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Direct estimation of cause-specific mortality fractions from verbal autopsies: multisite validation study using clinical diagnostic gold standards

机译:通过口头尸检直接估计特定原因的死亡率:使用临床诊断金标准的多点验证研究

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Background Verbal autopsy (VA) is used to estimate the causes of death in areas with incomplete vital registration systems. The King and Lu method (KL) for direct estimation of cause-specific mortality fractions (CSMFs) from VA studies is an analysis technique that estimates CSMFs in a population without predicting individual-level cause of death as an intermediate step. In previous studies, KL has shown promise as an alternative to physician-certified verbal autopsy (PCVA). However, it has previously been impossible to validate KL with a large dataset of VAs for which the underlying cause of death is known to meet rigorous clinical diagnostic criteria. Methods We applied the KL method to adult, child, and neonatal VA datasets from the Population Health Metrics Research Consortium gold standard verbal autopsy validation study, a multisite sample of 12,542 VAs where gold standard cause of death was established using strict clinical diagnostic criteria. To emulate real-world populations with varying CSMFs, we evaluated the KL estimations for 500 different test datasets of varying cause distribution. We assessed the quality of these estimates in terms of CSMF accuracy as well as linear regression and compared this with the results of PCVA. Results KL performance is similar to PCVA in terms of CSMF accuracy, attaining values of 0.669, 0.698, and 0.795 for adult, child, and neonatal age groups, respectively, when health care experience (HCE) items were included. We found that the length of the cause list has a dramatic effect on KL estimation quality, with CSMF accuracy decreasing substantially as the length of the cause list increases. We found that KL is not reliant on HCE the way PCVA is, and without HCE, KL outperforms PCVA for all age groups. Conclusions Like all computer methods for VA analysis, KL is faster and cheaper than PCVA. Since it is a direct estimation technique, though, it does not produce individual-level predictions. KL estimates are of similar quality to PCVA and slightly better in most cases. Compared to other recently developed methods, however, KL would only be the preferred technique when the cause list is short and individual-level predictions are not needed.
机译:背景言语尸检(VA)用于评估生命登记系统不完整的地区的死亡原因。通过VA研究直接估计特定原因的死亡率(CSMF)的King and Lu方法(KL)是一种分析技术,可估计人群中的CSMF而无需预测个体水平的死亡原因作为中间步骤。在以前的研究中,KL已显示出有望取代医师认证的口头尸检(PCVA)的潜力。但是,以前不可能使用大量VA数据集来验证KL,因为已知这些VAs的潜在死亡原因符合严格的临床诊断标准。方法我们将KL方法应用于“人口健康指标研究联合会”金标准口头尸检验证研究中的成人,儿童和新生儿VA数据集,该多站点样本包含12,542 VA,其中使用严格的临床诊断标准确定了金标准死亡原因。为了模拟具有不同CSMF的现实世界人口,我们评估了500种不同原因分布的不同测试数据集的KL估计。我们根据CSMF准确性以及线性回归评估了这些估计的质量,并将其与PCVA的结果进行了比较。结果就CSMF准确性而言,KL性能与PCVA相似,包括健康护理经验(HCE)项,成人,儿童和新生儿年龄组的KL值分别为0.669、0.698和0.795。我们发现,原因清单的长度对KL估计质量有显着影响,随着原因清单长度的增加,CSMF准确性会大大降低。我们发现,KL不像PCVA那样依赖HCE,没有HCE,KL在所有年龄段的人群中都胜过PCVA。结论与所有用于VA分析的计算机方法一样,KL比PCVA更快,更便宜。但是,由于它是一种直接估计技术,因此不会产生单个级别的预测。 KL估计的质量与PCVA相似,并且在大多数情况下略好一些。但是,与其他最近开发的方法相比,仅当原因列表较短且不需要个人级别的预测时,KL才是首选技术。

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