| Literature DB >> 32293581 |
Christine Jacomet1, Roxana Ologeanu-Taddei2, Justine Prouteau1, Céline Lambert3, Françoise Linard4, Pascale Bastiani5, Pierre Dellamonica6.
Abstract
BACKGROUND: The development of electronic health (eHealth) has offered the opportunity for remote care provision. eHealth addresses issues for patients and professionals favoring autonomy and compliance, respectively, while fostering closer links both between patients and health care professionals and among health care professionals themselves.Entities:
Keywords: HIV; collection of digitized personal information; connected objects; eHealth; health applications; internet for information retrieval; survey; telemedicine
Mesh:
Year: 2020 PMID: 32293581 PMCID: PMC7191352 DOI: 10.2196/16140
Source DB: PubMed Journal: JMIR Mhealth Uhealth ISSN: 2291-5222 Impact factor: 4.773
Figure 1Flowchart of the 279 people living with HIV (PLHIV) who answered all items of interest.
Sociodemographic characteristics of people living with HIV (N=279).
| Characteristic | Value | |
| Age (years), mean (SD) | 53 (12) | |
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| Male | 199 (71.3) |
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| Female | 80 (28.7) |
| Live with a partner, n (%) | 142 (50.9) | |
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| Heterosexual | 127 (45.5) |
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| Homosexual | 120 (43.0) |
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| Other | 11 (3.9) |
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| Decline to reply | 21 (7.5) |
| At least one child, n (%) | 119 (42.7) | |
| Country of birth=France, n (%) | 218 (78.1) | |
| Region of birth=Paris/Ile-de-France, n (%) | 55 (19.7) | |
| Region of residence=Paris/Ile-de-France, n (%) | 89 (31.9) | |
| High school or above education level, n (%) | 184 (65.9) | |
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| Stable job | 130 (46.6) |
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| Retired | 61 (21.9) |
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| Invalid | 35 (12.5) |
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| Job-seeker | 29 (10.4) |
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| Other | 24 (8.6) |
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| EPICESa precarity score, median (IQR) | 25 (15-46) |
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| Precarious, n (%) | 127 (45.5) |
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| Bars, clubs without sex | 81 (29.0) |
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| Sex clubs | 40 (14.3) |
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| Through geolocating dating sites | 57 (20.4) |
aEPICES: Evaluation of Precarity and Inequalities in Health Examination Centers.
Clinical and care path characteristics of people living with HIV (N=279).
| Characteristic | Value | |
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| Last viral load undetectable, n (%) | 255 (91.4) |
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| Last CD4 count (mm3), median (IQR) | 600 (400-842) |
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| Years since HIV infection detected, mean (SD) | 17 (10) |
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| Years of antiviral treatment, mean (SD) | 14 (8) |
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| Active | 76 (27.2) |
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| Nonsmoker or exsmoker | 203 (72.8) |
| Alcohol consumption more than once a week, n (%) | 136 (48.7) | |
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| Active or former user | 55 (19.7) |
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| Non-user | 224 (80.3) |
| Lipodystrophy, n (%) | 56 (20.1) | |
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| Presence | 123 (44.1) |
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| Anti-HBPa | 57 (20.4) |
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| Psychiatric | 43 (15.4) |
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| Cardiovascular | 27 (9.7) |
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| Anti-diabetes | 24 (8.6) |
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| Hyperlipidemia | 15 (5.4) |
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| Bone and joints | 15 (5.4) |
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| Neurological | 13 (4.7) |
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| Hepatitis B or C | 9 (3.2) |
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| Renal | 8 (2.9) |
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| Cancer | 5 (1.8) |
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| Follow up in teaching hospital | 239 (85.7) |
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| No consultation in general medical practice | 39 (14.0) |
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| One to three consultations in general medical practice | 163 (58.4) |
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| Four or more consultations in general medical practice | 77 (27.6) |
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| One or more HIV-specific consultations per year | 159 (57.0) |
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| Three or more HIV-specific consultations per year | 120 (43.0) |
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| No other specialized consultations | 81 (29.0) |
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| One to three other specialized consultations | 150 (53.8) |
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| Four or more other specialized consultations | 48 (17.2) |
| Fitness VASb, mean (SD) | 78 (19) | |
aHBP: high blood pressure.
bVAS: visual analog scale (0-100).
Sociodemographic characteristics of physicians (N=219).
| Sociodemographic characteristic | Value | |
| Age (years), mean (SD) | 48 (10) | |
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| Male | 94 (42.9) |
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| Female | 125 (57.1) |
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| Infectious diseases | 158 (72.1) |
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| General practitioner | 37 (16.9) |
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| Internal medicine | 13 (5.9) |
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| Dermatology | 4 (1.8) |
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| Hematology | 2 (0.9) |
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| Gastroenterology | 1 (0.5) |
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| Geriatrics | 1 (0.5) |
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| Immunology | 1 (0.5) |
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| Psychiatry | 1 (0.5) |
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| Public health | 1 (0.5) |
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| Full time | 159 (72.6) |
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| Part time | 60 (27.4) |
| Department of practice in Paris/Ile-de-France, n (%) | 80 (36.5) | |
Figure 2Factorial analysis of people living with HIV by sociodemographic and medical characteristics, and their answers to 113 questions concerning eHealth: searching for information on the internet and social media, collection of digitized personal information, and mHealth apps and connected objects for health/wellness.
Sociodemographic and medical characteristics, internet and social media, app use, and connected objects for three groups of people living with HIV obtained by mixed unsupervised classification.
| Characteristic | Total (N=279) | Group 1 (n=121) | Group 2 (n=86) | Group 3 (n=72) | |
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| Aged <49 years | 106 (38.0) | 33 (27.3) | 26 (30.2) | 47 (65.3) |
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| Aged >60 years | 79 (28.3) | 48 (39.7) | 25 (29.1) | 6 (8.3) |
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| Male | 199 (71.3) | 90 (74.4) | 51 (59.3) | 58 (80.6) |
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| MSMa | 120 (43.0) | 53 (43.8) | 21 (24.4) | 46 (63.9) |
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| At least one child | 119 (42.7) | 50 (41.3) | 48 (55.8) | 21 (29.2) |
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| Higher education | 184 (65.9) | 73 (60.3) | 51 (59.3) | 60 (83.3) |
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| Frequent use of geolocating dating sites | 57 (20.4) | 14 (11.6) | 10 (11.6) | 33 (45.8) |
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| Duration of treatment<9 years | 93 (33.3) | 32 (26.4) | 22 (25.6) | 39 (54.2) |
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| Receiving treatments other than antiretroviral | 123 (44.1) | 65 (53.7) | 40 (46.5) | 18 (25.0) |
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| History of illegal drug use | 55 (19.7) | 18 (14.9) | 9 (10.5) | 28 (38.9) |
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| Used the internet in the last 12 months to look for information or advice on health or wellness | 154 (55.2) | 64 (52.9) | 32 (37.2) | 58 (80.6) |
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| Changed the way they attend to their health/wellness after these searches | 74 (26.5) | 31 (25.6) | 5 (5.8) | 38 (52.8) |
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| Possess a social media account (eg, Facebook, Twitter) | 174 (62.4) | 55 (45.5) | 47 (54.7) | 72 (100.0) |
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| No longer as trusting after confidentiality problems | 66 (23.7) | 21 (17.4) | 17 (19.8) | 28 (38.9) |
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| Currently use mobile apps for monitoring physical activity | 45 (16.1) | 8 (6.6) | 8 (9.3) | 29 (40.3) |
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| Would be willing to use an app if it was recommended by a physician | 199 (71.3) | 94 (77.7) | 41 (47.7) | 64 (88.9) |
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| Would be willing to use an app if it was recommended by an associate | 51 (18.3) | 13 (10.7) | 6 (7.0) | 32 (44.4) |
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| Would be willing to use an app if they could manage on their own | 102 (36.6) | 35 (28.9) | 50 (58.1) | 17 (23.6) |
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| Think an ideal app should help follow adverse effects of medical drugs | 208 (74.6) | 110 (90.9) | 41 (47.7) | 57 (79.2) |
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| Think an ideal app should help follow vaccinations | 212 (76.0) | 107 (88.4) | 45 (52.3) | 60 (83.3) |
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| Think an ideal app should help get in touch with other patients | 88 (31.5) | 46 (38.0) | 16 (18.6) | 26 (36.1) |
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| Trust an app more than a health care professional | 26 (9.3) | 19 (15.7) | 2 (2.3) | 5 (6.9) |
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| Possess a connected object | 61 (21.9) | 16 (13.2) | 11 (12.8) | 34 (47.2) |
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| Could be persuaded to have connected objects and use them if medical insurance schemes reduced their contributions as an incentive | 88 (31.5) | 40 (33.1) | 10 (11.6) | 38 (52.8) |
aMSM: men who have sex with men.
Comparison of the three groups of people living with HIV obtained by mixed unsupervised classification.
| Characteristic | Total (N=279) | Group 1 (n=121) | Group 2 (n=86) | Group 3 (n=72) | |
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| In favor of consultations by video conference | 166 (59.5) | 84 (69.4) | 16 (18.6) | 66 (91.7) |
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| Would prefer to use distance consultation to get a new prescription for treatment | 207 (74.2) | 95 (78.5) | 45 (52.3) | 67 (93.1) |
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| Would prefer to use distance consultation to consult for health problems that seem minor (eg, sore throat, cold) | 123 (44.1) | 63 (52.1) | 15 (17.4) | 45 (62.5) |
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| Would prefer to use distance consultation to monitor evolution of their HIV infection | 92 (33.0) | 49 (40.4) | 8 (9.3) | 35 (48.6) |
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| Think having a free internet terminal in the medical unit where they can enter data directly into their medical files before consultation would be a good thing | 124 (44.4) | 73 (60.3) | 11 (12.8) | 40 (55.6) |
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| Think their personal data might be misused | 167 (59.9) | 65 (53.7) | 63 (73.3) | 39 (54.1) |
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| Think the law adequately oversees the collection and use of personal data | 99 (35.5) | 54 (44.6) | 11 (12.8) | 34 (47.2) |
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| Think artificial intelligence will speed progress towards more individualized diagnosis and treatment | 159 (57.0) | 88 (72.7) | 19 (22.1) | 52 (72.2) |
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| Would like to have health digital safe space on a dedicated site hosted by a health data organization | 94 (33.7) | 41 (33.9) | 16 (18.6) | 37 (51.4) |
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| Think the development of eHealth is a good thing | 197 (70.6) | 109 (90.1) | 21 (24.4) | 67 (93.1) |
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| Think the development of eHealth would be efficient for improving coordination among different health care practitioners | 226 (81.0) | 104 (86.0) | 52 (60.4) | 70 (97.2) |
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| Think the development of eHealth would be efficient for reducing travel | 135 (48.4) | 69 (57.0) | 14 (16.3) | 52 (72.2) |
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| Think the development of eHealth would be efficient for servicing medically deprived areas | 157 (56.3) | 74 (61.2) | 34 (39.5) | 49 (68.1) |
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| Think the development of eHealth would be efficient for reducing the social Security burden | 125 (44.8) | 61 (50.4) | 19 (22.1) | 45 (62.5) |
Figure 3Factorial analysis of physicians by sociodemographic and medical characteristics, and their answers to 53 questions concerning eHealth: searching for information on the internet and social media, collection of digitized personal information and telemedecine, and mHealth apps and connected objects for health/wellness.