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Validating physician-certified verbal autopsy and probabilistic modeling (InterVA) approaches to verbal autopsy interpretation using hospital causes of adult deaths.

机译:验证医师认证的口头验尸和概率模型(InterVA)方法,以使用成人死亡的医院原因进行口头验尸解释。

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摘要

BACKGROUND: The most common method for determining cause of death is certification by physicians based either on available medical records, or where such data are not available, through verbal autopsy (VA). The physician-certification approach is costly and inconvenient; however, recent work shows the potential of a computer-based probabilistic model (InterVA) to interpret verbal autopsy data in a more convenient, consistent, and rapid way. In this study we validate separately both physician-certified verbal autopsy (PCVA) and the InterVA probabilistic model against hospital cause of death (HCOD) in adults dying in a district hospital on the coast of Kenya. METHODS: Between March 2007 and June 2010, VA interviews were conducted for 145 adult deaths that occurred at Kilifi District Hospital. The VA data were reviewed by a physician and the cause of death established. A range of indicators (including age, gender, physical signs and symptoms, pregnancy status, medical history, and the circumstances of death) from the VA forms were included in the InterVA for interpretation. Cause-specific mortality fractions (CSMF), Cohen's kappa (κ) statistic, receiver operating characteristic (ROC) curves, sensitivity, specificity, and positive predictive values were applied to compare agreement between PCVA, InterVA, and HCOD. RESULTS: HCOD, InterVA, and PCVA yielded the same top five underlying causes of adult deaths. The InterVA overestimated tuberculosis as a cause of death compared to the HCOD. On the other hand, PCVA overestimated diabetes. Overall, CSMF for the five major cause groups by the InterVA, PCVA, and HCOD were 70%, 65%, and 60%, respectively. PCVA versus HCOD yielded a higher kappa value (κ = 0.52, 95% confidence interval [CI]: 0.48, 0.54) than the InterVA versus HCOD which yielded a kappa (κ) value of 0.32 (95% CI: 0.30, 0.38). Overall, (κ) agreement across the three methods was 0.41 (95% CI: 0.37, 0.48). The areas under the ROC curves were 0.82 for InterVA and 0.88 for PCVA. The observed sensitivities and specificities across the five major causes of death varied from 43% to 100% and 87% to 99%, respectively, for the InterVA/PCVA against the HCOD. CONCLUSION: Both the InterVA and PCVA compared well with the HCOD at a population level and determined the top five underlying causes of death in the rural community of Kilifi. We hope that our study, albeit small, provides new and useful data that will stimulate further definitive work on methods of interpreting VA data.
机译:背景:确定死亡原因的最常见方法是医生根据口头尸检(VA)基于可用的医疗记录或无法获得此类数据的证明。医生认证的方法既昂贵又不方便;但是,最近的工作表明,基于计算机的概率模型(InterVA)可以以更方便,一致和快速的方式解释口头解剖数据的潜力。在这项研究中,我们分别验证了在肯尼亚海岸地区医院死去的成年人中经医生认证的口头尸检(PCVA)和针对医院死亡原因(HCOD)的InterVA概率模型。方法:2007年3月至2010年6月,对基利菲区医院发生的145名成人死亡进行了VA访谈。 VA数据由医生检查并确定了死亡原因。 VA表格中包含了一系列的指标(包括年龄,性别,身体症状和体征,妊娠状况,病史和死亡情况),用于解释。使用原因特异性死亡率分数(CSMF),科恩卡伯(κ)统计量,受试者工作特征(ROC)曲线,敏感性,特异性和阳性预测值来比较PCVA,InterVA和HCOD之间的一致性。结果:HCOD,InterVA和PCVA产生了与成人死亡相同的前五个潜在原因。与HCOD相比,InterVA高估了结核病作为死亡原因。另一方面,PCVA高估了糖尿病。总体而言,由InterVA,PCVA和HCOD划分的五个主要病因的CSMF分别为70%,65%和60%。 PCVA与HCOD的kappa值(κ= 0.52,95%置信区间[CI]:0.48,0.54)比InterVA与HCOD的kappa(κ)值为0.32(95%CI:0.30,0.38)。总体而言,三种方法的(κ)一致性为0.41(95%CI:0.37,0.48)。 ROC曲线下的面积对于InterVA为0.82,对于PCVA为0.88。 InterVA / PCVA对HCOD的观察到的五个主要死因的敏感性和特异性分别为43%至100%和87%至99%。结论:InterVA和PCVA在人群水平上均与HCOD进行了比较,确定了基利菲农村社区的前五位主要死因。我们希望我们的研究尽管规模很小,但能提供新的有用的数据,这将刺激有关VA数据解释方法的进一步确定性工作。

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