Transforming Healthcare with Pega: A Unified Approach to Modern Challenges
Sairohith Thummarakoti, HCA Healthcare Inc., Nashville, USA
Email: Sairohith.thummarakoti@gmail.com
Abstract
The integration of advanced technologies in healthcare is essential for addressing the complexities of modern medical systems. Pega, a comprehensive platform for data integration, automation, and analytics, is revolutionizing healthcare by streamlining workflows, enhancing patient care, and enabling real-time decision-making. This paper explores Pega’s transformative capabilities in centralized patient management, workflow automation, data-driven insights, and system integration. By supporting early diagnosis, improving patient engagement, and fostering innovation in treatment and research through AI-driven analytics and cloud integration, Pega provides scalable, secure, and collaborative solutions. The paper highlights Pega’s broad impact on advancing healthcare delivery and operational efficiency.
Keywords
Healthcare, Pega, Workflow Automation, Data Analytics, Precision Medicine, Clinical Trials, Healthcare Technology, Patient Engagement, Cloud Computing, Operational Efficiency.
International Journal of Computer Techniques -– Volume 11 Issue 6, Dec 2024
References
- Grail. (2023). STRIVE Study – GRAIL. Retrieved from https://grail.com/clinical-studies/strive-study/
- Grail. (2024). Precision Oncology. Retrieved from https://grail.com/precision-oncology/
- Gregorauskas, J. (2024, May 22). AWS for healthcare: Transforming healthcare delivery with advanced technology. Cloudvisor. https://cloudvisor.co/blog/aws-for-healthcare-transforming-healthcare-delivery/
- Hunter, B., Sumeet Hindocha, & Lee, R. W. (2022). The Role of Artificial Intelligence in Early Cancer Diagnosis. Cancers, 14(6), 1524–1524. https://doi.org/10.3390/cancers14061524
- Kachaamy, T. (2023, May 3). Artificial intelligence and machine learning in cancer detection. Targeted Oncology. https://www.targetedonc.com/view/artificial-intelligence-and-machine-learning-in-cancer-detection
- MarkovML. (2023). Pega Workflow Automation. Retrieved from https://www.markovml.com/glossary/pega-workflow-automation
- Microsoft. (2024). Revolutionizing healthcare: The impact of cloud computing and artificial intelligence. Microsoft Tech Community. https://techcommunity.microsoft.com/blog/aiplatformblog/revolutionizing-healthcare-the-impact-of-cloud-computing-and-artificial-intellig/4149668
- NCI. (2022). AI and Cancer – National Cancer Institute. Retrieved from https://www.cancer.gov/research/infrastructure/artificial-intelligence
- Ndifon, L., Edwards, J. E., & Halawi, L. (2016). Impact of Electronic Health Records On Patient Outcomes. Issues in Information Systems, 17(4), 187.
- Pandy, G., Pugazhenthi, V. G., & Jinesh Kumar Chinnathambi. (2024). Real Value of Automation in the Healthcare Industry. ResearchGate, vol12n919, 1–9. https://doi.org/10.37745/ejcsit.2013/vol12n919
- Patel, T. A., Jain, B., & Parikh, R. B. (2022). The Enhancing Oncology Model: Leveraging improvement science to increase health equity in value-based care. JNCI Journal of the National Cancer Institute, 115(2), 125–130. https://doi.org/10.1093/jnci/djac194
- Pega Documentation. (2022, April 6). Data management and integration. Retrieved from https://docs-previous.pega.com/data-management-and-integration/87/data-management-and-integration
- Pega. (2015, March 5). Context-driven applications for healthcare. Pega.com. Retrieved from https://www.pega.com/insights/resources/context-driven-applications-healthcare
- Pega. (2023). Unlock business agility with workflow automation – Pega. Retrieved from https://www.pega.com/products/platform/workflow-automation
- Pega-Helm-charts. (2024). Deploying Pega Platform on an Amazon EKS cluster. Retrieved from https://pegasystems.github.io/pega-helm-charts/docs/Deploying-Pega-on-EKS.html
- Reddy, T. (2019). Implementing PEGA for Enhanced Business Process Management: A Case Study on Workflow Automation. Journal of Scientific and Engineering Research, 6(7), 292–297. https://jsaer.com/download/vol-6-iss-7-2019/JSAER2019-6-7-292-297.pdf
- Ronquillo, J. G. (2022, March 9). An introduction to cloud computing for cancer research. National Cancer Institute. https://datascience.cancer.gov/news-events/blog/introduction-cloud-computing-cancer-research
- Tak, A. (2023). Big Data Analytics in Healthcare: Transforming Information into Actionable Insights. Journal of Health Statistics Reports. SRC/JHSR-121. DOI: doi. org/10.47363/JHSR/2022 (1), 116, 2-6.
Share this content:
1 comment