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Medical Prognosis Generation from General Blood Test Results Using Knowledge-Based and Machine-Learning-Based Approaches

机译:使用基于知识和基于机器学习的方法从常规血液测试结果生成医学预后

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In this paper, we present two approaches to generate prognosis from general blood test results. The first approach is a knowledge-based approach using ripple-down rules (RDR). The knowledge-based approach with RDR converts knowledge of pathologists into a knowledge base with the minimum intervention of knowledge engineers. The second approach is a machine-learning(ML)-based approach using decision tree, random forest and deep neural network (DNN). The ML-based approach learns patterns of attributes from various cases of general blood test. Our experimental results show that there are indeed some important patterns of the attributes in general blood test results, and they are adequately encoded by the both approaches.
机译:在本文中,我们提出了两种从一般血液检查结果中产生预后的方法。第一种方法是使用波纹下降规则(RDR)的基于知识的方法。使用RDR的基于知识的方法,只需最少的知识工程师干预,即可将病理学家的知识转换为知识库。第二种方法是使用决策树,随机森林和深度神经网络(DNN)的基于机器学习(ML)的方法。基于ML的方法可从各种常规血液检查案例中学习属性模式。我们的实验结果表明,在常规血液检测结果中确实存在一些重要的属性模式,并且两种方法都对它们进行了充分的编码。

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