Frontiers in Surgery (Jan 2023)

Difference between the blood samples of patients with bone and joint tuberculosis and patients with tuberculosis studied using machine learning

  • Zhen Ye,
  • Jichong Zhu,
  • Chong Liu,
  • Qing Lu,
  • Shaofeng Wu,
  • Chenxing Zhou,
  • Tuo Liang,
  • Jie Jiang,
  • Hao Li,
  • Tianyou Chen,
  • Jiarui Chen,
  • Guobing Deng,
  • Yuanlin Yao,
  • Shian Liao,
  • Chaojie Yu,
  • Xuhua Sun,
  • Liyi Chen,
  • Hao Guo,
  • Wuhua Chen,
  • Wenyong Jiang,
  • Binguang Fan,
  • Xiang Tao,
  • Zhenwei Yang,
  • Wenfei Gu,
  • Yihan Wang,
  • Xinli Zhan

DOI
https://doi.org/10.3389/fsurg.2022.1031105
Journal volume & issue
Vol. 9

Abstract

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BackgroundTuberculosis (TB) is a chronic infectious disease. Bone and joint TB is a common type of extrapulmonary TB and often occurs secondary to TB infection. In this study, we aimed to find the difference in the blood examination results of patients with bone and joint TB and patients with TB by using machine learning (ML) and establish a diagnostic model to help clinicians better diagnose the disease and allow patients to receive timely treatment.MethodsA total of 1,667 patients were finally enrolled in the study. Patients were randomly assigned to the training and validation cohorts. The training cohort included 1,268 patients: 158 patients with bone and joint TB and 1,110 patients with TB. The validation cohort included 399 patients: 48 patients with bone and joint TB and 351 patients with TB. We used three ML methods, namely logistic regression, LASSO regression, and random forest, to screen the differential variables, obtained the most representative variables by intersection to construct the prediction model, and verified the performance of the proposed prediction model in the validation group.ResultsThe results revealed a great difference in the blood examination results of patients with bone and joint TB and those with TB. Infectious markers such as hs-CRP, ESR, WBC, and NEUT were increased in patients with bone and joint TB. Patients with bone and joint TB were found to have higher liver function burden and poorer nutritional status. The factors screened using ML were PDW, LYM, AST/ALT, BUN, and Na, and the nomogram diagnostic model was constructed using these five factors. In the training cohort, the area under the curve (AUC) value of the model was 0.71182, and the C value was 0.712. In the validation cohort, the AUC value of the model was 0.6435779, and the C value was 0.644.ConclusionWe used ML methods to screen out the blood-specific factors—PDW, LYM, AST/ALT, BUN, and Na+—of bone and joint TB and constructed a diagnostic model to help clinicians better diagnose the disease in the future.

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