A Machine Learning Approach for Monitoring and Classifying Healthcare Data-A Case of Emergency Department of KSA Hospitals.
Mahmoud RagabFaris KatebMohammed W Al-RabiaDiaa HamedTurki AlthaqafiAbdullah Saad Al-Malaise Al-GhamdiPublished in: International journal of environmental research and public health (2023)
The Emergency Departments (EDs), in hospitals located in a few important areas in Saudi Arabia, experience a heavy inflow of patients due to viral illnesses, pandemics, and even on a few special occasions events such as Hajj or Umrah, when pilgrims travel from one region to another with severe disease conditions. Apart from the EDs, it is critical to monitor the movements of patients from EDs to other wards inside the hospital or in the region. This is to track the spread of viral illnesses that require more attention. In this scenario, Machine Learning (ML) algorithms can be used to classify the data into many classes and track the target audience. The current research article presents a Machine Learning-based Medical Data Monitoring and Classification Model for the EDs of the KSA hospitals and is named MLMDMC-ED technique. The most important aim of the proposed MLMDMC-ED technique is to monitor and track the patient's visits to the EDs, the treatment given to them based on the Canadian Emergency Department Triage and Acuity Scale (CTAS), and their Length Of Stay (LOS) in the hospital, based on their treatment requirements. A patient's clinical history is crucial in terms of making decisions during health emergencies or pandemics. So, the data should be processed so that it can be classified and visualized in different formats using the ML technique. The current research work aims at extracting the textual features from the patients' data using the metaheuristic Non-Defeatable Genetic Algorithm II (NSGA II). The data, collected from the hospitals, are classified using the Graph Convolutional Network (GCN) model. Grey Wolf Optimizer (GWO) is exploited for fine-tuning the parameters to optimize the performance of the GCN model. The proposed MLMDMC-ED technique was experimentally validated on the healthcare data and the outcomes indicated the improvements of the MLMDMC-ED technique over other models with a maximum accuracy of 91.87%.
Keyphrases
- emergency department
- healthcare
- machine learning
- big data
- electronic health record
- end stage renal disease
- deep learning
- artificial intelligence
- chronic kidney disease
- ejection fraction
- mental health
- sars cov
- working memory
- newly diagnosed
- air pollution
- dna methylation
- genome wide
- multiple sclerosis
- climate change
- patient reported outcomes
- skeletal muscle
- risk assessment
- public health
- peritoneal dialysis
- gene expression
- data analysis
- weight loss
- smoking cessation
- metabolic syndrome
- replacement therapy