Application of SVM to Speed Up and Accurate Nursing Decisions for Mentally Disordered Patients
Main Article Content
Abstract
This study aims to evaluate the application of the Support Vector Machine (SVM) algorithm in increasing the speed and accuracy of nursing decision making in patients with mental health disorders. Fast and accurate decision making is very important in the nursing context, especially in treating patients with complex mental disorders. In this research, patient medical record data is used to train an SVM model, which is then used to predict the severity of the patient's mental disorder, such as Mild, Moderate, or Severe. The model is trained using features such as the patient's age, gender, diagnosis, psychological test scores, and physical condition. The evaluation results show that the SVM model has 100% accuracy, which means the model succeeded in classifying the severity of the patient's mental disorder very accurately. In addition, implementing this model also reduces the time required for decision making, allowing nurses to provide faster and more precise decisions. These results indicate that SVM can be a very useful tool in supporting nursing decision making, increasing the efficiency and quality of care, and reducing diagnostic errors. This research provides important insights into the potential use of artificial intelligence algorithms in clinical decision support systems in the mental health field.
Downloads
Article Details

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.
References
Ashford, S., & Wright, K. (2018). Clinical decision-making: A multi-disciplinary approach. Elsevier.
Brown, J., & Simpson, R. (2020). AI and healthcare: Opportunities, challenges, and solutions. Routledge.
Chen, S., & Zhang, J. (2019). Artificial intelligence in healthcare: Past, present, and future. Springer.
Chetan, K. & Sharma, S. (2018). Applied machine learning for healthcare. Wiley.
Gupta, S., & Mehta, S. (2019). Data-driven decision making in healthcare. McGraw-Hill Education.
Jurek, A., & Tomaszewski, K. (2017). Medical decision support systems in healthcare: Techniques and applications. Wiley.
Jones, A., & Lee, C. (2021). Decision support systems in the diagnosis of mental health disorders. International Journal of Psychiatry in Medicine, 56(2), 141-156.
Kumar, A., & Patel, R. (2017). Artificial intelligence in clinical settings. Oxford University Press.
Kumar, A., & Sharma, R. (2020). Healthcare data analytics: From statistics to AI. Elsevier.
Kaur, R., & Bhattacharya, R. (2018). Enhancing diagnostic accuracy in mental health using artificial intelligence. Journal of Artificial Intelligence in Medicine, 96(3), 45-53.
Miller, S., & Davis, M. (2021). Improving decision support in mental health using machine learning. Psychiatric Services, 72(1), 87-93. https://doi.org/10.1176/appi.ps.202000179
Morrison, B., & Hughes, K. (2017). Artificial intelligence in healthcare decision-making: A critical review. Journal of Clinical Medicine, 6(8), 1011-1025.
Patel, V., & Sharma, S. (2019). Predictive modeling for healthcare outcomes using SVM. Journal of Healthcare Engineering, 40(2), 120-134. https://doi.org/10.1155/2019/5672335
Smith, T., & Singh, P. (2020). Impact of machine learning on clinical decision-making: A systematic review. Journal of Medical Informatics, 30(4), 250-267.
Tan, M., & Lee, C. (2021). Machine learning in medicine: From data to decisions. Springer.
Thompson, J., & Carney, C. (2020). The use of artificial intelligence in psychiatric diagnosis. Journal of Psychiatric Research, 75, 35-45.
Tiwari, P., & Jain, A. (2016). AI in healthcare: The challenges and prospects. Wiley.
Wang, Y., & Zhao, R. (2018). Machine learning techniques for healthcare decision support: A review. International Journal of Medical Informatics, 115, 63-72.
Zhang, L., & Han, X. (2019). Using machine learning to predict psychiatric disorders: A comparison of methods. Psychiatry Research, 278, 99-105.
Zhang, Y., & Li, M. (2019). Healthcare AI: Innovations, implementations, and future directions. Springer.