Medical image segmentation is one of the fundamental problems for artificial intelligence-based clinical decision systems. Current automatic medical image segmentation methods are often failed to meet clinical requirements. As such, a series of interactive segmentation algorithms are proposed to utilize expert correction information. However, existing methods suffer from some segmentation refining failure problems after long-term interactions and some cost problems from expert annotation, which hinder clinical applications. This paper proposes an interactive segmentation framework, called interactive MEdical segmentation with self-adaptive Confidence CAlibration (MECCA), by introducing the corrective action evaluation, which combines the action-based confidence learning and multi-agent reinforcement learning (MARL). The evaluation is established through a novel action-based confidence network, and the corrective actions are obtained from MARL. Based on the confidential information, a self-adaptive reward function is designed to provide more detailed feedback, and a simulated label generation mechanism is proposed on unsupervised data to reduce over-reliance on labeled data. Experimental results on various medical image datasets have shown the significant performance of the proposed algorithm.
翻译:医学图象分解是人工智能临床决策系统的根本问题之一。目前的自动医学图象分解方法往往无法满足临床要求。因此,提议了一系列交互式分解算法,以利用专家矫正信息。但是,现有的方法在长期互动之后存在一些分解精炼故障问题,专家笔记也存在一些费用问题,妨碍了临床应用。本文建议通过引入纠正行动评价,将基于行动的信心学习和多剂强化学习(MARL)结合起来,建立一个互动分解框架,称为与自适应性信任校正(MECCA),称为互动医疗分解(MECCA),将基于行动的信任学习和多剂强化学习(MARL)结合起来。评价是通过基于行动的新颖的信任网络建立起来的,纠正行动是从MARL获得的。根据机密信息,设计了一个自我调整奖励功能,以提供更详细的反馈,并提议了一个模拟标签生成机制,以不超常数据减少对标签数据过分依赖。各种医学图象数据集的实验结果显示拟议的算法的重要表现。