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A comparative analysis of machine learning methods for classification type decision problems in healthcare

机译:机器学习方法在医疗保健中分类类型决策问题的比较分析

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Abstract Advanced analytical techniques are gaining popularity in addressing complex classification type decision problems in many fields including healthcare and medicine. In this exemplary study, using digitized signal data, we developed predictive models employing three machine learning methods to diagnose an asthma patient based solely on the sounds acquired from the chest of the patient in a clinical laboratory. Although, the performances varied slightly, ensemble models (i.e., Random Forest and AdaBoost combined with Random Forest) achieved about 90% accuracy on predicting asthma patients, compared to artificial neural networks models that achieved about 80% predictive accuracy. Our results show that non-invasive, computerized lung sound analysis that rely on low-cost microphones and an embedded real-time microprocessor system would help physicians to make faster and better diagnostic decisions, especially in situations where x-ray and CT-scans are not reachable or not available. This study is a testament to the improving capabilities of analytic techniques in support of better decision making, especially in situations constraint by limited resources.
机译:摘要先进的分析技术在解决包括医疗保健和医学在内的许多领域中的复杂分类类型决策问题方面正变得越来越流行。在此示例性研究中,我们使用数字化信号数据开发了预测模型,该模型采用三种机器学习方法来仅根据临床实验室从患者胸部获得的声音来诊断哮喘患者。尽管性能略有不同,但与人工神经网络模型相比,集成模型(即Random Forest和AdaBoost与Random Forest结合使用)在预测哮喘患者方面达到了约90%的准确率。我们的结果表明,依靠低成本麦克风和嵌入式实时微处理器系统进行的非侵入性计算机化肺部声音分析,将有助于医生做出更快,更好的诊断决策,尤其是在X射线和CT扫描较复杂的情况下。无法访问或不可用。这项研究证明了分析技术不断提高的能力,可以支持更好的决策,尤其是在资源有限的情况下。

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