Forecasting of medical equipment demand and outbreak spreading based on deep long short-term memory network: the COVID-19 pandemic in Turkey
Abstract
The need for healthcare equipment has increased due to the COVID-19
outbreak. Forecasting of these demands allows states to use their
resources effectively. Artificial intelligence-based forecasting models
play an important role in the forecasting of medical equipment demand
during infectious disease periods. In this study, a deep model approach
is presented, which is based on a multilayer long short-term memory
network for forecasting of medical equipment demand and outbreak
spreading, during the coronavirus outbreak (COVID-19). The proposed
model consists of stages: normalization, deep LSTM networks and
dropout-dense-regression layers, in order of process. Firstly, the daily
input data were subjected to a normalization process. Afterward, the
multilayer LSTM network model, which was a deep learning approach, was
created and then fed into a dropout layer and a fully connected layer.
Finally, the weights of the trained model were used to predict medical
equipment demand and outbreak spreading in the following days. In
experimental studies, 77-day COVID-19 data collected from the statistics
data put together in Turkey were used. In order to test the proposed
system, the data belonging to last 9 days of this data set were used and
the performance of the proposed system was calculated using statistical
algorithms, MAPE and R-2. As a result of the experiments carried out, it
was observed that the proposed model could be used to estimate the
number of cases and medical equipment demand in the future in relation
to COVID-19 disease.
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