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Diagnostic Prediction Model for Tuberculous Meningitis: An Individual Participant Data Meta-Analysis.

Authors :
Stadelman-Behar AM
Tiffin N
Ellis J
Creswell FV
Ssebambulidde K
Nuwagira E
Richards L
Lutje V
Hristea A
Jipa RE
Vidal JE
Azevedo RGS
Monteiro de Almeida S
Kussen GB
Nogueira K
Gualberto FAS
Metcalf T
Heemskerk AD
Dendane T
Khalid A
Ali Zeggwagh A
Bateman K
Siebert U
Rochau U
van Laarhoven A
van Crevel R
Ganiem AR
Dian S
Jarvis J
Donovan J
Nguyen Thuy Thuong T
Thwaites GE
Bahr NC
Meya DB
Boulware DR
Boyles TH
Source :
The American journal of tropical medicine and hygiene [Am J Trop Med Hyg] 2024 Jul 16; Vol. 111 (3), pp. 546-553. Date of Electronic Publication: 2024 Jul 16 (Print Publication: 2024).
Publication Year :
2024

Abstract

No accurate and rapid diagnostic test exists for tuberculous meningitis (TBM), leading to delayed diagnosis. We leveraged data from multiple studies to improve the predictive performance of diagnostic models across different populations, settings, and subgroups to develop a new predictive tool for TBM diagnosis. We conducted a systematic review to analyze eligible datasets with individual-level participant data (IPD). We imputed missing data and explored three approaches: stepwise logistic regression, classification and regression tree (CART), and random forest regression. We evaluated performance using calibration plots and C-statistics via internal-external cross-validation. We included 3,761 individual participants from 14 studies and nine countries. A total of 1,240 (33%) participants had "definite" (30%) or "probable" (3%) TBM by case definition. Important predictive variables included cerebrospinal fluid (CSF) glucose, blood glucose, CSF white cell count, CSF differential, cryptococcal antigen, HIV status, and fever presence. Internal validation showed that performance varied considerably between IPD datasets with C-statistic values between 0.60 and 0.89. In external validation, CART performed the worst (C = 0.82), and logistic regression and random forest had the same accuracy (C = 0.91). We developed a mobile app for TBM clinical prediction that accounted for heterogeneity and improved diagnostic performance (https://tbmcalc.github.io/tbmcalc). Further external validation is needed.

Details

Language :
English
ISSN :
1476-1645
Volume :
111
Issue :
3
Database :
MEDLINE
Journal :
The American journal of tropical medicine and hygiene
Publication Type :
Academic Journal
Accession number :
39013385
Full Text :
https://doi.org/10.4269/ajtmh.23-0789