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Knowledge discovery in an infertility database using artificial neural networks

机译:使用人工神经网络的不孕症数据库中的知识发现

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Databases are complex structures that may conceal implicit patterns of information that cannot be easily discovered by conventional analysis and interrogation methods. This situation can be exacerbated as the database grows in size, and the data therein grows in complexity. Discovery of patterns and trends in such cases requires database query methods far in advance of those traditionally used. Such databases may be analysed using a set of techniques often collectively referred to as knowledge discovery. This paper describes the use of neural network techniques used in an ongoing knowledge discovery exercise applied to one such database. The ovulation induction infertility database at the Jessop Hospital, Sheffield, holds details of patients treated with gonadotrophins for ovulation induction. The data held is multidimensional in nature, and is of a level of complexity such that it is currently very difficult to predict, with any degree of certainty, the outcome of a particular treatment cycle (i.e. the probability of a patient becoming pregnant).
机译:数据库是复杂的结构,可以隐藏无法通过传统分析和询问方法容易地发现的信息的隐含模式。随着数据库大小的增长,这种情况可以加剧这种情况,并且其中数据的数据变得复杂性。在这种情况下发现模式和趋势需要在传统上使用的人之前需要数据库查询方法。可以使用通常称为知识发现的一组技术来分析这些数据库。本文介绍了在应用于一个这样的数据库的持续知识发现运动中使用的神经网络技术的使用。谢菲尔德Jessop医院的排卵感应性不良数据库持有用促毒液治疗的患者进行排卵诱导细节。持有的数据本质上是多维的,并且具有复杂程度,使得目前很难预测特定治疗循环的任何程度的确定性(即患者怀孕的概率)。

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