论文标题
统一神经学习和符号推理的脊柱医学报告生成
Unifying Neural Learning and Symbolic Reasoning for Spinal Medical Report Generation
论文作者
论文摘要
脊柱放射学中的自动化医学报告生成,即给予脊柱医学图像,并直接创建放射科医师级别的诊断报告以支持临床决策,这是一项在医疗保健中人工智能领域的新颖但基本的研究。但是,这是一项极其挑战的,因为这是一项极其复杂的任务,涉及视觉感知和高级推理过程。在本文中,我们提出了神经符号学习(NSL)框架,该框架通过统一深层神经学习和象征性逻辑推理来为脊柱医学报告生成而进行类似人类的学习。一般而言,NSL框架首先采用深层神经学习来模仿人类的视觉感知,以检测目标脊柱结构的异常。具体而言,我们设计了一个对抗图网络,该网络通过嵌入先前的域知识,将符号图推理模块插入生成性对抗网络中,从而实现具有高复杂性和可变性的脊柱结构的语义分割。 NSL的第二进行了类似人类的象征性逻辑推理,该推理实现了通过元解释学习对异常的无监督因果效应分析。 NSL最终将这些目标疾病的发现填充到一个统一的模板中,成功地获得了全面的医疗报告。当它在现实世界中的临床数据集中使用时,一系列实证研究表明了其在脊柱医学报告生成的能力,并且表明我们的算法非常超过了检测脊柱结构的现有方法。这些表明它作为有助于计算机辅助诊断的临床工具的潜力。
Automated medical report generation in spine radiology, i.e., given spinal medical images and directly create radiologist-level diagnosis reports to support clinical decision making, is a novel yet fundamental study in the domain of artificial intelligence in healthcare. However, it is incredibly challenging because it is an extremely complicated task that involves visual perception and high-level reasoning processes. In this paper, we propose the neural-symbolic learning (NSL) framework that performs human-like learning by unifying deep neural learning and symbolic logical reasoning for the spinal medical report generation. Generally speaking, the NSL framework firstly employs deep neural learning to imitate human visual perception for detecting abnormalities of target spinal structures. Concretely, we design an adversarial graph network that interpolates a symbolic graph reasoning module into a generative adversarial network through embedding prior domain knowledge, achieving semantic segmentation of spinal structures with high complexity and variability. NSL secondly conducts human-like symbolic logical reasoning that realizes unsupervised causal effect analysis of detected entities of abnormalities through meta-interpretive learning. NSL finally fills these discoveries of target diseases into a unified template, successfully achieving a comprehensive medical report generation. When it employed in a real-world clinical dataset, a series of empirical studies demonstrate its capacity on spinal medical report generation as well as show that our algorithm remarkably exceeds existing methods in the detection of spinal structures. These indicate its potential as a clinical tool that contributes to computer-aided diagnosis.