Close
  • Latest News
  • Artificial Intelligence
  • Video
  • Big Data and Analytics
  • Cloud
  • Networking
  • Cybersecurity
  • Applications
  • IT Management
  • Storage
  • Sponsored
  • Mobile
  • Small Business
  • Development
  • Database
  • Servers
  • Android
  • Apple
  • Innovation
  • Blogs
  • PC Hardware
  • Reviews
  • Search Engines
  • Virtualization
Read Down
Sign in
Close
Welcome!Log into your account
Forgot your password?
Read Down
Password recovery
Recover your password
Close
Search
Logo
Subscribe
Logo
  • Latest News
  • Artificial Intelligence
  • Video
  • Big Data and Analytics
  • Cloud
  • Networking
  • Cybersecurity
  • Applications
  • IT Management
  • Storage
  • Sponsored
  • Mobile
  • Small Business
  • Development
  • Database
  • Servers
  • Android
  • Apple
  • Innovation
  • Blogs
  • PC Hardware
  • Reviews
  • Search Engines
  • Virtualization
More
    Subscribe
    Home Applications
    • Applications

    Adaptive Learning Speeds New Drug-Screening Software

    Written by

    M.L. Baker
    Published April 15, 2004
    Share
    Facebook
    Twitter
    Linkedin

      eWEEK content and product recommendations are editorially independent. We may make money when you click on links to our partners. Learn More.

      Researchers at Rensselaer Polytechnic Institute this month added a software program that uses adaptive learning to the roster of programs available for assessing molecules properties.

      While pharmaceutical companies already have software that searches through databases to screen for drugs for a given therapy, the new software works much faster by using neural networks and adaptive-learning methods to model compounds and predict their behavior.

      Drug-discovery companies all employ computational tools to aid in finding leads for drug development. But scientists at Rensselaer in Troy, N.Y., say the move into predictive modeling marks a shift away from laboratories assays of mathematical, computer-run models.

      Laboratories with the most high-throughput techniques can test a few hundred thousand molecules a day; existing computer programs can process just fewer than a million.

      But the Rensselaer software can crunch more than 10 million molecules a day, according to High Performance Computing. The software looks for similarities between molecules in a given database and those with known therapeutic potential. The advantage is chiefly amount and type of chemical information that is available through this method; for a method that produces this much chemical information, the speed is quite fast.

      The software comes from a National Science Foundation-funded project called Drug Discovery and Semi-Supervised Learning (DDASSL, pronounced “dazzle”). Curt Breneman, a chemistry professor; Kristin Bennett, a mathematics associate professor; senior research associate N. Sukumar; and Mark Embrechts, an associate professor in decision sciences and engineering systems, worked together to develop the software.

      Computer testing is less expensive and faster than testing actual molecules, and allows workers to pare down the number of tests that need to be performed. Dr. Breneman says, “That approach helps to focus more attention on molecules with the highest probability of success, and also allows dead-ends to be identified before many resources are expended on them. The ultimate pay-off of this methodology may be that it can help to speed up the development of new drugs.”

      Though several software programs already exist to assess compounds in silico, they can be slow, not particularly predictive or both. The Rensselaer software uses two shortcuts to search large molecular databases rapidly. First, the software renders a description of both a molecules shape and the electrical properties on its surface as a set of numbers. These number sets can be processed rapidly by a computer.

      Then, the software searches for common chemical properties associated with molecules for a particular therapy. It does not use the method of so-called docking software, which looks at the interaction of a molecule with a particular protein.

      Instead, it uses a pattern-recognition process called kernel learning. The software is presented with a small set of molecules with the right features, which are analyzed as described above. Then, the software churns through a molecular database, looking for promising compounds.

      “Conventional techniques are not truly predictive and dont work,” Bennett said. “So, we borrowed pattern-recognition techniques already used in the pharmaceutical industry and added algorithms based on support vector machines. That gives us a technique to predict which molecules are promising.” Projects are under way to further evaluate how predictive the new software is.

      Pattern-recognition techniques are rapidly becoming more sophisticated and more capable of using data from laboratory experiments. In unrelated work, researchers at the Harbor-ULCA Medical Center used computational methods and proteomics to find a structure that is common to otherwise diverse and distinct antimicrobial peptides.

      In a recent review in Science magazine, Yale University chemistry professor William Jorgensen stressed that no single computer program will be sufficient to find drug candidates and that some of the slower processes yield absolutely crucial information

      “There is not going to be a voilà moment at the computer terminal,” he wrote. “Instead, there is systematic use of wide-ranging computational tools to facilitate and enhance the drug-discovery process.”

      Editors Note: This story was updated to include additional information and comments from a discussion with Curt Breneman.

      /zimages/1/28571.gifCheck out eWEEK.coms Enterprise Applications Center at http://enterpriseapps.eweek.com for the latest news, reviews, analysis and opinion about productivity and business solutions. Be sure to add our eWEEK.com enterprise applications news feed to your RSS newsreader or My Yahoo page: /zimages/1/19420.gif http://us.i1.yimg.com/us.yimg.com/i/us/my/addtomyyahoo2.gif

      M.L. Baker
      M.L. Baker
      Monya Baker is co-editor of CIOInsight.com's Health Care Center. She has written for publications including the journal Nature Biotechnology, the Acumen Journal of Sciences and the American Medical Writers Association, among others, and has worked as a consultant with biotechnology companies.

      Get the Free Newsletter!

      Subscribe to Daily Tech Insider for top news, trends & analysis

      Get the Free Newsletter!

      Subscribe to Daily Tech Insider for top news, trends & analysis

      MOST POPULAR ARTICLES

      Artificial Intelligence

      9 Best AI 3D Generators You Need...

      Sam Rinko - June 25, 2024 0
      AI 3D Generators are powerful tools for many different industries. Discover the best AI 3D Generators, and learn which is best for your specific use case.
      Read more
      Cloud

      RingCentral Expands Its Collaboration Platform

      Zeus Kerravala - November 22, 2023 0
      RingCentral adds AI-enabled contact center and hybrid event products to its suite of collaboration services.
      Read more
      Artificial Intelligence

      8 Best AI Data Analytics Software &...

      Aminu Abdullahi - January 18, 2024 0
      Learn the top AI data analytics software to use. Compare AI data analytics solutions & features to make the best choice for your business.
      Read more
      Latest News

      Zeus Kerravala on Networking: Multicloud, 5G, and...

      James Maguire - December 16, 2022 0
      I spoke with Zeus Kerravala, industry analyst at ZK Research, about the rapid changes in enterprise networking, as tech advances and digital transformation prompt...
      Read more
      Video

      Datadog President Amit Agarwal on Trends in...

      James Maguire - November 11, 2022 0
      I spoke with Amit Agarwal, President of Datadog, about infrastructure observability, from current trends to key challenges to the future of this rapidly growing...
      Read more
      Logo

      eWeek has the latest technology news and analysis, buying guides, and product reviews for IT professionals and technology buyers. The site’s focus is on innovative solutions and covering in-depth technical content. eWeek stays on the cutting edge of technology news and IT trends through interviews and expert analysis. Gain insight from top innovators and thought leaders in the fields of IT, business, enterprise software, startups, and more.

      Facebook
      Linkedin
      RSS
      Twitter
      Youtube

      Advertisers

      Advertise with TechnologyAdvice on eWeek and our other IT-focused platforms.

      Advertise with Us

      Menu

      • About eWeek
      • Subscribe to our Newsletter
      • Latest News

      Our Brands

      • Privacy Policy
      • Terms
      • About
      • Contact
      • Advertise
      • Sitemap
      • California – Do Not Sell My Information

      Property of TechnologyAdvice.
      © 2024 TechnologyAdvice. All Rights Reserved

      Advertiser Disclosure: Some of the products that appear on this site are from companies from which TechnologyAdvice receives compensation. This compensation may impact how and where products appear on this site including, for example, the order in which they appear. TechnologyAdvice does not include all companies or all types of products available in the marketplace.