医疗保健异常检测与预测的在线增量学习算法

Kirthanaa Raghuraman, Monisha Senthurpandian, Monisha Shanmugasundaram, Bhargavi, V. Vaidehi
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引用次数: 10

摘要

通过监测患者的重要健康参数来检测医疗保健中的异常是机器学习中的一个具有挑战性的问题。现有的算法没有对数据进行增量处理,因此不能很好地在正确的实例上准确地预测异常。为了在线处理健康数据,本文提出了一种新的在线增量学习算法(OILA)。OILA使用基于回归的方法和反馈机制来预测健康参数,以减少误差。当在健康参数中看到异常时,将生成警报,从而提醒医生要小心。将该算法与卡尔曼滤波进行比较,比较了两种算法的预测能力。用实时健康参数数据集(即心率和血压)对该算法进行了验证。
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Online Incremental Learning Algorithm for anomaly detection and prediction in health care
Anomaly Detection in health care by monitoring the vital health parameters of patients is a challenging problem in machine learning. The existing algorithms do not process the data incrementally and hence are not very effective in predicting the anomalies accurately and at the correct instance. In this paper, in order to process the health data in an online fashion a novel Online Incremental Learning Algorithm (OILA) is proposed. The OILA predicts the health parameters using a regression based approach with a feedback mechanism to reduce error. An alert is generated when an anomaly is seen in the health parameters, thus alerting the doctor to be cautious. The algorithm is compared with Kalman Filter for comparing the prediction capabilities of OILA with Kalman Filter. The proposed algorithm is validated with real time health parameter data sets for health parameters namely heart rate and blood pressure.
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