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Eliminating accidental deviations to minimize generalization error and maximize replicability: Applications in connectomics and genomics.

Authors :
Eric W Bridgeford
Shangsi Wang
Zeyi Wang
Ting Xu
Cameron Craddock
Jayanta Dey
Gregory Kiar
William Gray-Roncal
Carlo Colantuoni
Christopher Douville
Stephanie Noble
Carey E Priebe
Brian Caffo
Michael Milham
Xi-Nian Zuo
Consortium for Reliability and Reproducibility
Joshua T Vogelstein
Source :
PLoS Computational Biology, Vol 17, Iss 9, p e1009279 (2021)
Publication Year :
2021
Publisher :
Public Library of Science (PLoS), 2021.

Abstract

Replicability, the ability to replicate scientific findings, is a prerequisite for scientific discovery and clinical utility. Troublingly, we are in the midst of a replicability crisis. A key to replicability is that multiple measurements of the same item (e.g., experimental sample or clinical participant) under fixed experimental constraints are relatively similar to one another. Thus, statistics that quantify the relative contributions of accidental deviations-such as measurement error-as compared to systematic deviations-such as individual differences-are critical. We demonstrate that existing replicability statistics, such as intra-class correlation coefficient and fingerprinting, fail to adequately differentiate between accidental and systematic deviations in very simple settings. We therefore propose a novel statistic, discriminability, which quantifies the degree to which an individual's samples are relatively similar to one another, without restricting the data to be univariate, Gaussian, or even Euclidean. Using this statistic, we introduce the possibility of optimizing experimental design via increasing discriminability and prove that optimizing discriminability improves performance bounds in subsequent inference tasks. In extensive simulated and real datasets (focusing on brain imaging and demonstrating on genomics), only optimizing data discriminability improves performance on all subsequent inference tasks for each dataset. We therefore suggest that designing experiments and analyses to optimize discriminability may be a crucial step in solving the replicability crisis, and more generally, mitigating accidental measurement error.

Subjects

Subjects :
Biology (General)
QH301-705.5

Details

Language :
English
ISSN :
1553734X and 15537358
Volume :
17
Issue :
9
Database :
Directory of Open Access Journals
Journal :
PLoS Computational Biology
Publication Type :
Academic Journal
Accession number :
edsdoj.752c42dcd2e3499aba6419fe3e8c74d5
Document Type :
article
Full Text :
https://doi.org/10.1371/journal.pcbi.1009279