论文标题
非临床系统中用于连续医疗保健的机器学习技术的比较研究
A comparative study of machine learning techniques used in non-clinical systems for continuous healthcare of independent livings
论文作者
论文摘要
新技术适应医疗保健方面的进步,尤其是针对独立生计。距离的药物导致将技术与医疗相结合。与可穿戴传感器网络技术合作的机器学习方法用于在数据中找到隐藏的模式,检测患者运动,观察患者的习惯,分析患者的临床数据,找到患者的意图并根据收集数据的基础做出决定。这项研究对独立生计的医疗保健中的非临床系统进行了比较研究。在这项研究中,这些系统被划分为W.R.T分为两种类型:单一目的系统和多用途系统。用于单个特定目的(例如检测跌落,检测出慢性疾病患者的新兴状态)并且不能支持医疗保健的系统被称为单一目的系统,在这种系统中,多用途系统是通过使用单个系统来为多种问题(例如心脏病发作等)构建的。这项研究分析了用于独立生计的医疗保健系统中机器学习技术的用法。答案集编程(ASP),人工神经网络,分类,采样和基于规则的推理等是用于确定紧急情况并观察患者数据变化的某些最先进技术。在所有方法中,ASP逻辑最广泛地使用,这是由于其功能可以处理不完整的数据。还观察到,使用ANN的系统比其他系统显示出更好的准确性。观察到,创建的大多数系统都是出于单一目的。在这项工作中,研究了10个单一目的系统和5个多功能系统。需要创建更多的通用系统,可用于多种疾病的患者。同样,创建的大多数系统都是典型的。需要创建可以在现实世界中为医疗服务提供服务的系统。
New technologies are adapted to made progress in healthcare especially for independent livings. Medication at distance is leading to integrate technologies with medical. Machine learning methods in collaboration with wearable sensor network technology are used to find hidden patterns in data, detect patient movements, observe habits of patient, analyze clinical data of patient, find intention of patients and make decision on the bases of gathered data. This research performs comparative study on non-clinical systems in healthcare for independent livings. In this study, these systems are sub-divided w.r.t their working into two types: single purpose systems and multi-purpose systems. Systems that are built for single specific purpose (e.g. detect fall, detect emergent state of chronic disease patient) and cannot support healthcare generically are known as single purpose systems, where multi-purpose systems are built to serve for multiple problems (e.g. heart attack etc.) by using single system. This study analyzes usages of machine learning techniques in healthcare systems for independent livings. Answer Set Programming (ASP), Artificial Neural Networks, Classification, Sampling and Rule Based Reasoning etc. are some state of art techniques used to determine emergent situations and observe changes in patient data. Among all methods, ASP logic is used most widely, it is due to its feature to deal with incomplete data. It is also observed that system using ANN shows better accuracy than other systems. It is observed that most of the systems created are for single purpose. In this work, 10 single purpose systems and 5 multi-purpose systems are studied. There is need to create more generic systems that can be used for patients with multiple diseases. Also most of the systems created are prototypical. There is need to create systems that can serve healthcare services in real world.