Journal of Ideas in Health (Dec 2022)

Artificial intelligence-enabled rapid and symptom-based medication recommendation system (COV-MED) for the COVID-19 patients

  • Amit Shaha Surja,
  • Md. Tariqul Islam Limon,
  • Md. Janibul Alam Soeb,
  • Md. Shoaib Arifin,
  • Md. Meftaul Islam,
  • Md. Shahidullah Kayshar,
  • Md. Amirul Islam,
  • Md. Mizanur Rahman,
  • Md Abdul Malek,
  • Faroque Md Mohsin,
  • Mohammed Shah Jahan,
  • Anupam Barua,
  • Tanjima Binte Tofaz,
  • Irin Sultana,
  • Md. Fahad Jubayer

DOI
https://doi.org/10.47108/jidhealth.Vol5.Iss4.259
Journal volume & issue
Vol. 5, no. 4

Abstract

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In a general COVID-19 population in Cox’s Bazar, Bangladesh, we developed a medication recommendation system based on clinical information from the electronic medical record (EMR). Our goal was also to enable deep learning (DL) strategies to quickly assist physicians and COVID-19 patients by recommending necessary medications. The general demographic data, clinical symptoms, basic clinical tests, and drug information of 8953 patients were used to create a dataset. The learning model in this COVID-MED model was created using Keras (an open-source artificial neural network library) to solve regression problems. In this study, a sequential model was adopted. In order to improve the prediction capability and achieve global minima quickly and smoothly, the COVID-MED model incorporates an adaptive optimizer dubbed Adam. The model calculated a mean absolute error of 0.0037, a mean squared error of 0.000035, and a root mean squared error of 0.0059. The model predicts the output medications, such as injections or other oral medications, with around 99% accuracy. These findings show that medication can be predicted using information from the EMR. Similar models allow for patient-specific decision support to help prevent medication errors in diseases other than COVID-19.