Systematic review: fluid biomarkers and machine learning methods to improve the diagnosis from mild cognitive impairment to Alzheimer’s disease

被引:0
作者
Kevin Blanco
Stefanny Salcidua
Paulina Orellana
Tania Sauma-Pérez
Tomás León
Lorena Cecilia López Steinmetz
Agustín Ibañez
Claudia Duran-Aniotz
Rolando de la Cruz
机构
[1] Universidad Adolfo Ibanez,Center for Social and Cognitive Neuroscience (CSCN), School of Psychology
[2] Universidad Adolfo Ibáñez,Latin American Institute for Brain Health (BrainLat)
[3] Universidad Adolfo Ibáñez,Faculty of Engineering and Sciences
[4] Global Brain Health Institute,Memory and Neuropsychiatric Center (CMYN) Neurology Department, Hospital del Salvador and Faculty of Medicine
[5] Trinity College,Instituto de Investigaciones Psicológicas (IIPsi)
[6] University of Chile,Cognitive Neuroscience Center (CNC)
[7] Technische Universität Berlin,undefined
[8] Universidad Nacional de Córdoba (UNC) y Consejo Nacional de Investigaciones Científicas y Técnicas (CONICET),undefined
[9] Global Brain Health Institute,undefined
[10] University of California San Francisco (UCSF),undefined
[11] Universidad de San Andrés,undefined
[12] & National Scientific and Technical Research Council (CONICET),undefined
[13] Data Observatory Foundation,undefined
[14] ANID Technology Center No. DO210001,undefined
来源
Alzheimer's Research & Therapy | / 15卷
关键词
Mild cognitive impairment; Alzheimer’s disease; Fluid biomarker; Machine learning; Artificial intelligence;
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摘要
Mild cognitive impairment (MCI) is often considered an early stage of dementia, with estimated rates of progression to dementia up to 80–90% after approximately 6 years from the initial diagnosis. Diagnosis of cognitive impairment in dementia is typically based on clinical evaluation, neuropsychological assessments, cerebrospinal fluid (CSF) biomarkers, and neuroimaging. The main goal of diagnosing MCI is to determine its cause, particularly whether it is due to Alzheimer’s disease (AD). However, only a limited percentage of the population has access to etiological confirmation, which has led to the emergence of peripheral fluid biomarkers as a diagnostic tool for dementias, including MCI due to AD. Recent advances in biofluid assays have enabled the use of sophisticated statistical models and multimodal machine learning (ML) algorithms for the diagnosis of MCI based on fluid biomarkers from CSF, peripheral blood, and saliva, among others. This approach has shown promise for identifying specific causes of MCI, including AD. After a PRISMA analysis, 29 articles revealed a trend towards using multimodal algorithms that incorporate additional biomarkers such as neuroimaging, neuropsychological tests, and genetic information. Particularly, neuroimaging is commonly used in conjunction with fluid biomarkers for both cross-sectional and longitudinal studies. Our systematic review suggests that cost-effective longitudinal multimodal monitoring data, representative of diverse cultural populations and utilizing white-box ML algorithms, could be a valuable contribution to the development of diagnostic models for AD due to MCI. Clinical assessment and biomarkers, together with ML techniques, could prove pivotal in improving diagnostic tools for MCI due to AD.
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