Early identification and diagnosis of fournier gangrene: a machine learning approach integrating serological characterization.

IF 3 3区 医学 Q2 INFECTIOUS DISEASES
Jiayuan Zhang, Jingen Lu, Changfang Xiao, Jingwen Wu, Chen Wang, Yibo Yao
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Abstract

Background: Fournier Gangrene (FG) and Generalized Perianal Abscess (GPA) have similar clinical features. But FG has a high mortality and disability rate and needs to be identified and treated as early as possible. This study utilized machine learning methods to integrate clinical and metabolic features to promote early diagnosis of FG.

Methods: Serological characteristics were screened for patients with FG (n = 20) and GPA (n = 16). The metabolomic changes of FG were described based on untargeted metabolomics. We used machine learning tools to combine demographic data, clinical serology, and metabolomics data to establish disease-specific boundary points.

Results: There were significant differences in the serum metabolic profiles between the FG and GPA groups. 118 different metabolites were detected, mainly fatty acids. Based on machine learning integration of metabolic and clinical features, a differential diagnosis combination of Myo-inositol (MI), Procalcitonin (PCT) and Bistris was established for early identification and diagnosis of FG. The diagnostic performance was evaluated using GBDT, SVM, and LR algorithms, demonstrating robust discriminative ability (AUC: 0.80, 0.82, and 0.95; sensitivity: 0.90, 0.92, and 1.00). In addition, we identified 14 differential metabolic pathways. The activation of Necroptosis may lead to the occurrence of explosive perianal and perineal infections.

Conclusion: Our findings provide a biomarker combination for early diagnosis of FG in clinical applications. On the other hand, it provides important insights into the pathological mechanism differences between FG and GPA.

富尼尔坏疽的早期识别和诊断:一种整合血清学表征的机器学习方法。
背景:富尼耶坏疽(FG)和广泛性肛周脓肿(GPA)具有相似的临床特征。但是FG的死亡率和致残率很高,需要尽早发现和治疗。本研究利用机器学习方法整合临床和代谢特征,促进FG的早期诊断。方法:筛选FG (n = 20)和GPA (n = 16)患者的血清学特征。FG的代谢组学变化基于非靶向代谢组学。我们使用机器学习工具结合人口统计数据、临床血清学和代谢组学数据来建立疾病特异性边界点。结果:FG组和GPA组血清代谢谱有显著差异。检测到118种不同的代谢物,主要是脂肪酸。基于机器学习整合代谢和临床特征,建立肌醇(MI)、降钙素原(PCT)和Bistris的鉴别诊断组合,用于FG的早期识别和诊断。使用GBDT、SVM和LR算法评估诊断性能,显示出稳健的判别能力(AUC: 0.80、0.82和0.95;灵敏度:0.90、0.92和1.00)。此外,我们确定了14种不同的代谢途径。坏死性上睑下垂的激活可导致爆炸性肛周和会阴感染的发生。结论:本研究结果为FG的早期诊断提供了一种生物标志物组合。另一方面,它为FG和GPA的病理机制差异提供了重要的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
BMC Infectious Diseases
BMC Infectious Diseases 医学-传染病学
CiteScore
6.50
自引率
0.00%
发文量
860
审稿时长
3.3 months
期刊介绍: BMC Infectious Diseases is an open access, peer-reviewed journal that considers articles on all aspects of the prevention, diagnosis and management of infectious and sexually transmitted diseases in humans, as well as related molecular genetics, pathophysiology, and epidemiology.
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