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Träfflista för sökning "L773:1477 0334 OR L773:0962 2802 srt2:(2010-2014)"

Search: L773:1477 0334 OR L773:0962 2802 > (2010-2014)

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1.
  • Norén, G. Niklas, et al. (author)
  • Shrinkage observed-to-expected ratios for robust and transparent large-scale pattern discovery
  • 2013
  • In: Statistical Methods in Medical Research. - : SAGE Publications. - 0962-2802 .- 1477-0334. ; 22:1, s. 57-69
  • Journal article (peer-reviewed)abstract
    • Large observational data sets are a great asset to better understand the effects of medicines in clinical practice and, ultimately, improve patient care. For an empirical pattern in observational data to be of practical relevance, it should represent a substantial deviation from the null model. For the purpose of identifying such deviations, statistical significance tests are inadequate, as they do not on their own distinguish the magnitude of an effect from its data support. The observed-to-expected (OE) ratio on the other hand directly measures strength of association and is an intuitive basis to identify a range of patterns related to event rates, including pairwise associations, higher order interactions and temporal associations between events over time. It is sensitive to random fluctuations for rare events with low expected counts but statistical shrinkage can protect against spurious associations. Shrinkage OE ratios provide a simple but powerful framework for large-scale pattern discovery. In this article, we outline a range of patterns that are naturally viewed in terms of OE ratios and propose a straightforward and effective statistical shrinkage transformation that can be applied to any such ratio. The proposed approach retains emphasis on the practical relevance and transparency of highlighted patterns, while protecting against spurious associations.
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2.
  • Sjolander, A (author)
  • Estimation of attributable fractions using inverse probability weighting
  • 2011
  • In: Statistical methods in medical research. - : SAGE Publications. - 1477-0334 .- 0962-2802. ; 20:4, s. 415-428
  • Journal article (peer-reviewed)abstract
    • The attributable fraction is commonly used in epidemiology to quantify the impact of an exposure on a disease. Several estimation methods have been suggested in the literature, including maximum likelihood estimation. In this article we propose an additional estimation method, based on inverse probability weighting. This method is particularly useful when a model for the exposure distibution can be well specified. We carry out a simulation study to examine the performance of the inverse probability weighted estimator, and to compare it to the maximum likelihood estimator.
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  • Result 1-2 of 2
Type of publication
journal article (2)
Type of content
peer-reviewed (2)
Author/Editor
Sjolander, A (1)
Bate, Andrew (1)
Norén, G. Niklas (1)
Hopstadius, Johan (1)
University
Stockholm University (1)
Karolinska Institutet (1)
Language
English (2)
Research subject (UKÄ/SCB)
Natural sciences (1)
Medical and Health Sciences (1)

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