4.6 Article

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

期刊

PLOS COMPUTATIONAL BIOLOGY
卷 17, 期 9, 页码 -

出版社

PUBLIC LIBRARY SCIENCE
DOI: 10.1371/journal.pcbi.1009279

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资金

  1. National Science Foundation NEURONEX award [DMS-1707298]
  2. National Institute of Health [1R01MH12048201]
  3. Defense Advanced Research Projects Agency's (DARPA) SIMPLEX program through SPAWAR [N66001-15-C-4041]
  4. Microsoft Research
  5. National Basic Research (973) Program [2015CB351702]
  6. Natural Science Foundation of China [81471740, 81220108014]
  7. China -Netherlands CAS-NWO Programme [153111KYSB20160020]
  8. Beijing Municipal Science and Tech Commission [Z161100002616023, Z171100000117012]
  9. Start-up Funds for Leading Talents at Beijing Normal University
  10. Major Project of National Social Science Foundation of China [20ZD296]
  11. National Basic Science Data Center Chinese Data-sharing Warehouse for In-vivo Imaging Brain [NBSDC-DB-15]
  12. Guangxi BaGui Scholarship [201621]

向作者/读者索取更多资源

This article emphasizes the importance of replicability in scientific research and the inadequacy of existing replicability statistics. It introduces a new statistic called discriminability and proves that optimizing discriminability can improve the performance of subsequent inference tasks. The suggestion is to design experiments and analyses to optimize discriminability as a crucial step in solving the replicability crisis and mitigating accidental measurement error.
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. Author summaryIn recent decades, the size and complexity of data has grown exponentially. Unfortunately, the increased scale of modern datasets brings many new challenges. At present, we are in the midst of a replicability crisis, in which scientific discoveries fail to replicate to new datasets. Difficulties in the measurement procedure and measurement processing pipelines coupled with the influx of complex high-resolution measurements, we believe, are at the core of the replicability crisis. If measurements themselves are not replicable, what hope can we have that we will be able to use the measurements for replicable scientific findings? We introduce the discriminability statistic, which quantifies how discriminable measurements are from one another, without limitations on the structure of the underlying measurements. We prove that discriminable strategies tend to be strategies which provide better accuracy on downstream scientific questions. We demonstrate the utility of discriminability over competing approaches in this context on two disparate datasets from both neuroimaging and genomics. Together, we believe these results suggest the value of designing experimental protocols and analysis procedures which optimize the discriminability.

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