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基于聚类分析的脓毒症稳健预测因子的识别。

Identification of the robust predictor for sepsis based on clustering analysis.

机构信息

Division of Hematology-Oncology, Department of Internal Medicine, Yonsei University Wonju College of Medicine, Wonju, South Korea.

Department of Laboratory Medicine, Yonsei University Wonju College of Medicine, 162 Ilsan-dong, Wonju-city, 220-701, Gangwon-do, South Korea.

出版信息

Sci Rep. 2022 Feb 11;12(1):2336. doi: 10.1038/s41598-022-06310-8.

Abstract

Sepsis is a life-threatening disorder with high incidence and mortality rate. However, the early detection of sepsis is challenging due to lack of specific marker and various etiology. This study aimed to identify robust risk factors for sepsis via cluster analysis. The integrative task of the automatic platform (i.e., electronic medical record) and the expert domain was performed to compile clinical and medical information for 2,490 sepsis patients and 16,916 health check-up participants. The subjects were categorized into 3 and 4 groups based on seven clinical and laboratory markers (Age, WBC, NLR, Hb, PLT, DNI, and MPXI) by K-means clustering. Logistic regression model was performed for all subjects including healthy control and sepsis patients, and cluster-specific cases, separately, to identify sepsis-related features. White blood cell (WBC), well-known parameter for sepsis, exhibited the insignificant association with the sepsis status in old age clusters (K3C3 and K4C3). Besides, NLR and DNI were the robust predictors in all subjects as well as three or four cluster-specific subjects including K3C3 or K4C3. We implemented the cluster-analysis for real-world hospital data to identify the robust predictors for sepsis, which could contribute to screen likely overlooked and potential sepsis patients (e.g., sepsis patients without WBC count elevation).

摘要

脓毒症是一种发病率和死亡率都很高的危及生命的疾病。然而,由于缺乏特异性标志物和多种病因,脓毒症的早期检测具有挑战性。本研究旨在通过聚类分析确定脓毒症的稳健风险因素。通过自动平台(即电子病历)和专家领域的综合任务,为 2490 名脓毒症患者和 16916 名健康体检参与者汇编了临床和医疗信息。根据 7 个临床和实验室标志物(年龄、白细胞计数、中性粒细胞与淋巴细胞比值、血红蛋白、血小板计数、直接胆红素与总胆红素比值和髓过氧化物酶),对受试者进行 K 均值聚类分析,分为 3 组和 4 组。对所有受试者(包括健康对照和脓毒症患者)和所有簇特异性病例进行逻辑回归模型分析,以确定与脓毒症相关的特征。白细胞(WBC)是脓毒症的已知参数,在老年组(K3C3 和 K4C3)中与脓毒症状态的关联不显著。此外,NLR 和 DNI 是所有受试者以及包括 K3C3 或 K4C3 的三个或四个簇特异性受试者的稳健预测因子。我们对真实医院数据进行了聚类分析,以确定脓毒症的稳健预测因子,这有助于筛选可能被忽视的和潜在的脓毒症患者(例如,白细胞计数不升高的脓毒症患者)。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a1e0/8837750/880a74ebb98a/41598_2022_6310_Fig1_HTML.jpg

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