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Automated peripheral neuropathy assessment of diabetic patients using optical imaging and binary processing techniques

机译:使用光学成像和二元处理技术自动评估糖尿病患者的周围神经病变

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Plantar sensory neuropathy (PSN) affects a large proportion of individuals suffering from type 2 diabetes. In order to avoid ulceration or other damage to patients' feet regular testing and assessment of PSN needs to be undertaken. Currently, the standard test involves a trained podiatrist visiting the patient and testing their feet manually with a simple hand-held nylon monofilament probe. This process is time consuming, requires special training and is prone to errors. Moreover, the number of PSN sufferers is increasing and has already reached such numbers as to make manual testing unfeasible. Hence, our research team is currently developing an automated PSN testing device that will ultimately be capable of reliably testing a patient at home, providing direct feedback while registering and communicating this information to a local health care practice. An initial investigation is presented into a novel approach to automatically identify the areas of interest on a given patient's foot via optical image processing. That is to say, we present a method to reliably select suitable test points on the plantar surface that correspond to those chosen by a trained podiatrist. Once these points have been ascertained they will be sent to a microcontroller based robotic mechanism that subsequently tests the plantar surface with a monofilament probe. The robotic actuator will apply the probe to the pressure points of plantar surface a required number of times. On each application the patients' response, or lack of, will be recorded to identify the insensitive region of the plantar surface. The system will effectively automate the traditional Semmes-Weinstein monofilament examination (SWME). A GUI will be developed to show the statistics about patient sensory neuropathy.
机译:足底感觉神经病(PSN)影响很大比例的2型糖尿病患者。为了避免溃疡或对患者脚的其他伤害,需要定期进行PSN的测试和评估。当前,标准测试包括训练有素的足病医生拜访患者,并使用简单的手持式尼龙单丝探针手动测试他们的脚。该过程很耗时,需要特殊的培训并且容易出错。而且,PSN患者的数量正在增加,并且已经达到使手动测试不可行的数量。因此,我们的研究团队目前正在开发一种自动PSN测试设备,该设备最终将能够在家里可靠地测试患者,在将这些信息注册并传达给当地医疗机构的同时提供直接反馈。初步研究提出了一种新颖的方法,可通过光学图像处理自动识别给定患者脚部上的关注区域。也就是说,我们提出了一种方法,可以在足底表面上可靠地选择与受过训练的足病医生选择的测试点相对应的合适测试点。一旦确定了这些点,它们将被发送到基于微控制器的机械装置,该机械装置随后使用单丝探针测试足底表面。自动执行器将探头施加到足底表面的压力点所需的次数。在每次应用中,将记录患者的反应或缺乏反应,以识别足底表面的不敏感区域。该系统将有效地自动化传统的Semmes-Weinstein单丝检测(SWME)。将开发一个GUI以显示有关患者感觉神经病的统计数据。

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