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Titlebook: Big Data Analytics in Genomics; Ka-Chun Wong Book 2016 Springer International Publishing Switzerland (Outside the USA) 2016 Big Data.Genom

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发表于 2025-3-21 19:30:03 | 显示全部楼层 |阅读模式
期刊全称Big Data Analytics in Genomics
影响因子2023Ka-Chun Wong
视频video
发行地址Treats both theoretical and practical aspects of scalable data analysis in genome research.Covers various applications in high impact problems, such as cancer genome analytics.Includes concrete cases
图书封面Titlebook: Big Data Analytics in Genomics;  Ka-Chun Wong Book 2016 Springer International Publishing Switzerland (Outside the USA) 2016 Big Data.Genom
影响因子This contributed volume explores the emerging intersection between big data analytics and genomics. Recent sequencing technologies have enabled high-throughput sequencing data generation for genomics resulting in several international projects which have led to massive genomic data accumulation at an unprecedented pace.  To reveal novel genomic insights from this data within a reasonable time frame, traditional data analysis methods may not be sufficient or scalable, forcing the need for big data analytics to be developed for genomics. The computational methods addressed in the book are intended to tackle crucial biological questions using big data, and are appropriate for either newcomers or veterans in the field..This volume offers thirteen peer-reviewed contributions, written by international leading experts from different regions, representing Argentina, Brazil, China, France, Germany, Hong Kong, India, Japan, Spain, and the USA.  In particular, the book surveys three main areas: statistical analytics, computational analytics, and cancer genome analytics. Sample topics covered include: statistical methods for integrative analysis of genomic data, computation methods for protein
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发表于 2025-3-21 21:37:29 | 显示全部楼层
Causal Inference and Structure Learning of Genotype–Phenotype Networks Using Genetic Variation–phenotype relations. We discuss four recent algorithms for genotype–phenotype network structure learning, namely (1) QTL-directed dependency graph, (2) QTL+Phenotype supervised orientation, (3) QTL-driven phenotype network, and (4) sparsity-aware maximum likelihood (SML).
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State-of-the-Art in Smith–Waterman Protein Database Search on HPC Platforms implementation. Additionally, as energy efficiency is becoming more important every day, we also survey performance/power consumption works. Finally, we give our view on the future of Smith–Waterman protein searches considering next generations of hardware architectures and its upcoming technologie
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Perspectives of Machine Learning Techniques in Big Data Mining of Cancerional process of various genes identified by different genomics efforts. This might be useful to understand the modern trends and strategies of the fast evolving cancer genomics research. In the recent years, parallel, incremental, and multi-view machine learning algorithms have been proposed. This
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A Bioinformatics Approach for Understanding Genotype–Phenotype Correlation in Breast Cancererns, which can assign known phenotypes to BC TN patients, focusing more on paired or more complicated nucleotide/gene mutational patterns, by using three machine learning methods: limitless arity multiple procedure (LAMP), decision trees, and hierarchical disjoint clustering. Association rules obta
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