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Diagnosis Recommendation Using Machine Learning Scientific Workflows

机译:使用机器学习科学工作流程诊断建议

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Diagnosis recommendation plays a significant role in healthcare, where a clinician infers an optimal diagnosis for a patient. This problem has a major impact on improving patients' quality of life. Existing machine learning techniques for solving this problem require many labeled instances, which are not readily available. To overcome this limitation, in this paper, we present a scientific workflow for representing a semisupervised clustering based diagnosis recommendation model. In this approach, initial clusters are formed from a labeled dataset; then imposing certain relative threshold to a cluster, frequent patterns and their corresponding labels are obtained. Subsequently, unlabeled instances are labeled by assigning them to the most similar clusters. Finally, we form clusters on the generated new datasets and recommend the diagnosis label by applying a certain minimum threshold. To evaluate our model, we perform extensive experiments on the i2b2 datasets and compared our proposed algorithms with the self-training and co-training methods. The experimental results show that our proposed algorithm outperforms the mentioned methods in most cases. The proposed workflow is implemented in the DATAVIEW system.
机译:诊断建议在医疗保健中发挥着重要作用,临床医生为患者的最佳诊断。这一问题对提高患者的生活质量产生了重大影响。用于解决此问题的现有机器学习技术需要许多标记的实例,这些实例不易获得。为了克服这一限制,在本文中,我们提出了一个科学工作流程,用于代表基于半熟的基于聚类的诊断推荐模型。在这种方法中,初始集群由标记的数据集形成;然后,获得对簇的某些相对阈值,获得频繁的图案及其相应的标签。随后,通过将它们分配给最相似的群集来标记未标记的实例。最后,我们在生成的新数据集上形成群集,并通过应用一定的最小阈值推荐诊断标签。为了评估我们的模型,我们对I2B2数据集进行了广泛的实验,并将我们的建议算法与自培训和共同培训方法进行了比较。实验结果表明,在大多数情况下,我们所提出的算法优于提到的方法。所提出的工作流程在DataView系统中实现。

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