Frontiers in Microbiology (Oct 2023)

The diagnosis of tuberculous meningitis: advancements in new technologies and machine learning algorithms

  • Yi Shi,
  • Yi Shi,
  • Chengxi Zhang,
  • Shuo Pan,
  • Yi Chen,
  • Xingguo Miao,
  • Xingguo Miao,
  • Xingguo Miao,
  • Guoqiang He,
  • Guoqiang He,
  • Yanchan Wu,
  • Hui Ye,
  • Hui Ye,
  • Hui Ye,
  • Chujun Weng,
  • Huanhuan Zhang,
  • Wenya Zhou,
  • Xiaojie Yang,
  • Chenglong Liang,
  • Dong Chen,
  • Dong Chen,
  • Liang Hong,
  • Feifei Su,
  • Feifei Su,
  • Feifei Su

DOI
https://doi.org/10.3389/fmicb.2023.1290746
Journal volume & issue
Vol. 14

Abstract

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Tuberculous meningitis (TBM) poses a diagnostic challenge, particularly impacting vulnerable populations such as infants and those with untreated HIV. Given the diagnostic intricacies of TBM, there’s a pressing need for rapid and reliable diagnostic tools. This review scrutinizes the efficacy of up-and-coming technologies like machine learning in transforming TBM diagnostics and management. Advanced diagnostic technologies like targeted gene sequencing, real-time polymerase chain reaction (RT-PCR), miRNA assays, and metagenomic next-generation sequencing (mNGS) offer promising avenues for early TBM detection. The capabilities of these technologies are further augmented when paired with mass spectrometry, metabolomics, and proteomics, enriching the pool of disease-specific biomarkers. Machine learning algorithms, adept at sifting through voluminous datasets like medical imaging, genomic profiles, and patient histories, are increasingly revealing nuanced disease pathways, thereby elevating diagnostic accuracy and guiding treatment strategies. While these burgeoning technologies offer hope for more precise TBM diagnosis, hurdles remain in terms of their clinical implementation. Future endeavors should zero in on the validation of these tools through prospective studies, critically evaluating their limitations, and outlining protocols for seamless incorporation into established healthcare frameworks. Through this review, we aim to present an exhaustive snapshot of emerging diagnostic modalities in TBM, the current standing of machine learning in meningitis diagnostics, and the challenges and future prospects of converging these domains.

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