Do Complication Screening Programs Detect Complications Present at Admission?

James M. Naessens M.P.H. (Clinical Associate), Christopher G. Scott M.S. (Statistician), Todd R. Huschka (Data Analyst), David C. Schutt M.D. (Medical Director)
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引用次数: 15

Abstract

Background

A study was undertaken to verify the accuracy of computer algorithms on administrative data to identify hospital complications. The assessment was based on a medical records indicator that differentiated hospital-acquired conditions from preexisting comorbidities.

Methods

The indicators for identifying potential hospital complications were applied to all secondary diagnoses to distinguish hospital-acquired from preexisting conditions for all 1997–1998 discharges.

Results

Of the 95 defined complication types, cases were found with secondary diagnoses that met the criteria for 71 different complications. Sixty-nine of these complications had one or more cases with the trigger diagnosis coded as an acquired condition. Thirty-five complications had at least 30 cases with acquired conditions. Hospital complications add greatly to costs; for example, postoperative septicemia increased the hospital bill by more than $25,000, added 13 hospital days to the stay, and increased hospital mortality by 16.6%.

Conclusions

Current complication algorithms identify many cases where the condition was actually present on hospital admission. This fact, coupled with the known variability in coding between institutions, makes comparisons between hospitals on many of the complications problematic. Collection of the present-on-admission flag significantly reduces the noise in monitoring complication rates.

并发症筛查程序能发现入院时出现的并发症吗?
本研究旨在验证计算机算法对行政数据识别医院并发症的准确性。评估基于一项医疗记录指标,该指标将医院获得性疾病与先前存在的合并症区分开来。方法将识别潜在医院并发症的指标应用于所有二次诊断,以区分1997-1998年所有出院患者的医院获得性和既往病史。结果在95种明确的并发症类型中,71种并发症的继发诊断符合标准。这些并发症中有69个或多个病例的触发诊断编码为获得性疾病。术后并发症35例,至少30例。医院并发症大大增加了费用;例如,术后败血症使医院账单增加了2.5万美元以上,住院时间增加了13天,住院死亡率增加了16.6%。结论目前的并发症算法识别了许多在入院时实际存在的病例。这一事实,再加上机构之间编码的已知差异,使得医院之间对许多并发症的比较存在问题。目前入院标志的收集显著降低了监测并发症发生率的噪音。
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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