Amina Mahdi, Yazdani Javad, Rovetta Stefano, Masulli Francesco
University College Dublin, School of Maths & Statistics, Insight Centre for Data Analytics, Dublin 04, Ireland.
University of Central Lancashire, School of Engineering, Preston PR1 2HE, UK.
Artif Intell Med. 2020 Jun;106:101819. doi: 10.1016/j.artmed.2020.101819. Epub 2020 Feb 22.
Preventive and accurate assessment of bladder voiding dysfunctions necessitates measuring the amount of liquid encapsulated within urinary bladder walls in a non-invasive and real-time manner. The real-time monitoring of urine levels helps patients with urological disorders such as Nocturnal Enuresis (NE) by preventing the occurrence of enuresis via a pre-void stage alerting system. Although some advances have been achieved toward developing a non-invasive approach for determining the amount of accumulated urine inside the bladder, there is still a lack of an easy-to-implement technique which is suitable to embed in a wearable pre-warning device. This study aims to develop a machine-learning empowered technique to quantify to what extent an individual's bladder is filled by observing the filling-voiding pattern of a patient over a training period. In this experiment, a pulse-echo sonar element is used to generate ultrasound pulses while the probe surface is positioned perpendicular to the bladder's position. From the reflected echoes, four features which show sufficient sensitiveness and therefore could be modulated noticeably by different levels of liquid encased in the bladder, are extracted. The extracted features are then fed into a novel intelligent decision support system- known as FECOC - which is based on hybridization of fuzzy inference systems (FIS) and error correcting output codes (ECOC). The proposed scheme tends to achieve better results when examined in real case studies.
对膀胱排尿功能障碍进行预防性和准确评估,需要以非侵入性且实时的方式测量膀胱壁内所包含的液体量。尿液水平的实时监测通过排尿前阶段警报系统预防尿床的发生,从而帮助患有诸如夜间遗尿症(NE)等泌尿系统疾病的患者。尽管在开发一种用于确定膀胱内累积尿量的非侵入性方法方面已经取得了一些进展,但仍然缺乏一种易于实施且适合嵌入可穿戴预警设备的技术。本研究旨在开发一种机器学习赋能技术,通过观察患者在训练期间的充盈-排尿模式,来量化个体膀胱的充盈程度。在该实验中,当探头表面垂直于膀胱位置时,使用脉冲回波声纳元件来产生超声脉冲。从反射回波中提取出四个具有足够灵敏度的特征,因此这些特征会因膀胱内不同液位的液体而发生明显调制。然后将提取的特征输入到一种新型智能决策支持系统——称为FECOC,它基于模糊推理系统(FIS)和纠错输出码(ECOC)的混合。在实际案例研究中进行检验时,所提出的方案往往能取得更好的结果。