Eur J Med Res. 2010 Nov 30;15(12):564-70. doi: 10.1186/2047-783x-15-12-564.
The cost of treatments especially in conditions where multiresistant bacteria are involved are a major issue in times where in most developed countries in the world payment systems based on diagnoses-related-groups (DRG) are in place. There is great evidence that especially the length of stay in hospital (LOS), the time in the intensive care unit (ICU-days) and the hours of mechanical ventilation (HMV) are major cost drivers. - While established methods of pharmacoeconomical analyses focus on the efficiency of drugs from healthcare system perspective, these data are often not sufficient for improving treatment strategies in a given hospital context. - We developed a system that allows the analysis of patients with severe infections on the basis of routine data that is also used for reimbursement. These data contain a lot of information concerning the clinical conditions. By using the ICD-coding we developed an algorithm which allows the detection of patients with infections and gives information on the potential financial outcome of these patients. By using the analysis it is possible to identify subsets of infections and the patient records that had a potentially negative DRG-result, i.e. the costs are higher than the reimbursement. When identified the patient records undergo a peer review, where the clinical situation and the antibiotic therapy are reviewed by medical experts. In case simulations it is possible to find out if a different therapeutic approach, e.g. by different choices in initial (empirical) antibiotic treatment would have caused other outcomes. - Data driven analyses together with peer reviews of patient records are a useful tool to examine antibiotic treatment strategies and to establish changes that again can be reviewed on a regular basis. Doing this a continous improvement process can be established in hospitals which can lead to a better balance of clinical and economical outcomes in patients with severe infections. Moreover these analyses are helpful in assessing the literature on economical benefits of new therapies.
治疗费用,尤其是涉及多耐药菌的治疗费用,在世界上大多数发达国家采用按诊断相关分组(DRG)付费的时代,是一个主要问题。有大量证据表明,尤其是住院时间(LOS)、重症监护病房(ICU 天数)和机械通气时间(HMV)是主要的成本驱动因素。- 虽然已有的药物经济学分析方法侧重于从医疗体系的角度评估药物的效率,但这些数据通常不足以改善特定医院背景下的治疗策略。- 我们开发了一种系统,可以根据常规数据对严重感染患者进行分析,这些数据也用于报销。这些数据包含大量与临床状况相关的信息。通过使用国际疾病分类(ICD)编码,我们开发了一种算法,可以检测感染患者,并提供这些患者潜在财务结果的信息。通过使用分析,可以识别感染的亚组和可能导致潜在负面 DRG 结果的患者记录,即成本高于报销。确定后,患者记录将进行同行评审,由医学专家审查临床情况和抗生素治疗。在案例模拟中,可以确定是否采用不同的治疗方法,例如通过初始(经验性)抗生素治疗的不同选择,是否会导致其他结果。- 数据驱动的分析加上对患者记录的同行评审是检查抗生素治疗策略并确定可以定期审查的变更的有用工具。通过这样做,可以在医院建立一个持续改进的过程,从而可以在严重感染患者的临床和经济结果之间实现更好的平衡。此外,这些分析有助于评估新疗法的经济效益文献。