Agentic AI framework for End-to-End Medical Data Inference
Soorya Ram Shimgekar, Shayan Vassef, Abhay Goyal, Navin Kumar, Koustuv Saha

TL;DR
This paper introduces an Agentic AI framework that automates the entire clinical data pipeline, from ingestion to inference, using modular agents to improve efficiency and privacy in healthcare machine learning applications.
Contribution
The novel framework automates data preprocessing, feature extraction, model selection, and inference in healthcare AI, reducing manual effort and enhancing scalability.
Findings
Automates clinical data pipeline end-to-end
Handles both structured and unstructured data
Reduces manual intervention in healthcare ML workflows
Abstract
Building and deploying machine learning solutions in healthcare remains expensive and labor-intensive due to fragmented preprocessing workflows, model compatibility issues, and stringent data privacy constraints. In this work, we introduce an Agentic AI framework that automates the entire clinical data pipeline, from ingestion to inference, through a system of modular, task-specific agents. These agents handle both structured and unstructured data, enabling automatic feature selection, model selection, and preprocessing recommendation without manual intervention. We evaluate the system on publicly available datasets from geriatrics, palliative care, and colonoscopy imaging. For example, in the case of structured data (anxiety data) and unstructured data (colonoscopy polyps data), the pipeline begins with file-type detection by the Ingestion Identifier Agent, followed by the Data…
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Taxonomy
TopicsArtificial Intelligence in Healthcare · Machine Learning in Healthcare
