Suppr超能文献

一种新的细菌生长图模式分析,提高连续监测血培养系统的阳性预测值。

A New Bacterial Growth Graph Pattern Analysis to Improve Positive Predictive Value of Continuous Monitoring Blood Culture System.

机构信息

Department of Laboratory Medicine, Yonsei University Wonju College of Medicine, Wonju, South Korea.

School of Information and Communication Engineering, Chungbuk National University, Cheongju, South Korea.

出版信息

J Med Syst. 2018 Sep 4;42(10):189. doi: 10.1007/s10916-018-1046-y.

Abstract

False positive signals (FPSs) of continuous monitoring blood culture system (CMBCS) cause delayed reporting time and increased laboratory cost. This study aimed to analyze growth graphs digitally in order to identify specific patterns of FPSs and true positive signals (TPSs) and to find the method for improving positive predictive value (PPV) of FPS and TPS. 606 positive signal samples from the BACTEC FX (BD, USA) CMBCS with more than one hour of monitoring data after positive signal were selected, and were classified into FPS and TPS groups using the subculture results. The pattern of bacterial growth graph was analyzed in two steps: the signal stage recorded using the monitoring data until positive signal and the post-signal stage recorded using one additional hour of monitoring data gained after the positive signal. The growth graph before the positive signal consists of three periods; initial decline period, stable period, and steeping period. Signal stage analyzed initial decline period and stable period, and classified the graphs as standard, increasing, decreasing, irregular, or defective pattern, respectively. Then, all patterns were re-assigned as confirmed or suspicious pattern in the post-signal stage. Standard, increasing, and decreasing patterns with both initial decline period and stable period are typical patterns; irregular patterns lacking a smooth stable period and defective patterns without an initial decline period are false positive patterns. The false positive patterns have 77.2% of PPV for FPS. The confirmed patterns, showing a gradually increasing fluorescence level even after positive signal, have 97.0% of PPV for TPS.

摘要

连续监测血培养系统(CMBCS)的假阳性信号(FPSs)会导致报告时间延迟和实验室成本增加。本研究旨在通过数字化分析生长曲线,以识别 FPSs 和真阳性信号(TPSs)的特定模式,并找到提高 FPS 和 TPS 阳性预测值(PPV)的方法。从 BACTEC FX(BD,美国)CMBCS 中选择了 606 个阳性信号样本,这些样本在阳性信号后有超过 1 小时的监测数据,并根据亚培养结果将其分为 FPS 和 TPS 组。细菌生长曲线的模式分析分为两步:使用监测数据记录阳性信号前的信号阶段和阳性信号后额外 1 小时监测数据记录的信号后阶段。阳性信号前的生长曲线由三个时期组成;初始下降期、稳定期和陡峭期。信号阶段分析初始下降期和稳定期,并分别将图形分类为标准、增加、减少、不规则或有缺陷模式。然后,在信号后阶段,所有模式都重新分配为确认或可疑模式。具有初始下降期和稳定期的标准、增加和减少模式是典型模式;不规则模式缺乏平滑的稳定期,有缺陷模式没有初始下降期,这些都是假阳性模式。假阳性模式的 FPS 阳性预测值为 77.2%。显示阳性信号后荧光水平逐渐增加的确认模式,其 TPS 阳性预测值为 97.0%。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验