| Literature DB >> 36039812 |
Ann D Bagchi1, Kasny Damas2, Nayeli Salazar de Noguera3, Benjamin Melamed1, Charles Menifield2, Alok Baveja1, Paul Weber4, Shobha Swaminathan5.
Abstract
BACKGROUND: Deployment of telehealth has been touted as a means of reducing health disparities in underserved groups. However, efforts to reduce regulatory barriers have not been associated with greater telehealth uptake. The goal of this study was to examine engagement with technology among low-income people of color living in Newark, New Jersey.Entities:
Keywords: COVID-19; barriers; disparities; telehealth; underserved patients
Mesh:
Year: 2022 PMID: 36039812 PMCID: PMC9434674 DOI: 10.1177/21501319221119692
Source DB: PubMed Journal: J Prim Care Community Health ISSN: 2150-1319
Participant Characteristics.
| Characteristic | Pre-COVID (n = 63) | Post-COVID (n = 81) | |||
|---|---|---|---|---|---|
| Age groups | .001 | ||||
| 25 years or younger | 3 | 4.8 | 11 | 13.6 | |
| 26-44 years | 15 | 23.8 | 39 | 48.1 | |
| 45-64 years | 37 | 58.7 | 30 | 37.0 | |
| 65 years or older | 6 | 9.5 | 1 | 1.2 | |
| Language of survey | .287 | ||||
| English | 56 | 88.9 | 76 | 93.8 | |
| Spanish | 7 | 11.1 | 5 | 6.2 | |
| Gender | .304 | ||||
| Male | 28 | 44.4 | 46 | 56.8 | |
| Female | 32 | 50.8 | 33 | 40.7 | |
| Transgender | 3 | 4.8 | 2 | 2.5 | |
| Ethnicity | .001 | ||||
| African American | 42 | 66.7 | 47 | 58.0 | |
| Latino | 8 | 12.7 | 33 | 40.7 | |
| White | 9 | 14.3 | 4 | 4.9 | |
| Other | 6 | 9.5 | 3 | 3.7 | |
| Highest education completed | .044 | ||||
| Less than high school degree | 25 | 39.7 | 17 | 21.0 | |
| High school degree/GED | 18 | 28.6 | 27 | 33.3 | |
| Some college or college degree | 20 | 31.7 | 37 | 45.7 | |
| Employment status | .005 | ||||
| Employed | 12 | 22.3 | 42 | 51.9 | |
| Unemployed/looking for work | 15 | 23.8 | 17 | 21.0 | |
| Disabled | 26 | 41.3 | 19 | 23.5 | |
| Out of the labor force | 8 | 12.8 | 2 | 2.5 | |
| Monthly income before taxes | .073 | ||||
| $0 | 15 | 23.8 | 10 | 12.3 | |
| $1 to $499 | 11 | 17.5 | 8 | 9.9 | |
| $500 to $999 | 14 | 22.2 | 17 | 21.0 | |
| $1000 or More | 23 | 36.5 | 45 | 55.6 | |
| Low health literacy | 34 | 54.0 | 24 | 29.6 | .003 |
| Housing status | |||||
| Unstably Housed (Past 2 months) | 12 | 19.0 | 20 | 24.7 | .419 |
| Worried about Housing Stability (Next 2 months) | 14 | 22.2 | 24 | 29.6 | .317 |
| Political engagement | |||||
| Registered to vote | 46 | 73.0 | 58 | 71.6 | .962 |
| Voted in 2016 Presidential Election | 32 | 50.8 | 42 | 51.9 | .808 |
| Self-rated health | .657 | ||||
| Poor/Fair | 18 | 28.5 | 22 | 27.2 | |
| Good | 25 | 39.7 | 27 | 33.3 | |
| Very Good/Excellent | 20 | 31.7 | 31 | 38.3 | |
| Health conditions | .041 | ||||
| Asthma | 11 | 17.5 | 18 | 22.2 | |
| Diabetes | 20 | 31.7 | 9 | 11.1 | |
| Heart disease | 6 | 9.5 | 6 | 7.4 | |
| HIV/AIDS | 28 | 44.4 | 26 | 32.1 | |
| Mental health disorder | 7 | 11.1 | 7 | 8.6 | |
| Hepatitis C | 6 | 9.5 | 1 | 1.2 | |
| Substance use disorder | 8 | 12.7 | 3 | 3.7 | |
| Other | 9 | 14.3 | 4 | 4.9 | |
| Insurance status | .357 | ||||
| Private insurance | 12 | 19.1 | 16 | 19.8 | |
| Obamacare | 3 | 4.8 | 6 | 7.4 | |
| Medicare | 9 | 14.3 | 9 | 11.1 | |
| Medicaid | 29 | 46.0 | 35 | 43.2 | |
| Other | 7 | 11.1 | 0 | 0.0 | |
| None | 7 | 11.1 | 19 | 23.5 | |
| Source of usual care | .042 | ||||
| Primary care provider | 43 | 68.3 | 38 | 46.9 | |
| Specialist | 9 | 14.0 | 10 | 12.3 | |
| Emergency room | 4 | 6.3 | 8 | 9.9 | |
| Urgent care center | 2 | 3.2 | 5 | 6.2 | |
| None | 5 | 7.9 | 8 | 9.9 | |
| Other | 1 | 1.6 | 11 | 13.6 | |
| Trust in Physician (agree/strongly agree) | |||||
| I trust my provider’s judgment | 58 | 92.1 | 69 | 85.2 | .129 |
| Provider puts my needs first | 56 | 88.9 | 62 | 76.5 | .262 |
| Provider does everything they should | 31 | 49.2 | 20 | 24.7 | .123 |
| Trust in Health Care System (agree/strongly agree) | |||||
| Patients have been deceived | 25 | 39.6 | 30 | 37.1 | .934 |
| Patients have been harmed | 25 | 39.6 | 24 | 29.7 | .179 |
| Do not always keep patient information private | 29 | 46.0 | 27 | 33.2 | .071 |
| Delayed getting care in the past 12 months | 19 | 30.2 | 26 | 32.1 | .814 |
Percentages may sum to greater than 100 since multiple responses were allowed; χ2: *P < .05.
Experience With Technology (Pre-COVID n = 63, Post-COVID n = 84).
| a. Access to technology | % With any access | % Who do use dailya | |||||
|---|---|---|---|---|---|---|---|
| Type of device | Pre-COVID | Post-COVID | Pre-COVID | Post-COVID | |||
| Tablet computer | 50.8 | 60.5 | .244 | 28.6 | 38.3 | .223 | |
| Laptop | 52.4 | 56.8 | .598 | 25.4 | 35.8 | .181 | |
| Desktop | 54.0 | 42.0 | .153 | 15.9 | 27.2 | .106 | |
| Smart TV | 58.7 | 64.2 | .503 | 34.9 | 55.6 | .014 | |
| Fitness Tracker | 31.7 | 40.7 | .267 | 15.9 | 22.2 | .340 | |
| b. Confidence using technology | Pre-COVID | Post-COVID | |||||
| n | % | n | % | ||||
| I feel confident. . . (agree/strongly agree) | |||||||
| Using the internet | 40 | 64.5 | 58 | 73.4 | .254 | ||
| Using computer programs | 36 | 58.1 | 61 | 78.2 | .010 | ||
| Using digital technology effectively | 30 | 48.4 | 56 | 70.9 | .007 | ||
| I can judge whether online content is trustworthy | 33 | 53.2 | 54 | 69.2 | .052 | ||
| Information shared on social media is trustworthy | 21 | 33.9 | 24 | 30.4 | .659 | ||
| c. Comfort with computer functions | n | % | n | % | |||
| I feel comfortable. . . (comfortable/very comfortable) | |||||||
| Powering on a computer | 34 | 56.7 | 60 | 75.9 | 0.016 | ||
| Logging on/off a computer | 32 | 54.2 | 60 | 76.9 | .005 | ||
| Adjusting the volume on a computer | 38 | 64.4 | 67 | 85.9 | .003 | ||
| Adjusting the video on a computer | 30 | 50.8 | 60 | 76.9 | .001 | ||
| Using a computer camera | 23 | 39.0 | 57 | 72.2 | .000 | ||
| Using a computer microphone | 23 | 39.7 | 57 | 73.1 | .000 | ||
| Troubleshooting common problems on a computer | 19 | 31.7 | 54 | 68.4 | .000 | ||
| Opening an internet browser | 29 | 48.3 | 59 | 75.6 | .001 | ||
| Performing an internet search | 33 | 54.1 | 60 | 75.9 | .007 | ||
| d. In the past month, have you ever | |||||||
| Participated in an online chat | 39 | 62.9 | 61 | 77.2 | .063 | ||
| Contacted provider via email | 10 | 16.1 | 38 | 48.7 | .000 | ||
| Scheduled an appointment online | 11 | 17.7 | 27 | 34.2 | .029 | ||
| Filled a prescription through the phone | 14 | 22.6 | 40 | 51.3 | .001 | ||
| Looked up health information online | 9 | 14.8 | 29 | 36.7 | .004 | ||
Percentages based on the number who report having any access to the type of device.
χ2: *P < .05; **P < .01; ***P < .001.
Significant Bivariate Associations with Comfort With Telehealth.
| Variable | Mean | Statistic | |
|---|---|---|---|
| Language of survey | |||
| English | 29.7 | <.001*** | |
| Spanish | 21.2 | ||
| Gender | |||
| Male | 30.8 | .027 | |
| Female | 26.9 | ||
| Transgender | 29.6 | ||
| Highest education | |||
| Less than high school degree | 27.5 | .012 | |
| High school degree/GED | 27.2 | ||
| Some college or college degree | 31.6 | ||
| Health literacy level | |||
| High health literacy | 30.4 | .007 | |
| Low health literacy | 26.9 | ||
| Self-rated Health | |||
| Poor/Fair | 25.6 | .008 | |
| Good | 30.0 | ||
| Very Good/Excellent | 30.8 | ||
| Healthcare Systems Do Not Always Keep Patient Information Private | |||
| Agree | 28.2 | .026 | |
| Disagree | 30.9 | ||
| Prior Month’s Use of Telehealth-related Technologies | Pearson | .005 | |
P < .05; **P < .01; ***P < .001.