Department of Medicine, University of Calgary, Calgary, AB, Canada.
Department of Community Health Sciences, University of Calgary, Calgary, AB, Canada.
Antimicrob Resist Infect Control. 2022 Nov 10;11(1):138. doi: 10.1186/s13756-022-01174-z.
Cardiac implantable electronic device (CIED) surgical site infections (SSIs) have been outpacing the increases in implantation of these devices. While traditional surveillance of these SSIs by infection prevention and control would likely be the most accurate, this is not practical in many centers where resources are constrained. Therefore, we explored the validity of administrative data at identifying these SSIs.
We used a cohort of all patients with CIED implantation in Calgary, Alberta where traditional surveillance was done for infections from Jan 1, 2013 to December 31, 2019. We used this infection subgroup as our "gold standard" and then utilized various combinations of administrative data to determine which best optimized the sensitivity and specificity at identifying infection. We evaluated six approaches to identifying CIED infection using administrative data, which included four algorithms using International Classification of Diseases codes and/or Canadian Classification of Health Intervention codes, and two machine learning models. A secondary objective of our study was to assess if machine learning techniques with training of logistic regression models would outperform our pre-selected codes.
We determined that all of the pre-selected algorithms performed well at identifying CIED infections but the machine learning model was able to produce the optimal method of identification with an area under the receiver operating characteristic curve (AUC) of 96.8%. The best performing pre-selected algorithm yielded an AUC of 94.6%.
Our findings suggest that administrative data can be used to effectively identify CIED infections. While machine learning performed the most optimally, in centers with limited analytic capabilities a simpler algorithm of pre-selected codes also has excellent yield. This can be valuable for centers without traditional surveillance to follow trends in SSIs over time and identify when rates of infection are increasing. This can lead to enhanced interventions for prevention of SSIs.
心脏植入式电子设备 (CIED) 手术部位感染 (SSI) 的发生率超过了这些设备的植入率。虽然感染预防和控制部门对这些 SSI 进行传统监测可能是最准确的,但在资源有限的许多中心,这是不切实际的。因此,我们探讨了行政数据在识别这些 SSI 方面的有效性。
我们使用了艾伯塔省卡尔加里市所有接受 CIED 植入的患者队列,该地区对 2013 年 1 月 1 日至 2019 年 12 月 31 日期间的感染进行了传统监测。我们将这个感染亚组作为我们的“金标准”,然后利用各种组合的行政数据来确定哪种方法能够最佳优化识别感染的敏感性和特异性。我们评估了使用行政数据识别 CIED 感染的六种方法,其中包括使用国际疾病分类代码和/或加拿大卫生干预分类代码的四个算法,以及两种机器学习模型。我们研究的第二个目的是评估使用逻辑回归模型进行训练的机器学习技术是否比我们预先选择的代码表现更好。
我们发现所有预先选择的算法都能很好地识别 CIED 感染,但机器学习模型能够通过接收者操作特征曲线下的面积(AUC)达到 96.8%,从而提供最佳的识别方法。表现最好的预先选择算法的 AUC 为 94.6%。
我们的研究结果表明,行政数据可用于有效地识别 CIED 感染。虽然机器学习的效果最佳,但在分析能力有限的中心,预先选择的代码的更简单算法也具有出色的效果。对于没有传统监测的中心来说,这是非常有价值的,因为它可以跟踪随着时间的推移 SSI 的趋势,并确定感染率是否在增加。这可以促使采取更有效的干预措施来预防 SSI。