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一种用于重症肺炎患者耶氏肺孢子菌肺炎的机器学习诊断模型。

A machine learning diagnostic model for Pneumocystis jirovecii pneumonia in patients with severe pneumonia.

作者信息

Li Xiaoqian, Xiong Xingyu, Liang Zongan, Tang Yongjiang

机构信息

Department of Critical Care Medicine, West China Hospital of Sichuan University, No. 37 Guoxue Alley, Chengdu, 610041, Sichuan, People's Republic of China.

Department of Respiratory and Critical Care Medicine, West China Hospital of Sichuan University, No. 37 Guoxue Alley, Chengdu, 610041, Sichuan, People's Republic of China.

出版信息

Intern Emerg Med. 2023 Sep;18(6):1741-1749. doi: 10.1007/s11739-023-03353-1. Epub 2023 Aug 2.

Abstract

BACKGROUND

The diagnosis of Pneumocystis jirovecii pneumonia (PCP) in patients presenting with severe pneumonia is challenging and delays in treatment were associated with worse prognosis. This study aimed to develop a rapid, easily available, noninvasive machine learning diagnostic model for PCP among patients with severe pneumonia.

METHODS

A retrospective study was performed in West China Hospital among consecutive patients with severe pneumonia who had undergone bronchoalveolar lavage for etiological evaluation between October 2010 and April 2021. Factors associated with PCP were identified and four diagnostic models were established using machine learning algorithms including Logistic Regression, eXtreme Gradient Boosting, Random Forest (RF) and LightGBM. The performance of these models were evaluated by the area under the receiver operating characteristic curve (AUC).

RESULTS

Ultimately, 704 patients were enrolled and randomly divided into a training set (n = 564) and a testing set (n = 140). Four factors were ultimately selected to establish the model including neutrophil, globulin, β-D-glucan and ground glass opacity. The RF model exhibited the greatest diagnostic performance with an AUC of 0.907. The calibration curve and decision curve analysis also demonstrated its accuracy and applicability.

CONCLUSIONS

We constructed a PCP diagnostic model in patients with severe pneumonia using four easily available and noninvasive clinical indicators. With satisfying diagnostic performance and good clinical practicability, this model may help clinicians to make early diagnosis of PCP, reduce the delays of treatment and improve the prognosis among these patients.

摘要

背景

对于出现严重肺炎的患者,诊断耶氏肺孢子菌肺炎(PCP)具有挑战性,治疗延迟与更差的预后相关。本研究旨在为重症肺炎患者开发一种快速、易于获得的非侵入性机器学习诊断模型用于PCP诊断。

方法

在华西医院进行了一项回顾性研究,研究对象为2010年10月至2021年4月期间因病因评估接受支气管肺泡灌洗的连续重症肺炎患者。确定与PCP相关的因素,并使用包括逻辑回归、极端梯度提升、随机森林(RF)和LightGBM在内的机器学习算法建立四个诊断模型。通过受试者操作特征曲线(AUC)下的面积评估这些模型的性能。

结果

最终纳入704例患者,并随机分为训练集(n = 564)和测试集(n = 140)。最终选择四个因素建立模型,包括中性粒细胞、球蛋白、β-D-葡聚糖和磨玻璃影。RF模型表现出最大的诊断性能,AUC为0.907。校准曲线和决策曲线分析也证明了其准确性和适用性。

结论

我们使用四个易于获得的非侵入性临床指标构建了重症肺炎患者的PCP诊断模型。该模型具有令人满意的诊断性能和良好的临床实用性,可能有助于临床医生早期诊断PCP,减少治疗延迟并改善这些患者的预后。

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