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Medical Fraud and Abuse Detection System Based on Machine Learning

机译:基于机器学习的医疗欺诈和滥用检测系统

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摘要

It is estimated that approximately 10% of healthcare system expenditures are wasted due to medical fraud and abuse. In the medical area, the combination of thousands of drugs and diseases make the supervision of health care more difficult. To quantify the disease–drug relationship into relationship score and do anomaly detection based on this relationship score and other features, we proposed a neural network with fully connected layers and sparse convolution. We introduced a focal-loss function to adapt to the data imbalance and a relative probability score to measure the model’s performance. As our model performs much better than previous ones, it can well alleviate analysts’ work.
机译:据估计,由于医学欺诈和滥用,大约10%的医疗保健系统支出被浪费。在医疗领域,成千上万的药物和疾病的组合使医疗保健的监督更加困难。为了量化疾病 - 药物关系与关系分数并基于这种关系评分和其他特征进行异常检测,我们提出了一种具有完全连接的层和稀疏卷积的神经网络。我们介绍了一个焦点损失功能,以适应数据不平衡和相对概率分数来测量模型的性能。由于我们的模型比以前的价格更好,它可以很好地缓解分析师的工作。

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