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评估一种新型 BLOOMY 评分系统,用于预测住院血流感染成人的死亡率。

Assessment of a novel BLOOMY score for predicting mortality in hospitalised adults with bloodstream infection.

机构信息

Department of Internal Medicine, Tampere University Hospital, P.O. Box 2000, 33521, Tampere, Finland.

Faculty of Medicine and Health Technology, Tampere University, Arvo Ylpön Katu 34, 33520, Tampere, Finland.

出版信息

Infection. 2024 Aug;52(4):1511-1517. doi: 10.1007/s15010-024-02254-5. Epub 2024 Apr 23.

Abstract

PURPOSE

A German multicentre study BLOOMY was the first to use machine learning approach to develop mortality prediction scores for bloodstream infection (BSI) patients, but the scores have not been assessed in other cohorts. Our aim was to assess how the BLOOMY 14-day and 6-month scores estimate mortality in our cohort of 497 cases with BSI.

METHODS

Clinical data, laboratory data, and patient outcome were gathered retrospectively from patient records. The scores were calculated as presented in the BLOOMY study with the exception in the day of the evaluation.

RESULTS

In our cohort, BLOOMY 14-day score estimated death by day 14 with an area under curve (AUC) of 0.87 (95% Confidence Interval 0.80-0.94). Using ≥ 6 points as a cutoff, sensitivity was 68.8%, specificity 88.1%, positive predictive value (PPV) 39.3%, and negative predictive value (NPV) 96.2%. These results were similar in the original BLOOMY cohort and outweighed both quick Sepsis-Related Organ Failure Assessment (AUC 0.76) and Pitt Bacteraemia Score (AUC 0.79) in our cohort. BLOOMY 6-month score to estimate 6-month mortality had an AUC of 0.79 (0.73-0.85). Using ≥ 6 points as a cutoff, sensitivity was 98.3%, specificity 10.7%, PPV 25.7%, and NPV 95.2%. AUCs of 6-month score to estimate 1-year and 5-year mortality were 0.80 (0.74-0.85) and 0.77 (0.73-0.82), respectively.

CONCLUSION

The BLOOMY 14-day and 6-month scores performed well in the estimations of mortality in our cohort and exceeded some established scores, but their adoption in clinical work remains to be seen.

摘要

目的

德国多中心研究 BLOOMY 是第一个使用机器学习方法为血流感染(BSI)患者开发死亡率预测评分的研究,但这些评分尚未在其他队列中进行评估。我们的目的是评估 BLOOMY 14 天和 6 个月评分在我们 497 例 BSI 患者队列中的死亡率估计能力。

方法

临床数据、实验室数据和患者结局从病历中回顾性收集。评分按照 BLOOMY 研究中的方法计算,只是在评估日有所不同。

结果

在我们的队列中,BLOOMY 14 天评分在第 14 天估计死亡,曲线下面积(AUC)为 0.87(95%置信区间 0.80-0.94)。使用≥6 分为截断值,敏感性为 68.8%,特异性为 88.1%,阳性预测值(PPV)为 39.3%,阴性预测值(NPV)为 96.2%。这些结果在原始 BLOOMY 队列中相似,并且优于我们队列中的快速脓毒症相关器官衰竭评估(AUC 0.76)和 Pitt 菌血症评分(AUC 0.79)。BLOOMY 6 个月评分预测 6 个月死亡率的 AUC 为 0.79(0.73-0.85)。使用≥6 分为截断值,敏感性为 98.3%,特异性为 10.7%,PPV 为 25.7%,NPV 为 95.2%。6 个月评分预测 1 年和 5 年死亡率的 AUC 分别为 0.80(0.74-0.85)和 0.77(0.73-0.82)。

结论

BLOOMY 14 天和 6 个月评分在我们的队列中对死亡率的估计表现良好,超过了一些已建立的评分,但它们在临床工作中的应用仍有待观察。

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