痰
医学
肺结核
痰培养
结核分枝杆菌
内科学
胃肠病学
肺结核
基质辅助激光解吸/电离
质谱法
病理
化学
解吸
色谱法
吸附
有机化学
作者
Thi Loi Dao,Van Thuan Hoang,Tran Duc Anh Ly,Jean-Christophe Lagier,Sophie Alexandra Baron,Didier Raoult,Philippe Parola,Johan Courjon,Pierre Marty,Hervé Chaudet,Philippe Gautret
标识
DOI:10.1016/j.cmi.2021.02.031
摘要
ObjectivesThe aim was to evaluate the feasibility and diagnostic contribution of protein profiling using matrix-assisted laser desorption ionization time-of-flight (MALDI-TOF) mass spectrometry (MS) applied to sputum to diagnose pulmonary tuberculosis.MethodsSputum samples collected from patients suspected of having pulmonary tuberculosis were analysed using MALDI-TOF MS. Using the differentially expressed protein peaks, we compared three groups of patients, including those with confirmed pulmonary tuberculosis (PTB), those without tuberculosis but with a lower respiratory tract infection (non-TB LRTI) and those without tuberculosis and without an LRTI (non-TB controls).ResultsA total of 102 patients included 35 PTB, 36 non-TB LRTI and 31 non-TB controls. The model differentiated between the PTB patients and the non-TB controls using the 25 most differentially expressed protein peaks, with a sensitivity of 97%, 95% CI 85–100%, and a specificity of 77%, 95% CI 59–90%. The model distinguished the PTB patients from the non-TB LRTI patients using the ten most differentially expressed protein peaks, with a sensitivity of 80%, 95% CI 63–92%, and a specificity of 89%, 95% CI 74–97%. We observed that the negative predictive value of MALDI-TOF MS sputum analysis was higher (96%, 95% CI 80–100%) than that of direct sputum microscopic examination and sputum culture (78%, 95% CI 62–89%) for non-TB controls. When MALDI-TOF MS sputum analysis and direct microscopic examination were combined, the negative predictive value reached 94%, 95% CI 80–99%, for non-TB LRTI patients.DiscussionThese results suggest that MALDI-TOF MS sputum analysis coupled with microscopic examination could be used as a screening tool for diagnosing pulmonary TB.
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