Intelligent diagnosis of jaundice with dynamic uncertain causality graph model基于动态不确定性因果图(DUCG)模型的黄疸 待查智能诊断研究

被引:0
作者
Shao-rui Hao
Shi-chao Geng
Lin-xiao Fan
Jia-jia Chen
Qin Zhang
Lan-juan Li
机构
[1] Zhejiang University,State Key Laboratory for Diagnosis and Treatment of Infectious Diseases, Collaborative Innovation Center for Diagnosis and Treatment of Infectious Diseases, the First Affiliated Hospital, School of Medicine
[2] Shandong Normal University,School of Communication
[3] Beihang University,School of Computer Science and Engineering
来源
Journal of Zhejiang University-SCIENCE B | 2017年 / 18卷
关键词
Jaundice; Intelligent diagnosis; Dynamic uncertain causality graph; Expert system; 动态不确定性因果图(DUCG); 人工智能; 黄 疸; 智能诊断; R447;
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中图分类号
学科分类号
摘要
Jaundice is a common and complex clinical symptom potentially occurring in hepatology, general surgery, pediatrics, infectious diseases, gynecology, and obstetrics, and it is fairly difficult to distinguish the cause of jaundice in clinical practice, especially for general practitioners in less developed regions. With collaboration between physicians and artificial intelligence engineers, a comprehensive knowledge base relevant to jaundice was created based on demographic information, symptoms, physical signs, laboratory tests, imaging diagnosis, medical histories, and risk factors. Then a diagnostic modeling and reasoning system using the dynamic uncertain causality graph was proposed. A modularized modeling scheme was presented to reduce the complexity of model construction, providing multiple perspectives and arbitrary granularity for disease causality representations. A “chaining” inference algorithm and weighted logic operation mechanism were employed to guarantee the exactness and efficiency of diagnostic reasoning under situations of incomplete and uncertain information. Moreover, the causal interactions among diseases and symptoms intuitively demonstrated the reasoning process in a graphical manner. Verification was performed using 203 randomly pooled clinical cases, and the accuracy was 99.01% and 84.73%, respectively, with or without laboratory tests in the model. The solutions were more explicable and convincing than common methods such as Bayesian Networks, further increasing the objectivity of clinical decision-making. The promising results indicated that our model could be potentially used in intelligent diagnosis and help decrease public health expenditure.
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页码:393 / 401
页数:8
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