A Novel Diagnostic Prediction Model for Distinguishing Between Tuberculous and Cryptococcal Meningitis.

IF 1.2 Q2 MEDICINE, GENERAL & INTERNAL
Mengqi Niu, Zhenzhen Bai, Liang Dong, Wei Zheng, Xialing Wang, Nannan Dong, Si Tian, Kebin Zeng
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Abstract

Background and aim: Tuberculous meningitis (TBM) and cryptococcal meningitis (CM) are easily misdiagnosed due to atypical clinical symptoms. It is difficult for physcians to achieve a rapid and accurate differential diagnosis of TBM in the early stages of disease onset. The aim of this study was to construct a diagnostic prediction model for TBM and CM.Methods: In this retrospective study, 194 patients with TBM and CM were divided into two groups: training group (163 patients) and validation group (31 patients). Univariate and multivariate analyses were performed on the training group patients. The diagnostic factors were selected to construct the differential diagnostic prediction model for TBM and CM, and the prediction model was verified. A receiver operating characteristics curve (ROC) was constructed and used to evaluate the diagnostic value of the novel model.Results: Univariate analysis of clinical characteristics revealed differences in eight parameters (P<0.05) between tuberculous meningitis and cryptococcal meningitis. The multivariate analyses showed there were five independent differential factors including age, disease course, albumin-to-globulin ratio, cerebrospinal fluid protein, and cerebrospinal fluid sugar to blood sugar ratio in this study between TBM and CM, while there was no significant difference in the number of nucleated cells in CSF (P=0.088). A differential diagnosis model for TBM and CM was constructed based on those factors. A ROC was constructed with an area under curve [AUC] of 94.5%, a sensitivity of 85.71%, and specificity of 94.59% in the training group.Conclusion: The novel diagnostic scoring model for TBM and CM has greater differential diagnosis potential than previous reports, which can provide more reliable preliminary diagnosis results for primary hospitals, effectively reduce misdiagnosis, and provide references for early treatment.

鉴别结核性和隐球菌性脑膜炎的新型诊断预测模型。
背景与目的:结核性脑膜炎(TBM)和隐球菌性脑膜炎(CM)因临床症状不典型而易误诊。在疾病发病的早期,医生很难对TBM进行快速准确的鉴别诊断。本研究的目的是建立TBM和CM的诊断预测模型。方法:回顾性研究194例TBM和CM患者,分为训练组(163例)和验证组(31例)。对训练组患者进行单因素和多因素分析。选取诊断因子构建TBM与CM的鉴别诊断预测模型,并对预测模型进行验证。构建了受试者工作特征曲线(ROC)来评价新模型的诊断价值。结果:临床特征单因素分析显示8项参数存在差异(PP=0.088)。基于这些因素,建立了TBM和CM的鉴别诊断模型。训练组的ROC曲线下面积(AUC)为94.5%,灵敏度为85.71%,特异性为94.59%。结论:新型TBM和CM诊断评分模型较以往报道具有更大的鉴别诊断潜力,可为基层医院提供更可靠的初步诊断结果,有效减少误诊,为早期治疗提供参考。
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来源期刊
Clinical Medicine & Research
Clinical Medicine & Research MEDICINE, GENERAL & INTERNAL-
CiteScore
1.80
自引率
7.10%
发文量
25
期刊介绍: Clinical Medicine & Research is a peer reviewed publication of original scientific medical research that is relevant to a broad audience of medical researchers and healthcare professionals. Articles are published quarterly in the following topics: -Medicine -Clinical Research -Evidence-based Medicine -Preventive Medicine -Translational Medicine -Rural Health -Case Reports -Epidemiology -Basic science -History of Medicine -The Art of Medicine -Non-Clinical Aspects of Medicine & Science
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