痴呆
阿尔茨海默病
拉曼光谱
疾病
多元分析
医学
鉴别诊断
内科学
病理
听力学
光学
物理
作者
Elena Ryzhikova,Oleksandr Kazakov,Lenka Halámková,Dzintra Celmins,Paula Malone,Eric Molho,Earl A. Zimmerman,Igor K. Lednev
标识
DOI:10.1002/jbio.201400060
摘要
The key moment for efficiently and accurately diagnosing dementia occurs during the early stages. This is particularly true for Alzheimer's disease (AD). In this proof-of-concept study, we applied near infrared (NIR) Raman microspectroscopy of blood serum together with advanced multivariate statistics for the selective identification of AD. We analyzed data from 20 AD patients, 18 patients with other neurodegenerative dementias (OD) and 10 healthy control (HC) subjects. NIR Raman microspectroscopy differentiated patients with more than 95% sensitivity and specificity. We demonstrated the high discriminative power of artificial neural network (ANN) classification models, thus revealing the high potential of this developed methodology for the differential diagnosis of AD. Raman spectroscopic, blood-based tests may aid clinical assessments for the effective and accurate differential diagnosis of AD, decrease the labor, time and cost of diagnosis, and be useful for screening patient populations for AD development and progression. Multivariate data analysis of blood serum Raman spectra allows for the differentiation between patients with Alzheimer's disease, other types of dementia and healthy individuals.
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