论文标题
生物医学文学的采矿误诊模式
Mining Misdiagnosis Patterns from Biomedical Literature
论文作者
论文摘要
诊断错误可能会对患者的安全构成严重威胁,从而导致严重伤害甚至死亡。正在努力制定干预措施,使医生可以重新评估错误并提高诊断准确性。我们的研究提出了对PubMed摘要误诊模式的探索。选择了包含某些短语的文章标题,并选择了这些误诊的频率。我们以有向图的形式介绍了所得模式,并具有连接诊断顶点的频率加权误诊边缘。我们发现,最常见的诊断性疾病通常被误诊为许多不同的疾病,每个误诊的频率相对较低,而不是单一疾病的可能性更大。另外,尽管通常可能存在误诊关系,但这种关系通常被发现是单方面的。
Diagnostic errors can pose a serious threat to patient safety, leading to serious harm and even death. Efforts are being made to develop interventions that allow physicians to reassess for errors and improve diagnostic accuracy. Our study presents an exploration of misdiagnosis patterns mined from PubMed abstracts. Article titles containing certain phrases indicating misdiagnosis were selected and frequencies of these misdiagnoses calculated. We present the resulting patterns in the form of a directed graph with frequency-weighted misdiagnosis edges connecting diagnosis vertices. We find that the most commonly misdiagnosed diseases were often misdiagnosed as many different diseases, with each misdiagnosis having a relatively low frequency, rather than as a single disease with greater probability. Additionally, while a misdiagnosis relationship may generally exist, the relationship was often found to be one-sided.