基于 IoMT 的增量学习框架与用于智能医疗诊断的新型特征选择算法

Siva Sai;Kartikey Singh Bhandari;Aditya Nawal;Vinay Chamola;Biplab Sikdar
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引用次数: 0

摘要

最近几篇关于医疗物联网(IoMT)领域的研究论文采用了机器学习技术来检测数据模式和趋势、识别异常、预测和预防不良事件,以及制定个性化的患者治疗方案。IoMT 领域的传统机器学习模型是静态的,因为它们是在某些数据集上训练出来的,并被用于实时推断数据。这种方法不考虑患者最近的健康相关数据。在传统的机器学习模型范例中,模型必须再次重新训练,甚至要加入几组额外的样本。此外,由于传统机器学习模型的训练一般在云平台上进行,因此还存在安全和隐私风险。针对这几个问题,我们提出了一种基于边缘的增量学习框架,并为患者的智能诊断提供了一种新颖的特征选择算法。该方法旨在通过不断从新的患者数据中学习,并随着时间的推移适应患者情况,从而提高医疗诊断的准确性和效率,同时减少隐私和安全问题。过多的特征可能会增加增量模型的计算负担,针对这一问题,我们提出了一种基于双射软集、香农熵和 TOPSIS(通过与理想解的相似性进行排序优选的技术)的新型特征选择算法。我们从聚合蒙德里安森林(Aggregated Mondrian Forests)和半空间树(Half-Space Trees)中汲取灵感,提出了两种增量算法,用于分类和异常检测。所提出的分类模型准确率为 87.63%,比基于批量学习的最佳模型高出 13.61%。同样,所提出的异常检测模型的准确率为 97.22%,比基于批量学习的最佳模型高出 1.76%。针对分类和异常检测提出的增量算法比相应的基于批量学习的最佳模型分别快 9 倍和 16 倍。
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An IoMT-Based Incremental Learning Framework With a Novel Feature Selection Algorithm for Intelligent Diagnosis in Smart Healthcare
Several recent research papers in the Internet of Medical Things (IoMT) domain employ machine learning techniques to detect data patterns and trends, identify anomalies, predict and prevent adverse events, and develop personalized patient treatment plans. Despite the potential of machine learning techniques in IoMT to revolutionize healthcare, several challenges remain.The conventional machine learning models in the IoMT domain are static in that they were trained on some datasets and are being used for real-time inferencing data. This approach does not consider the patient’s recent health-related data. In the conventional machine learning models paradigm, the models must be re-trained again, even to incorporate a few sets of additional samples. Also, since the training of the conventional machine learning models generally happens on cloud platforms, there are also risks to security and privacy. Addressing these several issues, we propose an edge-based incremental learning framework with a novel feature selection algorithm for intelligent diagnosis of patients. The approach aims to improve the accuracy and efficiency of medical diagnosis by continuously learning from new patient data and adapting to patient conditions over time, along with reducing privacy and security issues. Addressing the issue of excessive features, which might increase the computational burden on incremental models, we propose a novel feature selection algorithm based on bijective soft sets, Shannon entropy, and TOPSIS(Technique for Order Preference by Similarity to Ideal Solution). We propose two incremental algorithms inspired by Aggregated Mondrian Forests and Half-Space Trees for classification and anomaly detection. The proposed model for classification gives an accuracy of 87.63%, which is better by 13.61% than the best-performing batch learning-based model. Similarly, the proposed model for anomaly detection gives an accuracy of 97.22%, which is better by 1.76% than the best-performing batch-based model. The proposed incremental algorithms for classification and anomaly detection are 9X and 16X faster than their corresponding best-performing batch learning-based models.
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