Department of Biomedicine and Prevention, University of Rome Tor Vergata, Rome, Italy.
Infectious Diseases Clinic, University Hospital "Tor Vergata", Rome, Italy.
PLoS One. 2023 Mar 24;18(3):e0282019. doi: 10.1371/journal.pone.0282019. eCollection 2023.
Healthcare-associated infections (HAIs) and antimicrobial resistance (AMR) are major public health threats in upper- and lower-middle-income countries. Electronic health records (EHRs) are an invaluable source of data for achieving different goals, including the early detection of HAIs and AMR clusters within healthcare settings; evaluation of attributable incidence, mortality, and disability-adjusted life years (DALYs); and implementation of governance policies. In Italy, the burden of HAIs is estimated to be 702.53 DALYs per 100,000 population, which has the same magnitude as the burden of ischemic heart disease. However, data in EHRs are usually not homogeneous, not properly linked and engineered, or not easily compared with other data. Moreover, without a proper epidemiological approach, the relevant information may not be detected. In this retrospective observational study, we established and engineered a new management system on the basis of the integration of microbiology laboratory data from the university hospital "Policlinico Tor Vergata" (PTV) in Italy with hospital discharge forms (HDFs) and clinical record data. All data are currently available in separate EHRs. We propose an original approach for monitoring alert microorganisms and for consequently estimating HAIs for the entire period of 2018.
Data extraction was performed by analyzing HDFs in the databases of the Hospital Information System. Data were compiled using the AREAS-ADT information system and ICD-9-CM codes. Quantitative and qualitative variables and diagnostic-related groups were produced by processing the resulting integrated databases. The results of research requests for HAI microorganisms and AMR profiles sent by the departments of PTV from 01/01/2018 to 31/12/2018 and the date of collection were extracted from the database of the Complex Operational Unit of Microbiology and then integrated.
We were able to provide a complete and richly detailed profile of the estimated HAIs and to correlate them with the information contained in the HDFs and those available from the microbiology laboratory. We also identified the infection profile of the investigated hospital and estimated the distribution of coinfections by two or more microorganisms of concern. Our data were consistent with those in the literature, particularly the increase in mortality, length of stay, and risk of death associated with infections with Staphylococcus spp, Pseudomonas aeruginosa, Klebsiella pneumoniae, Clostridioides difficile, Candida spp., and Acinetobacter baumannii. Even though less than 10% of the detected HAIs showed at least one infection caused by an antimicrobial resistant bacterium, the contribution of AMR to the overall risk of increased mortality was extremely high.
The increasing availability of health data stored in EHRs represents a unique opportunity for the accurate identification of any factor that contributes to the diffusion of HAIs and AMR and for the prompt implementation of effective corrective measures. That said, artificial intelligence might be the future of health data analysis because it may allow for the early identification of patients who are more exposed to the risk of HAIs and for a more efficient monitoring of HAI sources and outbreaks. However, challenges concerning codification, integration, and standardization of health data recording and analysis still need to be addressed.
医疗保健相关感染(HAI)和抗生素耐药性(AMR)是中高收入国家的主要公共卫生威胁。电子健康记录(EHR)是实现不同目标的宝贵数据源,包括早期检测医疗机构中的 HAI 和 AMR 集群;评估归因发病率、死亡率和残疾调整生命年(DALYs);以及实施治理政策。在意大利,HAI 的负担估计为每 10 万人中有 702.53 个 DALYs,与缺血性心脏病的负担相同。然而,EHR 中的数据通常不统一,没有适当链接和设计,或者不容易与其他数据进行比较。此外,如果没有适当的流行病学方法,相关信息可能无法被检测到。在这项回顾性观察研究中,我们在整合意大利“Tor Vergata 大学医院”(PTV)的微生物实验室数据与医院出院表格(HDF)和临床记录数据的基础上,建立并设计了一个新的管理系统。所有数据目前都分别存储在 EHR 中。我们提出了一种用于监测警报微生物的新方法,以便在 2018 年期间对 HAI 进行相应的估计。
通过分析医院信息系统中的 HDF 进行数据提取。使用 AREAS-ADT 信息系统和 ICD-9-CM 代码进行数据编译。通过处理产生的综合数据库生成定量和定性变量和诊断相关组。从 PTV 的部门于 2018 年 1 月 1 日至 12 月 31 日发送的 HAI 微生物和 AMR 分析请求的数据库中提取研究请求的结果和收集日期,并从微生物学综合运营单位的数据库中提取。
我们能够提供对估计的 HAI 的完整和详细的描述,并将其与 HDF 中包含的信息以及微生物实验室提供的信息相关联。我们还确定了所调查医院的感染概况,并估计了两种或两种以上关注微生物的共同感染的分布。我们的数据与文献中的数据一致,尤其是与金黄色葡萄球菌、铜绿假单胞菌、肺炎克雷伯菌、艰难梭菌、念珠菌属和鲍曼不动杆菌感染相关的死亡率、住院时间和死亡风险增加。尽管检测到的 HAI 中不到 10% 至少有一种由耐抗生素细菌引起的感染,但 AMR 对总体死亡率增加的风险极高。
EHR 中存储的健康数据的可用性不断增加,这为准确识别导致 HAI 和 AMR 扩散的任何因素以及及时实施有效纠正措施提供了独特的机会。也就是说,人工智能可能是健康数据分析的未来,因为它可以早期识别更容易受到 HAI 风险影响的患者,并更有效地监测 HAI 来源和爆发。然而,在健康数据记录和分析的编码、整合和标准化方面仍需要解决一些挑战。