Refining genetically inferred relationships using treelet covariance smoothing
Andrew Crossett, Ann B. Lee, Lambertus Klei, Bernie Devlin, Kathryn, Roeder

TL;DR
This paper introduces Treelet Covariance Smoothing, a novel multiscale method to denoise genetically inferred relationship matrices, enhancing the accuracy of relatedness estimates and heritability calculations in genetic studies.
Contribution
The paper presents a new hierarchical covariance matrix smoothing technique that improves estimates of genetic relationships, especially among distant relatives, with applications in heritability estimation.
Findings
Smoothing improves relatedness estimates in simulated data.
Application to real data yields more accurate heritability of BMI.
Method has broader applications in statistics for structured matrix regularization.
Abstract
Recent technological advances coupled with large sample sets have uncovered many factors underlying the genetic basis of traits and the predisposition to complex disease, but much is left to discover. A common thread to most genetic investigations is familial relationships. Close relatives can be identified from family records, and more distant relatives can be inferred from large panels of genetic markers. Unfortunately these empirical estimates can be noisy, especially regarding distant relatives. We propose a new method for denoising genetically - inferred relationship matrices by exploiting the underlying structure due to hierarchical groupings of correlated individuals. The approach, which we call Treelet Covariance Smoothing, employs a multiscale decomposition of covariance matrices to improve estimates of pairwise relationships. On both simulated and real data, we show that…
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