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Similarity Queries for Temporal Toxicogenomic Expression Profiles

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  • Adam A Smith
  • Aaron Vollrath
  • Christopher A Bradfield
  • Mark Craven

Abstract

We present an approach for answering similarity queries about gene expression time series that is motivated by the task of characterizing the potential toxicity of various chemicals. Our approach involves two key aspects. First, our method employs a novel alignment algorithm based on time warping. Our time warping algorithm has several advantages over previous approaches. It allows the user to impose fairly strong biases on the form that the alignments can take, and it permits a type of local alignment in which the entirety of only one series has to be aligned. Second, our method employs a relaxed spline interpolation to predict expression responses for unmeasured time points, such that the spline does not necessarily exactly fit every observed point. We evaluate our approach using expression time series from the Edge toxicology database. Our experiments show the value of using spline representations for sparse time series. More significantly, they show that our time warping method provides more accurate alignments and classifications than previous standard alignment methods for time series.Author Summary: We are developing an approach to characterize chemicals and environmental conditions by comparing their effects on gene expression with those of well characterized treatments. We evaluate our approach in the context of the Edge (Environment, Drugs, and Gene Expression) database, which contains microarray observations collected from mouse liver tissue over the days following exposure to a variety of treatments. Our approach takes as input an unknown query series, consisting of several gene-expression measurements over time. It then picks out treatments from a database of known treatments that exhibit the most similar expression responses. This task is difficult because the data tends to be noisy, sparse in time, and measured at irregular intervals. We start by reconstructing the unobserved parts of the series using splines. We then align the given query to each database series so that the similarities in their expression responses are maximized. Our approach uses dynamic programming to find the best alignment of each pair of series. Unlike other methods, our approach allows alignments in which the end of one of the two series remains unaligned, if it appears that one series shows more of the expression response than the other. We finally return the best match(es) and alignment(s), in the hope that they will help with the query's eventual characterization and addition to the database.

Suggested Citation

  • Adam A Smith & Aaron Vollrath & Christopher A Bradfield & Mark Craven, 2008. "Similarity Queries for Temporal Toxicogenomic Expression Profiles," PLOS Computational Biology, Public Library of Science, vol. 4(7), pages 1-13, July.
  • Handle: RePEc:plo:pcbi00:1000116
    DOI: 10.1371/journal.pcbi.1000116
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    Cited by:

    1. Qi Dai & Lihua Li & Xiaoqing Liu & Yuhua Yao & Fukun Zhao & Michael Zhang, 2011. "Integrating Overlapping Structures and Background Information of Words Significantly Improves Biological Sequence Comparison," PLOS ONE, Public Library of Science, vol. 6(11), pages 1-10, November.

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