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Peer-reviewed veterinary case report

AcuSim: A Synthetic Dataset for Cervicocranial Acupuncture Points Localisation.

Year:
2025
Authors:
Sun Q et al.
Affiliation:
Xi'an Jiaotong-Liverpool University · United Kingdom

Abstract

The locations of acupuncture points (acupoints) differ among human individuals due to variations in factors such as height, weight and fat proportions. However, acupoint annotation is expert-dependent, labour-intensive, and highly expensive, which limits the data size and detection accuracy. In this paper, we introduce the "AcuSim" dataset as a new synthetic dataset for the task of localising points on the human cervicocranial area from an input image using an automatic render and labelling pipeline during acupuncture treatment. It includes a creation of 63,936 RGB-D images and 504 synthetic anatomical models with 174 volumetric acupoints annotated, to capture the variability and diversity of human anatomies. The study validates a convolutional neural network (CNN) on the proposed dataset with an accuracy of 99.73% and shows that 92.86% of predictions in validation set align within a 5mm threshold of margin error when compared to expert-annotated data. This dataset addresses the limitations of prior datasets and can be applied to applications of acupoint detection and visualization, further advancing automation in Traditional Chinese Medicine (TCM).

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Original publication: https://europepmc.org/article/MED/40234485