使用Peridata.Net识别母婴风险和资产因素的人工神经网络方法:WI-MIOS研究。

IF 2.5 Q2 HEALTH CARE SCIENCES & SERVICES
JAMIA Open Pub Date : 2023-09-14 eCollection Date: 2023-10-01 DOI:10.1093/jamiaopen/ooad080
Jeana M Holt, AkkeNeel Talsma, Teresa S Johnson, Timothy Ehlinger
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引用次数: 0

摘要

目的:分析PeriData.Net,一个具有密尔沃基县居民母婴医院相关数据的临床注册中心,以证明一种围产期婴儿风险评估的预测分析方法。材料和方法:使用无监督学习,我们确定了具有相似多变量健康指标模式的婴儿出生集群,使用2008年至2019年的围产期变量从n = 43 威斯康星州密尔沃基县969份临床登记记录,随后进行监督学习风险传播建模,以确定关键的母体因素。为了了解社会经济地位(SES)和出生结果聚类分配之间的关系,我们根据SES水平在Peridata.Net中重新编码了邮政编码。结果:三个自组织映射聚类描述了在多元空间中相似的婴儿出生结果模式。出生结果聚类在聚类3中显示出比聚类1和聚类2更高的危险出生结果模式。聚类3与1和5的Apgar评分较低有关 出生后分钟,婴儿身长较短,早产。出生集群的预测概况表明,对妊娠体重减轻和产前检查最敏感。被分配到第3组的大多数婴儿处于2个最低的SES水平。讨论:通过广泛的围产期临床登记,我们发现,当使用监督学习考虑集群成员时,通过结合社会和行为风险因素,可以获得最强的预测性能。基于SES的婴儿出生结果存在不平等现象。结论:识别婴儿风险危险状况有助于知识发现和指导未来的研究方向。此外,将结果提交给社区成员可以为社区确定的干预发展的健康和风险指标优先级建立共识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Artificial neural network approaches to identify maternal and infant risk and asset factors using Peridata.Net: a WI-MIOS study.

Artificial neural network approaches to identify maternal and infant risk and asset factors using Peridata.Net: a WI-MIOS study.

Artificial neural network approaches to identify maternal and infant risk and asset factors using Peridata.Net: a WI-MIOS study.

Artificial neural network approaches to identify maternal and infant risk and asset factors using Peridata.Net: a WI-MIOS study.

Objective: To analyze PeriData.Net, a clinical registry with linked maternal-infant hospital data of Milwaukee County residents, to demonstrate a predictive analytic approach to perinatal infant risk assessment.

Materials and methods: Using unsupervised learning, we identified infant birth clusters with similar multivariate health indicator patterns, measured using perinatal variables from 2008 to 2019 from n = 43 969 clinical registry records in Milwaukee County, WI, followed by supervised learning risk-propagation modeling to identify key maternal factors. To understand the relationship between socioeconomic status (SES) and birth outcome cluster assignment, we recoded zip codes in Peridata.Net according to SES level.

Results: Three self-organizing map clusters describe infant birth outcome patterns that are similar in the multivariate space. Birth outcome clusters showed higher hazard birth outcome patterns in cluster 3 than clusters 1 and 2. Cluster 3 was associated with lower Apgar scores at 1 and 5 min after birth, shorter infant length, and premature birth. Prediction profiles of birth clusters indicate the most sensitivity to pregnancy weight loss and prenatal visits. Majority of infants assigned to cluster 3 were in the 2 lowest SES levels.

Discussion: Using an extensive perinatal clinical registry, we found that the strongest predictive performance, when considering cluster membership using supervised learning, was achieved by incorporating social and behavioral risk factors. There were inequalities in infant birth outcomes based on SES.

Conclusion: Identifying infant risk hazard profiles can contribute to knowledge discovery and guide future research directions. Additionally, presenting the results to community members can build consensus for community-identified health and risk indicator prioritization for intervention development.

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来源期刊
JAMIA Open
JAMIA Open Medicine-Health Informatics
CiteScore
4.10
自引率
4.80%
发文量
102
审稿时长
16 weeks
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