Active inference and deep generative modeling for cognitive ultrasound
Ruud JG van Sloun

TL;DR
This paper proposes a novel approach to ultrasound imaging by framing it as an active inference problem, enabling autonomous, personalized, and information-maximizing imaging through deep generative models and perception-action loops.
Contribution
It introduces a framework that recasts ultrasound systems as autonomous agents using Bayesian inference and deep generative models to optimize imaging sequences adaptively.
Findings
Demonstrated active beamsteering and adaptive scanline selection.
Showed improved inference of anatomical states.
Validated the approach with examples of closed-loop ultrasound systems.
Abstract
Ultrasound (US) has the unique potential to offer access to medical imaging to anyone, everywhere. Devices have become ultra-portable and cost-effective, akin to the stethoscope. Nevertheless US image quality and diagnostic efficacy are still highly operator- and patient-dependent. In difficult-to-image patients, image quality is often insufficient for reliable diagnosis. In this paper, we put forth that US imaging systems can be recast as information-seeking agents that engage in reciprocal interactions with their anatomical environment. Such agents autonomously adapt their transmit-receive sequences to fully personalize imaging and actively maximize information gain in-situ. To that end, we will show that the sequence of pulse-echo experiments that a US system performs can be interpreted as a perception-action loop: the action is the data acquisition, probing tissue with acoustic…
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