Active case finding to detect symptomatic and subclinical pulmonary tuberculosis disease: implementation of computer-aided detection for chest radiography in Viet Nam

Authors

  • Anh L Innes FHI 360 Asia Pacific Regional Office, Bangkok, Thailand https://orcid.org/0009-0004-0425-9797
  • Andres Martinez FHI 360, Durham, North Carolina, United States of America
  • Gia Linh Hoang FHI 360 Viet Nam, Hanoi, Viet Nam
  • Thi Bich Phuong Nguyen FHI 360 Viet Nam, Hanoi, Viet Nam
  • Viet Hien Vu FHI 360 Viet Nam, Hanoi, Viet Nam
  • Tuan Ho Thanh Luu FHI 360 Viet Nam, Hanoi, Viet Nam
  • Thi Thu Trang Le FHI 360 Viet Nam, Hanoi, Viet Nam
  • Victoria Lebrun FHI 360 Viet Nam, Hanoi, Viet Nam
  • Van Chinh Trieu FHI 360 Viet Nam, Hanoi, Viet Nam
  • Nghi Do Bao Tran FHI 360 Viet Nam, Hanoi, Viet Nam
  • Nhi Dinh FHI 360, Durham, North Carolina, United States of America
  • Huy Minh Pham United States Agency for International Development/Viet Nam, Hanoi, Viet Nam
  • Van Luong Dinh Viet Nam National Lung Hospital, Hanoi, Viet Nam
  • Binh Hoa Nguyen Viet Nam National Lung Hospital, Hanoi, Viet Nam
  • Thi Thanh Huyen Truong Viet Nam National Lung Hospital, Hanoi, Viet Nam
  • Van Cu Nguyen Viet Nam National Lung Hospital, Hanoi, Viet Nam
  • Viet Nhung Nguyen Viet Nam National Lung Hospital, Hanoi, Viet Nam; Pulmonology Department, University of Medicine and Pharmacy, Viet Nam National University, Hanoi, Viet Nam
  • Thu Hien Mai FHI 360 Viet Nam, Hanoi, Viet Nam

DOI:

https://doi.org/10.5365/wpsar.2024.15.4.1118

Keywords:

pulmonary tuberculosis, artificial intelligence, radiography, vulnerable populations, diagnostic tests

Abstract

Objective: In Viet Nam, tuberculosis (TB) prevalence surveys revealed that approximately 98% of individuals with pulmonary TB have TB-presumptive abnormalities on chest radiographs, while 32% have no TB symptoms. This prompted the adoption of the “Double X” strategy, which combines chest radiographs and computer-aided detection with GeneXpert testing to screen for and diagnose TB among vulnerable populations. The aim of this study was to describe demographic, clinical and radiographic characteristics of symptomatic and asymptomatic Double X participants and to assess multilabel radiographic abnormalities on chest radiographs, interpreted by computer-aided detection software, as a possible tool for detecting TB-presumptive abnormalities, particularly for subclinical TB.

Methods: Double X participants with TB-presumptive chest radiographs and/or TB symptoms and known risks were referred for confirmatory GeneXpert testing. The demographic and clinical characteristics of all Double X participants and the subset with confirmed TB were summarized. Univariate and multivariable logistic regression modelling was used to evaluate associations between participant characteristics and subclinical TB and between computer-aided detection multilabel radiographic abnormalities and TB.

Results: From 2020 to 2022, 96 631 participants received chest radiographs, with 67 881 (70.2%) reporting no TB symptoms. Among 1144 individuals with Xpert-confirmed TB, 51.0% were subclinical. Subclinical TB prevalence was higher in older age groups, non-smokers, those previously treated for TB and the northern region. Among 11 computer-aided detection multilabel radiographic abnormalities, fibrosis was associated with higher odds of subclinical TB.

Discussion: In Viet Nam, Double X community case finding detected pulmonary TB, including subclinical TB. Computer-aided detection software may have the potential to identify subclinical TB on chest radiographs by classifying multilabel radiographic abnormalities, but further research is needed.

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Published

12-10-2024

How to Cite

1.
Innes AL, Martinez A, Hoang GL, Nguyen TBP, Vu VH, Luu THT, Le TTT, Lebrun V, Trieu VC, Tran NDB, Dinh N, Pham HM, Dinh VL, Nguyen BH, Truong TTH, Nguyen VC, Nguyen VN, Mai TH. Active case finding to detect symptomatic and subclinical pulmonary tuberculosis disease: implementation of computer-aided detection for chest radiography in Viet Nam. Western Pac Surveill Response J [Internet]. 2024 Oct. 12 [cited 2024 Nov. 21];15(4):12. Available from: https://ojs.wpro.who.int/ojs/index.php/wpsar/article/view/1118

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Section

Original Research