Tuberculosis is one of the major infectious diseases that seriously endanger human health. Since 2014, it has surpassed human immunodeficiency virus/acquired immunodeficiency syndrome as the first infectious disease in patients with single pathogens. China is the third-largest country in the world in terms of high burden of tuberculosis. In 2016, there were about 900 000 new cases of tuberculosis in China. China is facing a severe tuberculosis epidemic, especially for the early diagnosis of tuberculosis and misdiagnosis of tuberculosis, which leads to delay in treatment and the spread of tuberculosis. With the application of artificial intelligence in the medical field, machine learning and deep learning methods have shown important value in the diagnosis of tuberculosis. This article will explain the application status and future development of machine learning and deep learning in the diagnosis of tuberculosis.
ObjectiveTo investigate the relationship between the gene polymorphism of autophagy-related gene 3 (ATG3) and the development and clinical symptoms of tuberculosis in tuberculosis patients in western China.MethodsAccording to the inclusion and exclusion criteria, 476 tuberculosis patients (tuberculosis group) who were admitted to West China Hospital of Sichuan University from December 2014 to November 2015 and 475 healthy controls (healthy control group) who underwent health examination during the same period were finally included. High-throughput genotyping technology was used to detect genotypes of three single nucleotide polymorphisms (SNPs) (rs2638029, rs2638037, rs3732817) of ATG3 gene, and relevant clinical data of subjects were collected. The relationship between gene polymorphism and susceptibility to tuberculosis and clinical symptoms was analyzed by statistical methods such as χ2 test and logistic regression model.ResultsExcept for GA genotype [odds ratio (OR) =1.375, 95% confidence interval (CI) (1.048, 1.805), P=0.022] and dominant genetic model GG+GA [OR=1.326, 95%CI (1.024, 1.717), P=0.032] in rs2638037, there was no statistically significant difference in the allele frequency, genotype and genetic patterns of rs2638029, rs3732817 and rs2638037 between the two groups (P>0.05), after the adjustment of the gender and age. But after correction by Bonferroni, GA genotype and dominant genetic patterns GG+GA showed no statistical significance between the two groups (P=0.132, 0.201). Haplotype CGA was associated with tuberculosis susceptibility [OR=1.262, 95%CI (1.001,1.593), P=0.048]. There was a statistically significant difference in weight loss symptoms among rs2638037 genotypes (χ2=8.131, P=0.017).ConclusionsThe haplotype CGA of three SNPs of ATG3 gene may be involved in the development of tuberculosis. The rs2638037 single nucleotide polymorphism may be related to weight loss, and more research is needed in the future.
ObjectiveTo evaluate the expression level and diagnostic value of lnc-PAPSS2-2 (lnc-PA) in peripheral blood of active pulmonary tuberculosis (PTB) patients.MethodsFrom January 2011 to January 2018, 798 patients with active PTB and 1 650 healthy people undergoing health examination in West China Hospital of Sichuan University and their electronic health records (EHR) were collected. Peripheral blood lnc-PA levels were quantified by quantitative real-time polymerase chain reaction method. The data of lnc-PA and EHR were modeled using nomogram, and the receiver operating characteristic (ROC) curves of lnc-PA, EHR and the combination of lnc-PA and EHR were compared to evaluate the diagnostic value of lnc-PA for active PTB.ResultsThe level of lnc-PA was lower in active PTB patients than that in healthy controls (P<0.001). The areas under ROC curve of lnc-PA, EHR and their combination were 0.619, 0.962, and 0.964 in the training set and 0.626, 0.950, and 0.950 in the validation set, respectively.ConclusionThe diagnostic ability of lnc-PA is poor and that of EHR is good, which indicates that the clinical value of lnc-PA as a biomarker of active PTB remains to be further explored.