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A Metabolite-based Machine Learning Approach to Diagnose Alzheimer-type Dementia in Blood: Results from the European Medical Information Framework for Alzheimer Disease Biomarker Discovery Cohort

Abstract

Introduction: Machine learning (ML) may harbor the potential to capture the metabolic complexity in Alzheimer Disease (AD). Here we set out to test the performance of metabolites in blood to categorize AD when compared to CSF biomarkers.

Methods: This study analyzed samples from 242 cognitively normal (CN) people and 115 with AD-type dementia utilizing plasma metabolites (n = 883). Deep Learning (DL), Extreme Gradient Boosting (XGBoost) and Random Forest (RF) were used to differentiate AD from CN. These models were internally validated using Nested Cross Validation (NCV).

Results: On the test data, DL produced the AUC of 0.85 (0.80-0.89), XGBoost produced 0.88 (0.86-0.89) and RF produced 0.85 (0.83-0.87). By comparison, CSF measures of amyloid, p-tau and t-tau (together with age and gender) produced with XGBoost the AUC values of 0.78, 0.83 and 0.87, respectively.

Discussion: This study showed that plasma metabolites have the potential to match the AUC of well-established AD CSF biomarkers in a relatively small cohort. Further studies in independent cohorts are needed to validate whether this specific panel of blood metabolites can separate AD from controls, and how specific it is for AD as compared with other neurodegenerative disorders.

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References
1.
Fricker R, Green E, Jenkins S, Griffin S . The Influence of Nicotinamide on Health and Disease in the Central Nervous System. Int J Tryptophan Res. 2018; 11:1178646918776658. PMC: 5966847. DOI: 10.1177/1178646918776658. View

2.
Mahmoudiandehkordi S, Arnold M, Nho K, Ahmad S, Jia W, Xie G . Altered bile acid profile associates with cognitive impairment in Alzheimer's disease-An emerging role for gut microbiome. Alzheimers Dement. 2018; 15(1):76-92. PMC: 6487485. DOI: 10.1016/j.jalz.2018.07.217. View

3.
Han X, Holtzman D, McKeel Jr D . Plasmalogen deficiency in early Alzheimer's disease subjects and in animal models: molecular characterization using electrospray ionization mass spectrometry. J Neurochem. 2001; 77(4):1168-80. DOI: 10.1046/j.1471-4159.2001.00332.x. View

4.
Stamate D, Katrinecz A, Stahl D, Verhagen S, Delespaul P, van Os J . Identifying psychosis spectrum disorder from experience sampling data using machine learning approaches. Schizophr Res. 2019; 209:156-163. DOI: 10.1016/j.schres.2019.04.028. View

5.
Whiley L, Legido-Quigley C . Current strategies in the discovery of small-molecule biomarkers for Alzheimer's disease. Bioanalysis. 2011; 3(10):1121-42. DOI: 10.4155/bio.11.62. View