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COVID Project

This project aims to characterize how diseases are spreading through data. We have worked on a project to collect, preprocess, and model data related to the spread of COVID-19 from multiple organizations.

Disease-related Repositories

DVL-Sejong's disease-related repositories are organized as follows:

Repositories Summary Etc
COVID_DataProcessor COVID-19-related data collection and preprocessing (USA, Italy, India, China)
AutoCOVID19 Predict the number of people infected with COVID-19 using a ConvLSTM-based model, and optimize the model using the HPO libraries Private
COVIDConvLSTM Predicting the number of people infected with COVID-19 using a ConvLSTM-based model Private
DeepNIPA Expanded SEIR model using LSTM module and Neural ODE module Private
SIRD SIRD (Susceptible-Infected-Recovered-Deceased) Classical compartmental model in epidemiology)
R0_Estimation R0 Estimating basic reproduction number in epidemiology
NIPA NIPA (Network-Inference-Based Prediction Algorithm), network inferenced COVID-19 prediction model in China
COVID_Evaluation Comparing model performance among COVID-19 prediction models

Papers

The papers presented by DVL-Sejong are as follows:

Papers Summary Related Repositories
[K-Conference, 2021] COVID-19 Infected Case Prediction Model using Neural ODE
  • Created LSTM and NeuralODE‑based deep learning model which is predicting the number of infected people with COVID‑19
  • Using the NeuralODE module, designed the model for solving ordinary differential equations which is used to estimate the spread of disease
DeepNIPA(private)
[K-Journal, 2021] ConvLSTM-Based COVID-19 Outbreak Prediction using Feature Combination of Multivariate Dataset
  • Created ConvLSTM‑based deep learning model for analyzing which feature combinations are affecting the spread of COVID‑19
  • Using patient and location information, generated multivariate 3d array dataset, and adopted KDE kernel for maximizing the spatial feature
  • Constructed 120 feature combinations by contextual & statistical methods, and optimized the model for each learning dataset using HPO libraries

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