Aghoram Rajeswari, Nair Pradeep P, Neelagandan Anudeep
Neurology, Super Specialty Block, Jawaharlal Institute of Postgraduate Medical Education and Research, Pondicherry, 605006, India.
Hospital information systems, Jawaharlal Institute of Postgraduate Medical Education and Research, Pondicherry, 605006, India.
Acta Epileptol. 2025 Jan 15;7(1):6. doi: 10.1186/s42494-024-00192-1.
Electronic medical records (EMR) can be utilized to understand the impact of the disruption in care provision caused by the pandemic. We aimed to develop and validate an algorithm to identify persons with epilepsy (PWE) from our EMR and to use it to explore the effect of the pandemic on outpatient service utilization.
EMRs from the neurology specialty, covering the period from January 2018 to December 2023, were used. An algorithm was developed using an iterative approach to identify PWE with a critical lower bound of 0.91 for negative predictive value. Manual internal validation was performed. Outpatient visit data were extracted and modeled as a time series using the autoregressive integrated moving average model. All statistical analyses were performed using STATA version 14.2 (Statacorp, USA).
Four iterations resulted in an algorithm, with a negative predictive value 0.98 (95% CI: 0.95-0.99), positive predictive value of 0.98 (95% CI: 0.85-0.99), and an F-score accuracy of 0.96, which identified 4474 PWE. The outpatient service utilization was abruptly reduced by the pandemic, with a change of -902.1 (95%CI: -936.55 to -867.70), and the recovery has also been slow, with a decrease of -5.51(95%CI: -7.00 to -4.02). Model predictions aligned closely with actual visits with median error of -3.5%.
We developed an algorithm for identifying people with epilepsy with good accuracy. Similar methods can be adapted for use in other resource-limited settings and for other diseases. The COVID pandemic appears to have caused a lasting reduction of service utilization among PWE.
电子病历(EMR)可用于了解疫情导致的医疗服务中断的影响。我们旨在开发并验证一种算法,以便从我们的电子病历中识别癫痫患者(PWE),并使用该算法探讨疫情对门诊服务利用的影响。
使用了2018年1月至2023年12月期间神经科专业的电子病历。采用迭代方法开发了一种算法,以识别阴性预测值临界下限为0.91的癫痫患者。进行了人工内部验证。提取门诊就诊数据,并使用自回归积分移动平均模型将其建模为时间序列。所有统计分析均使用STATA 14.2版本(美国Statacorp公司)进行。
经过四次迭代得出一种算法,其阴性预测值为0.98(95%CI:0.95 - 0.99),阳性预测值为0.98(95%CI:0.85 - 0.99),F分数准确率为0.96,该算法识别出4474例癫痫患者。疫情使门诊服务利用率急剧下降,变化量为 - 902.1(95%CI:- 936.55至 - 867.70),恢复也很缓慢,下降了 - 5.51(95%CI:- 7.00至 - 4.02)。模型预测与实际就诊情况密切吻合,中位数误差为 - 3.5%。
我们开发了一种准确性良好的癫痫患者识别算法。类似方法可适用于其他资源有限的环境和其他疾病。新冠疫情似乎导致癫痫患者的服务利用率持续下降。