Department of Pediatric Haematology and Oncology, Medical University, Hannover, Germany.
Pediatr Res. 2012 Jun;71(6):725-31. doi: 10.1038/pr.2012.34. Epub 2012 Mar 22.
This article demonstrates the capacity of a combination of different data mining (DM) methods to support diagnosis in pediatric emergency patients. By using a novel combination of these DM procedures, a computer-based diagnosis was created.
A support vector machine (SVM), artificial neural networks (ANNs), fuzzy logics, and a voting algorithm were simultaneously used to allocate a patient to one of 18 diagnoses (e.g., pneumonia, appendicitis). Anonymized data sets of patients who presented in the emergency department (ED) of a pediatric care clinic were chosen. For each patient, 26 identical clinical and laboratory parameters were used (e.g., blood count, C-reactive protein) to finally develop the program.
The combination of four DM operations arrived at a correct diagnosis in 98% of the cases, retrospectively. A subgroup analysis showed that the highest diagnostic accuracy was for appendicitis (97% correct diagnoses) and idiopathic thrombocytopenic purpura or erythroblastopenia (100% correct diagnoses). During the prospective testing, 81% of the patients were correctly diagnosed by the system.
The combination of these DM methods was suitable for proposing a diagnosis using both laboratory and clinical parameters. We conclude that an optimized combination of different but complementary DM methods might serve to assist medical decisions in the ED.
本文展示了组合使用不同数据挖掘(DM)方法来支持儿科急诊患者诊断的能力。通过使用这些 DM 程序的新颖组合,创建了一个基于计算机的诊断系统。
支持向量机(SVM)、人工神经网络(ANNs)、模糊逻辑和投票算法同时用于将患者分配到 18 种诊断之一(例如肺炎、阑尾炎)。选择了在儿科诊所急诊部门就诊的患者的匿名数据集。对于每个患者,使用 26 个相同的临床和实验室参数(例如,血常规、C 反应蛋白)来最终开发该程序。
四个 DM 操作的组合在回顾性分析中正确诊断了 98%的病例。亚组分析表明,诊断准确率最高的是阑尾炎(97%的正确诊断)和特发性血小板减少性紫癜或红细胞生成减少症(100%的正确诊断)。在前瞻性测试中,系统正确诊断了 81%的患者。
这些 DM 方法的组合适用于使用实验室和临床参数提出诊断。我们得出结论,不同但互补的 DM 方法的优化组合可能有助于在急诊室做出医疗决策。