| Literature DB >> 30005709 |
Annalisa Saracino1, Mauro Zaccarelli2, Patrizia Lorenzini2, Alessandra Bandera3, Giulia Marchetti4, Francesco Castelli5, Andrea Gori6, Enrico Girardi7, Cristina Mussini8, Paolo Bonfanti9, Adriana Ammassari2, Antonella d'Arminio Monforte4.
Abstract
BACKGROUND: Social determinants are known to be a driving force of health inequalities, even in high income countries. Aim of our study was to determine if these factors can limit antiretroviral therapy (ART) access, outcome and retention in care of people living with HIV (PLHIV) in Italy.Entities:
Keywords: Antiretroviral therapy; HIV; ICONA; Social determinants
Mesh:
Substances:
Year: 2018 PMID: 30005709 PMCID: PMC6044027 DOI: 10.1186/s12889-018-5804-z
Source DB: PubMed Journal: BMC Public Health ISSN: 1471-2458 Impact factor: 3.295
Socio-demographic characteristics of patients according to years of starting cART or year of last observation
| Overall | 2002–2006 | 2007–2011 | 2012–2016 |
| |
|---|---|---|---|---|---|
| Gender, n (%) | |||||
| Female | 1434 (17.9%) | 453 (29.4%) | 368 (17.0%) | 613 (14.2%) | < 0.001 |
| Male | 6589 (82.1%) | 1090 (70.6%) | 1798 (83.0%) | 3701 (85.8%) | |
| Age at first positive anti-HIV test, n (%) | |||||
| < 30 | 2582 (32.2%) | 682 (44.2%) | 637 (29.5%) | 1263 (29.3%) | < 0.001 |
| 30–40 | 2646 (33.0%) | 521 (33.8%) | 742 (34.4%) | 1383 (32.1%) | |
| 40–50 | 1709 (21.3%) | 221 (14.3%) | 475 (22.0%) | 1013 (23.5%) | |
| > 50 | 1079 (13.5%) | 119 (7.7%) | 305 (14.1%) | 655 (15.2%) | |
| Mode of HIV transmission, n (%) | |||||
| HS | 2773 (34.6%) | 590 (38.2%) | 816 (37.7%) | 1367 (31.7%) | < 0.001 |
| PWID | 1131 (14.1%) | 509 (33.0%) | 265 (12.2%) | 357 (8.3%) | |
| MSM | 3528 (44.0%) | 342 (22.2%) | 942 (43.5%) | 2244 (52.0%) | |
| other/unknown | 591 (7.4%) | 102 (6.6%) | 143 (6.6%) | 346 (8.0%) | |
| Education | |||||
| Elementary school | 362 (4.5%) | 162 (10.5%) | 99 (4.6%) | 101 (2.3%) | < 0.001 |
| Junior high school | 1803 (22.5%) | 596 (38.6%) | 528 (24.4%) | 679 (15.7%) | |
| High school | 2576 (32.1%) | 423 (27.4%) | 708 (32.7%) | 1445 (33.5%) | |
| University | 920 (11.5%) | 101 (6.6%) | 217 (10.0%) | 602 (14.0%) | |
| Missing data | 2362 (29.4%) | 261 (16.9%) | 614 (28.4%) | 1487 (34.5%) | |
| Employement | |||||
| Full time worker | 3575 (44.6%) | 703 (45.6%) | 1100 (50.8%) | 1772 (41.1%) | < 0.001 |
| Unemployed | 910 (11.3%) | 307 (19.9%) | 217 (10.0%) | 386 (9.0%) | |
| Self employed | 1231 (15.3%) | 265 (17.2%) | 304 (14.0%) | 662 (15.4%) | |
| Temporary employed | 192 (2.4%) | 75 (4.9%) | 45 (2.1%) | 72 (1.7%) | |
| Student | 296 (3.7%) | 29 (1.9%) | 75 (3.5%) | 192 (4.5%) | |
| Retired | 256 (3.2%) | 40 (2.6%) | 96 (4.4%) | 120 (2.8%) | |
| Housewife | 233 (2.9%) | 103 (6.7%) | 72 (3.3%) | 58 (1.3%) | |
| Other/unknown | 204 (2.5%) | 18 (1.2%) | 40 (1.9%) | 146 (3.4%) | |
| Missing data | 1126 (14.0%) | 3 (0.2%) | 217 (10.0%) | 906 (21.0%) | |
| Residency area | |||||
| Northern Italy | 4540 (56.6%) | 763 (49.5%) | 1226 (56.6%) | 2551 (59.1%) | < 0.001 |
| Central Italy | 2678 (33.4%) | 517 (33.5%) | 769 (35.5%) | 1392 (32.3%) | |
| Southern Italy | 805 (10.0%) | 263 (17.0%) | 171 (7.9%) | 371 (8.6%) | |
| Smokers | |||||
| No | 3589 (44.7% | 532 (34.5%) | 1040 (48.0%) | 2017 (46.8%) | < 0.001 |
| Yes | 3636 (45.3%) | 787 (51.0%) | 990 (45.7%) | 1859 (43.1%) | |
| Not known | 798 (10.0%) | 224 (14.5%) | 136 (6.3%) | 438 (10.2%) | |
| CDC stage | |||||
| C | 714 (8.9%) | 199 (12.9%) | 219 (10.1%) | 296 (6.9%) | < 0.001 |
| A/B | 7309 (91.1%) | 1344 (87.1%) | 1947 (89.9%) | 4018 (93.1%) | |
| Pre treatment CD4 cell/mmc | |||||
| < =200 | 1630 (20.3%) | 404 (26.2%) | 508 (23.5%) | 718 (16.6%) | < 0.001 |
| 201–350 | 1952 (24.3%) | 516 (33.4%) | 699 (32.3%) | 737 (17.1%) | |
| 351–500 | 1761 (22.0%) | 251 (16.3%) | 473 (21.8%) | 1037 (24.0%) | |
| 500-max | 1913 (23.8%) | 308 (20.0%) | 291 (13.4%) | 1314 (30.5%) | |
| Missing data | 767 (9.6%) | 64 (4.2%) | 195 (9.0%) | 508 (11.8%) | |
| Pre treatment log10 HIV RNA | |||||
| < 4 | 1844 (23.0%) | 385 (25.0%) | 427 (19.7%) | 1032 (23.9%) | 0.012 |
| 4–4.7 | 1961 (24.4%) | 379 (24.6%) | 524 (24.2%) | 1058 (24.5%) | |
| 4.8–5.2 | 1644 (20.5%) | 363 (23.5%) | 478 (22.1%) | 803 (18.6%) | |
| 5.2+ | 1590 (19.8%) | 316 (20.5%) | 488 (22.5%) | 786 (18.2%) | |
| Missing data | 984 (12.3%) | 100 (6.5%) | 249 (11.5%) | 635 (14.7%) | |
| Pregnancy status | |||||
| Not pregnant | 7715 (96.2%) | 1517 (98.3%) | 2109 (97.4%) | 4089 (94.8%) | < 0.001 |
| Pregnant | 30 (0.4%) | 5 (0.3%) | 7 (0.3%) | 18 (0.4%) | |
| Missing data | 278 (3.5%) | 21 (1.4%) | 50 (2.3%) | 207 (4.8%) | |
Fig. 1Distribution of education level (a) and occupational status (b) according to gender, mode of HIV transmission and area of residency
Median CD4 cell count at time of enrolment in the ICONA cohort and at time of ART initiation according to socio-demographic characteristics
| CD4 at enrollment | CD4 at time of ART initiation | |||||
|---|---|---|---|---|---|---|
| Median | IQR |
| Median | IQR |
| |
| n/mmc | n/mmc | n/mmc | n/mmc | |||
| Gender | ||||||
| Male | 439 | 260–621 | 0.453 | 360 | 223–520 | < 0.001 |
| Female | 448 | 263–635 | 325 | 205–479 | ||
| Age (years) | ||||||
| < 30 | 511 | 364–696 | < 0.001 | 390 | 273–563 | < 0.001 |
| 30–40 | 440 | 269–622 | 358 | 225–514 | ||
| 40–50 | 377 | 188–554 | 323 | 173–483 | ||
| > 50 | 283 | 108–500 | 273 | 105–422 | ||
| Mode of HIV transmission | ||||||
| HS | 385 | 191–580 | < 0.001 | 310 | 171–460 | < 0.001 |
| PWID | 482 | 305–685 | 342 | 222–530 | ||
| MSM | 471 | 310–643 | 390 | 267–550 | ||
| Residency area | ||||||
| North | 499 | 336–694 | < 0.001 | 333 | 232–460 | < 0.001 |
| Centre | 443 | 270–634 | 302 | 193–436 | ||
| South | 432 | 248–646 | 330 | 205–516 | ||
| Education | ||||||
| Elementary school | 384 | 179–606 | < 0.001 | 288 | 156–430 | < 0.001 |
| Junior high school | 437 | 232–624 | 320 | 197–481 | ||
| High school | 438 | 261–613 | 353 | 224–505 | ||
| University | 464 | 299–637 | 393 | 272–569 | ||
| Employement | ||||||
| Unemployed | 439 | 264–644 | < 0.001 | 342 | 216–523 | < 0.001 |
| Full time worker | 450 | 279–626 | 351 | 225–506 | ||
| Self employed | 437 | 249–621 | 351 | 222–510 | ||
| Temporary employed | 467 | 320–650 | 340 | 220–506 | ||
| Student | 540 | 385–700 | 443 | 325–648 | ||
| Retired | 326 | 131–534 | 274 | 121–440 | ||
| Housewife | 390 | 157–590 | 302 | 122–427 | ||
| Year of ART initiation/last observation | ||||||
| 2002–2006 | 465 | 278–661 | < 0.001 | 292 | 185–448 | < 0.001 |
| 2007–2011 | 385 | 232–554 | 305 | 196–409 | ||
| 2012–2016 | 460 | 270–637 | 414 | 262–574 | ||
Drop-out rate according to socio-demographic characteristics
| N° of lost to follow-up |
| |
|---|---|---|
| Gender | ||
| Male | 1373 (20.8%) | < 0.001 |
| Female | 423 (29.5%) | |
| Age at first positive anti-HIV test | ||
| < 30 | 797 (30.9%) | < 0.001 |
| 30–40 | 566 (21.4%) | |
| 40–50 | 258 (15.1%) | |
| > 50 | 168 (15.6%) | |
| Mode of HIV transmission | ||
| HS | 571 (20.6%) | < 0.001 |
| PWID | 552 (48.8%) | |
| MSM | 530 (15.0%) | |
| other/unknown | 143 (24.2%) | |
| Residency area | ||
| North | 929 (20.5%) | < 0.001 |
| Centre | 560 (20.9%) | |
| South | 307 (38.1%) | |
| Education | ||
| Elementary school | 141 (39.0%) | < 0.001 |
| Junior high school | 574 (31.8%) | |
| High school | 484 (18.8%) | |
| University | 129 (14.0%) | |
| Missing | 468 (19.8%) | |
| Employment | ||
| Unemployed | 755 (21.1%) | < 0.001 |
| Full time worker | 347 (38.1%) | |
| Self employed | 264 (21.4%) | |
| Temporary employed | 72 (37.5%) | |
| Student | 67 (22.6%) | |
| Retired | 50 (19.5%) | |
| Housewife | 94 (40.3%) | |
| other/unknown | 33 (16.2%) | |
| missing data | 114 (10.1%) | |
Fig. 2Multivariable model of factors associated with time to cART start (adjusted for CD4 count, viral load, pregnancy status, smoking)
Fig. 3Multivariable model of factors associated with virological response (HIV RNA < 50) (adjusted for CD4 count, viral load, pregnancy status, smoking)
Fig. 4Multivariable model of factors associated with treatment discontinuation for any causes (adjusted for CD4 count, viral load, pregnancy status, smoking)