within which one dependent variable, the Best Empirically Supported Indicator (BESI), must be identified. In this approach one biomarker (e.g., the ratio of tau to Aβ42 from CSF) is the indicator for an individual’s disease status, and change in that status. The second approach is an exploratory factor analysis (EFA) to consolidate a multitude of candidate dependent variables into a sample-dependent, mathematically-optimized smaller set of ‘factors’. The third method is latent variable (LV) modeling of multiple indicators of an entity (e.g., “disease burden”). The LV approach can yield a complex ‘dependent variable’, the Best Measurement Model Indicator (BMMI). A measurement model represents an entity that several dependent variables reflect or measure, and so can include many ‘dependent variables’, and estimate their relative contributions to the underlying entity. The selection of a single BESI is an artifact of regression that limits the investigator’s ability to utilize all relevant variables representing the entity of interest. EFA results in sample-specific combination of biomarkers that might not generalize to a new sample — and fit of the EFA results cannot be tested. Latent variable methods can be useful to construct powerful, efficient statistical models that optimally combine diverse biomarkers into a single, multidimensional dependent variable that can generalize across samples when they are theory-driven and not sample-dependent. This paper shows that EFA can work to uncover underlying structure, but that it does not always yield solutions that ‘fit’ the data. It is not recommended as a method to build BMMIs, which will be useful in establishing diagnostic criteria, creating and evaluating benchmarks, and monitoring progression in clinical trials.</description><subject>Adult and adolescent clinical studies</subject><subject>Aging</subject><subject>Alzheimer Disease - cerebrospinal fluid</subject><subject>Alzheimer Disease - diagnosis</subject><subject>Alzheimer Disease - metabolism</subject><subject>Alzheimer's disease</subject><subject>Biological and medical sciences</subject><subject>Biomarkers</subject><subject>Biomarkers - cerebrospinal fluid</subject><subject>Biomarkers - metabolism</subject><subject>Brain - metabolism</subject><subject>Clinical trials</subject><subject>Clinical Trials as Topic - statistics & numerical data</subject><subject>Degenerative and inherited degenerative diseases of the nervous system. Leukodystrophies. Prion diseases</subject><subject>Dependent variables</subject><subject>Factor Analysis, Statistical</subject><subject>Feeding. Feeding behavior</subject><subject>Fundamental and applied biological sciences. Psychology</subject><subject>Geriatrics/Gerontology</subject><subject>Humans</subject><subject>JNHA: Clinical Trials and Aging</subject><subject>Medical imaging</subject><subject>Medical sciences</subject><subject>Medicine</subject><subject>Medicine & Public Health</subject><subject>Methods</subject><subject>Neuroimaging</subject><subject>Neurology</subject><subject>Neurosciences</subject><subject>Nutrition</subject><subject>Organic mental disorders. Neuropsychology</subject><subject>Primary Care Medicine</subject><subject>Psychology. Psychoanalysis. Psychiatry</subject><subject>Psychopathology. 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E.</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-LOGICAL-c497t-9af34a8de5331c3ac6a4de42c9efebd8c20f9906615de5dd8547199dbbcf94b93</frbrgroupid><rsrctype>articles</rsrctype><prefilter>articles</prefilter><language>eng</language><creationdate>2009</creationdate><topic>Adult and adolescent clinical studies</topic><topic>Aging</topic><topic>Alzheimer Disease - cerebrospinal fluid</topic><topic>Alzheimer Disease - diagnosis</topic><topic>Alzheimer Disease - metabolism</topic><topic>Alzheimer's disease</topic><topic>Biological and medical sciences</topic><topic>Biomarkers</topic><topic>Biomarkers - cerebrospinal fluid</topic><topic>Biomarkers - metabolism</topic><topic>Brain - metabolism</topic><topic>Clinical trials</topic><topic>Clinical Trials as Topic - statistics & numerical data</topic><topic>Degenerative and inherited degenerative diseases of the nervous system. Leukodystrophies. Prion diseases</topic><topic>Dependent variables</topic><topic>Factor Analysis, Statistical</topic><topic>Feeding. Feeding behavior</topic><topic>Fundamental and applied biological sciences. Psychology</topic><topic>Geriatrics/Gerontology</topic><topic>Humans</topic><topic>JNHA: Clinical Trials and Aging</topic><topic>Medical imaging</topic><topic>Medical sciences</topic><topic>Medicine</topic><topic>Medicine & Public Health</topic><topic>Methods</topic><topic>Neuroimaging</topic><topic>Neurology</topic><topic>Neurosciences</topic><topic>Nutrition</topic><topic>Organic mental disorders. Neuropsychology</topic><topic>Primary Care Medicine</topic><topic>Psychology. Psychoanalysis. Psychiatry</topic><topic>Psychopathology. Psychiatry</topic><topic>Quality of Life Research</topic><topic>Vertebrates: anatomy and physiology, studies on body, several organs or systems</topic><toplevel>peer_reviewed</toplevel><toplevel>online_resources</toplevel><creatorcontrib>Tractenberg, R. 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E.</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Analytic methods for factors, dimensions and endpoints in clinical trials for Alzheimer’s disease</atitle><jtitle>The Journal of nutrition, health & aging</jtitle><stitle>J Nutr Health Aging</stitle><addtitle>J Nutr Health Aging</addtitle><date>2009-03-01</date><risdate>2009</risdate><volume>13</volume><issue>3</issue><spage>249</spage><epage>255</epage><pages>249-255</pages><issn>1279-7707</issn><eissn>1760-4788</eissn><abstract>Alzheimer’s disease (AD) is a complex disease process, so finding a single biomarker to track in clinical trials has proven difficult. This paper describes and contrasts statistical methods that might be used with biomarkers in clinical trials for AD, highlighting their differences, limitations and interpretations. The first method is traditional regression, within which one dependent variable, the Best Empirically Supported Indicator (BESI), must be identified. In this approach one biomarker (e.g., the ratio of tau to Aβ42 from CSF) is the indicator for an individual’s disease status, and change in that status. The second approach is an exploratory factor analysis (EFA) to consolidate a multitude of candidate dependent variables into a sample-dependent, mathematically-optimized smaller set of ‘factors’. The third method is latent variable (LV) modeling of multiple indicators of an entity (e.g., “disease burden”). The LV approach can yield a complex ‘dependent variable’, the Best Measurement Model Indicator (BMMI). A measurement model represents an entity that several dependent variables reflect or measure, and so can include many ‘dependent variables’, and estimate their relative contributions to the underlying entity. The selection of a single BESI is an artifact of regression that limits the investigator’s ability to utilize all relevant variables representing the entity of interest. EFA results in sample-specific combination of biomarkers that might not generalize to a new sample — and fit of the EFA results cannot be tested. Latent variable methods can be useful to construct powerful, efficient statistical models that optimally combine diverse biomarkers into a single, multidimensional dependent variable that can generalize across samples when they are theory-driven and not sample-dependent. This paper shows that EFA can work to uncover underlying structure, but that it does not always yield solutions that ‘fit’ the data. It is not recommended as a method to build BMMIs, which will be useful in establishing diagnostic criteria, creating and evaluating benchmarks, and monitoring progression in clinical trials.</abstract><cop>Paris</cop><pub>Springer-Verlag</pub><pmid>19262962</pmid><doi>10.1007/s12603-009-0067-0</doi><tpages>7</tpages><oa>free_for_read</oa></addata></record> |
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subjects | Adult and adolescent clinical studies Aging Alzheimer Disease - cerebrospinal fluid Alzheimer Disease - diagnosis Alzheimer Disease - metabolism Alzheimer's disease Biological and medical sciences Biomarkers Biomarkers - cerebrospinal fluid Biomarkers - metabolism Brain - metabolism Clinical trials Clinical Trials as Topic - statistics & numerical data Degenerative and inherited degenerative diseases of the nervous system. Leukodystrophies. Prion diseases Dependent variables Factor Analysis, Statistical Feeding. Feeding behavior Fundamental and applied biological sciences. Psychology Geriatrics/Gerontology Humans JNHA: Clinical Trials and Aging Medical imaging Medical sciences Medicine Medicine & Public Health Methods Neuroimaging Neurology Neurosciences Nutrition Organic mental disorders. Neuropsychology Primary Care Medicine Psychology. Psychoanalysis. Psychiatry Psychopathology. Psychiatry Quality of Life Research Vertebrates: anatomy and physiology, studies on body, several organs or systems |
title | Analytic methods for factors, dimensions and endpoints in clinical trials for Alzheimer’s disease |
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