Development of diagnostic algorithm using machine learning for distinguishing between active tuberculosis and latent tuberculosis infection
Luo Y, Xue Y, Liu W, Song H, Huang Y, Tang G, Wang F, Wang Q, et al. (10 authors)
BMC infectious diseases · 2022-12
Abstract
Background The discrimination between active tuberculosis (ATB) and latent tuberculosis infection (LTBI) remains challenging. The present study aims to investigate the value of diagnostic models established by machine learning based on multiple laboratory data for distinguishing Mycobacterium tuberculosis (Mtb) infection status. Methods T-SPOT, lymphocyte characteristic detection, and routine laboratory tests were performed on participants. Diagnostic models were built according to various algorithms. Results A total of 892 participants (468 ATB and 424 LTBI) and another 263 participants (125 ATB and 138 LTBI), were respectively enrolled at Tongji Hospital (discovery cohort) and Sino-French New City Hospital (validation cohort). Receiver operating characteristic (ROC) curve analysis showed that the value of individual indicator for differentiating ATB from LTBI was limited (area under the ROC curve (AUC) Conclusions Cforest model developed upon machine learning could serve as a valuable and prospective tool for identifying Mtb infection status. The present study provided a novel and viable idea for realizing the clinical diagnostic application of the combination of machine learning and laboratory findings.
MeSH terms
- Humans
- Mycobacterium tuberculosis
- Tuberculosis
- Antigens, Bacterial
- Sensitivity and Specificity
- Latent Tuberculosis
- Machine Learning