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PIONEER HI-BRED INTERNATIONAL, INC. Plant Ontologies – Industrial Science meets Renaissance Concepts Dave Selinger Computational Biologist Pioneer Hi-Bred, DuPont Agriculture and Nutrition Outline What is the nature of the problem that a Plant Anatomy Ontology can solve? What is an Ontology? How do you make a Plant Anatomy Ontology? Does it really solve the problem? RESEARCH Industrial Science Not science in industry, but the industrialization of data creation, i.e. the ‘omics revolutions. High-throughput data Sequencing Expression Medium-throughput data Proteomics Metabolomics Low-throughput data Gene/protein function Phenotype RESEARCH The double-edged sword of Industrial Science Industrial science means lots of cheap data Sequencing << $0.01/base $10,000 prokaryotic genomes are reality $10,000 eukaryotic genomes will be reality in the next five years Expression <$0.50/gene And much of this data is available for free after it is produced! Lots of data means that you can’t sit down with your lab notebook and analyze the data by hand. Databases, software for searching and comparing Whole new areas of research devoted to finding meaningful patterns in lots of data. RESEARCH Organizing information Information is not knowledge. But knowledge can be acquired from information. But only with a lot of effort, see third law of thermodynamics Central challenge with Industrial science is organizing the information. The organization of the information determines what you can discover. Experimental design Good design will produce a contrast that will support or refute a hypothesis. Statistical rigor – – Is the signal higher than the noise? – How conclusive will the discoveries be? RESEARCH Context How do we compare across experiments? Not too hard if one person did all the experiments and kept careful notes. If multiple people, then we need to define what was done, what the analysis was, and what the sample was. What was done – e.g. MIAME standard for describing the technical details of an expression experiment. Analysis – e.g. ANOVA, SAM, etc. Sample – ? RESEARCH Renaissance concepts (historically Enlightenment) Things can be systematically described and classified Linneaus’ problem is much the same as the sample description problem Organisms - Linneaus, Species Plantarum, 1758 Variable specificity California Laurel or Oregon Myrtlewood? Kernel or seed? In addition, a term like kernel assumes all parts, but this assumption could be wrong RESEARCH Ontologies to the rescue? Ontology = the study of being (Philosophy) The specification of a conceptualization of a domain of interest (Computer Science) Original and continuing computer science interest was Artificial Intelligence. How can a computer make inferences? Need to define meanings – can for example. Structure and relationships in an ontology allow a computer to make inferences. – Mary is the mother of Bill. Is Mary a parent of Bill? – IsA Mother Parent Parts of an ontology Concepts -> objects, real and abstract, processes, functions Partitions -> rules that can classify concepts Attributes -> properties of a concept, can have individual and class attributes Relationships -> is a, part of RESEARCH Does an ontology make sense? The value of ontologies is a current debate among information scientists. One group advocates that ontologies are necessary for computers to understand content. Others argue that ontologies are not needed and are not practical Semantic web -> an extension of the current HTML/XML based web to something with ontological inference Complexity is ok and just use a Google like search to connect concepts. However, some problems, like organismal classification and the periodic table are very amenable to an ontological approach. Formal categories and stable entities Expert users and catalogers RESEARCH Forms of ontologies Ontologies can take several forms (data structures) Controlled vocabulary (List) Terms but no relationships Enforces systematic naming Hierarchy (tree structure) => Taxonomy Terms and “is a” relationship Children are unique and have a single parent Directed acyclic graph => Gene Ontology Multiple relationship types Children with multiple parents RESEARCH Features of Trees Because each child node has only one parent There is an unambiguous path to the root from each leaf Child nodes can be easily grouped at any level of the structure Trees can express only one organizing principle Work well for taxonomy (at least eukaryotic taxonomy) Organizing principle is classification by similarity All terms have an “is a” relationship to the next level term Organisms were classified before evolution was hypothesized, but the classification matches the evolutionary relationships Similar example would be the periodic table of the elements Classification can facilitate discovery of underlying principles RESEARCH A tree based Anatomy Ontology Developed by Winston Hide’s group at SANBI and Electric Genetics Single concept, orthogonal trees Cells Tissues Organs Disease state Each tree is independent, but has related dimensions describing a sample Set operations, intersection or union, between trees allows specific queries. RESEARCH Features of DAGs A tree is a special case of the DAG class Children can have multiple parents. Allows multiple classifications of the same child E.g. a guard cell is both part of a leaf and is an epidermal cell. Allows for more than a binary classification of a concept If this results from poor definition of the concept, then it is not good. Multiple parentage fits a “normalized” data model Like a normalized relational database, a DAG can minimize duplication of objects (concepts). RESEARCH Sample DAG Root Cooking Spices – Bay leaf • Laurel nobilis • Umbellularia californica (California laurel) Trees Lauraceae – Laurel • Laurel nobilis – Umbellularia • Umbellularia californica RESEARCH Constructing the Pioneer Plant Ontology Decided to produce a DAG Used DAGeditor (editor developed for GO) Developed our own web based viewing tool AmiGO was too complicated to re-use. Other public browsers did not have the functionality we wanted. Decided to focus on Corn and Soybeans Used Kiesselbach’s 1949 Monograph on Corn structure and reproduction as the primary source. Used Iowa State University Ag Extension publications for the development stages of corn and soybeans Added information from a botany textbook to cover missing terms from soybean. RESEARCH To collaborate or not to collaborate? Advantage of just using the Pioneer Ontology was that it served our needs and was focused on corn and soybeans, our major crops. Disadvantage was that it was not synchronized to the public We would not be able to easily integrate public tissue classifications to ours We would not be able to easily take advantage of improvements to the public ontology Presumably the public ontology would be more “botanically correct” than ours. RESEARCH Plant Ontology Consortium Focused on model organisms Arabidopsis Rice and other grasses with the rice terms (corn). Used a DAG approach Multiple concepts Structure (cells, tissues, sporophyte and gametophyte) Development Used DAGeditor and other GO approaches Most terms have multiple parents Same software and data structures as GO RESEARCH Plant Ontology Domain = Plant anatomy and development Concepts Plant parts (leaf, root, flower, meristem, etc.) Life cycle stages (sporophyte, gametophyte) Developmental stages (V1, flowering, R1, etc.) Relationships between concepts “A kind of” (Is a) – A prop root is a root “A part of” (part of) – A root cap is part of a root In addition, for plant anatomy a “develops from” relation is needed – For example the relationship between stomatal guard cells and the guard mother cell – Guard cells develop from guard mother cells RESEARCH Adapting the POC ontology for Pioneer’s needs Problem is that it has many more terms than required for our experiments Some terms describe tissues or cells that are not practical to collect (e.g. antipodal cells) Some terms describe parts not found in corn (e.g. nectary) Another problem is that we collect samples that are convenient subdivisions of structures Tip and base of an immature ear. Each differs from a whole immature ear in terms of what it contains. Basal endosperm – morphologically distinct from starchy endosperm, but not found in the ontology RESEARCH Our current solution Add additional terms to the POC ontology Use a different id system easily distinguished from POC terms will not be overwritten by on-going public curation efforts. Label experiments with the terms from the ontology. Create a Custom ontology Query the whole ontology with the terms used in the labeling and keep only terms that are used to label an experimental sample Parent terms of used terms. Can be readily rebuilt if new experiments or terms are added. RESEARCH What can you do with the ontology? Provides a grouping mechanism Summarize expression for a tissue Compare expression between tissues Make complex queries that involve multiple tissues Provides a systematic label for annotating genes Where is the gene expressed? Query annotation of genes based on terms Provides a description of the complexity of tissue samples Leaf sample is composed of multiple cell types with different roles Cell types can be shared between tissues or structures RESEARCH Comparing by tissue The ontology provides the groupings, but how to summarize Mean? Median? Maximum value? Significance of differences? Each group will be much more variable than a set of samples from a controlled experiment. But you may be able to eliminate the inevitable false discoveries that appear when looking at large numbers of genes. RESEARCH Annotating genes This is the primary use for TAIR and Gramene Potentially label most genes with tissues of expression However, need to differentiate presence with preferential expression. A gene may be present in many tissues, but highly expressed in a few Another gene may be present in the same tissues, but similarly expressed in all of them. – Might need to precompute and indicate which tissues the gene is significantly preferentially expressed in. – Might be able to use the RMS differences between expression in each tissue as a measure of consistency. RESEARCH Complexity Genes may appear to differ between tissues for trivial reasons Example: Gene appears to be preferentially expressed in stem versus leaf tissue. If gene is really specific to vascular tissue and stem has more… Gene is expressed late in development, adjacent leaves and stems may differ in development. Ontology can guide further experiments Compare vascular and non-vascular tissue from both leaf and stem. Compare multiple leaf and stem samples from different positions (developmental stages). RESEARCH Conclusions The Plant Ontology classifies experiments and genes based on anatomical and developmental concepts. Now that we have significant data, can we, like Darwin, discern the underlying mechanisms for how anatomical and developmental differences occur. The Plant Ontology will be successful and used long term if it facilitates these kinds of investigations. RESEARCH Acknowledgements Pioneer Henry Mirsky Lane Arthur Bob Merrill POC Doreen Katica Ware (Gramene) Ilic (TAIR) RESEARCH