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Machine learning-based clinical decision support system for early diagnosis from real-time physiological data

机译:基于机器学习的临床决策支持系统,可根据实时生理数据进行早期诊断

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This research aims to design a self-organizing decision support system for early diagnosis of key physiological events. The proposed system consists of pre-processing, clustering and diagnostic system, based on self-organizing fuzzy logic modeling. The clustering technique was employed with empirical pattern analysis, particularly when the information available is incomplete or the data model is affected by vagueness, which is mostly the case with medical/clinical data. Clustering module can be viewed as unsupervised learning from a given dataset. This module partitions the patient vital signs to identify the key relationships, patterns and clusters among the medical data. Secondly, it uses self-organizing fuzzy logic modeling for early symptom and event detection. Based on the clustering outcome, when detecting abnormal signs, a high level of agreement was observed between system interpretation and human expert diagnosis of the physiological events and signs.
机译:这项研究旨在设计一种自组织决策支持系统,用于关键生理事件的早期诊断。所提出的系统包括基于自组织模糊逻辑建模的预处理,聚类和诊断系统。聚类技术用于经验模式分析,尤其是当可用信息不完整或数据模型受模糊性影响时(尤其是医学/临床数据)。聚类模块可以看作是从给定数据集中的无监督学习。该模块对患者的生命体征进行分区,以识别医疗数据之间的关键关系,模式和聚类。其次,它使用自组织模糊逻辑模型进行早期症状和事件检测。基于聚类结果,当检测到异常体征时,在系统解释和生理事件和体征的人类专家诊断之间观察到很高的一致性。

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