用机器学习四色模型革新中药颗粒安慰剂。

IF 5.3 3区 医学 Q1 INTEGRATIVE & COMPLEMENTARY MEDICINE
Tingting Teng, Jingze Zhang, Peiqi Miao, Lipeng Liang, Xinbo Song, Dailin Liu, Junhua Zhang
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引用次数: 0

摘要

随着新中药的发展和临床双盲实验的需要,安慰剂在中药中的应用变得越来越重要。然而,由于这些粒子的颜色多样,色域复杂,现有的模拟方法依赖于人工对比和混色,主观性和误差较大。本研究通过建立一个准确模拟中药颗粒颜色的预测模型来解决这一问题。本研究收集了52种市售草药颗粒。用填充剂和四种颜料(柠檬黄、胭脂红、靛蓝和焦糖色)制备了320多个模拟颗粒。它们的RGB颜色是用可见光成像收集的。采用机器学习的方法建立了颗粒颜色预测模型。首先,通过优化Kmeans模型的k值,得到最佳聚类模型;随后,通过网络搜索和交叉验证方法,对梯度增强回归(GBR)、支持向量回归(SVR)和随机森林等多元回归模型进行了评价。其中随机森林模型的平均R2达到0.9249,优于其他模型。预测模型准确模拟了中药颗粒的颜色,平均色差(ΔE)为2.7734,RGB值余弦相似度较高,为0.9999,人工颜色评分相似度为0.9366。本研究引入了一种快速准确预测颗粒颜色的创新方法,促进了临床适用的中药安慰剂的开发。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revolutionizing Chinese medicine granule placebo with a machine learning four-color model.

With the development of new Chinese medicines and the need for clinical double-blind experiments, the use of placebos in Chinese medicine is becoming increasingly important. However, due to the diverse colors and complex color gamut of these particles, existing simulation methods rely on manual comparison and color mixing, leading to high subjectivity and errors. This study addresses this issue by developing a prediction model to accurately simulate the colors of Chinese medicine granules. In this study, 52 commercially available herbal particles were collected. And more than 320 simulated granules were prepared using fillers and four pigments (lemon yellow, carmine, indigo and caramel colors). Their RGB colors were collected using visible light imaging. A granule color prediction model was constructed by machine learning. First, the best clustering model was obtained by optimising the k-value of the Kmeans model. Subsequently, multiple regression models, including Gradient Boosting Regression (GBR), Support Vector Regression (SVR), and Random Forest, were evaluated through network search and cross-validation methods. Among these models, the average R2 of the random forest model reached 0.9249, outperforming other models. The prediction model accurately simulated the color of Chinese medicine granules, with an average color difference (ΔE) of 2.7734 and a high RGB value cosine similarity of 0.9999, alongside a 0.9366 similarity in artificial color scoring. This study introduces an innovative approach for the rapid and accurate prediction of granule colors, facilitating the development of clinically applicable placebos in traditional Chinese medicine.

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来源期刊
Chinese Medicine
Chinese Medicine INTEGRATIVE & COMPLEMENTARY MEDICINE-PHARMACOLOGY & PHARMACY
CiteScore
7.90
自引率
4.10%
发文量
133
审稿时长
31 weeks
期刊介绍: Chinese Medicine is an open access, online journal publishing evidence-based, scientifically justified, and ethical research into all aspects of Chinese medicine. Areas of interest include recent advances in herbal medicine, clinical nutrition, clinical diagnosis, acupuncture, pharmaceutics, biomedical sciences, epidemiology, education, informatics, sociology, and psychology that are relevant and significant to Chinese medicine. Examples of research approaches include biomedical experimentation, high-throughput technology, clinical trials, systematic reviews, meta-analysis, sampled surveys, simulation, data curation, statistics, omics, translational medicine, and integrative methodologies. Chinese Medicine is a credible channel to communicate unbiased scientific data, information, and knowledge in Chinese medicine among researchers, clinicians, academics, and students in Chinese medicine and other scientific disciplines of medicine.
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