Image-based Contextual Pill Recognition with Medical Knowledge Graph Assistance
Anh Duy Nguyen, Thuy Dung Nguyen, Huy Hieu Pham, Thanh Hung Nguyen,, Phi Le Nguyen

TL;DR
This paper introduces PIKA, a novel pill recognition method that combines image analysis with external prescription knowledge graphs, significantly improving accuracy in identifying visually similar pills.
Contribution
PIKA is the first approach to integrate external prescription data with image-based recognition for contextual pill identification, enhancing accuracy.
Findings
Improved F1-score from 4.8% to 34.1% using external knowledge.
Proposed walk-based graph embedding for relational feature extraction.
Framework is lightweight and adaptable to various recognition models.
Abstract
Identifying pills given their captured images under various conditions and backgrounds has been becoming more and more essential. Several efforts have been devoted to utilizing the deep learning-based approach to tackle the pill recognition problem in the literature. However, due to the high similarity between pills' appearance, misrecognition often occurs, leaving pill recognition a challenge. To this end, in this paper, we introduce a novel approach named PIKA that leverages external knowledge to enhance pill recognition accuracy. Specifically, we address a practical scenario (which we call contextual pill recognition), aiming to identify pills in a picture of a patient's pill intake. Firstly, we propose a novel method for modeling the implicit association between pills in the presence of an external data source, in this case, prescriptions. Secondly, we present a walk-based graph…
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Taxonomy
TopicsCold Fusion and Nuclear Reactions
