Near-Infrared Spectroscopy for Bladder Monitoring: A Machine Learning Approach

IF 2.5 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Pascal Fechner, Fabian König, Wolfgang Kratsch, Jannik Lockl, Maximilian Röglinger
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引用次数: 2

Abstract

Patients living with neurogenic bladder dysfunction can lose the sensation of their bladder filling. To avoid over-distension of the urinary bladder and prevent long-term damage to the urinary tract, the gold standard treatment is clean intermittent catheterization at predefined time intervals. However, the emptying schedule does not consider actual bladder volume, meaning that catheterization is performed more often than necessary, which can lead to complications such as urinary tract infections. Time-consuming catheterization also interferes with patients' daily routines and, in the case of an empty bladder, uses human and material resources unnecessarily. To enable individually tailored and volume-responsive bladder management, we design a model for the continuous monitoring of bladder volume. During our design science research process, we evaluate the model's applicability and usefulness through interviews with affected patients, prototyping, and application to a real-world in vivo dataset. The developed prototype predicts bladder volume based on relevant sensor data (i.e., near-infrared spectroscopy and acceleration) and the time elapsed since the previous micturition. Our comparison of several supervised state-of-the-art machine and deep learning models reveals that a long short-term memory network architecture achieves a mean absolute error of 116.7 ml that can improve bladder management for patients.
用于膀胱监测的近红外光谱:一种机器学习方法
患有神经源性膀胱功能障碍的患者可能会失去膀胱充盈感。为了避免膀胱过度扩张并防止对尿路的长期损害,黄金标准的治疗方法是在预定的时间间隔内进行清洁的间歇性导管插入术。然而,排空时间表没有考虑实际的膀胱容量,这意味着导管插入术的频率超过了必要的频率,这可能会导致并发症,如尿路感染。耗时的导管插入术也会干扰患者的日常生活,在膀胱排空的情况下,会不必要地使用人力和物力。为了实现个性化和容量响应性膀胱管理,我们设计了一个持续监测膀胱容量的模型。在我们的设计科学研究过程中,我们通过采访受影响的患者、原型设计和应用于真实世界的体内数据集来评估该模型的适用性和有用性。开发的原型基于相关传感器数据(即近红外光谱和加速度)和上次排尿后的时间来预测膀胱体积。我们对几种受监督的最先进的机器和深度学习模型的比较表明,长短期记忆网络架构的平均绝对误差为116.7ml,可以改善患者的膀胱管理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
ACM Transactions on Management Information Systems
ACM Transactions on Management Information Systems COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
6.30
自引率
20.00%
发文量
60
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