THE RISK OF MATERNAL COMPLICATIONS AFTER CESAREAN DELIVERY: NEAR-FAR MATCHING FOR INSTRUMENTAL VARIABLES STUDY DESIGNS WITH LARGE OBSERVATIONAL DATASETS
成果类型:
Article
署名作者:
Lu, Ruoqi; Kelz, Rachel; Lorch, Scott; Keele, Luke J.
署名单位:
University of California System; University of California Davis; University of Pennsylvania; University of Pennsylvania; Pennsylvania Medicine; Childrens Hospital of Philadelphia
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/22-AOAS1691
发表日期:
2023
页码:
1701-1721
关键词:
Causal Inference
myocardial-infarction
BIAS
regression
mortality
摘要:
Cesarean delivery is used when there are problems with the placenta or umbilical cord, for twin pregnancies, and breech births. However, research has found that Cesarean delivery increases the risk of maternal complications like blood transfusions and admission to the intensive care unit. Here, us-ing an instrumental variables study design to reduce bias from unobserved confounders, we study whether Cesarean delivery increases the risk of ma-ternal complications. We use a variant of matching-near-far matching-to render our study design more plausible. In a near-far match the investigator seeks to strengthen the effect of the instrument on the exposure while balanc-ing observable characteristics between groups of subjects with low and high values of the instrument. Extant near-far matching methods are computation-ally intensive for large data sets, and computing time can be very lengthy. To reduce the computational complexity of near-far matching in large observa-tional studies, we apply an iterative form of Glover's algorithm for a doubly convex bipartite graph to determine an optimal reverse caliper for the instru-ment which reduces the number of candidate matches and allows for an op-timal match in a large but much sparser graph. We also incorporate a variety of balance constraints, including exact matching, fine and near-fine balance, and covariate balance prioritization. We illustrate this new matching method using medical claims data from Pennsylvania, New York, and Florida. In our application we match on physician's preferences for delivery via Cesarean section which is the instrument in our study. We compare the computing time from our match to extant methods, and we find that we can reduce the com-putational time required for the match by more than 11 hours. If our matched sample came from a paired randomized experiment, we could conclude that Cesarean delivery elevates the risk of maternal complications and increases the time spent in the hospital. Sensitivity analysis shows that the estimates for complications could be the result of a minor amount of confounding due to an unobserved covariate. The effects on the length of stay outcome, however, are more insensitive to hidden confounders.
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