posted on 2019-10-24, 19:35authored byJiangpeng Wu, Jun Bai, Wei Wang, Lili Xi, Pengyi Zhang, Jingfeng Lan, Liansheng Zhang, Shuyan Li
Tuberculosis remains one of the deadliest
infectious diseases worldwide.
Only 5–15% of people infected with Mycobacterium tuberculosis develop active TB disease (ATB), while others remain latently infected
(LTBI) during their lifetime, which has a completely different clinical
treatment schedule. However, most current clinical diagnostic methods
are based on the immune response of M. tuberculosis infections and cannot distinguish ATB from LTBIs. Thus, the rapid
diagnosis of active or latent tuberculosis infections remains a serious
challenge for clinicians. In this work, based on the test data of
a total of 478 patients, 36 blood biochemical data were specially
included with T-SPOT.TB detection results which are all from routine
clinical practice as commercially available. Then a discrimination
method to detect ATB infections was successfully developed based on
these data by the random forest algorithm. This method presents a
robust classification performance with AUC as 0.9256 and 0.8731 for
the cross-validation set and the external validation set, respectively.
This work suggests an innovative strategy for identification of ATB
disease from a single drop of blood with advantages of being timely,
efficient, and economical. It also provides valuable information for
the comprehensive understanding of TB with deep associations between
TB infection and routine blood test data. The web server of this identification
method, called ATBdiscrimination, is now available online at http://lishuyan.lzu.edu.cn/ATB/ATBdiscrimination.html.