Unifying Neural Learning and Symbolic Reasoning for Spinal Medical Report Generation
Zhongyi Han, Benzheng Wei, Yilong Yin, Shuo Li

TL;DR
This paper introduces a neural-symbolic framework that combines deep learning and symbolic reasoning to generate detailed spinal medical reports, improving accuracy and supporting clinical diagnosis.
Contribution
It proposes a novel neural-symbolic learning framework integrating adversarial graph networks and meta-interpretive reasoning for medical report generation.
Findings
Outperforms existing methods in spinal structure detection
Achieves high accuracy in semantic segmentation of spinal structures
Demonstrates potential as a clinical diagnostic tool
Abstract
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…
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Taxonomy
TopicsMedical Imaging and Analysis · AI in cancer detection · Machine Learning in Healthcare
