| Literature DB >> 35407428 |
Xianglong Xu1,2,3, Zongyuan Ge4, Eric P F Chow1,2,5, Zhen Yu2,4, David Lee1, Jinrong Wu6, Jason J Ong1,2,3, Christopher K Fairley1,2,3, Lei Zhang1,2,3,7.
Abstract
BACKGROUND: More than one million people acquire sexually transmitted infections (STIs) every day globally. It is possible that predicting an individual's future risk of HIV/STIs could contribute to behaviour change or improve testing. We developed a series of machine learning models and a subsequent risk-prediction tool for predicting the risk of HIV/STIs over the next 12 months.Entities:
Keywords: HIV; behavioural intervention; machine learning; risk prediction; sexually transmitted infections
Year: 2022 PMID: 35407428 PMCID: PMC8999359 DOI: 10.3390/jcm11071818
Source DB: PubMed Journal: J Clin Med ISSN: 2077-0383 Impact factor: 4.241
Characteristics (proportion or median value) of the included subjects stratified by HIV and STIs over the next 12 months.
| Predictors | HIV | Syphilis | Gonorrhoea | Chlamydia | ||||
|---|---|---|---|---|---|---|---|---|
| No | Yes | No | Yes | No | Yes | No | Yes | |
| Gender | ||||||||
| Female | 16,478 (25.4%) | 1 (1.5%) | 14,476 (25.8%) | 12 (1.6%) | 18,018 (31.9%) | 298 (7.3%) | 18,652 (31.6%) | 687 (15.0%) |
| Male | 48,499 (74.6%) | 65 (98.5%) | 41,663 (74.2%) | 738 (98.4%) | 38,521 (68.1%) | 3761 (92.7%) | 40,299 (68.4%) | 3891 (85.0%) |
| Men who have sex with men | ||||||||
| No | 5797 (12.0%) | 1 (1.5%) | 3854 (9.3%) | 14 (1.9%) | 5036 (13.1%) | 55 (1.5%) | 6713 (16.7%) | 403 (10.4%) |
| Yes | 42,702 (88.0%) | 64 (98.5%) | 37,809 (90.7%) | 724 (98.1%) | 33,485 (86.9%) | 3706 (98.5%) | 33,586 (83.3%) | 3488 (89.6%) |
| Country of birth | ||||||||
| Australia | 30,473 (46.9%) | 29 (43.9%) | 25,887 (46.1%) | 355 (47.3%) | 25,587 (45.3%) | 2023 (49.8%) | 27,081 (45.9%) | 2112 (46.1%) |
| Overseas | 31,978 (49.2%) | 34 (51.5%) | 28,099 (50.1%) | 367 (48.9%) | 28812 (51.0%) | 1900 (46.8%) | 29,684 (50.4%) | 2310 (50.5%) |
| Missing | 2526 (3.9%) | 3 (4.5%) | 2153 (3.8%) | 28 (3.7%) | 2140 (3.8%) | 136 (3.4%) | 2186 (3.7%) | 156 (3.4%) |
| Age at consultation | ||||||||
| Median [IQR] | 29.0 (25.0, 35.0) | 30.5 (27.0, 43.0) | 29.0 (25.0, 36.0) | 30.0 (26.0, 37.0) | 29.0 (25.0, 35.0) | 29.0 (25.0, 34.0) | 29.0 (25.0, 35.0) | 28.0 (24.0, 34.0) |
| Current PrEP use | ||||||||
| No | 62,195 (95.7%) | 64 (97.0%) | 53,496 (95.3%) | 658 (87.7%) | 53,998 (95.5%) | 3656 (90.1%) | 56,519 (95.9%) | 4167 (91.0%) |
| Yes | 2782 (4.3%) | 2 (3.0%) | 2643 (4.7%) | 92 (12.3%) | 2541 (4.5%) | 403 (9.9%) | 2432 (4.1%) | 411 (9.0%) |
| Current sex worker | ||||||||
| No | 57,383 (88.3%) | 65 (98.5%) | 49,068 (87.4%) | 736 (98.1%) | 49,458 (87.5%) | 3902 (96.1%) | 51,981 (88.2%) | 4418 (96.5%) |
| Yes | 7594 (11.7%) | 1 (1.5%) | 7071 (12.6%) | 14 (1.9%) | 7081 (12.5%) | 157 (3.9%) | 6970 (11.8%) | 160 (3.5%) |
Note: IQR: interquartile range.
Figure 1Variable importance analysis for predicting (a) HIV, (b) syphilis, (c) gonorrhoea, and (d) chlamydia over the next 12 months.
Figure 2The area under the ROC curve (AUROC) of a risk-prediction tool for predicting HIV/STIs over the next 12 months on testing datasets. STI: syphilis, gonorrhoea, and chlamydia.
Figure 312-month HIV/STI risk-prediction tool’s interface and output. STI: syphilis, gonorrhoea, and chlamydia.