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Toxicity Prediction using Deep Learning

Publikation: Preprints, Working Paper und ForschungsberichteVorabpublikation

Abstract

Everyday we are exposed to various chemicals via food additives, cleaning and cosmetic products and medicines -- and some of them might be toxic. However testing the toxicity of all existing compounds by biological experiments is neither financially nor logistically feasible. Therefore the government agencies NIH, EPA and FDA launched the Tox21 Data Challenge within the "Toxicology in the 21st Century" (Tox21) initiative. The goal of this challenge was to assess the performance of computational methods in predicting the toxicity of chemical compounds. State of the art toxicity prediction methods build upon specifically-designed chemical descriptors developed over decades. Though Deep Learning is new to the field and was never applied to toxicity prediction before, it clearly outperformed all other participating methods. In this application paper we show that deep nets automatically learn features resembling well-established toxicophores. In total, our Deep Learning approach won both of the panel-challenges (nuclear receptors and stress response) as well as the overall Grand Challenge, and thereby sets a new standard in tox prediction.
OriginalspracheEnglisch
Seitenumfang10
DOIs
PublikationsstatusVeröffentlicht - März 2015

Publikationsreihe

NamearXiv.org
ISSN (Druck)2331-8422

Wissenschaftszweige

  • 303 Gesundheitswissenschaften
  • 304 Medizinische Biotechnologie
  • 304003 Gentechnik
  • 305 Andere Humanmedizin, Gesundheitswissenschaften
  • 101004 Biomathematik
  • 101018 Statistik
  • 102 Informatik
  • 102001 Artificial Intelligence
  • 102004 Bioinformatik
  • 102010 Datenbanksysteme
  • 102015 Informationssysteme
  • 102019 Machine Learning
  • 106023 Molekularbiologie
  • 106002 Biochemie
  • 106005 Bioinformatik
  • 106007 Biostatistik
  • 106041 Strukturbiologie
  • 301 Medizinisch-theoretische Wissenschaften, Pharmazie
  • 302 Klinische Medizin

JKU-Schwerpunkte

  • Computation in Informatics and Mathematics
  • Nano-, Bio- and Polymer-Systems: From Structure to Function
  • MED Allgemein
  • Versorgungsforschung
  • Klinische Altersforschung

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