A novel deep learning based cloud service system for automated acupuncture needle counting: a strategy to improve acupuncture safety

Q3 Medicine
Tsz Ho Wong , Junyi Wei , Haiyong Chen , Bacon Fung Leung Ng
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引用次数: 0

Abstract

Objective

The unintentional retention of needles in patients can lead to severe consequences. To enhance acupuncture safety, the study aimed to develop a deep learning-based cloud system for automated process of counting acupuncture needles.

Methods

This project adopted transfer learning from a pre-trained Oriented Region-based Convolutional Neural Network (Oriented R-CNN) model to develop a detection algorithm that can automatically count the number of acupuncture needles in a camera picture. A training set with 590 pictures and a validation set with 1 025 pictures were accumulated for fine-tuning. Then, we deployed the MMRotate toolbox in a Google Colab environment with a NVIDIA Tesla T4 Graphics processing unit (GPU) to carry out the training task. Furthermore, we integrated the model with a newly-developed Telegram bot interface to determine the accuracy, precision, and recall of the needling counting system. The end-to-end inference time was also recorded to determine the speed of our cloud service system.

Results

In a 20-needle scenario, our Oriented R-CNN detection model has achieved an accuracy of 96.49%, precision of 99.98%, and recall of 99.84%, with an average end-to-end inference time of 1.535 s

Conclusion

The speed, accuracy, and reliability advancements of this cloud service system innovation have demonstrated its potential of using object detection technique to improve acupuncture practice based on deep learning.

基于深度学习的新型针灸自动数针云服务系统:提高针灸安全性的策略
目的患者无意中留针可能导致严重后果。为了提高针灸的安全性,本研究旨在开发一种基于深度学习的云系统,用于自动计算针灸针的数量。方法本项目从预先训练的基于定向区域的卷积神经网络(Oriented R-CNN)模型中采用迁移学习,开发一种检测算法,可以自动计算相机图片中的针灸针数量。我们积累了包含 590 张图片的训练集和包含 1 025 张图片的验证集,以进行微调。然后,我们在谷歌 Colab 环境中部署了 MMRotate 工具箱,并使用英伟达 Tesla T4 图形处理器(GPU)执行训练任务。此外,我们还将模型与新开发的 Telegram 机器人界面相结合,以确定针刺计数系统的准确度、精确度和召回率。结果在一个 20 针的场景中,我们的定向 R-CNN 检测模型实现了 96.49% 的准确率、99.98% 的精确率和 99.84% 的召回率,平均端到端推理时间为 1.535 秒。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Digital Chinese Medicine
Digital Chinese Medicine Medicine-Complementary and Alternative Medicine
CiteScore
1.80
自引率
0.00%
发文量
126
审稿时长
63 days
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