The Effect of Two Interventions to Increase Breast Cancer Screening in Rural Women
Abstract
:Simple Summary
Abstract
1. Introduction
2. Materials and Methods
2.1. Sample
2.2. Interventions
2.3. Measures
2.4. Statistical Approach
3. Results
4. Discussion
5. Strengths
6. Limitations
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Characteristic | Overall N = 402 1 | Usual Care N = 83 1 | DVD N = 157 1 | DVD/PN N = 162 1 |
---|---|---|---|---|
Outside Guidelines For: | ||||
All 3 tests | 186 (46%) | 37 (45%) | 75 (48%) | 74 (46%) |
Mammogram & CRC | 89 (22%) | 18 (22%) | 34 (22%) | 37 (23%) |
Mammogram & cervical cancer | 68 (17%) | 15 (18%) | 26 (17%) | 27 (17%) |
Mammogram only | 59 (15%) | 13 (16%) | 22 (14%) | 24 (15%) |
Age | 58.2 (6.1) | 58.7 (6.0) | 58.0 (6.2) | 58.1 (6.0) |
50–54 | 140 (35%) | 25 (30%) | 55 (35%) | 60 (37%) |
55–59 | 109 (27%) | 21 (25%) | 49 (31%) | 39 (24%) |
60–64 | 82 (20%) | 21 (25%) | 27 (17%) | 34 (21%) |
65+ | 71 (18%) | 16 (19%) | 26 (17%) | 29 (18%) |
State | ||||
Indiana | 168 (42%) | 36 (43%) | 67 (43%) | 65 (40%) |
Ohio | 234 (58%) | 47 (57%) | 90 (57%) | 97 (60%) |
Education | ||||
HS/GED or less | 69 (17%) | 17 (20%) | 26 (17%) | 26 (16%) |
Some college or AS | 154 (38%) | 29 (35%) | 64 (41%) | 61 (38%) |
BS/BA/AB/BSN | 108 (27%) | 24 (29%) | 41 (26%) | 43 (27%) |
MS or more | 71 (18%) | 13 (16%) | 26 (17%) | 32 (20%) |
Income | ||||
<USD 40 k | 80 (20%) | 22 (27%) | 33 (21%) | 25 (15%) |
USD 40k–USD 79,999 | 159 (40%) | 27 (33%) | 65 (41%) | 67 (41%) |
USD 80 k + | 150 (37%) | 28 (34%) | 58 (37%) | 64 (40%) |
Missing | 13 (3.2%) | 6 (7.2%) | 1 (0.6%) | 6 (3.7%) |
Marital Status | ||||
Married/living as married | 303 (76%) | 62 (76%) | 120 (76%) | 121 (75%) |
Divorced/Widowed/Separated | 86 (21%) | 19 (23%) | 33 (21%) | 34 (21%) |
Never married | 12 (3.0%) | 1 (1.2%) | 4 (2.5%) | 7 (4.3%) |
Insurance Status | ||||
Private only | 267 (67%) | 57 (69%) | 101 (65%) | 109 (67%) |
No insurance | 37 (9.2%) | 10 (12%) | 17 (11%) | 10 (6.2%) |
Public only | 43 (11%) | 9 (11%) | 16 (10%) | 18 (11%) |
Public and private | 54 (13%) | 7 (8.4%) | 22 (14%) | 25 (15%) |
White | 391 (97%) | 80 (96%) | 156 (99%) | 155 (96%) |
Non-White | 11 (2.7%) | 3 (3.6%) | 1 (0.6%) | 7 (4.3%) |
Household Financial Situation | ||||
Has enough money for special things | 231 (58%) | 46 (55%) | 96 (61%) | 89 (55%) |
Can pay bills, but little extra money | 127 (32%) | 28 (34%) | 46 (29%) | 53 (33%) |
Has to cut back or has difficulty paying bills | 43 (11%) | 9 (11%) | 15 (9.6%) | 19 (12%) |
National Percentile of Block Group ADI Score | 67.8 (15.9) | 69.8 (16.0) | 66.6 (16.3) | 67.9 (15.4) |
Secondary RUCA Code | ||||
Urban and Large Rural City/Town | 257 (64%) | 54 (65%) | 104 (66%) | 99 (61%) |
Small and Isolated Small Rural Town | 145 (36%) | 29 (35%) | 53 (34%) | 63 (39%) |
Yost—U.S.-based, Quintiles | ||||
1—Lowest SES | 60 (17%) | 14 (19%) | 16 (11%) | 30 (20%) |
2 | 161 (44%) | 30 (40%) | 66 (47%) | 65 (44%) |
3 | 112 (31%) | 22 (29%) | 46 (33%) | 44 (30%) |
4 or 5—Highest SES | 30 (8.3%) | 9 (12%) | 12 (8.6%) | 9 (6.1%) |
Working for Pay | ||||
No | 135 (34%) | 30 (36%) | 54 (34%) | 51 (31%) |
Yes—part time | 83 (21%) | 22 (27%) | 27 (17%) | 34 (21%) |
Yes—full time | 184 (46%) | 31 (37%) | 76 (48%) | 77 (48%) |
Smoking Status | ||||
Never | 247 (61%) | 56 (67%) | 95 (61%) | 96 (59%) |
Former | 112 (28%) | 17 (20%) | 47 (30%) | 48 (30%) |
Current | 31 (7.7%) | 7 (8.4%) | 11 (7.0%) | 13 (8.0%) |
Body Mass Index (BMI) | ||||
Obese | 129 (32%) | 26 (31%) | 49 (31%) | 54 (33%) |
Normal | 50 (12%) | 15 (18%) | 20 (13%) | 15 (9.3%) |
Overweight | 72 (18%) | 16 (19%) | 25 (16%) | 31 (19%) |
Unknown | 151 (38%) | 26 (31%) | 63 (40%) | 62 (38%) |
Ever Had a Mammogram | ||||
No | 30 (7.5%) | 4 (4.8%) | 12 (7.6%) | 14 (8.6%) |
Yes | 372 (93%) | 79 (95%) | 145 (92%) | 148 (91%) |
Health Care Provider Suggested to Have a Mammogram | ||||
No | 21 (5.3%) | 2 (2.4%) | 9 (5.8%) | 10 (6.2%) |
Yes | 375 (95%) | 80 (98%) | 145 (94%) | 150 (94%) |
Received Reminders from Health Care Facility | ||||
No | 208 (54%) | 40 (49%) | 87 (59%) | 81 (52%) |
Yes | 176 (46%) | 41 (51%) | 61 (41%) | 74 (48%) |
Planning to Have a Mammogram in Next 6 Months | ||||
No | 207 (51%) | 40 (48%) | 78 (50%) | 89 (55%) |
Yes | 195 (49%) | 43 (52%) | 79 (50%) | 73 (45%) |
Perceived Barriers to Mammography Screening Score (range: 9–45) | 20.2 (5.2) | 19.6 (4.8) | 19.8 (5.4) | 20.8 (5.3) |
If Have Regular Mammograms, Won′t Worry as Much about Dying from Breast Cancer | ||||
Neither/Disagree/strongly disagree | 146 (37%) | 23 (28%) | 54 (35%) | 69 (43%) |
Strongly agree/agree | 253 (63%) | 60 (72%) | 101 (65%) | 92 (57%) |
Compared to Women Your Age and Race, How Likely to Get Breast Cancer | ||||
About the same | 249 (62%) | 53 (64%) | 90 (58%) | 106 (66%) |
Higher | 32 (8.0%) | 8 (9.6%) | 10 (6.5%) | 14 (8.7%) |
Lower | 118 (30%) | 22 (27%) | 55 (35%) | 41 (25%) |
Confident Can Get a Mammogram | ||||
Neither/Disagree/strongly disagree | 46 (12%) | 11 (13%) | 14 (9.0%) | 21 (13%) |
Strongly agree/agree | 353 (88%) | 72 (87%) | 141 (91%) | 140 (87%) |
Breast Cancer Knowledge Score (range: 0–5) | 3.38 (1.14) | 3.22 (1.23) | 3.54 (1.09) | 3.31 (1.13) |
Randomized Arm | p-Values | |||||||
---|---|---|---|---|---|---|---|---|
Characteristic | Overall, N = 402 1 | Usual Care 1 | DVD 1 | DVD/ Navigator 1 | p-Value 2 | DVD vs. Usual Care 3 | DVD/Navigator vs. Usual Care 3 | DVD/Navigator vs. DVD 3 |
UTD for breast cancer screenings within 12 months since enrollment | <0.001 | >0.9 | <0.001 | <0.001 | ||||
No record of test or outside 12-month window | 243 (60%) | 58 (70%) | 110 (70%) | 75 (46%) | ||||
Received within 12 months | 159 (40%) | 25 (30%) | 47 (30%) | 87 (54%) |
Characteristic | OR 1 | 95% CI 1 | p-Value |
---|---|---|---|
Baseline screening status, not UTD for: | |||
Breast, colorectal and cervical | — | — | |
Breast and colorectal | 1.55 | 0.79, 3.04 | 0.202 |
Breast and cervical | 1.84 | 0.91, 3.75 | 0.091 |
Breast only | 2.55 | 1.20, 5.49 | 0.016 |
Study arm 2 | |||
Usual care | — | — | |
DVD | 1.26 | 0.64, 2.52 | 0.503 |
DVD/Patient Navigator | 5.11 | 2.57, 10.60 | <0.001 |
Age | 0.412 | ||
50–54 | — | — | |
55–59 | 1.31 | 0.67, 2.55 | 0.433 |
60–64 | 1.86 | 0.90, 3.89 | 0.094 |
65+ | 1.43 | 0.64, 3.20 | 0.381 |
Describe your household financial situation | |||
Has enough money for special things | — | — | |
Can pay bills, but little extra money | 0.87 | 0.49, 1.52 | 0.621 |
Has to cut back or has difficulty paying bills | 0.24 | 0.08, 0.65 | 0.008 |
Currently working for pay | |||
No | — | — | |
Yes—part time | 2.13 | 1.04, 4.39 | 0.038 |
Yes—full time | 1.89 | 1.02, 3.58 | 0.046 |
Received any mammogram reminders | |||
No | — | — | |
Yes | 1.76 | 1.06, 2.94 | 0.030 |
Planning to have a mammogram in the next 6 months | |||
No | — | — | |
Yes | 1.85 | 1.07, 3.22 | 0.028 |
If have regular mammograms, won′t worry as much about dying from breast cancer | |||
Neither/Disagree/strongly disagree | — | — | |
Strongly agree/agree | 1.76 | 0.99, 3.17 | 0.057 |
National percentile of block group ADI score | 0.98 | 0.97, 1.00 | 0.051 |
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Share and Cite
Champion, V.L.; Monahan, P.O.; Stump, T.E.; Biederman, E.B.; Vachon, E.; Katz, M.L.; Rawl, S.M.; Baltic, R.D.; Kettler, C.D.; Zaborski, N.L.; et al. The Effect of Two Interventions to Increase Breast Cancer Screening in Rural Women. Cancers 2022, 14, 4354. https://doi.org/10.3390/cancers14184354
Champion VL, Monahan PO, Stump TE, Biederman EB, Vachon E, Katz ML, Rawl SM, Baltic RD, Kettler CD, Zaborski NL, et al. The Effect of Two Interventions to Increase Breast Cancer Screening in Rural Women. Cancers. 2022; 14(18):4354. https://doi.org/10.3390/cancers14184354
Chicago/Turabian StyleChampion, Victoria L., Patrick O. Monahan, Timothy E. Stump, Erika B. Biederman, Eric Vachon, Mira L. Katz, Susan M. Rawl, Ryan D. Baltic, Carla D. Kettler, Natalie L. Zaborski, and et al. 2022. "The Effect of Two Interventions to Increase Breast Cancer Screening in Rural Women" Cancers 14, no. 18: 4354. https://doi.org/10.3390/cancers14184354
APA StyleChampion, V. L., Monahan, P. O., Stump, T. E., Biederman, E. B., Vachon, E., Katz, M. L., Rawl, S. M., Baltic, R. D., Kettler, C. D., Zaborski, N. L., & Paskett, E. D. (2022). The Effect of Two Interventions to Increase Breast Cancer Screening in Rural Women. Cancers, 14(18), 4354. https://doi.org/10.3390/cancers14184354