Clinical profile prediction by multiple instance learning from multi-sensorial data

Argyro Tsirtsi, E. Zacharaki, Spyridon Kalogiannis, V. Megalooikonomou
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引用次数: 2

Abstract

The last years there is a great interest in developing unobtrusive health monitoring systems with a predictive component, aiming to recognize signs of illness in an attempt to assist clinicians in delivering early interventions. The objective of this work is to investigate whether the physiological and kinetic functioning and human activity of daily living monitored by multiple sensors can be used as surrogate of the standard clinical assessment. We focus on the older population and propose to utilize Multiple Instance Learning (MIL) to predict their clinical profile from the multi-sensorial data. ReliefF-MI is applied to achieve dimensionality reduction and to discover the most important features that are associated with each clinical metric, while the BagSMOTE algorithm is utilized to mitigate the class imbalance problem. The proposed methodology was evaluated on a multi-parametric dataset of 86 older adults containing clinical parameters from various domains (cognitive, physical, medical, psychological, social and showed high prognostic capacity for the person’s functionality (Katz index) and social interaction (phone calls).
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基于多感官数据的多实例学习的临床特征预测
近年来,人们对开发具有预测成分的不显眼的健康监测系统非常感兴趣,旨在识别疾病迹象,以协助临床医生提供早期干预措施。本研究的目的是探讨由多个传感器监测的生理和动力学功能以及人类日常生活活动是否可以作为标准临床评估的替代品。我们将重点放在老年人群上,并建议利用多实例学习(MIL)从多感官数据中预测他们的临床特征。relief - mi用于实现降维并发现与每个临床指标相关的最重要特征,而BagSMOTE算法用于缓解类别不平衡问题。所提出的方法在86名老年人的多参数数据集上进行了评估,该数据集包含来自各个领域(认知、身体、医学、心理、社会)的临床参数,并显示出对人的功能(Katz指数)和社会互动(电话)的高预后能力。
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