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2020 年 3 月至 12 月,纽约市家庭中 SARS-CoV-2 的聚集:基于建筑物层面的分析。

Clustering of SARS-CoV-2 in Households in New York City: A Building-Level Analysis, March-December 2020.

机构信息

New York City Department of Health and Mental Hygiene, Queens, New York. Ms Gulley is now with JBS International, Rockville, Maryland.

出版信息

J Public Health Manag Pract. 2023;29(4):587-595. doi: 10.1097/PHH.0000000000001728. Epub 2023 Mar 17.

Abstract

OBJECTIVES

To identify the proportion of coronavirus disease 2019 (COVID-19) cases that occurred within households or buildings in New York City (NYC) beginning in March 2020 during the first stay-at-home order to determine transmission attributable to these settings and inform targeted prevention strategies.

DESIGN

The residential addresses of cases were geocoded (converting descriptive addresses to latitude and longitude coordinates) and used to identify clusters of cases residing in unique buildings based on building identification number (BIN), a unique building identifier. Household clusters were defined as 2 or more cases within 2 weeks of onset or diagnosis date in the same BIN with the same unit number, last name, or in a single-family home. Building clusters were defined as 3 or more cases with onset date or diagnosis date within 2 weeks in the same BIN who do not reside in the same household.

SETTING

NYC from March to December 2020.

PARTICIPANTS

NYC residents with a positive SARS-CoV-2 nucleic acid amplification or antigen test result with a specimen collected during March 1, 2020, to December 31, 2020.

MAIN OUTCOME MEASURE

The proportion of NYC COVID-19 cases in a household or building cluster.

RESULTS

The BIN analysis identified 65 343 building and household clusters: 17 139 (26%) building clusters and 48 204 (74%) household clusters. A substantial proportion of NYC COVID-19 cases (43%) were potentially attributable to household transmission in the first 9 months of the pandemic.

CONCLUSIONS

Geocoded address matching assisted in identifying COVID-19 household clusters. Close contact transmission within a household or building cluster was found in 43% of noncongregate cases with a valid residential NYC address. The BIN analysis should be utilized to identify disease clustering for improved surveillance.

摘要

目的

确定 2020 年 3 月首次居家令期间纽约市(NYC)出现的 2019 年冠状病毒病(COVID-19)病例中,有多少病例发生在家庭或建筑物内,以确定这些环境中的传播归因,并为有针对性的预防策略提供信息。

设计

将病例的居住地址进行地理编码(将描述性地址转换为纬度和经度坐标),并使用建筑物识别号码(BIN)来识别居住在独特建筑物中的病例集群,BIN 是一个独特的建筑物标识符。家庭集群定义为在同一 BIN 中,在同一单元号、姓氏或单户住宅中,发病日期或诊断日期前后 2 周内有 2 例或以上病例。建筑物集群定义为在同一 BIN 中,发病日期或诊断日期在 2 周内,且不居住在同一家庭中的 3 例或以上病例。

地点

2020 年 3 月至 12 月的 NYC。

参与者

NYC 居民,其 SARS-CoV-2 核酸扩增或抗原检测结果为阳性,标本采集于 2020 年 3 月 1 日至 2020 年 12 月 31 日。

主要结果测量指标

家庭或建筑物集群中 NYC COVID-19 病例的比例。

结果

BIN 分析确定了 65343 个建筑物和家庭集群:17139 个(26%)建筑物集群和 48204 个(74%)家庭集群。在大流行的前 9 个月中,NYC COVID-19 病例的很大一部分(43%)可能归因于家庭传播。

结论

地理编码地址匹配有助于识别 COVID-19 家庭集群。在具有有效 NYC 居住地址的非集中病例中,发现了 43%的家庭或建筑物集群内的密切接触传播。BIN 分析应用于识别疾病聚类,以改善监测。

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