An Interactive and Predictive Pre-diagnostic Model for Healthcare based on Data Provenance

Z. Ahmed, J. Hussien
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引用次数: 2

Abstract

The future of healthcare may look completely different from the current clinic-center services.  Rapidly growing and developing technologies are expected to change clinics throughout the world. However, the healthcare delivered to impaired patients, such as elderly and disabled people, possibly still requires hands-on human expertise. The aim of this study is to propose a predictive model that pre-diagnose illnesses by analyzing symptoms that are interactively taken from patients via several hand gestures during a period of time. This is particularly helpful in assisting clinicians and doctors to gain better understanding and make more accurate decisions about future plans for their patients’ situations. The hand gestures are detected, the time of the gesture is recorded and then they are associated to their designated symptoms. This information is captured in the form of provenance graphs constructed based on the W3C PROV data model. The provenance graph is analyzed by extracting several network metrics and then supervised machine-learning algorithms are used to build a predictive model. The model is used to predict diseases from the symptoms with a maximum accuracy of 84.5%.
基于数据来源的医疗保健交互式预测性预诊断模型
未来的医疗保健可能看起来与目前的临床中心服务完全不同。快速增长和发展的技术有望改变世界各地的诊所。然而,向受损患者(如老年人和残疾人)提供的医疗保健可能仍然需要实际的人类专业知识。本研究的目的是提出一种预测模型,通过分析在一段时间内通过几个手势互动地从患者身上获取的症状来预测疾病。这尤其有助于帮助临床医生和医生更好地了解患者的情况,并就患者的未来计划做出更准确的决定。检测手势,记录手势的时间,然后将其与指定的症状相关联。这些信息是以基于W3C PROV数据模型构建的来源图的形式获取的。通过提取几个网络指标对来源图进行分析,然后使用监督机器学习算法构建预测模型。该模型用于从症状预测疾病,最高准确率为84.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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12 weeks
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