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Microarrays are high-throughput and relatively inexpensive assays that can be automated to analyze large quantities of data at a time. They are used in genome-wide studies to compare gene or protein expression under two varied conditions, such as healthy and diseased states. Microarrays consist of glass or silica slides on which probe molecules are covalently attached through surface functionalization. Most commonly, the slides are prepared through the chemisorption of silanes to silica...
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In a linear calibration curve, there is a value called the calibration coefficient, denoted by 'r,' which measures the strength and the direction of association between two variables. The correlation coefficient value ranges from −1 to +1. A value of +1 indicates a perfect positive linear correlation, −1 denotes a perfect negative correlation, and 0 implies no correlation between the two variables. A positive correlation value establishes that as one variable increases, the...
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A nonlinear correlation measure with applications to gene expression data.

Yogesh M Tripathi1,2, Suneel Babu Chatla3,4, Yuan-Chin I Chang1

  • 1Institute of Statistical Science, Academia Sinica, Taipei, Taiwan.

Plos One
|June 21, 2022
PubMed
Summary
This summary is machine-generated.

Kernelized correlation (Kc) is a novel method to detect nonlinear correlations in biomedical data. Kc effectively identifies gene expression patterns, outperforming existing methods like Pearson

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Area of Science:

  • Biostatistics
  • Bioinformatics
  • Genomics

Background:

  • Nonlinear correlations are prevalent in biomedical data, particularly in gene expression across time.
  • Understanding these nonlinear relationships is crucial for biological discovery, such as in T helper (Th17) cell differentiation.

Purpose of the Study:

  • To introduce Kernelized correlation (Kc), a new statistical procedure for measuring nonlinear correlations.
  • To evaluate Kc's performance against established methods like Pearson's correlation and distance correlation.

Main Methods:

  • Kc transforms data into a high-dimensional space using a kernel function.
  • The transformed data is then analyzed using a classical correlation coefficient (e.g., Pearson's r).
  • The algorithm and R code for Kc are provided.

Main Results:

  • Kc, particularly with the RBF kernel (Kc-RBF), outperforms Pearson's r and distance correlation (dCor) in moderately noisy nonlinear data.
  • Kc successfully identified nonlinear gene correlations in Th17 cell differentiation, surpassing dCor and DESeq.
  • Kc demonstrated superior performance in estimating nonlinear correlations for gene pairs in yeast cell cycle regulation.

Conclusions:

  • Kernelized correlation (Kc) is a simple yet effective method for quantifying pairwise nonlinear correlations.
  • Kc offers advantages in detecting complex biological relationships, especially in gene expression data.
  • The findings suggest Kc as a valuable tool for biomedical data analysis and discovery.