调查实施过程及访谈者对全国家庭健康调查中妇幼健康指标跳过顺序的影响:交叉分类多层次模型的应用

SSM - Population Health Pub Date : 2022-10-03 eCollection Date: 2022-09-01 DOI:10.1016/j.ssmph.2022.101252
Radhika Sharma, Laxmi Kant Dwivedi, Somnath Jana, Kajori Banerjee, Rakesh Mishra, Bidhubhusan Mahapatra, Damodar Sahu, S K Singh
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引用次数: 2

摘要

实施大规模调查涉及一系列复杂的程序,会暴露出各种类型的调查错误。统一和系统的培训协议,全面的调查手册,以及调查实施过程中的多层监督有助于减少调查错误,提供一致的实地工作环境,不应导致采访者和团队收集的数据质量发生任何变化。在此背景下,本研究试图描述实地调查员(FI)团队和调查实施设计对所选结果的影响。从第四轮全国家庭健康调查(NFHS-4)中获得了印度四个较大的赋权行动小组(EAG)邦,即北方邦、中央邦、比哈尔邦和拉贾斯坦邦的数据,以供分析。采用固定效应二元logistic回归模型来评估FI团队和调查实施设计对所选结果的影响。为了研究结果变量在访谈者水平上的变化,我们使用了一个交叉分类的多水平模型。由于一位采访者在多个主要抽样单位(PSU)和地区工作,并且没有遵循完美的分层结构,因此交叉分类多层模型被认为是合适的。此外,由于NFHS-4使用了两阶段分层抽样设计,因此调整了模型的两级权重以计算无偏估计。本研究表明,在所选州的领域间和领域内机构中,在所选结果中存在访谈者水平的差异。中央邦东部(0.23)和北方邦中部(0.20)未获得产前保健(ANC)的妇女的访谈者水平的类内相关系数(ICC)最高。在“未见免疫卡”方面,拉贾斯坦邦(0.16)和北方邦西部(0.13)的受访者ICC水平更高。在北方邦所有地区,在家中分娩的妇女在访谈者水平上的差异微不足道。中央邦东部、拉贾斯坦邦和比哈尔邦在选定结果中显示出更高的访谈者水平差异,强调了机构和熟练访谈者在不同调查实施设计中的关键作用。分析突出了对调查规程的不统一遵守,这意味着并非所有采访者和机构在实地都以类似的方式行事。本研究建议建立一种完善的实地实施和监督机制,包括针对金融机构面临的挑战、随机警戒和士气建设进行重点培训。此外,考察访谈者水平特征、实地挑战和实地机构效应也可能突出数据中访谈者水平差异的根源。然而,基于采访者在该领域的表现,本研究为采访者在数据质量方面的差异提供了一个有趣的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Survey implementation process and interviewer effects on skipping sequence of maternal and child health indicators from National Family Health Survey: An application of cross-classified multilevel model.

Survey implementation process and interviewer effects on skipping sequence of maternal and child health indicators from National Family Health Survey: An application of cross-classified multilevel model.

Survey implementation process and interviewer effects on skipping sequence of maternal and child health indicators from National Family Health Survey: An application of cross-classified multilevel model.

Survey implementation process and interviewer effects on skipping sequence of maternal and child health indicators from National Family Health Survey: An application of cross-classified multilevel model.

Implementing a large-scale survey involves a string of intricate procedures exposed to numerous types of survey errors. Uniform and systematic training protocols, comprehensive survey manuals, and multilayer supervision during survey implementation help reduce survey errors, providing a consistent fieldwork environment that should not result in any variation in the quality of data collected across interviewers and teams. With this background, the present study attempts to delineate the effect of field investigator (FI) teams and survey implementation design on the selected outcomes. Data on four of the bigger Empowered Action Group (EAG) states of India, namely Uttar Pradesh, Madhya Pradesh, Bihar, and Rajasthan, were obtained from the fourth round of the National Family Health Survey (NFHS-4) for analysis. A fixed-effect binary logistic regression model was used to assess the effect of FI teams and survey implementation design on the selected outcomes. To study the variation in the outcome variables at the interviewer level, a cross-classified multilevel model was used. Since one interviewer had worked in more than one primary sampling unit (PSU) & district and did not follow a perfect hierarchical structure, the cross-classified multilevel model was deemed suitable. In addition, since NFHS-4 used a two-stage stratified sampling design, two-level weights were adjusted for the models to compute unbiased estimates. This study demonstrated the presence of interviewer-level variation in the selected outcomes at both inter- and intra-field agencies across the selected states. The interviewer-level intra-class correlation coefficient (ICC) for women who had not availed antenatal care (ANC) was the highest for eastern Madhya Pradesh (0.23) and central Uttar Pradesh (0.20). For 'immunisation card not seen', Rajasthan (0.16) and western Uttar Pradesh (0.13) had higher interviewer-level ICC. Interviewer-level variations were insignificant for women who gave birth at home across all regions of Uttar Pradesh. Eastern Madhya Pradesh, Rajasthan, and Bihar showed higher interviewer-level variation across the selected outcomes, underlining the critical role of agencies and skilled interviewers in different survey implementation designs. The analysis highlights non-uniform adherence to survey protocols, which implies that not all interviewers and agencies performed in a similar manner in the field. This study recommends a refined mechanism for field implementation and supervision, including focused training on the challenges faced by FIs, random vigilance, and morale building. In addition, examining interviewer-level characteristics, field challenges, and field agency effects may also highlight the roots of interviewer-level variation in the data. However, based on the interviewer's performance in the field, the present study offers an intriguing insight into interviewer-level variations in the quality of data.

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