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Diagnostic Prediction Using Discomfort Drawings with IBTM

机译:使用IBTM的不适感图进行诊断预测

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In this paper, we explore the possibility to apply machine learning to make diagnostic predictions using discomfort drawings. Discomfort drawings have proven to be an effective method to collect patient data and make diagnostic decisions in real-life practice. A dataset from relevant patient cases is collected for which medical experts provide diagnostic labels. Next, we use a factorized multimodal topic model, Inter-Battery Topic Model (IBTM), to train a system that can make diagnostic predictions given an unseen discomfort drawing. Experimental results show reasonable predictions of diagnostic labels given an unseen discomfort drawing. Additionally, we generate synthetic discomfort drawings with IBTM given a diagnostic label, which results in typical cases of symptoms. The positive result indicates a significant potential of machine learning to be used for parts of the pain diagnostic process and to be a decision support system for physicians and other health care personnel.
机译:在本文中,我们探索使用机器学习来使用不适感图纸做出诊断预测的可能性。事实证明,不适感图是收集患者数据并做出诊断决定的有效方法。收集了来自相关患者病例的数据集,医学专家为此提供了诊断标签。接下来,我们使用分解式多峰主题模型电池间主题模型(IBTM)来训练一个系统,该系统可以在看不见不适的情况下做出诊断预测。实验结果表明,给定看不见的不适感,诊断标签的合理预测。此外,我们使用带有诊断标签的IBTM生成综合不适图,这会导致典型的症状。积极的结果表明,机器学习具有巨大的潜力,可用于疼痛诊断过程的一部分,并成为医师和其他医疗保健人员的决策支持系统。

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