Diagnostic test suggestion via Bayesian network of non-expert assisted knowledge base

Jorge Quinteros, N. Baloian, J. Pino, Alvaro Riquelme, Sergio Peñafiel, Horacio Sanson, Douglas Teoh
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引用次数: 1

Abstract

The Japanese public health system relies upon a mandatory insurance scheme that subsidizes every medical procedure. This causes some practitioners in doubt to order unnecessary exams, especially in departments like the emergency room (ER) (where time and personnel constraints apply), generating additional costs for the public health system. In this context arises the need and challenge of developing a computer application based on Artificial Intelligence that, given a patient's symptoms upon entering the ER, recommends the most appropriate exams to increase the accuracy of the diagnosis. This paper presents the preliminary results on the development of such a tool using a Bayesian Network (BN). Although there is a lot of literature on BN for medical diagnosis, this work is innovative as it is focused on suggesting useful exams based on pre-test probabilities, and that it was built using only medical data and other freely available information sources. A fundamental disease list was established using a Human Symptom-Disease Network (HSDN) containing symptom-disease relationships. The co-occurrence between disease and symptom terms on the HSDN was translated into rough sensitivity and specificity estimates and used to set the conditional probabilities of the BN. Prior probabilities of diseases were estimated using hospital data of regular and emergency visits. Information about findings (exams) and their sensitivity-specificity data was scraped from web databases and mapped into the network. Preliminary tests for inspecting the accuracy of the developed tool were made with the help of a medical expert, based on relevant literature. Obtained results show that the tool is able to find differential diagnoses for most cases. This work opens the door for future improvements of the system.
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基于贝叶斯网络的非专家辅助知识库的诊断测试建议
日本的公共卫生系统依赖于一项强制性保险计划,该计划为每一个医疗程序提供补贴。这导致一些心存疑虑的从业者下令进行不必要的检查,特别是在急诊室(时间和人员限制)等部门,为公共卫生系统带来了额外的成本。在这种情况下,开发基于人工智能的计算机应用程序的需求和挑战就出现了,该应用程序可以根据患者进入急诊室时的症状,推荐最合适的检查以提高诊断的准确性。本文介绍了使用贝叶斯网络(BN)开发这种工具的初步结果。虽然有很多关于医学诊断BN的文献,但这项工作是创新的,因为它专注于基于预测试概率建议有用的检查,并且它仅使用医疗数据和其他免费可用的信息源。使用包含症状-疾病关系的人类症状-疾病网络(HSDN)建立基本疾病列表。将HSDN上疾病和症状项的共发生转化为粗略的敏感性和特异性估计,并用于设置BN的条件概率。疾病的先验概率使用医院的定期和紧急访问的数据估计。有关发现(检查)及其敏感性特异性数据的信息是从网络数据库中抓取的,并映射到网络中。在医学专家的帮助下,根据相关文献,对所开发工具的准确性进行了初步测试。结果表明,该工具能够对大多数病例进行鉴别诊断。这项工作为未来系统的改进打开了大门。
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