A sorting statistic with application in neurological magnetic resonance imaging of autism

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Abstract

Effect size refers to the assessment of the extent of differences between two groups of samples on a single measurement. Assessing effect size in medical research is typically accomplished with Cohen's d statistic. Cohen's d statistic assumes that average values are good estimators of the position of a distribution of numbers and also assumes Gaussian (or bell-shaped) underlying data distributions. In this paper, we present an alternative evaluative statistic that can quantify differences between two data distributions in a manner that is similar to traditional effect size calculations; however, the proposed approach avoids making assumptions regarding the shape of the underlying data distribution. The proposed sorting statistic is compared with Cohen's d statistic and is demonstrated to be capable of identifying feature measurements of potential interest for which Cohen's d statistic implies the measurement would be of little use. This proposed sorting statistic has been evaluated on a large clinical autism dataset from Boston Children's Hospital, Harvard Medical School, demonstrating that it can potentially play a constructive role in future healthcare technologies.

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Levman, J., Takahashi, E., Forgeron, C., MacDonald, P., Stewart, N., Lim, A., & Martel, A. (2018). A sorting statistic with application in neurological magnetic resonance imaging of autism. Journal of Healthcare Engineering, 2018. https://doi.org/10.1155/2018/8039075

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