MRI advances in the imaging diagnosis of tuberculous meningitis: opportunities and innovations

Front Microbiol. 2023 Dec 11:14:1308149. doi: 10.3389/fmicb.2023.1308149. eCollection 2023.

Abstract

Tuberculous meningitis (TBM) is not only one of the most fatal forms of tuberculosis, but also a major public health concern worldwide, presenting grave clinical challenges due to its nonspecific symptoms and the urgent need for timely intervention. The severity and the rapid progression of TBM underscore the necessity of early and accurate diagnosis to prevent irreversible neurological deficits and reduce mortality rates. Traditional diagnostic methods, reliant primarily on clinical findings and cerebrospinal fluid analysis, often falter in delivering timely and conclusive results. Moreover, such methods struggle to distinguish TBM from other forms of neuroinfections, making it critical to seek advanced diagnostic solutions. Against this backdrop, magnetic resonance imaging (MRI) has emerged as an indispensable modality in diagnostics, owing to its unique advantages. This review provides an overview of the advancements in MRI technology, specifically emphasizing its crucial applications in the early detection and identification of complex pathological changes in TBM. The integration of artificial intelligence (AI) has further enhanced the transformative impact of MRI on TBM diagnostic imaging. When these cutting-edge technologies synergize with deep learning algorithms, they substantially improve diagnostic precision and efficiency. Currently, the field of TBM imaging diagnosis is undergoing a phase of technological amalgamation. The melding of MRI and AI technologies unquestionably signals new opportunities in this specialized area.

Keywords: MRI; Mycobacterium tuberculosis; artificial intelligence; machine learning; neurological infections; tuberculous meningitis.

Publication types

  • Review

Grants and funding

The author(s) declare financial support was received for the research, authorship, and/or publication of this article. This work is supported by the financial support from Zhejiang Province Health Key Project (2021) (grant no. WKJ-ZJ-2138), Ministry of Education Industry-Academia Talent Development Program (no. 202101160011), 5G Network-based Platform for Precision Emergency Medical Care in Regional Hospital Clusters funded by the Ministry of Industry and Information Technology of the People’s Republic of China (grant no. 2020NO.78), Wenzhou Science & Technology Bureau (Y20210097), and Wenzhou Science and Technology Association Service technology innovation project – General practice wisdom file record system (2022-jczc54). Integration of Medical Prevention and Artificial Intelligence Early Warning in Major Infectious Disease with Multi-Point Trigger Monitoring System (202101-202312).