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一种用于评估医院再入院情况的马尔可夫模型。

A Markov model to evaluate hospital readmission.

作者信息

Bartolomeo Nicola, Trerotoli Paolo, Moretti Annamaria, Serio Gabriella

机构信息

Department of Biomedical Science and Human Oncology, Chair of Medical Statistics, University of Bari, Italy.

出版信息

BMC Med Res Methodol. 2008 Apr 22;8:23. doi: 10.1186/1471-2288-8-23.

Abstract

BACKGROUND

The analysis of non-fatal recurring events is frequently found in studies on chronic-degenerative diseases. The aim of this paper is to estimate the probability of readmission of patients with Chronic Obstructive Pulmonary Disease (COPD) or with Respiratory Failure (RF).

METHODS

The Repeated hospital admissions of a patient are considered as a Markov Chain. The transitions between the states are estimated using the Nelson-Aalen estimator. The analysis was carried out using the Puglia Region hospital patient discharge database for the years 1998-2005. Patients were selected on the basis of first admission between 01/01/2001 and 31/12/2005 with ICD-9-CM code of COPD or RF as principal and/or secondary diagnosis. For those selected two possible transitions were considered in the case they had the second and third admission with an ICD-9-CM code of COPD or RF as principal diagnosis.

RESULTS

The probability of readmission is increased in patients with a diagnosis of RF (OR = 1.618 in the first transition and 1.279 in the second) and also in those with a diagnosis of COPD or RF as the principal diagnosis at first admission (OR = 1.615 in the first transition and 1.193 in the second). The clinical gravity and the ward from which they were discharged did not significantly influence the probability of readmission.

CONCLUSION

The time to readmission depends on the gravity of the pathology at onset. In patients with a grave clinical picture, either COPD or Respiratory Failure, when treated and controlled after the first admission, they become minor problems and they are indicated among secondary diagnoses in any further admission.

摘要

背景

非致命性复发事件的分析常见于慢性退行性疾病研究中。本文旨在估算慢性阻塞性肺疾病(COPD)或呼吸衰竭(RF)患者再次入院的概率。

方法

将患者的多次住院视为一个马尔可夫链。使用纳尔逊 - 亚alen估计量来估计状态之间的转移概率。分析使用了普利亚地区1998 - 2005年医院患者出院数据库。根据2001年1月1日至2005年12月31日首次入院时以COPD或RF的ICD - 9 - CM编码作为主要和/或次要诊断来选择患者。对于那些被选中的患者,如果他们第二次和第三次入院时以COPD或RF的ICD - 9 - CM编码作为主要诊断,则考虑两种可能的转移情况。

结果

诊断为RF的患者再次入院的概率增加(第一次转移时OR = 1.618,第二次转移时OR = 1.279),首次入院时以COPD或RF作为主要诊断的患者也是如此(第一次转移时OR = 1.615,第二次转移时OR = 1.193)。临床严重程度以及他们出院的病房对再次入院的概率没有显著影响。

结论

再次入院的时间取决于发病时病理状况的严重程度。对于临床症状严重的患者,无论是COPD还是呼吸衰竭,在首次入院治疗并得到控制后,它们会变成较小的问题,并且在任何后续入院中都被列为次要诊断。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e2c9/2386136/ddaee11f34b5/1471-2288-8-23-1.jpg

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