Validation of the Erlangen Score Algorithm for the Prediction of the Development of Dementia due to Alzheimer’s Disease in Pre-Dementia Subjects

2015 | journal article. A publication with affiliation to the University of Göttingen.

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​Lewczuk P, Kornhuber J, Toledo JB, Trojanowski JQ, Knapik-Czajka M, Peters O, et al. ​Validation of the Erlangen Score Algorithm for the Prediction of the Development of Dementia due to Alzheimer’s Disease in Pre-Dementia Subjects​. ​​Journal of Alzheimer's Disease. ​2015;​48​(2):​​433​-441​. ​doi:10.3233/jad-150342. 

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Authors
Lewczuk, Piotr ; Kornhuber, Johannes ; Toledo, Jon B.; Trojanowski, John Q.; Knapik-Czajka, Malgorzata; Peters, Oliver; Wiltfang, Jens ; Shaw, Leslie M.
Abstract
Background: In previous studies, a dichotomous stratification of subjects into “cerebrospinal fluid (CSF) normal” and “CSF pathologic” was used to investigate the role of biomarkers in the prediction of progression to dementia in pre-dementia/mild cognitive impairment subjects. With the previously published Erlangen Score Algorithm, we suggested a division of CSF patterns into five groups, covering all possible CSF result combinations based on the presence of pathologic tau and/or amyloid-β CSF values. Objective: This study aimed to validate the Erlangen Score diagnostic algorithm based on the results of biomarkers analyses obtained in different patients cohorts, with different pre-analytical protocols, and with different laboratory analytical platforms. Methods: We evaluated the algorithm in two cohorts of pre-dementia subjects: the US-Alzheimer’s Disease Neuroimaging Initiative and the German Dementia Competence Network. Results: In both cohorts, the Erlangen scores were strongly associated with progression to Alzheimer’s disease. Neither the scores of the progressors nor the scores of the non-progressors differed significantly between the two projects, in spite of significant differences in the cohorts, laboratory methods, and the samples treatment. Conclusions: Our findings confirm the utility of the Erlangen Score algorithm as a useful tool in the early neurochemical diagnosis of Alzheimer’s disease.
Issue Date
2015
Journal
Journal of Alzheimer's Disease 
ISSN
1387-2877
Language
English

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