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Medicine data
- Citation Author(s):
- Submitted by:
- Shruti Kaushik
- Last updated:
- Tue, 03/31/2020 - 15:04
- DOI:
- 10.21227/4s7x-hp56
- Data Format:
- License:
- Categories:
Abstract
Machine learning offers a wide range of techniques to predict medicine expenditures using historical expenditures data as well as other healthcare variables. For example, researchers have developed multi-layer perceptron (MLP), long-short term memory (LSTM), and convolutional neural networks (CNN) for predicting healthcare outcomes. However, recently proposed generative approaches (e.g., generative adversarial networks; GANs) are yet to be explored for time-series prediction of medicine-related expenditures. The primary objective of this research is to develop and test a generative adversarial network model (called “variance-based GAN or V-GAN”) that specifically minimizes the difference in variance between model and actual data during model training. For our model development, we used patient expenditure data of a popular pain medication in the US. In the V-GAN model, we used an LSTM model as a generator network and a CNN model as a discriminator network. The performance of V-GAN model was compared with other GAN variants and a baseline LSTM model. Results revealed that the V-GAN model outperformed other GAN-based prediction models and the LSTM model in correctly predicting future medicine expenditures of patients. Through this research, we highlight the utility of using GAN-based architectures involving variance minimization for predicting patient-related expenditures in the healthcare domain.
This is a time-series data (frequency = daily) containing 21 attributes related to patients buying a particular medicine. First 20 attributes give information about the count of patients belonging to particular attribute who purchased medicine on that day. The 21st attribute tells the average exenditure by all the patients in purchasing this medicine on that particular day.
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