2023
DOI: 10.3892/br.2023.1616
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Construction of a risk model and deep learning network based on patients with active pulmonary tuberculosis and pulmonary inflammation

Abstract: Most patients with active pulmonary tuberculosis (TB) are difficult to be differentiated from pneumonia (PN), especially those with acid-fast bacillus smear-negative (AFB -) and interferon-γ release assay-positive (IGRA + ) results. Thus, the aim of the present study was to develop a risk model of low-cost and rapid test for the diagnosis of AFB -IGRA + TB from PN. A total of 41 laboratory variables of 204 AFB -IGRA + TB and 156 PN participants were retrospectively analyzed. Candidate variables were identified… Show more

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