Information mining over heterogeneous and high-dimensional time-series data in clinical trials databases.

IEEE Trans Inf Technol Biomed

Department of Computer Science and Engineering, The Ohio State University, Columbus, OH 43210, USA.

Published: April 2006

AI Article Synopsis

  • The analysis of clinical trial data requires new approaches due to the challenges posed by heterogeneous and high dimensional time series data, as traditional methods often assume uniformity and equal length in datasets, which is rarely the case in clinical research.
  • The proposed solution involves a two-step data mining approach: first, applying algorithms to homogeneous subsets of the data, and second, identifying common and distinct patterns across the subsets to enhance understanding.
  • This method includes using techniques like frequent itemset mining and innovative distance metrics for clustering, allowing researchers to discover known and novel correlations among analytes in blood, ultimately aiding in feature selection to model normal health states in clinical trials.

Article Abstract

An effective analysis of clinical trials data involves analyzing different types of data such as heterogeneous and high dimensional time series data. The current time series analysis methods generally assume that the series at hand have sufficient length to apply statistical techniques to them. Other ideal case assumptions are that data are collected in equal length intervals, and while comparing time series, the lengths are usually expected to be equal to each other. However, these assumptions are not valid for many real data sets, especially for the clinical trials data sets. An addition, the data sources are different from each other, the data are heterogeneous, and the sensitivity of the experiments varies by the source. Approaches for mining time series data need to be revisited, keeping the wide range of requirements in mind. In this paper, we propose a novel approach for information mining that involves two major steps: applying a data mining algorithm over homogeneous subsets of data, and identifying common or distinct patterns over the information gathered in the first step. Our approach is implemented specifically for heterogeneous and high dimensional time series clinical trials data. Using this framework, we propose a new way of utilizing frequent itemset mining, as well as clustering and declustering techniques with novel distance metrics for measuring similarity between time series data. By clustering the data, we find groups of analytes (substances in blood) that are most strongly correlated. Most of these relationships already known are verified by the clinical panels, and, in addition, we identify novel groups that need further biomedical analysis. A slight modification to our algorithm results an effective declustering of high dimensional time series data, which is then used for "feature selection." Using industry-sponsored clinical trials data sets, we are able to identify a small set of analytes that effectively models the state of normal health.

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Source
http://dx.doi.org/10.1109/titb.2005.859885DOI Listing

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