AcuSim: A Synthetic Dataset for Cervicocranial Acupuncture Points Localisation

Qilei Sun, Jiatao Ma, Paul Craig, Linjun Dai, Eng Gee Lim

Research output: Contribution to journalArticlepeer-review

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).

Original languageEnglish
Pages (from-to)625
Number of pages1
JournalScientific Data
Volume12
Issue number1
DOIs
Publication statusPublished - 15 Apr 2025

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