Title |
CYTOGENETIC STUDY OF LEUCOCYTE CULTURE IN MULTIPLE PREGNANCY LOSS IN MUMBAI |
| Genetics Vol:4 Iss:2 (2012-04-26) : 80-84 |
Authors |
KHEDEKAR D.N., KESARI G.V., KOTWALIWALE S.S., HATTANGDI S.S. |
Published on |
26 Apr 2012 Pages : 80-84 Article Id : BIA0000211 Views : 1091 Downloads : 1320 |
DOI | http://dx.doi.org/10.9735/0975-2862.4.2.80-84 |
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Abstract |
Full Text |
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Multiple abortions constitute a significant percentage in married couples. The study was undertaken to explore the possibility of
any cytogenetic abnormalities in karyotype of couples having a history of multiple abortions. A study consist of 50 married couples sufferings
from recurrent abortions. Parental age was taken into consideration. Peripheral blood lymphocyte of each couple was used for cell culture.
Metaphase spread was obtained by Giemsa Trypsin Banding technique.Minimum 15 metaphase were prepared. First slides were observed
under microscope using applied spectrum imaging software. Prepared karyotypes were classified using Denver classification. Study showed
incidence of chromosomal abnormalities is 6 %.Abnormalities were balanced translocation including 2 reciprocal translocation &1 Robertsonian
translocation.
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Title |
FSVML AND GA-FSVML WRAPPER APPROACHES FOR GENE SELECTION AND CLASSIFICATION USING EXPRESSIONS OF VERY FEW GENES |
| Genetics Vol:4 Iss:2 (2012-04-30) : 85-91 |
Authors |
REVATHY N., BALASUBRAMANIAN R. |
Published on |
30 Apr 2012 Pages : 85-91 Article Id : BIA0000212 Views : 1121 Downloads : 1428 |
DOI | http://dx.doi.org/10.9735/0975-2862.4.2.85-91 |
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Abstract |
Full Text |
PDF | XML |
PubMed XML |
CNKI |
Cited By |
Open Access |
Recently, Gene expression profiling by microarray technique has been effectively utilized for classification and diagnostic guessing
of cancer nodules in the field of medical sciences. But the techniques used for cancer classification is still in its lower level. There are
various drawbacks in the existing classification techniques such as low testing accuracy, high training time, unreliability, etc. Moreover, microarray
data consists of a high degree of noise. Gene ranking techniques such as T-Score, ANOVA, etc are later proposed to overcome
those problems. But those approaches will sometimes wrongly predict the rank when large database is used. To overcome these issues,
this paper mainly focuses on the development of an effective feature selection and classification technique for microarray gene expression
cancer diagnosis for provide significant accuracy, reliability and less error rate. In this paper, Wrapper feature selection approach called the
GA-FSVML approach is used for the effective feature selection of genes. In FSVML, the RBF kernel function in SVM is trained using modified
Levenberg Marquadt algorithm. This approach proposes a Fast SVM Learning (FSVML) technique for the classification tasks. The experiment
is performed on lymphoma data set and the result shows the better accuracy of the proposed FSVML with GA-FSVML classification
approach when compared to the standard existing approaches.
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