MINT: A wrapper to make multi-modal and multi-image AI models interactive
Jan Freyberg, Abhijit Guha Roy, Terry Spitz, Beverly Freeman, Mike, Schaekermann, Patricia Strachan, Eva Schnider, Renee Wong, Dale R Webster,, Alan Karthikesalingam, Yun Liu, Krishnamurthy Dvijotham, Umesh Telang

TL;DR
MINT is an interactive wrapper for multi-modal medical AI models that intelligently selects the most relevant information and images at each step, reducing input requirements while maintaining diagnostic accuracy.
Contribution
We introduce MINT, a novel method enabling AI models to dynamically identify and request only the most pertinent medical data, mimicking clinical decision processes.
Findings
MINT reduces metadata inputs by 82% and image inputs by 36.2%.
It maintains predictive performance despite input reduction.
MINT adapts to different classifiers and user needs without retraining.
Abstract
During the diagnostic process, doctors incorporate multimodal information including imaging and the medical history - and similarly medical AI development has increasingly become multimodal. In this paper we tackle a more subtle challenge: doctors take a targeted medical history to obtain only the most pertinent pieces of information; how do we enable AI to do the same? We develop a wrapper method named MINT (Make your model INTeractive) that automatically determines what pieces of information are most valuable at each step, and ask for only the most useful information. We demonstrate the efficacy of MINT wrapping a skin disease prediction model, where multiple images and a set of optional answers to standard metadata questions (i.e., structured medical history) are used by a multi-modal deep network to provide a differential diagnosis. We show that MINT can identify whether…
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Taxonomy
TopicsAI in cancer detection · Cutaneous Melanoma Detection and Management · Digital Imaging for Blood Diseases
MethodsSparse Evolutionary Training
