Nadeem Muhammad Waqas, Goh Hock Guan, Ponnusamy Vasaki, Andonovic Ivan, Khan Muhammad Adnan, Hussain Muzammil
Faculty of Information and Communication Technology (FICT), Universiti Tunku Abdul Rahman (UTAR), Kampar 31900, Perak, Malaysia.
Department of Electronic & Electrical Engineering, University of Strathclyde, Royal College Building, 204 George St., Glasgow G1 1XW, UK.
Healthcare (Basel). 2021 Oct 18;9(10):1393. doi: 10.3390/healthcare9101393.
A growing portfolio of research has been reported on the use of machine learning-based architectures and models in the domain of healthcare. The development of data-driven applications and services for the diagnosis and classification of key illness conditions is challenging owing to issues of low volume, low-quality contextual data for the training, and validation of algorithms, which, in turn, compromises the accuracy of the resultant models. Here, a fusion machine learning approach is presented reporting an improvement in the accuracy of the identification of diabetes and the prediction of the onset of critical events for patients with diabetes (PwD). Globally, the cost of treating diabetes, a prevalent chronic illness condition characterized by high levels of sugar in the bloodstream over long periods, is placing severe demands on health providers and the proposed solution has the potential to support an increase in the rates of survival of PwD through informing on the optimum treatment on an individual patient basis. At the core of the proposed architecture is a fusion of machine learning classifiers (Support Vector Machine and Artificial Neural Network). Results indicate a classification accuracy of 94.67%, exceeding the performance of reported machine learning models for diabetes by ~1.8% over the best reported to date.
关于在医疗保健领域使用基于机器学习的架构和模型的研究报告越来越多。由于用于算法训练和验证的上下文数据量少、质量低,开发用于关键疾病状况诊断和分类的数据驱动应用程序和服务具有挑战性,这反过来又影响了所得模型的准确性。在此,提出了一种融合机器学习方法,报告了在识别糖尿病和预测糖尿病患者(PwD)关键事件发作方面的准确性有所提高。在全球范围内,治疗糖尿病(一种以长期血液中高糖水平为特征的普遍慢性病)的成本给医疗服务提供者带来了巨大压力,而所提出的解决方案有可能通过为个体患者提供最佳治疗建议来提高PwD的生存率。所提出架构的核心是机器学习分类器(支持向量机和人工神经网络)的融合。结果表明分类准确率为94.67%,比迄今为止报告的最佳机器学习模型在糖尿病方面的性能高出约1.8%。