Genome Sequencing: Then & Now

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Genome Sequencing: Then & Now “Aint you got an ‘ome to go to?” Genomics Transcriptomics Proteomics Metabolomics Physiomics toxicogenomics pharmacogenomics ecotoxicopharmacogenomics phosphatome, glycome, secretome metronome, mobilome, gardenome, etc… http://omics.org/index.php/Alphabetically_ordered_list_of_omes_and_omics --A-- Alignmentome: conceived before 2003. The whole set of Bacteriome: an organelle of bacteria. (Bacteriome.org). Also Carbome: BiO center. 2003. The whole set of carbone multiple sequence and structure alignments in the totality of baterial genes and proteins. based living organisms in the universe. (Carbome.org) bioinformatics. Alignments are the most important Bacterome: The totality of (Bacterome.org) Carbomics: BiO center. 2003. (Carbomics.org) representation in bioinformatics especially for homology and Behaviorome: The totality of (Behaviorome.org) Cardiogenomics: The omics approach research of evolution study. (Alignmentome.org) Behavioromics: The omics approach research of Cardiogenome (Cardiogenomics.org) in biology Alignmentomics: conceived before 2003. The study of Behavioromics (Behavioromics.org) in biology Cellome: concept is derived from the understanding that aligning strings and sequences especially in bioinformatics. Behaviourome: The totality of (Behaviourome.org) cells as a whole can be used for therapeutic purposes. As an (Alignmentomics.org) Behaviouromics: The omics approach research of important bioresource, cells are kept for biotechnology. As Alignome: 2003 . The whole set of string alignment Behaviouromics (Behaviouromics.org) in biology a distinct group concept, cellome refers to such cells and algorithms such as FASTA, BLAST and HMMER. Bibliome: 1999. EBI (European Bioinformatics Institute). their genetic materials. (Cellome.org) (Alignome.org) The whole of biological science and technology literature. Cellomics: The study of Cellome. Cellomics is also a Alignomics: The omics approach research of Alignomics Within bibliome, each word and context is interconnected company name Cellomics, Inc. (Cellomics.org) (Alignomics.org) in biology as a network of meaning. See also Textome. (Bibliome.org) Chemicallome: 2003 BiO center, The whole set of chemicals Alternatome: 2006. The totality of alternative spliceable Bibliomics: The study of bibliomics. (Bibliomics.org) in and out of cells including drugs. (Chemicallome.org) elements. Suggested by people in KOBIC and UCSC. Bioelectrome: 2003 The whole set of bioelectrical entities Chemicallomics: The omics approach research of (Alternatome.org) in cells. (Bioelectrome.org) Chemicallome (Chemicallomics.org) in biology Alternatomics: The omics approach research of Bioinfome: The whole set of biological information objects. Chemogenome: The totality of (Chemogenome.org) Alternatomics (Alternatomics.org) in biology (Bioinfome.org) Chemogenomics: The omics approach research of Animalome: 2000 . The whole set of animals and their Biointeractome: 2000. Biological interaction objects. chemogenome (Chemogenomics.org) in biology genetic components on Earth. While animal kingdom (Biointeractome.org) Chemome: 2000. : The whole set of chemicals in cells? traditionally means the totality of animals, animalome Biome: 1916. The whole set of ecological community of (Chemome.org) indicates the system of animals, animal genes, animality, organisms and environments. Recently, it also means Chemomics: The omics approach research of Chemome and complex network of animal genes and proteins. Animals (neologism) the whole of biological objects especially in (Chemomics.org) in biology contain proteins that are special. (Animalome.org) bioinformatics fields. (Biome.org) Chromonome: The totality of (Chromonome.org) Animalomics: The omics approach research of Animalomics Biomics: ? The study of the newer meaning of biome. Chromonomics: 1998 (Animalomics.org) in biology (Biomics.org) http://www.usc.edu/hsc/info/pr/1vol4/403/igm.html&nbs Aniome: 2003 . The whole set of any biologically relevant Bionome: 2002 The whole networked set of biological p; (Chromonomics.org) things in the universe. (Aniome.org) names. (Bionome.org) Chronome: , chronomics: ? (Chronome.org) Antibodyome: conceived around 2003 in association with Bionomics: The omics approach research of bionome Chronomics: The omics approach research of Chronome immunolome in artificial immune system as computational (Bionomics.org) in biology (Chronomics.org) in biology system (Jong). (Antibodyome.org) Biosome: 2003 BiO center. The whole set of organelles of Clinome: The totality of (Clinome.org) Antibodyomics: The omics approach research of biological cell (Biosome.org) Clinomics: The omics approach research of Clinome Antibodyome (Antibodyomics.org) in biology Biostructome: 1999 The whole set of biological structures. (Clinomics.org) in biology Antiome: The totality of people who object the propagation (Biostructome.org) Comics: This is a sarcastic omics to refer some pseudo- of omes. Biostructomics: The omics approach research of omics. (Comics.org) Antiomics: The omics study of analyzing the trend of biostructome (Biostructomics.org) in biology Complexome: 1998, The whole set of protein and molecular attaching omics suffix to debunk it. Biotextome: 1999 The whole set of biological literature. complexes in cells. (Complexome.org) Archaeome: 2002 . All the species of archae and their (Biotextome.org) Complexomics: The omics approach research of proteins especially. (Archaeome.org) Biotextomics: The omics approach research of biotextome Complexome (Complexomics.org) in biology Archaeomics: The omics approach research of Archaeomics (Biotextomics.org) in biology Conductome: 2003. The whole set of conducting biological (Archaeomics.org) in biology Biotome: 2003 The whole set of biological design and entities in cells. (Conductome.org) Archiome: 2002 . The same as archaeome. (Archiome.org) architecture. Especially of biological networks. Contactome: 2001 The whole set of contacting atoms for all Arenayomics: The study of arenay(RNA) (Arenayomics.org) (Biotome.org) the molecules in cells. Especially proteins that are AGRON Omics: Arabidopsis Growth network integrating Biotomics: The omics approach research of biotome determined and stor PDB. (Contactome.org) omics technologies. (Biotomics.org) in biology Contactomics: The omics approach research of Contactome (Contactomics.org) in biology --B-- --C-- Cryptome: The totality of (Cryptome.org) Cryptomics: The omics approach research of cryptome Economics: The omics approach research of econome Functionome: The totality of (Functionome.org) (Cryptomics.org) in biology (Economics.org) in biology Functionomics: The omics approach research of Crystallome: The totality of (Crystallome.org) Endosomics: 2002(?) (Endosomics.org) Functionome (Functionomics.org) in biology Crystallomics: The omics approach research of crystallome Enzymome: 2000 The whole set of enzyme proteins. Functionomics: The omics approach research of functionome (Crystallomics.org) in biology (Enzymome.org) (Functionomics.org) in biology Cyanome: The totality of (Cyanome.org) Enzymomics: The omics approach research of enzymome Functome: 1998. The whole set of biologically functional Cyanomics: The omics approach research of Cyanome (Enzymomics.org) in biology entities in cells. Coined in around 1998, Jong Bhak at (Cyanomics.org) in biology Epigenome: The totality of (Epigenome.org) George Church lab. The whole set of biologically functional Cytogenomics: The omics approach research on cytogenetics Epigenomics: The omics approach research of Epigenome entities in cells. Later someone in UCL. (Functome.org) and genomics (Cytogenomics.org) in biology (Epigenomics.org) in biology Functomics: The omics approach research of Functome Cytokinomics: The omics approach research of cytokinome Epitome: The totality of (Epitome.org) (Functomics.org) in biology (Cytokinomics.org) in biology Eukaryome: 2002 The whole set of eukaryotic organisms. Cytome: The totality of (Cytome.org) (Eukaryome.org) --G-- Cytomics: The omics approach research of cytome Eukaryomics: The omics approach research of eukaryome (Cytomics.org) in biology (Eukaryomics.org) in biology Genome: The totality of (Genome.org) Cytosolome: The totality of (Cytosolome.org) Evolome: before 1997, around 1995. The whole set of Genomics: The omics approach research of Genome Cytosolomics: The omics approach research of cytosolome evolving entities in the universe. Especially proteins. (Genomics.org) in biology (Cytosolomics.org) in biology (Evolome.org) Geronome: 1996 . The whole set of gerontological proteins Evolomics: before 1997, around 1995. BiO center. and chemicals. Coined in 1996 by Jong Bhak. The whole set --D-- (Evolomics.org) of gerontological proteins and chemicals (Geronome.org) Exome: 2003 The whole set of exons. Defined by BiO Geronomics: The omics approach research of geronome Degradome: The totality of (Degradome.org) center. (Exome.org) (Geronomics.org) in biology Degradomics: The omics approach research of degradome Exomics: The omics approach research of exome Gerontogenome: The totality of (Gerontogenome.org) (Degradomics.org) in biology (Exomics.org) in biology Gerontogenomics: 1996 . Genomics approach for Develome: The totality of (Develome.org) Exonome: 2003 . The whole set of exons. (Exonome.org) gerontology. (Gerontogenomics.org) Develomics: The omics approach research of develome Exonomics: The omics approach research of exonome Geropharmacome: 1999(?) . (Geropharmacome.org) (Develomics.org) in biology (Exonomics.org) in biology Geropharmacomics: The omics
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