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基于遗传算法和Adaboost分类器的热图像气质分类

Thermal Image-Based Temperament Classification by Genetic Algorithm and Adaboost Classifier.

作者信息

Ghods Roshanak, Nafisi Vahid Reza

机构信息

Research Institute for Islamic and Complementary Medicine, School of Persian Medicine, Iran University of Medical Sciences, Tehran, Iran.

Biomedical Engineering Group, Electrical and Information Technology Department, Iranian Research Organization for Science and Technology, Tehran, Iran.

出版信息

J Med Signals Sens. 2021 Dec 28;12(1):32-39. doi: 10.4103/jmss.JMSS_71_20. eCollection 2022 Jan-Mar.

Abstract

BACKGROUND

Temperament () determination is an important stage of diagnosis in Persian Medicine. This study aimed to evaluate thermal imaging as a reliable tool that can be used instead of subjective assessments.

METHODS

The temperament of 34 participants was assessed by a PM specialist using standardized Mojahedi Mizaj Questionnaire (MMQ) and thermal images of the wrist in the supine position, the back of the hand, and their whole face under supervision of the physician were recorded. Thirteen thermal features were extracted and a classifying algorithm was designed based on the genetic algorithm and Adaboost classifier in reference to the temperament questionnaire.

RESULTS

The results showed that the mean temperature and temperature variations in the thermal images were relatively consistent with the results of MMQ. Among the three body regions, the results related to the image from were most consistent with MMQ. By selecting six of the 13 features that had the most impact on the classification, the accuracy of 94.7 ± 13.0, sensitivity of 95.7 ± 11.3, and specificity of 98.2 ± 4.2 were obtained.

CONCLUSIONS

The thermal imaging was relatively consistent with standardized MMQ and can be used as a reliable tool for evaluating warm/cold temperament. However, the results reveal that thermal imaging features may not be only main features for temperament classification and for more reliable classification, it needs to add some different features such as wrist pulse features and some subjective characteristics.

摘要

背景

气质()测定是波斯医学诊断的重要阶段。本研究旨在评估热成像作为一种可靠工具,可用于替代主观评估。

方法

由一名波斯医学专家使用标准化的莫贾赫迪气质问卷(MMQ)对34名参与者的气质进行评估,并记录他们在仰卧位时手腕、手背以及在医生监督下整个面部的热图像。提取了13个热特征,并参照气质问卷基于遗传算法和Adaboost分类器设计了一种分类算法。

结果

结果表明,热图像中的平均温度和温度变化与MMQ的结果相对一致。在三个身体部位中,与手腕图像相关的结果与MMQ最为一致。通过从对分类影响最大的13个特征中选择6个,获得了94.7±13.0的准确率、95.7±11.3的灵敏度和98.2±4.2的特异性。

结论

热成像与标准化的MMQ相对一致,可作为评估温/寒气质的可靠工具。然而,结果表明热成像特征可能不是气质分类的唯一主要特征,为了进行更可靠的分类,需要添加一些不同的特征,如手腕脉搏特征和一些主观特征。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f41d/8804589/f8eb7ff2b5c1/JMSS-12-32-g001.jpg

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