Literature DB >> 32340968

Early Detection of Alzheimer's Disease with Blood Plasma Proteins Using Support Vector Machines.

Chima S Eke, Emmanuel Jammeh, Xinzhong Li, Camille Carroll, Stephen Pearson, Emmanuel Ifeachor.   

Abstract

The successful development of amyloid-based biomarkers and tests for Alzheimer's disease (AD) represents an important milestone in AD diagnosis. However, two major limitations remain. Amyloid-based diagnostic biomarkers and tests provide limited information about the disease process and they are unable to identify individuals with the disease before significant amyloid-beta accumulation in the brain develops. The objective in this study is to develop a method to identify potential blood-based non-amyloid biomarkers for early AD detection. The use of blood is attractive because it is accessible and relatively inexpensive. Our method is mainly based on machine learning (ML) techniques (support vector machines in particular) because of their ability to create multivariable models by learning patterns from complex data. Using novel feature selection and evaluation modalities, we identified 5 novel panels of non-amyloid proteins with the potential to serve as biomarkers of early AD. In particular, we found that the combination of A2M, ApoE, BNP, Eot3, RAGE and SGOT may be a key biomarker profile of early disease. Disease detection models based on the identified panels achieved sensitivity (SN) > 80%, specificity (SP) > 70%, and area under receiver operating curve (AUC) of at least 0.80 at prodromal stage (with higher performance at later stages) of the disease. Existing ML models performed poorly in comparison at this stage of the disease, suggesting that the underlying protein panels may not be suitable for early disease detection. Our results demonstrate the feasibility of early detection of AD using non-amyloid based biomarkers.

Entities:  

Year:  2021        PMID: 32340968     DOI: 10.1109/JBHI.2020.2984355

Source DB:  PubMed          Journal:  IEEE J Biomed Health Inform        ISSN: 2168-2194            Impact factor:   5.772


  2 in total

1.  Biometal Dyshomeostasis in Olfactory Mucosa of Alzheimer's Disease Patients.

Authors:  Riikka Lampinen; Veronika Górová; Simone Avesani; Jeffrey R Liddell; Elina Penttilä; Táňa Závodná; Zdeněk Krejčík; Juha-Matti Lehtola; Toni Saari; Juho Kalapudas; Sanna Hannonen; Heikki Löppönen; Jan Topinka; Anne M Koivisto; Anthony R White; Rosalba Giugno; Katja M Kanninen
Journal:  Int J Mol Sci       Date:  2022-04-08       Impact factor: 6.208

Review 2.  Preemptive Diagnosis of Alzheimer's Disease in the Eastern Province of Saudi Arabia Using Computational Intelligence Techniques.

Authors:  Sunday O Olatunji; Aisha Alansari; Heba Alkhorasani; Meelaf Alsubaii; Rasha Sakloua; Reem Alzahrani; Yasmeen Alsaleem; Reem Alassaf; Mehwash Farooqui; Mohammed Imran Basheer Ahmed; Jamal Alhiyafi
Journal:  Comput Intell Neurosci       Date:  2022-08-23
  2 in total

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