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Syndrome Diagnosis: Human Intuition or Machine Intelligence?

机译:综合征诊断:直觉还是机器智能?

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The aim of this study was to investigate whether artificial intelligence methods can represent objective methods that are essential in syndrome diagnosis. Most syndromes have no external criterion standard of diagnosis. The predictive value of a clinical sign used in diagnosis is dependent on the prior probability of the syndrome diagnosis. Clinicians often misjudge the probabilities involved. Syndromology needs objective methods to ensure diagnostic consistency, and take prior probabilities into account. We applied two basic artificial intelligence methods to a database of machine-generated patients - a ‘vector method’ and a set method. As reference methods we ran an ID3 algorithm, a cluster analysis and a naive Bayes’ calculation on the same patient series. The overall diagnostic error rate for the the vector algorithm was 0.93%, and for the ID3 0.97%. For the clinical signs found by the set method, the predictive values varied between 0.71 and 1.0. The artificial intelligence methods that we used, proved simple, robust and powerful, and represent objective diagnostic methods.
机译:这项研究的目的是研究人工智能方法是否可以代表在综合征诊断中必不可少的客观方法。大多数综合征没有外部标准的诊断标准。诊断中使用的临床体征的预测值取决于综合征诊断的先验概率。临床医生经常会误判所涉及的概率。综合征学需要客观的方法来确保诊断的一致性,并考虑先前的概率。我们将两种基本的人工智能方法应用于机器生成的患者的数据库-“矢量方法”和“设置方法”。作为参考方法,我们对同一患者系列运行了ID3算法,聚类分析和朴素贝叶斯计算。向量算法的整体诊断错误率为0.93%,ID3的整体诊断错误率为0.97%。对于通过固定方法发现的临床体征,预测值在0.71和1.0之间变化。我们使用的人工智能方法被证明简单,可靠和强大,并且代表了客观的诊断方法。

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