[Analysis of the therapeutic efficacy of bacterial infections through medical big data].

Mitsuhiro Goda, Takahiro Niimura, Keisuke Ishizawa
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Abstract

In recent years, many studies have been conducted on various diseases to evaluate clinical efficacy reflecting actual clinical conditions through comprehensive analysis using medical big data, which include various patient groups and factors in clinical practice. On the other hand, there are still very few research reports in the world related to the treatment of infectious diseases using medical big data. This is due to the fact that much medical big data lacks information on the causative organisms of infectious diseases and on determining the effectiveness of infectious disease treatment. In this paper, we introduce a research case study in which analysis on the effectiveness of infectious disease treatment was conducted using medical big data. In this study, we performed a retrospective analysis of two real databases with the aim of validating the usefulness of cefmetazole and flomoxef in urinary tract infections (UTI) in which broad-spectrum β-lactamase (ESBL)-producing bacteria are the primary initiating organisms. Third-generation cephalosporin-resistant E. coli and K. pneumoniae, including ESBL-producing strains, were similarly susceptible to flomoxef and cefmetazole. JMDC Claims data analysis showed that the median time of hospital stay duration was significantly shorter in the flomoxef group than in the cefmetazole group. Flomoxef exhibits effectiveness that is comparable to cefmetazole in treating UTI. When using currently available medical big data to conduct analyses related to infectious disease treatment, valuable analysis results may be obtained by understanding the characteristics of the database and collaborating with clinicians who are familiar with infectious disease treatment.

【利用医疗大数据分析细菌感染的治疗效果】。
近年来,针对各种疾病开展了许多研究,通过医疗大数据的综合分析,包括临床实践中的各种患者群体和因素,评价反映临床实际情况的临床疗效。另一方面,目前国际上使用医疗大数据治疗传染病的相关研究报告还非常少。这是由于许多医疗大数据缺乏关于传染病致病生物体和确定传染病治疗有效性的信息。本文介绍了一个利用医疗大数据对传染病治疗效果进行分析的研究案例。在这项研究中,我们对两个真实的数据库进行了回顾性分析,目的是验证头孢美唑和氟莫西芬在尿路感染(UTI)中的有效性,其中广谱β-内酰胺酶(ESBL)产生细菌是主要的起始生物。第三代耐头孢菌素大肠杆菌和肺炎克雷伯菌,包括产生esbls的菌株,对氟莫昔夫和头孢美唑同样敏感。JMDC Claims数据分析显示,氟莫昔组的中位住院时间明显短于头孢美唑组。氟莫昔在治疗尿路感染方面显示出与头孢美唑相当的有效性。在利用现有医疗大数据进行传染病治疗相关分析时,通过了解数据库的特点,与熟悉传染病治疗的临床医生合作,可以获得有价值的分析结果。
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
Folia Pharmacologica Japonica
Folia Pharmacologica Japonica Pharmacology, Toxicology and Pharmaceutics-Pharmacology
CiteScore
0.40
自引率
0.00%
发文量
132
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