Diagnostic Risk Percentage Based on Vital Signs Readings on Health Monitoring Devices

Juan Karnadi, Bob Hardian
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Abstract

The development of the field of health technology has progressed rapidly - especially in the aspect of being connected to the Internet and also allowing the storage and monitoring of vital signs data utilizing IoT features. However, there is no health monitoring that contains advanced check-up analysis referring to the acquisition of vital signs data that has been stored in the health data record. This is exactly where additional parameters beyond the vital signs have not been integrated in health monitoring. The purpose of this independent research is to find a gap between industry and academia in the form of additional parameters that are not yet available in the industrial world. The additional parameter is the percentage value of health diagnostic risk. The selection of this parameter is based on the need to analyze the level of diagnostic risk through the acquisition of vital signs that have available readings in health monitoring device equipment. The algorithm mechanism itself revolves around mapping for the diagnosis of health conditions referring to the normal limits of vital signs utilizing the decision tree algorithm. The goal is none other than to simplify the flow in determining the patient's advanced health diagnosis. Regarding the diagnostic risk percentage parameter, the diagnosis and calculation include five vital signs that are the main indicators: heart rate, oxygen saturation (SPO2), body temperature (TBody) supplemented with skin temperature (TSkin), and respiratory rate.
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基于健康监测设备生命体征读数的诊断风险百分比
健康技术领域的发展日新月异,尤其是在与互联网连接方面,以及利用物联网功能存储和监测生命体征数据方面。然而,目前还没有一种健康监测包含高级检查分析,指的是获取已存储在健康数据记录中的生命体征数据。这正是生命体征之外的其他参数尚未纳入健康监测的原因所在。这项独立研究的目的就是要找到工业界和学术界之间的差距,即工业界尚未提供的附加参数。附加参数是健康诊断风险的百分比值。之所以选择这一参数,是因为需要通过获取健康监测设备中可用读数的生命体征来分析诊断风险的程度。算法机制本身围绕着利用决策树算法,参照生命体征的正常限度来绘制健康状况诊断图。其目的无非是简化确定病人高级健康诊断的流程。关于诊断风险百分比参数,诊断和计算包括五个生命体征的主要指标:心率、血氧饱和度(SPO2)、体温(TBody)和皮肤温度(TSkin)以及呼吸频率。
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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