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首页> 外文期刊>BMC Medical Informatics and Decision Making >Development of a personalized diagnostic model for kidney stone disease tailored to acute care by integrating large clinical, demographics and laboratory data: the diagnostic acute care algorithm - kidney stones (DACA-KS)
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Development of a personalized diagnostic model for kidney stone disease tailored to acute care by integrating large clinical, demographics and laboratory data: the diagnostic acute care algorithm - kidney stones (DACA-KS)

机译:通过集成大量临床,人口统计学和实验室数据,开发针对急性护理量身定制的个性化肾结石诊断模型:诊断性急性护理算法-肾结石(DACA-KS)

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Kidney stone (KS) disease has high, increasing prevalence in the United States and poses a massive economic burden. Diagnostics algorithms of KS only use a few variables with a limited sensitivity and specificity. In this study, we tested a big data approach to infer and validate a ‘multi-domain’ personalized diagnostic acute care algorithm for KS (DACA-KS), merging demographic, vital signs, clinical, and laboratory information. We utilized a large, single-center database of patients admitted to acute care units in a large tertiary care hospital. Patients diagnosed with KS were compared to groups of patients with acute abdominal/flank/groin pain, genitourinary diseases, and other conditions. We analyzed multiple information domains (several thousands of variables) using a collection of statistical and machine learning models with feature selectors. We compared sensitivity, specificity and area under the receiver operating characteristic (AUROC) of our approach with the STONE score, using cross-validation. Thirty eight thousand five hundred and ninety-seven distinct adult patients were admitted to critical care between 2001 and 2012, of which 217 were diagnosed with KS, and 7446 with acute pain (non-KS). The multi-domain approach using logistic regression yielded an AUROC of 0.86 and a sensitivity/specificity of 0.81/0.82 in cross-validation. Increase in performance was obtained by fitting a super-learner, at the price of lower interpretability. We discussed in detail comorbidity and lab marker variables independently associated with KS (e.g. blood chloride, candidiasis, sleep disorders). Although external validation is warranted, DACA-KS could be integrated into electronic health systems; the algorithm has the potential used as an effective tool to help nurses and healthcare personnel during triage or clinicians making a diagnosis, streamlining patients’ management in acute care.
机译:肾结石(KS)病在美国患病率高,并且正在增加,并带来巨大的经济负担。 KS的诊断算法仅使用少数具有有限敏感性和特异性的变量。在这项研究中,我们测试了一种大数据方法来推断和验证针对KS的“多域”个性化诊断急性护理算法(DACA-KS),合并了人口统计学,生命体征,临床和实验室信息。我们利用大型单中心的大型三级护理医院的急诊病房患者数据库。将诊断为KS的患者与患有急性腹/腹/腹股沟痛,泌尿生殖系统疾病和其他疾病的患者组进行比较。我们使用具有特征选择器的统计和机器学习模型集合分析了多个信息域(数千个变量)。我们使用交叉验证比较了我们的方法的灵敏度,特异性和受试者工作特征下面积(AUROC)与STONE评分。在2001年至2012年之间,共有3 587名成年患者接受了重症监护,其中217例被诊断为KS,7446例为急性疼痛(非KS)。使用逻辑回归的多域方法在交叉验证中得出的AUROC为0.86,敏感性/特异性为0.81 / 0.82。通过配备超级学习器以降低可解释性的代价来提高性能。我们详细讨论了与KS独立相关的合并症和实验室标记变量(例如,血液氯化物,念珠菌病,睡眠障碍)。尽管有必要进行外部验证,但DACA-KS可以集成到电子医疗系统中。该算法有可能被用作有效的工具,以帮助分诊或临床医生进行诊断时的护士和医护人员进行诊断,从而简化急诊患者的管理。

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