Drug suggestion mechanism in medical emergencies using machine learning

Chinnala Balakrishna 1, * and Shepuri Srinivasulu 2

1 Associate Professor, Department of CSE (Cyber Security), Guru Nanak Institute of Technology, Telangana, India.
2 Assistant Professor, Department of CSE (AIML), AVN Institute of Engineering Technology, Telangana, India.
 
Research Article
International Journal of Science and Research Archive, 2024, 13(01), 901–906
Article DOI: 10.30574/ijsra.2024.13.1.1768
Publication history: 
Received on 11 August 2024; revised on 21 September 2024; accepted on 23 September 2024
 
Abstract: 
In the field of healthcare, prompt and precise medicine recommendations during medical emergencies can have a substantial impact on patient outcomes. This describes a comprehensive "Drug Suggestion Method in Medical Emergencies Using Machine Learning," which was built in Python. The system uses two sophisticated classification algorithms, the Random Forest Classifier and the Decision Tree Classifier, to achieve amazing 100% accuracy levels on both training and test datasets. The dataset for this system consists of 1100 records, each with 30 features. These aspects encompass a wide range of medical parameters, offering a complete picture of patient health. The dataset includes ten unique groups that cover a wide range of medical conditions: chickenpox, chronic, allergy, cold, diabetes, fungal, GERD, jaundice, malaria, and pneumonia. The Random Forest Classifier, known for its ensemble learning capabilities, and the Decision Tree Classifier, known for its interpretability, were carefully selected to model the dataset's deep interactions. Both algorithms performed well, getting flawless accuracy ratings on both the training and test datasets, indicating the effectiveness of the constructed recommendation system. This research not only demonstrates the effectiveness of machine learning in healthcare applications, but it also emphasizes the importance of correct drug recommendations in emergency medical settings. The achieved 100% accuracy demonstrates the system's dependability and precision, instilling confidence in its prospective use in real-world medical settings. As we traverse the interface of technology and healthcare, the Drug suggestion system demonstrates machine learning's revolutionary impact on patient care in critical situations.
 
Keywords: 
Drug; Machine Learning; Random Forest; Decision Tree
 
Full text article in PDF: