Mojisola Clara Hosu, Lindiwe Modest Faye, Teke Apalata
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引用次数: 0
摘要
耐药性结核病(DR-TB)和艾滋病病毒(HIV)合并感染给全球公共卫生和实现 2035 年全球终结结核病战略带来了难题。我们对被诊断为 DR-TB 并接受治疗的患者的医疗记录进行了描述性、回顾性审查。采用学生 t 检验来评估两个均值之间的差异,并对组间差异进行方差分析。使用带或不带趋势的卡方检验(Chi-square test with or without trend)或费舍尔精确检验(Fischer's exact test)来检验分类变量之间的关联程度。逻辑回归用于确定 DR-TB 治疗结果的预测因素。还使用了决策树分类器,这是一种有监督的机器学习算法。数据分析使用了 Python 3.8 版和 R 4.1.1 版软件。统计显著性以 0.05 的 p 值和 95% 的置信区间 (CI) 为标准。研究共纳入 456 名 DR-TB 患者,其中男性患者(n = 256,56.1%)多于女性患者(n = 200,43.9%)。总体治疗成功率为 61.4%。与大流行前相比,COVID-19 大流行期间治愈患者的比例明显下降。我们的研究结果表明,机器学习可用于预测肺结核患者的治疗结果。
Predicting Treatment Outcomes in Patients with Drug-Resistant Tuberculosis and Human Immunodeficiency Virus Coinfection, Using Supervised Machine Learning Algorithm.
Drug-resistant tuberculosis (DR-TB) and HIV coinfection present a conundrum to public health globally and the achievement of the global END TB strategy in 2035. A descriptive, retrospective review of medical records of patients, who were diagnosed with DR-TB and received treatment, was conducted. Student's t-test was performed to assess differences between two means and ANOVA between groups. The Chi-square test with or without trend or Fischer's exact test was used to test the degree of association of categorical variables. Logistic regression was used to determine predictors of DR-TB treatment outcomes. A decision tree classifier, which is a supervised machine learning algorithm, was also used. Python version 3.8. and R version 4.1.1 software were used for data analysis. A p-value of 0.05 with a 95% confidence interval (CI) was used to determine statistical significance. A total of 456 DR-TB patients were included in the study, with more male patients (n = 256, 56.1%) than female patients (n = 200, 43.9%). The overall treatment success rate was 61.4%. There was a significant decrease in the % of patients cured during the COVID-19 pandemic compared to the pre-pandemic period. Our findings showed that machine learning can be used to predict TB patients' treatment outcomes.
期刊介绍:
Pathogens (ISSN 2076-0817) publishes reviews, regular research papers and short notes on all aspects of pathogens and pathogen-host interactions. There is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental and/or methodical details must be provided for research articles.