Clinical prediction models to diagnose neonatal sepsis in low-income and middle-income countries: a scoping review

Samuel R Neal, Sarah Sturrock, David Musorowegomo, Hannah Gannon, Michele Zaman, Mario Cortina-Borja, Kirsty Le Doare, Michelle Heys, Gwen Chimhini, Felicity Fitzgerald
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Abstract

Neonatal sepsis causes significant morbidity and mortality worldwide but is difficult to diagnose clinically. Clinical prediction models (CPMs) could improve diagnostic accuracy. Neonates in low-income and middle-income countries are disproportionately affected by sepsis, yet no review has comprehensively synthesised CPMs validated in this setting. We performed a scoping review of CPMs for neonatal sepsis diagnosis validated in low-income and middle-income countries. From 4598 unique records, we included 82 studies validating 44 distinct models. Most studies were set in neonatal intensive or special care units in middle-income countries and included neonates already suspected of sepsis. Three quarters of models were only validated in one study. Our review highlights several literature gaps, particularly a paucity of studies validating models in low-income countries and the WHO African region, and models for the general neonatal population. Furthermore, heterogeneity in study populations, definitions of sepsis and reporting of models may hinder progress in this field.
中低收入国家诊断新生儿败血症的临床预测模型:范围综述
新生儿败血症在全球范围内造成了严重的发病率和死亡率,但临床诊断却很困难。临床预测模型(CPM)可以提高诊断的准确性。低收入和中等收入国家的新生儿受败血症的影响尤为严重,但目前还没有综述对在这种情况下验证的 CPM 进行全面总结。我们对在低收入和中等收入国家验证的新生儿败血症诊断 CPM 进行了范围界定。从 4598 份独特的记录中,我们纳入了 82 项研究,验证了 44 种不同的模型。大多数研究都是在中等收入国家的新生儿重症监护室或特殊监护室进行的,并纳入了已被怀疑患有败血症的新生儿。四分之三的模型仅在一项研究中得到验证。我们的综述强调了一些文献空白,尤其是在低收入国家和世界卫生组织非洲地区验证模型的研究以及针对普通新生儿人群的模型的研究很少。此外,研究人群、败血症定义和模型报告的异质性可能会阻碍这一领域的进展。
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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