A novel model for predicting deep-seated candidiasis due to Candida glabrata among cancer patients: A 6-year study in a cancer center of China.

IF 2.7 3区 医学 Q3 INFECTIOUS DISEASES Medical mycology Pub Date : 2024-01-27 DOI:10.1093/mmy/myae010
Ding Li, Lin Wang, Zhihong Zhao, Changsen Bai, Xichuan Li
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Abstract

Followed by Candida albicans, Candida glabrata ranks as the second major species contributing to invasive candidiasis. Given the higher medical burden and lower susceptibility to azoles in C. glabrata infections, identifying these infections is critical. From 2016 to 2021, patients with deep-seated candidiasis due to C. glabrata and non-glabrata Candida met the criteria to be enrolled in the study. Clinical data were randomly divided into training and validation cohorts. A predictive model and nomogram were constructed using R software based on the stepwise algorithm and logistic regression. The performance of the model was assessed by the area under the receiver operating characteristic curve and decision curve analysis (DCA). A total of 197 patients were included in the study, 134 of them infected with non-glabrata Candida and 63 with C. glabrata. The predictive model for C. glabrata infection consisted of gastrointestinal cancer, co-infected with bacteria, diabetes mellitus, and kidney dysfunction. The specificity was 84.1% and the sensitivity was 61.5% in the validation cohort when the cutoff value was set to the same as the training cohort. Based on the model, treatment for patients with a high-risk threshold was better than 'treatment for all' in DCA, while opting low-risk patients out of treatment was also better than 'treatment for none' in opt-out DCA. The predictive model provides a rapid method for judging the probability of infections due to C. glabrata and will be of benefit to clinicians making decisions about therapy strategies.

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预测癌症患者深层念珠菌病的新型模型:在中国一家癌症中心进行的为期六年的研究。
继白念珠菌之后,光滑念珠菌是导致侵袭性念珠菌病的第二大主要菌种。鉴于格氏念珠菌感染的医疗负担较重,对唑类药物的敏感性较低,因此识别这些感染至关重要。从 2016 年到 2021 年,由克氏念珠菌和非克氏念珠菌引起的深部念珠菌病患者符合研究标准,被纳入研究。临床数据被随机分为训练组和验证组。基于逐步算法和逻辑回归,使用 R 软件构建了预测模型和提名图。模型的性能通过接收者操作特征曲线(ROC)下面积(AUC)和决策曲线分析(DCA)进行评估。研究共纳入了 197 名患者,其中 134 人感染了非革兰念珠菌,63 人感染了革兰念珠菌。格氏念珠菌感染的预测模型包括胃肠道癌症、合并细菌感染、糖尿病和肾功能障碍。当截断值设定为与训练队列相同时,验证队列的特异性为 84.1%,灵敏度为 61.5%。根据该模型,在 DCA 中,对具有高风险阈值的患者进行治疗优于 "对所有人进行治疗",而在选择不进行 DCA 的情况下,选择对低风险患者不进行治疗也优于 "对所有人不进行治疗"。该预测模型提供了一种快速判断感染丙种球蛋白概率的方法,将有助于临床医生决定治疗策略。
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来源期刊
Medical mycology
Medical mycology 医学-兽医学
CiteScore
5.70
自引率
3.40%
发文量
632
审稿时长
12 months
期刊介绍: Medical Mycology is a peer-reviewed international journal that focuses on original and innovative basic and applied studies, as well as learned reviews on all aspects of medical, veterinary and environmental mycology as related to disease. The objective is to present the highest quality scientific reports from throughout the world on divergent topics. These topics include the phylogeny of fungal pathogens, epidemiology and public health mycology themes, new approaches in the diagnosis and treatment of mycoses including clinical trials and guidelines, pharmacology and antifungal susceptibilities, changes in taxonomy, description of new or unusual fungi associated with human or animal disease, immunology of fungal infections, vaccinology for prevention of fungal infections, pathogenesis and virulence, and the molecular biology of pathogenic fungi in vitro and in vivo, including genomics, transcriptomics, metabolomics, and proteomics. Case reports are no longer accepted. In addition, studies of natural products showing inhibitory activity against pathogenic fungi are not accepted without chemical characterization and identification of the compounds responsible for the inhibitory activity.
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