Integrating Social Determinants of Health with SOFA Scoring to Enhance Mortality Prediction in Septic Patients: A Multidimensional Prognostic Model

Elie Sarraf, Alireza Vafaei Sadr, Vida Abedi, Anthony Bonavia
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Abstract

Background: The Sequential Organ Failure Assessment (SOFA) score is an established tool for monitoring organ failure and defining sepsis. However, its predictive power for sepsis mortality may not account for the full spectrum of influential factors. Recent literature highlights the potential impact of socioeconomic and demographic factors on sepsis outcomes. Objective: This study assessed the prognostic value of SOFA scores relative to demographic and social health determinants in predicting sepsis mortality, and evaluated whether a combined model enhances predictive accuracy. Methods: We utilized the Medical Information Mart for Intensive Care (MIMIC)-IV database for retrospective data and the Penn State Health (PSH) cohort for prospective external validation. SOFA scores, social/demographic data, and the Charlson Comorbidity Index were used to train a Random Forest model using the MIMIC-IV dataset, and then to externally validate it using the PSH dataset. Findings: Of 32,970 sepsis patients in the MIMIC-IV dataset, 6,824 (20.7%) died within 30 days. The model incorporating demographic, socioeconomic, and comorbidity data with SOFA scores showed improved predictive accuracy over SOFA parameters alone. Day 2 SOFA components were highly predictive, with additional factors like age, weight, and comorbidity enhancing prognostic precision. External validation demonstrated consistency in the model's performance, with delta SOFA between days 1 and 3 emerging as a strong mortality predictor. Conclusion: Integrating patient-specific information with clinical measures significantly enhances the predictive accuracy for sepsis mortality. Our findings suggest the need for a multidimensional prognostic framework, considering both clinical and non-clinical patient information for a more accurate sepsis outcome prediction.
将健康的社会决定因素与 SOFA 评分相结合,提高败血症患者的死亡率预测:多维预后模型
背景序贯器官衰竭评估(SOFA)评分是监测器官衰竭和定义脓毒症的成熟工具。然而,它对脓毒症死亡率的预测能力可能没有考虑到所有的影响因素。最近的文献强调了社会经济和人口因素对脓毒症结果的潜在影响。研究目的本研究评估了 SOFA 评分相对于人口和社会健康决定因素在预测脓毒症死亡率方面的预后价值,并评估了联合模型是否能提高预测准确性。方法我们利用重症监护医学信息市场(MIMIC)-IV 数据库获取回顾性数据,并利用宾夕法尼亚州立卫生院(PSH)队列进行前瞻性外部验证。我们先利用 MIMIC-IV 数据集训练随机森林模型,然后利用 PSH 数据集进行外部验证。研究结果在 MIMIC-IV 数据集中的 32,970 名败血症患者中,有 6,824 人(20.7%)在 30 天内死亡。将人口统计学、社会经济学和并发症数据与SOFA评分相结合的模型比单独的SOFA参数显示出更高的预测准确性。第 2 天的 SOFA 分值具有很高的预测性,而年龄、体重和合并症等附加因素则提高了预后的准确性。外部验证表明,该模型的性能具有一致性,第 1 天和第 3 天之间的 SOFA δ 是预测死亡率的有力指标。结论将患者特异性信息与临床指标相结合可显著提高脓毒症死亡率预测的准确性。我们的研究结果表明,有必要建立一个多维预后框架,同时考虑临床和非临床患者信息,以更准确地预测脓毒症结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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