| Literature DB >> 30194523 |
Gary An1.
Abstract
The "Crisis of Reproducibility" has received considerable attention both within the scientific community and without. While factors associated with scientific culture and practical practice are most often invoked, I propose that the Crisis of Reproducibility is ultimately a failure of generalization with a fundamental scientific basis in the methods used for biomedical research. The Denominator Problem describes how limitations intrinsic to the two primary approaches of biomedical research, clinical studies and preclinical experimental biology, lead to an inability to effectively characterize the full extent of biological heterogeneity, which compromises the task of generalizing acquired knowledge. Drawing on the example of the unifying role of theory in the physical sciences, I propose that multi-scale mathematical and dynamic computational models, when mapped to the modular structure of biological systems, can serve a unifying role as formal representations of what is conserved and similar from one biological context to another. This ability to explicitly describe the generation of heterogeneity from similarity addresses the Denominator Problem and provides a scientific response to the Crisis of Reproducibility.Entities:
Keywords: Crisis of Reproducibility; Multi-scale models
Mesh:
Year: 2018 PMID: 30194523 PMCID: PMC6245013 DOI: 10.1007/s11538-018-0497-0
Source DB: PubMed Journal: Bull Math Biol ISSN: 0092-8240 Impact factor: 1.758
Fig. 1Depiction of the Denominator Problem: the relationship between possible behaviors of a biological system () with a smaller space of empirical sampling () and smaller sets examined by “good” experiments ( and ). In addition to their lack of coverage, , and do not reproduce the shape of . Their inability to characterize is the Denominator Problem
Fig. 2Role of MSMs in determining what is similar across biological instances. Since biological objects are opaque, the injective mapping across them is uncertain (upper row). However, mappings between in silico analogs/modules are explicit injections, and since they are transparent (Proper Subsets = PS) the mapping across modules is explicit and bijective (or *partially bijective)
Fig. 3Depiction of the ability of MSMs to more completely address the Denominator Problem. (the region enclosed by the dashed line) represents the potential unifying descriptive capacity offered by computational MSMs serving as surrogates for the real system. Note that remains an approximation of , that will improve with iterative refinement over time (→ )