基于患者生理参数相似性的诊断预测

C. Comito, Deborah Falcone, Agostino Forestiero
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引用次数: 0

摘要

通过采用机器学习和深度学习方法,通过有针对性的临床知识、患者信息和其他健康数据增强临床医生的决策和分析,医务人员可以在患者医疗保健服务中得到极大的支持。本文提出了一种基于当前患者健康状况、临床病史、诊断和实验室结果的学习方法,为临床医生在诊断和治疗决策过程中提供见解。这种方法依赖于这样一个概念,即具有相似生命体征模式的患者很可能受到相同或非常相似的健康问题的影响。因此,他们可以有相同或非常相似的诊断。将患者生理信号建模为时间序列,并利用时间序列之间的相似性。该方法将自适应多标签k近邻方法与基于词嵌入的相似度概念相结合的分类问题。实际临床数据的实验结果表明,所提出的方法可以以高达75%的精度检测诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnosis prediction based on similarity of patients physiological parameters
Medical staff can be considerably supported in patient healthcare delivery thanks to the adoption of machine learning and deep learning methods by enhancing clinicians decisions and analysis with targeted clinical knowledge, patient information, and other health data. This paper proposes a learning methodology that, on the basis of the current patient health status, clinical history, diagnostic and laboratory results, provides insights for clinicians in the diagnosis and therapy decision processes. The approach relies on the concept that patients with similar vital signs patterns are, in all probability, affected by the same or very similar health problems. Thus, they can have the same or very similar diagnoses. Patients physiological signals are modeled as time series and the similarity among them is exploited. The method is formulated as a classification problem in which an ad-hoc multi-label k-nearest neighbor approach is combined with similarity concepts based on word embedding. Experimental results on real-world clinical data have shown that the proposed approach allows detecting diagnoses with a precision up to about 75%.
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