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Predicting hospital-acquired pneumonia among schizophrenic patients: a machine learning approach

机译:预测精神分裂症患者的医院获得性肺炎:一种机器学习方法

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Medications are frequently used for treating schizophrenia, however, anti-psychotic drug use is known to lead to cases of pneumonia. The purpose of our study is to build a model for predicting hospital-acquired pneumonia among schizophrenic patients by adopting machine learning techniques. Data related to a total of 185 schizophrenic in-patients at a Taiwanese district mental hospital diagnosed with pneumonia between 2013 ~?2018 were gathered. Eleven predictors, including gender, age, clozapine use, drug-drug interaction, dosage, duration of medication, coughing, change of leukocyte count, change of neutrophil count, change of blood sugar level, change of body weight, were used to predict the onset of pneumonia. Seven machine learning algorithms, including classification and regression tree, decision tree, k-nearest neighbors, na?ve Bayes, random forest, support vector machine, and logistic regression were utilized to build predictive models used in this study. Accuracy, area under receiver operating characteristic curve, sensitivity, specificity, and kappa were used to measure overall model performance. Among the seven adopted machine learning algorithms, random forest and decision tree exhibited the optimal predictive accuracy versus the remaining algorithms. Further, six most important risk factors, including, dosage, clozapine use, duration of medication, change of neutrophil count, change of leukocyte count, and drug-drug interaction, were also identified. Although schizophrenic patients remain susceptible to the threat of pneumonia whenever treated with anti-psychotic drugs, our predictive model may serve as a useful support tool for physicians treating such patients.
机译:药物通常用于治疗精神分裂症,但是,已知使用抗精神病药可导致肺炎。我们研究的目的是通过采用机器学习技术来建立预测精神分裂症患者医院获得性肺炎的模型。收集了2013年至2018年之间台湾地区精神病院诊断为肺炎的185位精神分裂症住院患者的相关数据。包括性别,年龄,氯氮平使用,药物相互作用,剂量,用药时间,咳嗽,白细胞计数变化,中性粒细胞计数变化,血糖水平,体重变化在内的11种预测因子用于预测肺炎发作。利用七种机器学习算法,包括分类和回归树,决策树,k最近邻,朴素贝叶斯,随机森林,支持向量机和逻辑回归来构建本研究中使用的预测模型。准确性,接收器工作特性曲线下的面积,灵敏度,特异性和kappa用于衡量总体模型性能。在采用的七种机器学习算法中,随机森林和决策树相对于其余算法表现出最佳的预测准确性。此外,还确定了六个最重要的危险因素,包括剂量,氯氮平的使用,用药时间,嗜中性粒细胞计数的变化,白细胞计数的变化以及药物与药物的相互作用。尽管无论何时用抗精神病药治疗,精神分裂症患者仍然容易受到肺炎的威胁,但我们的预测模型可能为医师治疗此类患者提供有用的支持工具。

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