<p><b>Praise for the<i> First Edition</i></b></p><p><b>ββ¦extremely well writtenβ¦a comprehensive and up-to-date overview of this important field.β<i> β Journal of Environmental Quality</i></b></p><p><i>Β </i></p><p><i>Exploration and Analysis of DNA Microarray and Other High-Dimensional Data, Second E
High-dimensional Microarray Data Analysis: Cancer Gene Diagnosis and Malignancy Indexes by Microarray
β Scribed by Shuichi Shinmura
- Publisher
- Springer Singapore
- Year
- 2019
- Tongue
- English
- Leaves
- 437
- Edition
- 1st ed.
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
This book shows how to decompose high-dimensional microarrays into small subspaces (Small Matryoshkas, SMs), statistically analyze them, and perform cancer gene diagnosis. The information is useful for genetic experts, anyone who analyzes genetic data, and students to use as practical textbooks.
Discriminant analysis is the best approach for microarray consisting of normal and cancer classes. Microarrays are linearly separable data (LSD, Fact 3). However, because most linear discriminant function (LDF) cannot discriminate LSD theoretically and error rates are high, no one had discovered Fact 3 until now. Hard-margin SVM (H-SVM) and Revised IP-OLDF (RIP) can find Fact3 easily. LSD has the Matryoshka structure and is easily decomposed into many SMs (Fact 4). Because all SMs are small samples and LSD, statistical methods analyze SMs easily. However, useful results cannot be obtained. On the other hand, H-SVM and RIP can discriminate two classes in SM entirely. RatioSV is the ratio of SV distance and discriminant range. The maximum RatioSVs of six microarrays is over 11.67%. This fact shows that SV separates two classes by window width (11.67%). Such easy discrimination has been unresolved since 1970. The reason is revealed by facts presented here, so this book can be read and enjoyed like a mystery novel.
Many studies point out that it is difficult to separate signal and noise in a high-dimensional gene space. However, the definition of the signal is not clear. Convincing evidence is presented that LSD is a signal. Statistical analysis of the genes contained in the SM cannot provide useful information, but it shows that the discriminant score (DS) discriminated by RIP or H-SVM is easily LSD. For example, the Alon microarray has 2,000 genes which can be divided into 66 SMs. If 66 DSs are used as variables, the result is a 66-dimensional data. These signal data can be analyzed to find malignancy indicators by principal component analysis and cluster analysis.β¦ Table of Contents
Front Matter ....Pages i-xxv
New Theory of Discriminant Analysis and Cancer Gene Analysis (Shuichi Shinmura)....Pages 1-44
Overview of Cancer Gene Diagnosis (Shuichi Shinmura)....Pages 45-93
Cancer Gene Diagnosis of Alonβs microarray by RIP and Revised LP-OLDF (Shuichi Shinmura)....Pages 95-146
Further Examinations of SMsβDefect of Revised LP-OLDF and Correlations of Genes (Shuichi Shinmura)....Pages 147-190
Cancer Gene Diagnosis of Golub et al. Microarray (Shuichi Shinmura)....Pages 191-235
Cancer Gene Diagnosis of Shipp et al. Microarray (Shuichi Shinmura)....Pages 237-289
Cancer Gene Diagnosis of Singh et al. Microarray (Shuichi Shinmura)....Pages 291-327
Cancer Gene Diagnosis of Tian et al. Microarray (Shuichi Shinmura)....Pages 329-358
Cancer Gene Diagnosis of Chiaretti et al. Microarray (Shuichi Shinmura)....Pages 359-392
LINGO Programs of Cancer Gene Analysis (Shuichi Shinmura)....Pages 393-415
Back Matter ....Pages 417-419
β¦ Subjects
Statistics; Statistics for Life Sciences, Medicine, Health Sciences; Statistical Theory and Methods; Biostatistics; Statistics for Social Science, Behavorial Science, Education, Public Policy, and Law
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