Searching Clinical Data Using Generative AI
Karan Hanswadkar, Anika Kanchi, Shivani Tripathi, Shi Qiao, Rony Chatterjee, Alekh Jindal

TL;DR
This paper introduces SearchAI, a generative AI system designed to improve the accuracy and efficiency of searching large, unorganized clinical datasets by navigating hierarchical medical codes predictively.
Contribution
The paper presents a novel hierarchical generative AI model, SearchAI, tailored for clinical data search, addressing the one-to-many mapping challenge in medical code retrieval.
Findings
SearchAI outperforms traditional hierarchical traversal methods in accuracy.
The system demonstrates improved robustness and scalability.
Experiments show enhanced clinical data accessibility and reduced administrative workload.
Abstract
Artificial Intelligence (AI) is making a major impact on healthcare, particularly through its application in natural language processing (NLP) and predictive analytics. The healthcare sector has increasingly adopted AI for tasks such as clinical data analysis and medical code assignment. However, searching for clinical information in large and often unorganized datasets remains a manual and error-prone process. Assisting this process with automations can help physicians improve their operational productivity significantly. In this paper, we present a generative AI approach, coined SearchAI, to enhance the accuracy and efficiency of searching clinical data. Unlike traditional code assignment, which is a one-to-one problem, clinical data search is a one-to-many problem, i.e., a given search query can map to a family of codes. Healthcare professionals typically search for groups of…
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Taxonomy
TopicsArtificial Intelligence in Healthcare
