BACKGROUND: Prior work on the link between blood-based biomarkers and cognitive status has largely been based on dichotomous classifications rather than detailed neuropsychological functioning. The current project was designed to create serum-based biomarker algorithms that predict neuropsychological test performance. METHODS: A battery of neuropsychological measures was administered. Random forest analyses were utilized to create neuropsychological test-specific biomarker risk scores in a training set that were entered into linear regression models predicting the respective test scores in the test set. Serum multiplex biomarker data were analyzed on 108 proteins from 395 participants (197 Alzheimer patients and 198 controls) from the Texas Alzheimer's Research and Care Consortium. RESULTS: The biomarker risk scores were significant predictors (p < 0.05) of scores on all neuropsychological tests. With the exception of premorbid intellectual status (6.6%), the biomarker risk scores alone accounted for a minimum of 12.9% of the variance in neuropsychological scores. Biomarker algorithms (biomarker risk scores and demographics) accounted for substantially more variance in scores. Review of the variable importance plots indicated differential patterns of biomarker significance for each test, suggesting the possibility of domain-specific biomarker algorithms. CONCLUSIONS: Our findings provide proof of concept for a novel area of scientific discovery, which we term 'molecular neuropsychology'.
BACKGROUND: Prior work on the link between blood-based biomarkers and cognitive status has largely been based on dichotomous classifications rather than detailed neuropsychological functioning. The current project was designed to create serum-based biomarker algorithms that predict neuropsychological test performance. METHODS: A battery of neuropsychological measures was administered. Random forest analyses were utilized to create neuropsychological test-specific biomarker risk scores in a training set that were entered into linear regression models predicting the respective test scores in the test set. Serum multiplex biomarker data were analyzed on 108 proteins from 395 participants (197 Alzheimerpatients and 198 controls) from the Texas Alzheimer's Research and Care Consortium. RESULTS: The biomarker risk scores were significant predictors (p < 0.05) of scores on all neuropsychological tests. With the exception of premorbid intellectual status (6.6%), the biomarker risk scores alone accounted for a minimum of 12.9% of the variance in neuropsychological scores. Biomarker algorithms (biomarker risk scores and demographics) accounted for substantially more variance in scores. Review of the variable importance plots indicated differential patterns of biomarker significance for each test, suggesting the possibility of domain-specific biomarker algorithms. CONCLUSIONS: Our findings provide proof of concept for a novel area of scientific discovery, which we term 'molecular neuropsychology'.
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Authors: Regina Taurines; Edward Dudley; Julia Grassl; Andreas Warnke; Manfred Gerlach; Andrew N Coogan; Johannes Thome Journal: J Psychopharmacol Date: 2010-02-08 Impact factor: 4.153
Authors: James R Hall; April R Wiechmann; Leigh A Johnson; Melissa Edwards; Robert C Barber; Rebecca Cunningham; Meharvan Singh; Sid E O'Bryant Journal: Dement Geriatr Cogn Disord Date: 2014-07-04 Impact factor: 2.959
Authors: Cassandra A DeMarshall; Eric P Nagele; Abhirup Sarkar; Nimish K Acharya; George Godsey; Eric L Goldwaser; Mary Kosciuk; Umashanger Thayasivam; Min Han; Benjamin Belinka; Robert G Nagele Journal: Alzheimers Dement (Amst) Date: 2016-04-12
Authors: Cassandra DeMarshall; Esther Oh; Rahil Kheirkhah; Frederick Sieber; Henrik Zetterberg; Kaj Blennow; Robert G Nagele Journal: PLoS One Date: 2019-11-15 Impact factor: 3.240