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Accuracy of dengue clinical diagnosis with and without NS1 antigen rapid test: Comparison between human and Bayesian network model decision

机译:有和没有NS1抗原快速检测的登革热临床诊断的准确性:人与贝叶斯网络模型决策之间的比较

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摘要

Differentiating dengue patients from other acute febrile illness patients is a great challenge among physicians. Several dengue diagnosis methods are recommended by WHO. The application of specific laboratory tests is still limited due to high cost, lack of equipment, and uncertain validity. Therefore, clinical diagnosis remains a common practice especially in resource limited settings. Bayesian networks have been shown to be a useful tool for diagnostic decision support. This study aimed to construct Bayesian network models using basic demographic, clinical, and laboratory profiles of acute febrile illness patients to diagnose dengue. Data of 397 acute undifferentiated febrile illness patients who visited the fever clinic of the Bangkok Hospital for Tropical Diseases, Thailand, were used for model construction and validation. The two best final models were selected: one with and one without NS1 rapid test result. The diagnostic accuracy of the models was compared with that of physicians on the same set of patients. The Bayesian network models provided good diagnostic accuracy of dengue infection, with ROC AUC of 0.80 and 0.75 for models with and without NS1 rapid test result, respectively. The models had approximately 80% specificity and 70% sensitivity, similar to the diagnostic accuracy of the hospital’s fellows in infectious disease. Including information on NS1 rapid test improved the specificity, but reduced the sensitivity, both in model and physician diagnoses. The Bayesian network model developed in this study could be useful to assist physicians in diagnosing dengue, particularly in regions where experienced physicians and laboratory confirmation tests are limited.
机译:将登革热患者与其他急性发热性疾病患者区分开是医师之间的巨大挑战。世卫组织推荐了几种登革热诊断方法。由于成本高,缺乏设备和不确定性,特定实验室测试的应用仍然受到限制。因此,临床诊断仍然是一种普遍的做法,尤其是在资源有限的环境中。贝叶斯网络已被证明是诊断决策支持的有用工具。这项研究旨在使用急性发热疾病患者的基本人口统计学,临床和实验室资料来构建贝叶斯网络模型,以诊断登革热。使用了397名急性未分化发热病患者的数据,这些患者访问了泰国曼谷热带病医院的发烧诊所,用于模型构建和验证。选择了两个最佳的最终模型:一个具有NS1快速测试结果的模型。将模型的诊断准确性与同一组患者的医生的诊断准确性进行了比较。贝叶斯网络模型提供了良好的登革热感染诊断准确性,对于有和没有NS1快速检测结果的模型,ROC AUC分别为0.80和0.75。这些模型具有约80%的特异性和70%的敏感性,与医院传染病同伴的诊断准确性相似。在模型和医师诊断中,包括有关NS1快速测试的信息均可提高特异性,但降低敏感性。这项研究中开发的贝叶斯网络模型可能有助于协助医生诊断登革热,特别是在经验丰富的医生和实验室确认测试受到限制的地区。

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