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Gene Expression Biomarkers in the Brain of a Mouse Model for Alzheimer's Disease: Mining of Microarray Data by Logic Classification and Feature Selection
被引:112
作者:
Arisi, Ivan
[1
]
D'Onofrio, Mara
[1
]
Brandi, Rossella
[1
]
Felsani, Armando
[2
,3
]
Capsoni, Simona
[4
,7
]
Drovandi, Guido
[5
,6
]
Felici, Giovanni
[5
]
Weitschek, Emanuel
[5
,6
]
Bertolazzi, Paola
[5
]
Cattaneo, Antonino
[4
,7
]
机构:
[1] Italian Inst Technol, Neurogen Unit, European Brain Res Inst EBRI Rita Levi Montalcini, Rome, Italy
[2] CNR, Ist Neurobiol & Med Mol, Rome, Italy
[3] Lainate, Genomnia, Milan, Italy
[4] Scuola Normale Super Pisa, Pisa, Italy
[5] Ist Anal Sistemi & Informat Antonio Ruberti, Rome, Italy
[6] Univ Roma Tre, Rome, Italy
[7] European Brain Res Inst EBRI Rita Levi Montalcini, Neurotroph Factors & Neurodenerat Dis Unit, I-00143 Rome, Italy
关键词:
Alzheimer's disease;
biomarkers;
data mining;
gene expression;
microarray;
mouse models;
nerve growth factor;
statistical data interpretation;
NERVE GROWTH-FACTOR;
CHOLESTEROL-BIOSYNTHESIS;
CEREBROSPINAL-FLUID;
TRANSGENIC MICE;
FACTOR NGF;
RECEPTOR;
NEURODEGENERATION;
METHYLATION;
DEPRIVATION;
PROTEINS;
D O I:
10.3233/JAD-2011-101881
中图分类号:
Q189 [神经科学];
学科分类号:
071006 ;
摘要:
The identification of early and stage-specific biomarkers for Alzheimer's disease (AD) is critical, as the development of disease-modification therapies may depend on the discovery and validation of such markers. The identification of early reliable biomarkers depends on the development of new diagnostic algorithms to computationally exploit the information in large biological datasets. To identify potential biomarkers from mRNA expression profile data, we used the Logic Mining method for the unbiased analysis of a large microarray expression dataset from the anti-NGF AD11 transgenic mouse model. The gene expression profile of AD11 brain regions was investigated at different neurodegeneration stages by whole genome microarrays. A new implementation of the Logic Mining method was applied both to early (1-3 months) and late stage (6-15 months) expression data, coupled to standard statistical methods. A small number of "fingerprinting" formulas was isolated, encompassing mRNAs whose expression levels were able to discriminate between diseased and control mice. We selected three differential "signature" genes specific for the early stage (Nudt19, Arl 16, Aph 1b), five common to both groups (Slc 15a2, Agpat5, Sox2ot, 2210015, D19Rik, Wdfyl), and seven specific for late stage (D14Ertd449, Tia 1. Txn14,1810014B0 1Rik, Snhg3, Act16a, Rnf25). We suggest these genes as potential biomarkers for the early and late stage of AD-like neurodegeneration in this model and conclude that Logic Mining is a powerful and reliable approach for large scale expression data analysis. Its application to large expression datasets from brain or peripheral human samples may facilitate the discovery of early and stage-specific AD biomarkers.
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页码:721 / 738
页数:18
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