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侵袭性念珠菌病和癌症患者预后危险因素预测:一项单中心回顾性研究。

Prediction of Prognostic Risk Factors in Patients with Invasive Candidiasis and Cancer: A Single-Centre Retrospective Study.

机构信息

Department of Dermatology, The First Hospital of China Medical University, 110001 Shenyang, China.

Center for Translational Medicine Research and Development, Shen Zhen Institutes of Advanced Technology, Chinese Academy of Science, Shenzhen, Guangdong 518055, China.

出版信息

Biomed Res Int. 2022 Jun 2;2022:7896218. doi: 10.1155/2022/7896218. eCollection 2022.

Abstract

BACKGROUND

Invasive candidiasis is a common cancer-related complication with a high fatality rate. If patients with a high risk of dying in the hospital are identified early and accurately, physicians can make better clinical judgments. However, epidemiological analyses and mortality prediction models of cancer patients with invasive candidiasis remain limited.

METHOD

A set of 40 potential risk factors was acquired in a sample of 258 patients with both invasive candidiasis and cancer. To begin, risk factors for vs. non- infections and persistent vs. nonpersistent infections were analysed using classic statistical methods. Then, we applied three machine learning models (random forest, logistic regression, and support vector machine) to identify prognostic indicators related to mortality. Prediction performance of different models was assessed by precision, recall, 1 score, accuracy, and AUC.

RESULTS

Of the 258 patients both with invasive candidiasis and cancer included in the analysis. The median age of patients was 62 years, and 95 (36.82%) patients were older than 65 years, of which 178 (66.28%) were male. And 186 (72.1%) patients underwent surgery 2 weeks before data collection, 100 (39.1%) patients stayed in ICU during hospitalisation, 99 (38.4%) patients had bacterial blood infection, 85 (32.9%) patients had persistent invasive candidiasis, and 41 (15.9%) patients died within 30 days. The usage of drainage catheter and prolonged length of hospitalisation are the dominant risk factors for non- albicans infections and persistent infections, respectively. Risk factors, such as septic shock, history of surgery within the past 2 weeks, usage of drainage tubes, length of stay in ICU, total parenteral nutrition, serum creatinine level, fungal antigen, stay in ICU during hospitalisation, and total bilirubin level, were significant predictors of death. The RF model outperformed the LR and SVM models. Precision, recall, 1 score, accuracy, and AUC for RF were 64.29%, 75.63%, 69.23%, 89.61%, and 91.28%.

CONCLUSIONS

In this study, the machine learning-based models accurately predicted the prognosis of cancer and invasive candidiasis patients. The algorithm could be used to help clinicians in high-risk patients' early intervention.

摘要

背景

侵袭性念珠菌病是一种常见的癌症相关并发症,死亡率很高。如果能够早期准确地识别出有高死亡风险的住院患者,医生就能做出更好的临床判断。然而,癌症合并侵袭性念珠菌病患者的流行病学分析和死亡率预测模型仍然有限。

方法

在 258 例侵袭性念珠菌病合并癌症患者的样本中,获得了一组 40 个潜在风险因素。首先,使用经典统计方法分析了 感染与非感染以及持续性感染与非持续性感染的风险因素。然后,我们应用三种机器学习模型(随机森林、逻辑回归和支持向量机)来识别与死亡率相关的预后指标。通过精度、召回率、1 分、准确率和 AUC 评估不同模型的预测性能。

结果

在纳入分析的 258 例侵袭性念珠菌病合并癌症患者中,患者的中位年龄为 62 岁,95 例(36.82%)患者年龄大于 65 岁,其中 178 例(66.28%)为男性。186 例(72.1%)患者在数据采集前 2 周接受了手术,100 例(39.1%)患者在住院期间入住 ICU,99 例(38.4%)患者有菌血症,85 例(32.9%)患者有持续性侵袭性念珠菌病,41 例(15.9%)患者在 30 天内死亡。引流管的使用和住院时间延长是导致非白色念珠菌感染和持续性感染的主要危险因素。脓毒性休克、过去 2 周内手术史、引流管使用、入住 ICU 时间、全肠外营养、血清肌酐水平、真菌抗原、住院期间入住 ICU 和总胆红素水平等危险因素是死亡的显著预测因素。RF 模型的表现优于 LR 和 SVM 模型。RF 的精度、召回率、1 分、准确率和 AUC 分别为 64.29%、75.63%、69.23%、89.61%和 91.28%。

结论

在这项研究中,基于机器学习的模型准确预测了癌症合并侵袭性念珠菌病患者的预后。该算法可用于帮助临床医生对高危患者进行早期干预。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8aeb/9185171/1c9f8fa9ea40/BMRI2022-7896218.001.jpg

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