Utilization of artificial intelligence for tuberculosis screening in Nepal
Tài liệu tham khảo
2021
2018
2021
Bloom, 2017, 233
Government of Nepal, 2021
Adhikari, 2022, Prevalence and associated risk factors for tuberculosis among people living with HIV in Nepal, PLoS One, 17, 10.1371/journal.pone.0262720
2018
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Philipsen, 2015, Automated chest-radiography as a triage for Xpert testing in resource-constrained settings: a prospective study of diagnostic accuracy and costs, Sci Rep, 5, 10.1038/srep12215
