AI-Powered Knowledge Graphs for Efficient Medical Information Retrieval and Decision Support
DOI:
https://doi.org/10.56294/mw2024517Keywords:
AI-powered knowledge graphs, Medical information retrieval, Clinical decision support, Natural language processing, Healthcare interoperabilityAbstract
The enormous volume of medical data has resulted in the development of sophisticated systems that facilitate information search and enable clinicians in decision-making process. Driven by artificial intelligence, knowledge graphs (KGs) provide a solid structure for organising and evaluating vast volumes of diverse medical data, therefore enabling wiser question development and improved decision-making. This article presents a whole strategy for integrating knowledge graphs with artificial intelligence-based approaches to improve medical information search and decision support systems performance. Graph-based reasoning, natural language processing (NLP), and machine learning all help the proposed approach to enhance semantic comprehension. It achieves this by tying together unorganised and organised medical data sources to provide pertinent analysis. Using predictive analytics, personalised healthcare recommendations, and real-time clinical decision support, the AI-powered knowledge graph architecture helps you It achieves this by continuously shifting the relationships among illnesses, symptoms, therapies, pasts of patients. This approach also ensures that many healthcare systems may cooperate better, which facilitates information search and reduces the diagnostic error count. Including reinforcement learning techniques enhances question results depending on user interaction, therefore enhancing the search process. The results of experiments show that KGs with AI work better than traditional database-driven methods when it comes to getting medical information quickly, correctly, and usefully. The suggested method helps healthcare workers a lot by making it easier for them to get accurate, evidence-based information more quickly. This will eventually lead to better patient results. This study shows that knowledge graphs driven by AI have the ability to completely change how medical information is managed and how decisions are made. This could lead to smarter and more flexible healthcare systems.
References
Sweeney, C.; Potts, C.; Ennis, E.; Bond, R.; Mulvenna, M.D.; O’Neill, S.; Malcolm, M.; Kuosmanen, L.; Kostenius, C.; Vakaloudis, A.; et al. Can Chatbot Help Support a Person’s Mental Health? Perceptions and Views from Mental Healthcare Professionals and Experts. ACM Trans. Comput. Healthc. 2021, 2, 1–15.
Reis, L.; Maier, C.; Mattke, J.; Weitzel, T. ChatBots in Healthcare: Status Quo, Application Scenarios for Physicians and Patients and Future Directions. In Proceedings of the Twenty-Eight European Conference on Information Systems (ECIS2020), Marrakech, Morocco, 15–17 June 2020; pp. 1–16.
Navas, C.; Wells, L.; Bartels, S.A.; Walker, M. Patient and Provider Perspectives on Emergency Department Care Experiences among People with Mental Health Concerns. Healthcare 2022, 10, 1297.
Gutierrez, B.J.; McNeal, N.; Washington, C.; Chen, Y.; Li, L.; Sun, H.; Su, Y. Thinking about gpt-3 in-context learning for biomedical ie? think again. arXiv 2022, arXiv:2203.08410.
Wang, Y.; Zhao, Y.; Petzold, L. Are large language models ready for healthcare? A comparative study on clinical language understanding. In Machine Learning for Healthcare Conference; PMLR: New York, NY, USA, 2023; pp. 804–823.
Li, Q.; Wang, Y.; You, T.; Lu, Y. BioKnowPrompt: Incorporating imprecise knowledge into prompt-tuning verbalizer with biomedical text for relation extraction. Inf. Sci. 2022, 617, 346–358.
Kartchner, D.; Ramalingam, S.; Al-Hussaini, I.; Kronick, O.; Mitchell, C. Zero-Shot Information Extraction for Clinical Meta-Analysis using Large Language Models. In Proceedings of the 22nd Workshop on Biomedical Natural Language Processing and BioNLP Shared Tasks, Toronto, ON, Canada, 13 July 2023; pp. 396–405.
Chia, Y.K.; Bing, L.; Poria, S.; Si, L. RelationPrompt: Leveraging prompts to generate synthetic data for zero-shot relation triplet extraction. arXiv 2022, arXiv:2203.09101.
J Satpathy, Navaneeta Rath. (2015). Behavioural Inquisition into Absenteeism. International Journal on Research and Development - A Management Review, 4(4), 69 - 78.
Lecue, F. On the Role of Knowledge Graphs in Explainable AI. Semant. Web 2020, 11, 41–51.
Tiddi, I.; Schlobach, S. Knowledge Graphs as Tools for Explainable Machine Learning: A Survey. Artif. Intell. 2022, 302, 103627.
Rajabi, E.; Kafaie, S. Knowledge Graphs and Explainable AI in Healthcare. Information 2022, 13, 459. https://doi.org/10.3390/info13100459
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Copyright (c) 2024 Santanu Kumar Sahoo, Manni Sruthi, Varun Ojha, Vaibhav Kaushik, Manti Debnath, RenukaJyothi.S, Naresh Kaushik (Author)

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