Download presentation
Presentation is loading. Please wait.
Published byDarcy Perry Modified over 9 years ago
1
1 The Discovery Informatics Framework Pat Rougeau President and CEO MDL Information Systems, Inc. Delivering the Integration Promise American Chemical Society Meeting San Francisco, CA March 27, 2000
2
2 Integrating informatics into the Discovery process Targets Inventory Proposals X X X Standard Test Set X X X Proof Candidates Descriptors (chem., physicochem. etc.) Methodology (algor.) Early Validation safe new effective economical Lead Synthesis Repeat And Repeat
3
3 DB Information sources for the Discovery process Journals Standard Test Set Targets Inventory Proposals X X X X X X Proof Candidates Descriptors (chem., physicochem. etc.) Methodology (algor.) Lead Synthesis Early Validation safe new effective economical DB Journals
4
4 Prioprietary information is exploding High Throughput Screening Combinatorial Chemistry Genomics Partnerships and Outsourcing Mergers
5
5 Public information is more accessible Globalized research Globalized publishing Electronic media World Wide Web Patent literature
6
6 Turn data into information assets IT infrastructure Information Application Drive out cost Drive up capability Innovate Educate Globalize Integrate Standardize Reduce costs
7
7 Turn information assets into actionable decisions & knowledge Provide workflow tools that help ensure quality data Provide access tools that give the right data at the right time Provide analysis tools that help turn information into action Capture the knowledge derived from this process for future use
8
8 Workflow tools: Assay Explorer
9
9 Access Tools A R1 OH
10
10 Analysis Tools Humans are the best decision makers Informatics must Aid the human ability to recognize patterns through easy to manipulate visualizations of data Improve UI’s to be more natural
11
11 Spotfire
12
12 Going beyond analysis to decision support A truly effective decision support environment is build on an open informatics framework to Access all of the information available, in context Visualize and analyze against all or subsets of the information Access tools for calculating and predicting properties and predicting properties based on existing data
13
13 Going beyond analysis to decision support Discover in silica predictive models Test those models against existing data Validate those models through additional screening Result: Provide new leads more quickly, with fewer discovery cycles
14
14 Interoperating informatics solutions for Discovery Targets Inventory Proposals X X X Standard Test Set X X X Proof Candidates Descriptors (chem., physicochem. etc.) Methodology (algor.) Early Validation safe new effective economical Lead Analysis CL Tools Central Lib SMART Reagent Selector Compound Warehouse Compound Warehouse Toxicity EcoPharm Visualization Assay Explorer Compound Selection
15
15 Accessing disparate data sources Beilstein DB MDL DBs Enterprise DB 3 rd Party DB’s Project DB Compound Warehouse Beilstein’s Application MDL’s Application Your Application Your Application 3 rd Party Application
16
16 Provide access to data anywhere: Compound Warehouse and LitLink BeilsteinMDL Enterprise 3 rd PartyProject 3 rd Party Native Application One query access to multiple databases Compound Warehouse LitLink Server One click access from multiple databases
17
17 Facilitating interoperability Decision Support Database Browser Procurement CW Result Drill down Query
18
18 ContentTechnology Interoperability requires software and database resources Decision Support Your Application Compound Locator Database Browser Procurement Experimental Workflow
19
Knowledge Extraction
20
20 Knowledge—what scientists create Recognizing and generalize patterns Differentiating causality from coincidence Recording conclusions in papers and reports, supported by data
21
21 Knowledge capture is key In Discovery, capturing knowledge means capturing Decisions Analysis methodology Supporting data Context (e.g., experimental protocol)
22
22 Knowledge mining today Today’s technology can help the scientist Search disparate sources Review the results Navigate between the sources èRecreate the knowledge
23
23 Knowledge extraction progress is being made Automating knowledge base creation Intelligent indexing Automatic thesaurus construction Mining the knowledge base Relevance based retrieval Natural language searching
24
24 Creative Science on a Systems Engineering Framework Creative science is ad hoc interactive intuitive Systems engineering is disciplined ordered structural
25
25 Creative Science on a Systems Engineering Framework Change is a constant Transitions require management Take into account strategy pace values culture
26
26 Link business and scientific concerns ScienceBusinessPeople
27
27 Thank You
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.