[The combined application of oligoclonal bands in cerebrospinal fluid and IgG intrathecal synthesis indicators and biochemical markers in the diagnosis of multiple sclerosis].

Q3 Medicine
K L Chen, J C Jiang, W C Jiang, L J Wang, S W Li, Z W Liu, Y Y Gu, G J Zhang
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引用次数: 0

Abstract

Objective: To establish and verify a diagnostic model for distinguishing multiple sclerosis (MS) from other neurological diseases with similar symptoms by usingcerebrospinal fluid oligoclonal band (CSF-OCB)combined with IgG intrathecal synthesis indicators and biochemical markers. Methods: Multiple sclerosis (MS) patients admitted to the Neurology Department of Beijing Tiantan Hospital affiliated with Capital Medical University from January 2014 to December 2022 were selected as the case group, while patients with similar neurological symptoms were selected as the control group. Using the case-control study design, a retrospective analysis was conducted on the detection of age, gender, oligoclonal bands in cerebrospinal fluid, IgG intrathecal synthesis indicators and biochemical indicators for all study subjects. The differential diagnosis model was determined by the multiple logistic regression analysis, and the receiver operating characteristic (ROC) curve was used to analyze the diagnostic efficiency of the differential diagnosis model for neurological diseases with similar symptoms to MS and other conditions. Results: This study included 167 patients in the case group and 335 patients in the control group, of which 128 patients in the case group and 265 patients in the control group were used to construct the model, and 39 patients in the case group and 70 patients in the control group were used for model validation. The differential diagnostic model constructed by a multivariate logistic regression model was Y=0.871×CSF-OCB-0.051×CSFprotein-0.231×CSFchloride+1.183×gender-0.036×LDH+35.770. The model showed that the area under the curve, sensitivity and specificity were respectively 0.916, 87.3% and 87.6%. The Delong test results showed that the diagnostic efficacy of the model was significantly different from OCB, IgG intrathecal synthesis indicators, and OCB combined with IgG intrathecal synthesis indicators (P<0.05). The new model validation showed that the actual diagnostic consistency rate for the MS group was 84.6%, while the actual diagnostic consistency rate for the control group was 90.0%. Conclusion: This study combines OCB, IgG intrathecal synthesis indicators, and biochemical indicators to establish a diagnostic prediction model for neurological diseases with similar clinical symptoms in MS. This model may have good differential diagnostic value and can better assist clinical diagnosis in the early stages of disease progression in MS patients.

[脑脊液中的寡克隆带和鞘内 IgG 合成指标与生化标记物在多发性硬化症诊断中的联合应用]。
目的利用脑脊液寡克隆带(CSF-OCB)结合鞘内 IgG 合成指标和生化标记物,建立并验证多发性硬化症(MS)与其他具有类似症状的神经系统疾病的诊断模型。研究方法选取2014年1月至2022年12月首都医科大学附属北京天坛医院神经内科收治的多发性硬化症(MS)患者为病例组,具有相似神经系统症状的患者为对照组。采用病例对照研究设计,对所有研究对象的年龄、性别、脑脊液寡克隆带、鞘内IgG合成指标及生化指标的检测情况进行回顾性分析。通过多元逻辑回归分析确定鉴别诊断模型,并利用接收器操作特征曲线(ROC)分析鉴别诊断模型对与多发性硬化症症状相似的神经系统疾病及其他疾病的诊断效率。研究结果本研究纳入了 167 例病例组患者和 335 例对照组患者,其中 128 例病例组患者和 265 例对照组患者用于构建模型,39 例病例组患者和 70 例对照组患者用于模型验证。通过多变量逻辑回归模型构建的鉴别诊断模型为:Y=0.871×CSF-OCB-0.051×CSFprotein-0.231×CSFchloride+1.183×性别-0.036×LDH+35.770。模型显示,曲线下面积、灵敏度和特异性分别为 0.916、87.3% 和 87.6%。Delong 检验结果显示,该模型的诊断效果与 OCB、鞘内 IgG 综合指标、OCB 结合鞘内 IgG 综合指标(PConclusion:本研究将 OCB、鞘内 IgG 综合指标和生化指标相结合,建立了多发性硬化临床症状相似的神经系统疾病诊断预测模型。该模型可能具有很好的鉴别诊断价值,能在多发性硬化症患者疾病进展的早期更好地辅助临床诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
中华预防医学杂志
中华预防医学杂志 Medicine-Medicine (all)
CiteScore
1.20
自引率
0.00%
发文量
12678
期刊介绍: Chinese Journal of Preventive Medicine (CJPM), the successor to Chinese Health Journal , was initiated on October 1, 1953. In 1960, it was amalgamated with the Chinese Medical Journal and the Journal of Medical History and Health Care , and thereafter, was renamed as People’s Care . On November 25, 1978, the publication was denominated as Chinese Journal of Preventive Medicine . The contents of CJPM deal with a wide range of disciplines and technologies including epidemiology, environmental health, nutrition and food hygiene, occupational health, hygiene for children and adolescents, radiological health, toxicology, biostatistics, social medicine, pathogenic and epidemiological research in malignant tumor, surveillance and immunization.
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