Predictive Modeling of Hypertension-Related Postpartum Readmission: Retrospective Cohort Analysis.

JMIR AI Pub Date : 2024-09-13 DOI:10.2196/48588
Jinxin Tao, Ramsey G Larson, Yonatan Mintz, Oguzhan Alagoz, Kara K Hoppe
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Abstract

Background: Hypertension is the most common reason for postpartum hospital readmission. Better prediction of postpartum readmission will improve the health care of patients. These models will allow better use of resources and decrease health care costs.

Objective: This study aimed to evaluate clinical predictors of postpartum readmission for hypertension using a novel machine learning (ML) model that can effectively predict readmissions and balance treatment costs. We examined whether blood pressure and other measures during labor, not just postpartum measures, would be important predictors of readmission.

Methods: We conducted a retrospective cohort study from the PeriData website data set from a single midwestern academic center of all women who delivered from 2009 to 2018. This study consists of 2 data sets; 1 spanning the years 2009-2015 and the other spanning the years 2016-2018. A total of 47 clinical and demographic variables were collected including blood pressure measurements during labor and post partum, laboratory values, and medication administration. Hospital readmissions were verified by patient chart review. In total, 32,645 were considered in the study. For our analysis, we trained several cost-sensitive ML models to predict the primary outcome of hypertension-related postpartum readmission within 42 days post partum. Models were evaluated using cross-validation and on independent data sets (models trained on data from 2009 to 2015 were validated on the data from 2016 to 2018). To assess clinical viability, a cost analysis of the models was performed to see how their recommendations could affect treatment costs.

Results: Of the 32,645 patients included in the study, 170 were readmitted due to a hypertension-related diagnosis. A cost-sensitive random forest method was found to be the most effective with a balanced accuracy of 76.61% for predicting readmission. Using a feature importance and area under the curve analysis, the most important variables for predicting readmission were blood pressures in labor and 24-48 hours post partum increasing the area under the curve of the model from 0.69 (SD 0.06) to 0.81 (SD 0.06), (P=.05). Cost analysis showed that the resulting model could have reduced associated readmission costs by US $6000 against comparable models with similar F1-score and balanced accuracy. The most effective model was then implemented as a risk calculator that is publicly available. The code for this calculator and the model is also publicly available at a GitHub repository.

Conclusions: Blood pressure measurements during labor through 48 hours post partum can be combined with other variables to predict women at risk for postpartum readmission. Using ML techniques in conjunction with these data have the potential to improve health outcomes and reduce associated costs. The use of the calculator can greatly assist clinicians in providing care to patients and improve medical decision-making.

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与高血压相关的产后再入院预测模型:回顾性队列分析
背景:高血压是产后再次入院的最常见原因。更好地预测产后再入院将改善患者的医疗服务。这些模型将有助于更好地利用资源,降低医疗成本:本研究旨在使用新型机器学习(ML)模型评估产后高血压再入院的临床预测因素,该模型可有效预测再入院情况并平衡治疗成本。我们研究了分娩过程中的血压和其他测量指标,而不仅仅是产后测量指标,是否会成为再入院的重要预测因素:我们从PeriData网站的数据集中进行了一项回顾性队列研究,该数据集来自一个中西部学术中心,包含2009年至2018年期间分娩的所有产妇。该研究由两组数据组成,一组跨度为 2009-2015 年,另一组跨度为 2016-2018 年。共收集了 47 个临床和人口统计学变量,包括分娩期间和产后的血压测量值、实验室值和用药情况。通过病历审查核实了再入院情况。本研究共考虑了 32,645 例患者。在分析过程中,我们训练了多个成本敏感的 ML 模型,以预测产后 42 天内与高血压相关的产后再入院这一主要结果。我们使用交叉验证并在独立数据集上对模型进行了评估(在 2009 年至 2015 年的数据上训练的模型在 2016 年至 2018 年的数据上进行了验证)。为评估临床可行性,对模型进行了成本分析,以了解其建议会如何影响治疗成本:在纳入研究的 32,645 名患者中,有 170 人因高血压相关诊断而再次入院。研究发现,对成本敏感的随机森林方法最有效,预测再入院的平衡准确率为 76.61%。通过特征重要性和曲线下面积分析,预测再入院的最重要变量是分娩时和产后 24-48 小时的血压,使模型的曲线下面积从 0.69(标清 0.06)增加到 0.81(标清 0.06),(P=0.05)。成本分析表明,与具有相似 F1 分数和均衡准确性的可比模型相比,该模型可将相关再入院成本降低 6000 美元。最有效的模型随后作为风险计算器被公开使用。该计算器和模型的代码也在 GitHub 存储库中公开发布:结论:分娩过程中到产后 48 小时内的血压测量值可与其他变量相结合,预测产妇产后再入院的风险。结合这些数据使用 ML 技术有可能改善健康结果并降低相关成本。计算器的使用可以极大地帮助临床医生为患者提供护理服务,并改善医疗决策。
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