Prediction of Venous Thrombosis Based on Fusion Model of DeepFM and XGBoost
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    Abstract:

    The peripherally inserted central catheter (PICC) technology is widely used in medium and long-term venous treatment, but it can cause various complications and adverse reactions, such as PICC-related thrombosis. The continuous development of machine learning and deep neural networks provides a solution for the assisted diagnosis of PICC-related thrombosis based on clinical medical data. In this study, a fusion model of DeepFM and XGBoost is constructed to predict the risks of PICC-related thrombosis, which can perform feature fusion for sparse data and reduce over-fitting. The experiment reveals that the fusion model can effectively extract the feature importance of PICC-related thrombosis, predict the probability of disease, assist the clinic in identifying high-risk factors of thrombosis in PICC, and intervene to prevent the occurrence of thrombosis in time.

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李莉,谢超,吴迪.基于DeepFM和XGBoost融合模型的静脉血栓预测.计算机系统应用,2022,31(9):376-381

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History
  • Received:December 15,2021
  • Revised:January 24,2022
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  • Online: June 28,2022
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