| Literature DB >> 35776730 |
Alessandra Zimmermann1, Richard Klavans2, Heather M Offhaus3, Teri A Grieb3, Caleb Smith3.
Abstract
PURPOSE: The analysis of existing institutional research proposal databases can provide novel insights into science funding parity. The purpose of this study was to analyze the relationship between race/ethnicity and extramural research proposal and award rates across a medical school faculty and to determine whether there was evidence that researchers changed their submission strategies because of differential inequities across submission categories.Entities:
Mesh:
Year: 2022 PMID: 35776730 PMCID: PMC9249172 DOI: 10.1371/journal.pone.0270612
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.752
UMMS racial/ethnic groups (2010–2022).
| Racial/Ethnic Groups | # Proposals | % Proposals | # PIs | % PIs | |
|---|---|---|---|---|---|
|
| 9,389 | 66% | 1,321 | 66% | |
|
| 3,880 | 27% | 537 | 27% | |
|
| 505 | 04% | 71 | 04% |
|
|
| 245 | 02% | 50 | 02% | |
|
| 130 | 01% | 17 | 01% | |
|
| 106 | 01% | 17 | 01% |
|
|
| 8 | 00% | 1 | 00% | |
|
|
|
|
|
|
Percentages may not sum to 100 due to rounding.
Assignment of UMMS sponsor types into four submission categories (2010–2022).
| UMMS Sponsor Type | # proposals | % | Submission Category | # proposals | % |
|---|---|---|---|---|---|
|
| 8,393 | 59% |
| 4,286 | 30% |
|
| 4,107 | 29% | |||
|
| 1,102 | 08% |
| 1,102 | 08% |
|
| 30 | 00% |
| 4,745 | 33% |
|
| 750 | 05% | |||
|
| 2,263 | 16% | |||
|
| 1,015 | 07% | |||
|
| 687 | 05% | |||
|
| 8 | 00% | (excluded from our analysis due to insufficient sample size) | ||
|
| 15 | 00% | |||
|
|
|
| |||
Percentages may not sum to 100 due to rounding.
The data were analyzed using R version 4.1.3 for Windows (The R Foundation, Vienna, Austria).
Number of UMMS awards by racial/ethnic group and submission category (2010–2022).
| Racial/Ethnic Group | R01/Equivalent | Other Federal | Industry | Non Profit | Total | |||||
|---|---|---|---|---|---|---|---|---|---|---|
|
| 15 | 01% | 12 | 01% | 11 | 01% | 33 | 02% | 71 | 01% |
|
| 53 | 04% | 43 | 04% | 25 | 03% | 78 | 05% | 199 | 04% |
|
| 341 | 27% | 261 | 22% | 197 | 25% | 399 | 24% | 1,198 | 25% |
|
| 842 | 67% | 881 | 74% | 555 | 70% | 1,124 | 69% | 3,402 | 70% |
|
| 1,251 | 1,197 | 788 | 1,634 | 4,870 | |||||
X2 (9, N = 4,870) = 21.46, p = .010. Percentages may not sum to 100 due to rounding.
Fig 1Observed award rate.
Number of UMMS submissions by racial/ethnic group and submission category (2010–2022).
| Racial/Ethnic Group | R01/Equivalent | Other Federal | Industry | Non Profit | Total | |||||
|---|---|---|---|---|---|---|---|---|---|---|
|
| 64 | 02% | 62 | 02% | 18 | 02% | 100 | 02% | 244 | 02% |
|
| 142 | 03% | 151 | 04% | 33 | 03% | 179 | 04% | 505 | 04% |
|
| 1,209 | 29% | 1,092 | 27% | 273 | 25% | 1,303 | 28% | 3,877 | 28% |
|
| 2,827 | 67% | 2,714 | 68% | 763 | 70% | 3,066 | 66% | 9,370 | 67% |
|
| 4,242 | 4,019 | 1,087 | 4,648 | 13,996 | |||||
X2 (9, N = 13,996) = 16.39, p = .059. Percentages may not sum to 100 due to rounding.
Fig 2Observed submission rate.