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基于人工智能的红外热成像技术用于腕管综合征诊断。

Infrared thermography based on artificial intelligence for carpal tunnel syndrome diagnosis.

作者信息

Jesensek Papez B, Palfy M, Turk Z

机构信息

Department of Physical Medicine and Rehabilitation, Medical Centre Maribor, Maribor, Slovenia.

出版信息

J Int Med Res. 2008 Nov-Dec;36(6):1363-70. doi: 10.1177/147323000803600625.

Abstract

Thermography for the measurement of surface temperatures is well known in industry, although is not established in medicine despite its safety, lack of pain and invasiveness, easy reproducibility, and low running costs. Promising results have been achieved in nerve entrapment syndromes, although thermography has never represented a real alternative to electromyography. Here an attempt is described to improve the diagnosis of carpal tunnel syndrome with thermography using a computer-based system employing artificial neural networks to analyse the images. Method reliability was tested on 112 images (depicting the dorsal and palmar sides of 26 healthy and 30 pathological hands), with the hand divided into 12 segments and compared relative to a reference. Palmar segments appeared to have no beneficial influence on classification outcome, whereas dorsal segments gave improved outcome with classification success rates near to or over 80%, and finger segments influenced by the median nerve appeared to be of greatest importance. These are preliminary results from a limited number of images and further research will be undertaken as our image database grows.

摘要

用于测量表面温度的热成像技术在工业领域广为人知,尽管它具有安全性、无痛性、非侵入性、易于重复性且运行成本低等优点,但在医学领域尚未得到确立。在神经卡压综合征方面已取得了有前景的结果,尽管热成像技术从未真正成为肌电图的替代方法。本文描述了一种尝试,即使用基于计算机的系统并采用人工神经网络来分析图像,以通过热成像技术改善腕管综合征的诊断。对112幅图像(描绘26只健康手和30只患病手的背侧和掌侧)进行了方法可靠性测试,将手分为12个节段并相对于一个参考进行比较。掌侧节段似乎对分类结果没有有益影响,而背侧节段的分类成功率提高,接近或超过80%,并且受正中神经影响的手指节段似乎最为重要。这些是来自有限数量图像的初步结果,随着我们图像数据库的增长,将进行进一步研究。

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