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Numerical Feature Transformation-based Sequence Generation Model for Multi-disease Diagnosis.
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- Author(s): Yuan, Ming; Ren, Jiangtao
- Source:
International Journal of Pattern Recognition & Artificial Intelligence; Aug2021, Vol. 35 Issue 10, p1-21, 21p
- Subject Terms:
- Additional Information
- Abstract:
The goal of computer-aided diagnosis is to predict patient's diseases based on patient's clinical data. The development of deep learning technology provides new help for clinical diagnosis. In this paper, we propose a new sequence generation model for multi-disease diagnosis prediction based on numerical feature transformation. Our model simultaneously uses patient's laboratory test results and clinical text as input to diagnose and predict the disease that the patient may have. According to medical knowledge, our model can transform numerical features into descriptive text features, thereby enriching the semantic information of clinical texts. Besides, our model uses attention-based sequence generation methods to achieve the diagnosis of multiple diseases and better utilizes the correlation information between multiple diseases. We evaluate our model's performance on a dataset of respiratory diseases from the real world, and experimental results show that our model's accuracy reaches 42.75%, and the F 1 score reaches 65.65%, which is better than many other methods. It is suitable for the accurate diagnosis of multiple diseases. [ABSTRACT FROM AUTHOR]
- Abstract:
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