Safe Reinforcement Learning using Formal Verification for Tissue Retraction in Autonomous Robotic-Assisted Surgery
Deep Reinforcement Learning (DRL) is a viable solution for automating repetitive surgical subtasks due to its ability to learn complex behaviours in a dynamic environment. This task automation could lead to reduced surgeon's cognitive workload, increased precision in critical aspects of the sur...
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Zusammenfassung: | Deep Reinforcement Learning (DRL) is a viable solution for automating
repetitive surgical subtasks due to its ability to learn complex behaviours in
a dynamic environment. This task automation could lead to reduced surgeon's
cognitive workload, increased precision in critical aspects of the surgery, and
fewer patient-related complications. However, current DRL methods do not
guarantee any safety criteria as they maximise cumulative rewards without
considering the risks associated with the actions performed. Due to this
limitation, the application of DRL in the safety-critical paradigm of
robot-assisted Minimally Invasive Surgery (MIS) has been constrained. In this
work, we introduce a Safe-DRL framework that incorporates safety constraints
for the automation of surgical subtasks via DRL training. We validate our
approach in a virtual scene that replicates a tissue retraction task commonly
occurring in multiple phases of an MIS. Furthermore, to evaluate the safe
behaviour of the robotic arms, we formulate a formal verification tool for DRL
methods that provides the probability of unsafe configurations. Our results
indicate that a formal analysis guarantees safety with high confidence such
that the robotic instruments operate within the safe workspace and avoid
hazardous interaction with other anatomical structures. |
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DOI: | 10.48550/arxiv.2109.02323 |