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The Definition and Measurement of Heterogeneity

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Date 2020 Aug 26
PMID 32839448
Citations 17
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Abstract

Heterogeneity is an important concept in psychiatric research and science more broadly. It negatively impacts effect size estimates under case-control paradigms, and it exposes important flaws in our existing categorical nosology. Yet, our field has no precise definition of heterogeneity proper. We tend to quantify heterogeneity by measuring associated correlates such as entropy or variance: practices which are akin to accepting the radius of a sphere as a measure of its volume. Under a definition of heterogeneity as the degree to which a system deviates from perfect conformity, this paper argues that its proper measure roughly corresponds to the size of a system's event/sample space, and has units known as numbers equivalent. We arrive at this conclusion through focused review of more than 100 years of (re)discoveries of indices by ecologists, economists, statistical physicists, and others. In parallel, we review psychiatric approaches for quantifying heterogeneity, including but not limited to studies of symptom heterogeneity, microbiome biodiversity, cluster-counting, and time-series analyses. We argue that using numbers equivalent heterogeneity measures could improve the interpretability and synthesis of psychiatric research on heterogeneity. However, significant limitations must be overcome for these measures-largely developed for economic and ecological research-to be useful in modern translational psychiatric science.

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References
1.
Doshi-Velez F, Ge Y, Kohane I . Comorbidity clusters in autism spectrum disorders: an electronic health record time-series analysis. Pediatrics. 2013; 133(1):e54-63. PMC: 3876178. DOI: 10.1542/peds.2013-0819. View

2.
Schjerning O, Pottegard A, Damkier P, Rosenzweig M, Nielsen J . Use of Pregabalin - A Nationwide Pharmacoepidemiological Drug Utilization Study with Focus on Abuse Potential. Pharmacopsychiatry. 2016; 49(4):155-61. DOI: 10.1055/s-0042-101868. View

3.
Stewart S, Rosario M, Brown T, Carter A, Leckman J, Sukhodolsky D . Principal components analysis of obsessive-compulsive disorder symptoms in children and adolescents. Biol Psychiatry. 2006; 61(3):285-91. DOI: 10.1016/j.biopsych.2006.08.040. View

4.
Kendler K, Karkowski L, Walsh D . The structure of psychosis: latent class analysis of probands from the Roscommon Family Study. Arch Gen Psychiatry. 1998; 55(6):492-9. DOI: 10.1001/archpsyc.55.6.492. View

5.
Veatch O, Veenstra-VanderWeele J, Potter M, Pericak-Vance M, Haines J . Genetically meaningful phenotypic subgroups in autism spectrum disorders. Genes Brain Behav. 2013; 13(3):276-85. DOI: 10.1111/gbb.12117. View