One VLM, Two Roles: Stage-Wise Routing and Specialty-Level Deployment for Clinical Workflows
Shayan Vassef, Soorya Ram Shimegekar, Abhay Goyal, Koustuv Saha, Pi Zonooz, and Navin Kumar

TL;DR
This paper introduces a unified vision-language model framework that improves clinical workflow efficiency by accurate routing and multi-task specialty deployment, reducing operational costs and enhancing transparency.
Contribution
It proposes a modular approach using a single VLM for both model routing and multi-task specialty deployment in clinical workflows, a novel integration for healthcare AI.
Findings
Routing accuracy improved by +9 and +11 percentage points.
Single VLM matches or approaches specialized models across multiple specialties.
Enhanced calibration and transparency in model decision-making.
Abstract
Clinical ML workflows are often fragmented and inefficient: triage, task selection, and model deployment are handled by a patchwork of task-specific networks. These pipelines are rarely aligned with data-science practice, reducing efficiency and increasing operational cost. They also lack data-driven model identification (from imaging/tabular inputs) and standardized delivery of model outputs. We present a framework that employs a single vision-language model (VLM) in two complementary, modular roles. First (Solution 1): the VLM acts as an aware model-card matcher that routes an incoming image to the appropriate specialist model via a three-stage workflow (modality -> primary abnormality -> model-card ID). Reliability is improved by (i) stage-wise prompts enabling early termination via "None"/"Other" and (ii) a calibrated top-2 answer selector with a stage-wise cutoff. This raises…
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Taxonomy
TopicsAI in cancer detection · COVID-19 diagnosis using AI · Artificial Intelligence in Healthcare and Education
